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Article

New Method for Identifying Fungal Kingdom Enzyme Hotspots from Genome Sequences

1
BioEconomy, Research & Advisory, Copenhagen, 2500 Valby, Denmark
2
Section for Protein Chemistry and Enzyme Technology, Department of Biotechnology and Biomedicine, Building 221, Technical University of Denmark, DK-2800 Kgs. Lyngby, Denmark
*
Author to whom correspondence should be addressed.
J. Fungi 2021, 7(3), 207; https://doi.org/10.3390/jof7030207
Submission received: 31 January 2021 / Revised: 5 March 2021 / Accepted: 7 March 2021 / Published: 11 March 2021
(This article belongs to the Special Issue Exploiting Fungal Solutions for Today's Challenges)

Abstract

:
Fungal genome sequencing data represent an enormous pool of information for enzyme discovery. Here, we report a new approach to identify and quantitatively compare biomass-degrading capacity and diversity of fungal genomes via integrated function-family annotation of carbohydrate-active enzymes (CAZymes) encoded by the genomes. Based on analyses of 1932 fungal genomes the most potent hotspots of fungal biomass processing CAZymes are identified and ranked according to substrate degradation capacity. The analysis is achieved by a new bioinformatics approach, Conserved Unique Peptide Patterns (CUPP), providing for CAZyme-family annotation and robust prediction of molecular function followed by conversion of the CUPP output to lists of integrated “Function;Family” (e.g., EC 3.2.1.4;GH5) enzyme observations. An EC-function found in several protein families counts as different observations. Summing up such observations allows for ranking of all analyzed genome sequenced fungal species according to richness in CAZyme function diversity and degrading capacity. Identifying fungal CAZyme hotspots provides for identification of fungal species richest in cellulolytic, xylanolytic, pectinolytic, and lignin modifying enzymes. The fungal enzyme hotspots are found in fungi having very different lifestyle, ecology, physiology and substrate/host affinity. Surprisingly, most CAZyme hotspots are found in enzymatically understudied and unexploited species. In contrast, the most well-known fungal enzyme producers, from where many industrially exploited enzymes are derived, are ranking unexpectedly low. The results contribute to elucidating the evolution of fungal substrate-digestive CAZyme profiles, ecophysiology, and habitat adaptations, and expand the knowledge base for novel and improved biomass resource utilization.

1. Introduction

Fungi play an important role in the recirculation of organic resources in nature, and their ability to decompose, modify, and essentially thrive on natural biomass is enabled by an arsenal of carbohydrate-active enzymes and accessory enzymes, CAZymes (www.CAZy.org (accessed on 1 February 2021)), of which many are brought to use by an enzyme secretion mechanism, specifically well developed in filamentous fungi [1]. To unlock the full potential of plant biomass and agro-industrial feed stocks in the development of the new circular, bio-based economy, we need to identify new enzymes and microbes for improved bioprocessing of a wide spectrum of biomasses resources, processing side-streams and wastes [2,3]. Fungi and specifically fungal genomes represent huge reservoirs of biotechnologically useful enzymes for such processes [3,4,5]. The current portfolio of enzymes used in industrial biotechnology and in biomass conversion is derived from a minute part of the Fungal (and Bacterial) Kingdoms [5]. Clearly, the provision of new insight into the biomass degrading potential of fungi and comprehension of their enzyme profiles is imperative in the pursuit of new enzymes, improved resource efficiency, and biomass utilization [4,5]. The focus of the present study is to explore the exponentially growing space of un-annotated fungal genome data to identify promising fungal species and eco-physiological specializations with particularly rich and interesting CAZyme gene pools. We use a new bioinformatics-based approach to mine the immense amounts of available fungal genomic data to identify fungi whose genomes harbor genes that encode particularly high numbers of biomass processing enzymes associated with conversion of different groups of the key biomass substrates, cellulose, xylan, pectin, and lignin. Our aim is to contribute a new approach for efficiently using genome data to identify fungal species that feature exceptionally interesting CAZyme gene pools. This approach provides a novel basis for selecting new enzyme systems to develop more efficient biomass conversion and processing strategies for upgrading of a wide spectrum of biomass resources, side-streams and wastes.
The genomic era has focused on revealing genomics of individual organisms, species or strains seen in isolation. Now, the time is ripe to tackle the next step, focusing on revealing evolutionary patterns of fungal interaction with their substrates. The initial step in this endeavor is to have methods for robust and fast functional annotation of genomes, exerting both high precision and sensitivity. The CAZymes are particularly diverse and highly specific due to the wealth of structural and chemical diversity of their substrates, and the proteins in focus for interaction and substrate conversion are the digestive carbohydrate degrading enzymes. Annotation to family and subfamily of such CAZymes is highly efficient and robust [6,7]. New approaches to functional annotation have been published recently, namely eCAMI [8], dbCAN2 [9], SACCHARIS [10] and CUPP [11,12] that all represent alternatives to the more general, widely used hmm-based functional annotation provided by Pfam and HMMer3 [13]. The breakthroughs in the robust prediction of enzyme function directly from genome sequence, facilitate the use of the ample amount of available genomic data for improved biological understanding of the evolution of the substrate interaction of fungi. Digital prediction methods furthermore provide a basis for intelligent and targeted enzyme discovery across all parts of the Fungal Kingdom. CUPP, for example, facilitates a comparison between the activity profiles of polysaccharide degrading enzymes across all taxonomic ranks, from species to phyla [14]. This is done by using peptide-based functional annotation to construct a new type of integrated “Function;Family” observation, first described in [14], and used for sub-genus grouping of species based on enzyme profile relatedness.
The current study uses the concept of “Function;Family” observations to identify fungal CAZyme hotspots by making “Function;Family” observation-based calculations, suitable for cross taxonomy comparisons, enabling ranking of species according to degrading capacity and diversity in enzymatic substrate specificity. This ranking is then transformed into an evolutionary, biological and ecological context by integrating the bio-informatics-based prediction of function with the mycological knowledge of phenotype, lifestyle, habitat, and ecophysiology. The hypothesis guiding this study is that “Function; Family” observations reflect fitness-relevant, evolutionarily important characters for fungal speciation and competitiveness. The core tenet is that such analysis and ranking provide valuable guidance for innovative and targeted enzyme discovery as well as significant new insight into evolution of fungal digestive CAZymes across eco-physiological specializations and lifeforms. Thus, this study contributes to shed light on the evolution of fungal digestive enzyme portfolio, in a broad spectrum of fungal lifestyles, ecological patterns, physiological specializations and substrate affinities among the genome sequenced fungi now available. The results include several surprising findings of where the richest, most optimized enzyme portfolio are found in nature; and also shows that the fungal species, from where most of the industrially used enzymes are derived, display a rather low ranking among the total of 1932 fungal genomes included in the analysis.

2. Materials and Methods

2.1. Genomes, Selection, and Filtering

6775 fungal genomic assemblies available in the NCBI GenBank were downloaded, and statistics and filtering were assessed in the following way: For each fungal species, the assembly having the greatest sequencing coverage times the Contig N-50 value [15] was selected as representative of the species. This selection resulted in inclusion of 1932 non-redundant, genomic assemblies each representing one fungal species (or strain), according to the NCBI taxid (see Tables S1 and S2 for list of genomes analyzed, including accession numbers and acknowledgement of source of genome sequencing data). We are aware that the genomes in the NCBI GenBank have been deposited by different research groups and may have been sequenced by different techniques. For certain genera where strains have received a NCBI taxid, multiple representatives of the same species may have been included. Some genomes may even be incomplete or may suffer from incomplete annotation. The data presented therefore carry the uncertainty that certain CAZymes may have been underestimated in the annotation of those genomes. The described filtering of genomes made, including selection according to high N-50 is diminishing this problem, but cannot eliminate it entirely. The study includes genomes of all fungal phyla, but members of the fungal yeast class, Saccharomycetes, are not included.

2.2. Prediction of Proteins and Assembly

In order to make the comparison of the assemblies more systematic and less biased we predicted all the proteins on the same basis using Augustus software [16,17]. Genomic proteins were ab initio predicted using Augustus 2.5.5 versus a selected model organism based on the taxonomical phylum origin of the genome as follows: Assemblies of Ascomycota were predicted using the model organism Aspergillus oryzae, whereas Basidiomycota members were predicted using the model organism Phanerochaete chrysosporium, and species belonging to any other phylum were predicted using Rhizopus oryzae as model organism. The resulting protein lists were annotated using CUPP.INFO (v2020) [12] for annotation of CAZy family, EC number and CAZy family subgroups (and CUPP groups) [11]. In brief, for each of the groups, the proteins and their taxonomical origin can be browsed using CUPP.INFO (https://www.cupp.info/browse (accessed on 1 February 2021)), e.g., the 2nd group of GH7 can be found (https://www.cupp.info/cupp/GH7:2.1 (accessed on 1 February 2021)) and the group members examined (limited to genomes in the CAZy database). Based on the EC numbers and, to some extent, the general substrate specificity of the CAZy families, the likely target plant cell wall polysaccharide substrate of the individual enzymes was determined, given as “Function;Family” observations as explained in [14]. The polysaccharide substrates and lignin associated with each of the “Function;Family” observations are listed in Table S3.
The annotation by CUPP provides functional annotation in addition to general CAZy family annotation. The use of CUPP does not reduce the sensitivity for CAZy family annotation relative to the sensitivity of the HMMer-based dbCAN. The original validation of the CUPP method thus showed that the F-score for CUPP annotation was 0.97–0.98 whereas the F-score of dbCAN was 0.94–0.97 [11,12].
Basically, the CUPP method first involves obtainment of all carbohydrate-active enzymes from CAZy.org (accessed on 1 February 2021); these are then organized into groups of proteins each with unique patterns of peptides. The CUPP method relies on that the signatures of peptides differ for each group, which in turn allows for rapid annotation of genomic proteins. In case one or more members of a group may have a known molecular function, this allows for extrapolation of information to the newly annotated proteins. The predicted molecular function is given as EC number. In this work, the molecular function is used in the contest of the CAZy family from which it originates (see Figure 1).
Flow diagram of genomic based “Function;Family” prediction of CAZymes by CUPP.

2.3. Functional Annotation and Definition of “Function;Family” Observation

The method for identifying the fungal genomes, richest in substrate specificity diversity or most potent with regard to degrading capacity includes three steps: Step 1, Peptide-based functional CAZyme annotation of 1932 fungal genomes, using the CUPP method [11,12]; Step 2, converting such separated family and EC-function annotations (EC-function is understood here as functional classification or prediction, according to EC number) into a list of integrated “Function;Family” observations, obtained by combining the CUPP predicted EC-function of the enzyme with the type of CAZyme protein family it belongs to. Step 3, the method is completed by accumulating the “Function;Family” observations into one score for each species of total number of observations for each specific substrate. The result of this 3-step calculation is a ranking, reflecting the enzyme substrate specificity diversity as well as the accumulated enzyme biomass degradation capacity of the individual species. Please note, the LPMOs are not included in this survey, as current state of knowledge does not allow for prediction of function within this group of CAZymes.

2.4. “Function;Family” Observation-Based Ranking

For the hotspot ranking results, the term “Unique observation” means that each “Function;Family” observation only counts once. This means that multiple “Function;Family” observations found in the same fungus are not counted more than once. The tables listing these hotspot rankings indicate “enzyme function specificity diversity”. In contrast, the tables summarizing all occurrences of each observation, meaning that all the CAZymes annotated to the individual substrates were summarized regardless of the particular “Function;Family”, provide “enzyme degrading capacity”. We are aware that certain fungal genome assemblies are deposited in the NCBI GenBank with diploid allele contigs in addition to the haploid representation; this problem can result in too high number estimates of encoded enzymes. The inclusion of both the total and the unique observation counts and rankings partly attune to this problem that that there is currently no direct way to adjust for. In case a single EC number is associated with two plant cell wall substrates, the enzymes count as half for both substrates.

2.5. Substrate Association Analysis Included in “Function;Family” Observation-Based Ranking

The scores of “Function;Family” observations on each CAZyme-targeted substrate is supplemented by analysis of ranking according to relevant combinations of the substrate groups, i.e., cellulose + xylan, cellulose + xylan + lignin; and lignin + pectin, respectively.

2.6. Definition of Redundancy Multiplication score

By calculating the ratio between total number of “Function;Family” observations as compared to the number of unique observations a measure is achieved, which quantify the boosting of enzyme degrading capacity due to an organism having several enzymes of the same type of “Function;Family” observation. It is called Redundancy Multiplication Score.

3. Results

3.1. Total CAZyme Cell Wall Polymer Degrading Capacity-All Observations Included

The results reported in Table 1 include lists of the ten top-ranked species, based on all accumulated (“redundant”) CAZyme “Function;Family” observations for four plant cell wall substrates, listed separately for Cellulose, Xylan, Pectin and Lignin, and summed up as “Total”.
These accumulated “Function;Family” observations thus identify the fungal species, which encode for particularly rich sets of carbohydrate processing enzymes with affinity for the major plant cell wall components. (CAZymes, www.cazy.org (accessed on 1 February 2021), except glycosyl transferases). The ranking of all 1932 fungal species/strains analyzed is given in Tables S1 and S2. Table S1 lists number of observations, including redundancy, reflecting the overall CAZyme degrading capacity of the species. It includes both specificity diversity and number of copies of each type of “Function;Family” observation, where several copies of same “Function;Family” observation are found in the fungal genome. Table S2 includes only the number of unique “Function;Family” observations, reflecting the enzyme function specificity diversity of the fungal species analyzed. Taxonomy and phylogeny follow the recently reported advances in fungal systematics [18,19,20].
Total CAZyme cell wall polymer degrading capacity. As appears from the ranking according to the column “Total” in Table 1, the strongest cell wall degrading capacities are found in a surprisingly diverse spectrum of species with regard to taxonomy, lifestyle, substrate affinities and ecophysiology. This finding substantiates that the evolutionary development towards a rich cell wall polymer degrading capacity has taken place in many habitats, among many fungal life forms, many types of substrates and ecophysiological specialisations and in several Fungal Kingdom phyla: the two top hotspot species are early lineage, zoosporic anaerobic rumen fungi, Pecoramyces ruminatium and Neocallimastix californiae (both Neocallimastigomycetes, Chytridiomycota).
The exceptionally high “Function;Family” observation scoring of rumen fungi (P. ruminatium and N. californiae (Neocallimastigomycetes)) reflects that the genomes of these organisms encode for a very high number of cellulose and xylan degrading enzymes in accord with the types of substrates the fungi encounter in the cow’s rumen [21]. In addition, the high scores may also reflect that these highly specialized early diverging, anaerobic fungi have a unique genome organization (including numerous duplications) and a similarly unique enzyme cellulosome structure [22,23].
The third on the list of fungal Top10 cell wall polymer-degrading capacity species (see Table 1, Column “Total”) is the Basidiomycete, Mycena citricolor (Agaricomycetes). The astonishingly potent CAZyme portfolio of M. citricolor, dominated by a very high number of pectin degrading and lignin modifying enzyme activities is unique and surprising for a Basidiomycete. From Table S1 it appears that only three basidiomycetes are found among the top ranking 100 fungal species, placed as 3, 35 and 71, respectively.
The rich enzyme capacity profile found in M. citricolor mirrors that it is an aggressive plant pathogen (causing American Coffee Spot disease), being able to enzymatically invade all parts of the coffee plant, leaves, stems and fruits (see Figure 2). Furthermore, M. citricolor also grows as a saprotroph on dead coffee plant biomass. Its enzymatic degrading capacity is evident in the field as the coffee leaves infected are so strongly affected by the fungal attack, that conspicuous holes in the leaves are formed (see Figure 2a). Further, the fruiting bodies of this minute cap fungus are visible by the naked eye and occur close to brown spots on leaves, stems and fruits (Figure 2b). Interestingly, M. citricolor also has a strong metabolite profile, e.g., its fruiting bodies are visible at night, as it shows bioluminescence [24]. One other Mycena species is included in the rankings achieved in the current study (Table 1), M. chlorophos, listed as 696 on the “Total”-ranked list of species, including redundant enzyme “Function;Family” observations (Table S2). The specific comparison of the predicted enzyme observation profile of M. citricolor/M. chlorophos is consistent with the high pectin degrading enzyme capacity of M. citricolor: Cellulose 91/40; Xylan 50/27; Pectin 204/35; Lignin 149/64.
Number four to ten of the richest biomass degrading enzyme capacity species are all belonging to Ascomycota (Table 1). Among those, the species with the strongest biomass degrading capacity is Verticillium longisporum (Hypocreales, Sordariomycetes). Similar to most Verticillium species, V. longisporum primarily lives in the soil. However, V. longisporum, is also a plant pathogen of dicot plants, most commonly infecting canola, here causing Verticillium Wilt. It can attack other brassica plant species as well as woody ornamentals. The fungus invades all parts of the plant also spreading efficiently through the vascular system. Besides its high CAZyme degrading capacity, with particularly high numbers of pectin and cellulose degrading enzyme “Function;Family” observations encoded by its genome, it also secretes mycotoxins, and exerts chemotactic response in the soil, growing towards host root systems [25]. The fifth species on biomass degrading enzyme capacity is Coniochaeta sp. 2T2.1, (Ascomycota, Sordariomycetes, Coniochaetales). The genus Coniochaeta includes species of pleomorphic, sapro-and bio-trophic yeasts and are primarily described as tree pathogens [26]. In accordance with its diverse ecophysiological specialization and pleomorphic life form, Table 1 shows that this fungus encodes a high number of CAZyme “Function;Family” observations for each of the four types of plant cell wall substrates, cellulose, pectin, xylan, and lignin. The CUPP analyzed genome sequenced strain Coniochaeta sp. 2T2.1 was isolated from a wheat straw-degrading microbial consortium. The strain Coniochaeta 2T2.1 is also described to be a key Eukaryote member of a soil-derived microbial consortium along with bacteria [27].
The sixth species on the “Total” list in Table 1 is Paramyrothecium roridum, Hypocreales, Sordariomycetes, Ascomycota (synonym Myrothecium roridum). It is a soil inhabiting, facultative plant parasite with a large host range and worldwide distribution. In agriculture, it is recognized as an important pathogen of vegetable (dicot) crops, which agrees well with its high capacity for pectin and cellulose degradation, according to its encoded CAZymes attacking these substrates [28]. It is a strong producer of bioactive metabolites such as Mycotoxin B. The seventh species on the Total list, Table 1 is the endophytic filamentous Cadophora sp. DSE1049, (Helotiales, Leotiomycetes, Ascomycota), which has an enzyme profile for the four target plant substrates almost similar to that of P. roridum, but just slightly lower observation counts for pectin degrading enzymes and slightly higher counts of xylan and lignin modifying enzyme observations (Table 1). This isolate may represent a new species in the genus [29]. Cadophora is associated to the ubiquitous fungal grouping of “dark septate endophyte” community. It is common on semi-arid grasslands, observed to colonize both grass and non-grass hosts. The functional role of the “dark septate endophyte” (DSE) fungi in the ecosystem is still elusive. Characterization of its digestive enzyme profile in the present study can contribute to shed light on DSE interaction with their host plants [30].
Number eight to ten in the “Total” column in Table 1 are three species of the Diaporthe (Sordariales). Diaporthe is a genus of endophytic, saprotroph and pathogenic fungi. Diaporthe spp. produce the mycotoxin Phomopsins, causing liver damage. In grapevines D. ampelina causes two different diseases, Phomopsis cane and leaf spot and Phomopsis dieback (notably, Phomopsis is an earlier genus name of D. ampelina). D. ampelina directly attacks all green tissues of the vine, causing necrotic lesions on the leaves, green stems, and fruit [31]. The habitat is clearly reflected in the high numbers of cellulose and lignin degrading enzymes of Diaporthe sp., but it is also important to note that all three “top 10” Diaporthe spp. have surprisingly good pectin degrading capacities according to the number of pectin degraded CAZyme observations identified (Table 1). Next on the Top 10 list is another Diaporthe species, D. longicolla (syn. Phomopsis longicolla). It is a seed-borne fungus causing “Phomopsis seed decay” in soybean, Glycine max [32].

3.2. Redundant Observations Included: Fungal Hotspots of Degradation Capacity for Specific Substrates

Cellulose. A striking similarity is found between the Cellulose ranked list and the Total degradation capacity list above. As it appears from Table 1, the ranking of cellulose active enzyme observations has a high impact on the total ranking: eight of the top ten fungal species, scoring highest on the “Cellulose” active enzyme observations are the same as for “Total” cell wall degrading. Notably, M. citricola and Cadophora sp. DSE1049 are not on the cellulose ranked list of species richest in degradation capacity, as they primarily have high pectin degrading capacity (Table 1). Further, the Cellulose-ranked list includes a third rumen fungus, Piromyces (P. sp. E2) and one more species of Diaporthe (D. capsica); all Diaporthe species analyzed have similarly rich CAZyme profiles.
Xylan. The four highest scoring species, with the richest xylan degradation capacity among the 1932 genome sequenced fungal species are rumen fungi (Chytridiomycota, see Table 2, Xylan, # 1,2,3 and 8). Despite this, the xylan-ranked list, in contrast to the cellulose-ranked list, holds several surprises in including species not on the Total list and not earlier described as potent, high enzyme capacity degraders: The saprotrophic wood degrader Exidia glandulosa, (Agaricomycetes, Basidiomycota); the “rock fungus”, an extremophile ascomycetous black yeast, Rachicladosporium antarcticum; and an understudied coniferous needle degrader, Chalara longipes (Leotiomycetes, Ascomycota). Furthermore, Coniochaeta sp., Cadophora sp. and V. longispora, which all are placed among the top 10 on the Total-list (Table 1) are also top-scoring on xylan.
Pectin. The absolute highest scoring (in all 204 “Function;Family” pectin-associated observations) is M. citricolor. A broad selection of CAZymes, degrading also the pectin rich coffee fruits is part of the pathogenicity profile of M. citricolor. However, most unique for the Pectin-ranked listing in Table 1 is that out of the top ten species, Colletotrichum sp. are ranked four to eight. Species of Colletotrichum are well-known plant pathogens, invading all part of their host plants, found to grow also as endophytes. Unique for the Pectin-ranked listing is further an Aspergillus species, A. latus, V. longisporum, P. roridum and Cadophora sp. DSE1049 on the Pectin-ranked list are all listed also on the Total degrading capacity list (Table 1). This indicates that these latter three species have an overall rich CAZyme cell wall degrading enzyme portfolio but also being highly specialized in degrading pectin. As expected, yet noteworthy, no rumen fungi are represented among the pectin-ranked top ten species; highest placed rumen fungus is N. californiae, placed as #30 among pectin-ranked species (see Table S2).
Lignin. The list of fungal species with the most diverse and strongest lignin degrading capacity is different from all of the above list: It is dominated by Agaricomycetes (Basidiomycota). No chytridiomycetous rumen fungi and only three ascomycetous species are on the top 10 list ranked according to number of lignin enzyme observations. Among the Basidiomycota, as also for pectin degradation, M. citricolor again stands out as number one in lignin degrading capacity (having in all 149 “Function; Family” lignin-associated observations). A similar profile as M. citricolor, being specialized in both pectin and lignin degradation, is also found for the three Ascomycetes ranked highest among lignin degrading fungi, Coniochaeta sp., D. ampelina and V. longisporum (Table 1 Lignin, ranked as number 6, 8 and 10). The habitat and ecophysiological specialization of the five lignin-degrading genome-sequenced Basidiomycetous species, placed as numbers 1–5, 7 and 9 are highly diverse: M. citricolor; Exidia glandulosa (wood degrading typically growing on dead attached branches of oak); Hymenopellis chiangmaiae and H. radicata (soil inhabiting, deep rooted; known as edible Black Termite Mushroom in China) [33]; Ganoderma boninense and G. sp. BRIUMSc (the Ganoderma genus being well known for around the world causing decay in a wide range of tree species, including oil palm); and Neonothopanus nambi (a poisonous, bioluminescent mushroom in the family Marasmiaceae) [34,35].

3.3. Top 10 Fungal Species, Richest in Function Specificity Diversity-Unique Observations Only

Total. The evolutionary development in enzyme cell wall substrate specificity has one outstanding taxonomic and lifestyle hotspot: Nine out of the ten topmost enzyme specificity rich fungal species/strains belong to the genus Colletotrichum, (Sordariomycetes, Ascomycota) (see Table 2 and Table S2).
Colletotrichum species can invade all part of their host plants and can live both as symbionts, as endophytes and as plant pathogens; some species even have a mutualistic relationship with their hosts. Notably, enzymes from Colletotricum are only sparsely studied experimentally, as they are known as producers of highly biologically active mycotoxins (also against humans). Notably, #7 on the “Total”-ranked, unique/non-redundant list is another well-known mycotoxin producer P. roridum, from the same taxonomic group as Colletotrichum. The number of unique, non-redundant CAZyme “Function;Family” observations in Colletotrichum sp. and P. roridum are as high as 109–112.

3.4. Unique Observations, Listing Top Ranking Species on Specific Substrates

Cellulose. The ranking according to number of unique cellulolytic “Function;Family” observations (not including redundant observations) is astonishing in that all the top-scoring species are understudied (and totally unexploited) with regard to their enzyme portfolio. The ranking is also remarkably different from the top ten species of the “Total” list above as only one species of Colletotrichum is included on the Cellulose-ranked list (Table 2). Specifically pinpointing number 1–10 separately is not possible as it includes six top-scoring species, which all have 18 unique cellulose active “Function;Family” observations. Followed by a long list of species having 17 unique observations. The group of six species, all having 18 observations is dominated by Sordariomycetes (four species, see Table 2). The lifestyles and substrate and host affinity among these six species are very diverse: Gliomastix tumulicola (Gliomastix spp. are saprotrophs; G. tumulicola part of the Gliomastix/Bionectria clade of Acremonium-complex [36]); P. roridum (see above); Aaosphaeria arxii (A. arxii was originally isolated from corn (Zea maydis) in Columbia and it has since been found on various plants) [37]; Clavariopsis aquatica, (a marine fungus, belonging to a less studied part of the Pleosporales (Dothideomycetes [38]); Hymenoschyphus herbarum, (a saprotroph on twigs and branches, belonging to Helotiales, Leotiomycetes); and Memnoniella echinata, an indoor mold, very similar to Stachybotrys chartarum; was previously named S. echinata; it has a world-wide distribution, mainly isolated from soil and from cellulose containing materials such as paper, wallpaper, textiles and dead plant material). M. echinata produces toxic metabolites similar to those of S. chartarum [39]. As can be seen in Table S2 there is a high number of species having 17 unique “Function;Family” observations. This long list is dominated by Ascomycetes but also including three species of the Basidiomycetous Auricularia spp. The Ascomycete diversity is broader when looking on top 70, including, e.g., Morchella eximia (Pezizocomycetes), (a globally occurring fire-associated species of Morels) [40], and one species of Aspergillus (A. versicolor), belonging to Eurotiomycetes.
Xylan. Cadophora (Leotiomycetes, Ascomycota) has the richest xylan “Function;Family” observation score (26). Six species have xylan function diversity score of 25: The previously introduced species C. tropicale and C. aenigma and P. roridum, and also, Clonostachys rosea, (a mycoparasite, ubiquitously found and isolated from many types of habitats, most often from soil). Mycoparasitism of C. rosea has been exploited for biological control of numerous fungal plant pathogens, insects and nematodes. This biological activity is enabled by multiple mechanisms: a secretome rich in both cell wall degrading enzymes and biologically active secondary metabolites, and induction of plant defense. C. rosea has also been described to have enzyme functions of relevance for biodegradation of plastic waste [41]. Xylaria striata, having a secretome composed of both biomass degrading enzymes and biologically active metabolites, shown to promote plants biomass growth, is also highly ranked for xylan associated CAZymes (Table 2). Chinese culture, CCTCC NO: M2012101, X. striata, strain RK1-1 has been associated with anti-aging activity in nematodes [42]. Notably, a high number of other Ascomycetous species have a xylan “Function;Family” diversity score of at least 24 (Table S2).
Pectin. Species of Colletotrichum fill all the ten top-ranking positions with regard to their pectin-active enzyme “Function;Family” observation portfolio (range 51–53). Notably, among the species of Colletotrichum here ranked highest with respect to pectin specificity diversity is C. gloeosporioides, a tea pathogen with a highly bio-active metabolite profile. Since most of the fungi having high numbers of CAZyme observations are indeed plant pathogens, it is noted that strong cell wall degrading capacity often is co-occurring with a rich mycotoxin profile, indicating that the evolutionary development of a strong CAZymes battery to support efficient growth is often combined with a biologically active secreted metabolome.
Lignin. In all, sixteen species have the highest scoring of unique “Function;Family” lignin-active observations (19) (Table 2 and Table S2). This list holds 13 Ascomycetes (belonging to Sordario-, Leotio- and Dothideomycetes); and three Basidiomycete Agaricomycetess, two species of Auricularia and one Hymenopellis species (Table S2) (for lifestyle and substrate affinity, see text above).

3.5. Substrate Association Analyses, Unique Observations

Substrate association analyses were made for unique observation data, including Cellulose + Xylan, Cellulose + Xylan + Lignin, and Lignin + Pectin. Interestingly, among the top scoring species on Cellulose + Xylan + Lignin is the wood inhabiting Xylaria striata (data calculated from Table S2). Notably, with the important exception of Mycena citricolor, among all Top50 scoring species in the Pectin + Lignin substrate association analysis are Ascomycota. Among these, Sordariomycetous species are dominating, specially, high specificity diversity is found (beyond Colletotrichum sp) in Verticillium longisporum, Paramyrothecium, Pestalotiopsis, Fusarium oxysporum, and Diaporthe; but also, very rich diversity in pectin and lignin function specificity diversity are found in ascomycetous species outside Sordariomycetes, e.g., Staganospora (Dothideomycetes), Morchella esculenta (Pezizomycetes, most famous edible morel).

3.6. Substrate Association Analyses, Including Redundant Observations

For redundant observations, similar substrate association analyses were made (data calculated from Table S1). Interestingly, linkage analysis revealed the high enzyme degrading capacity of several new species, as, e.g., by linking Cellulose + Xylan: Aspergillus and Byssochlamus (Eurotiomycetes); Zopfia (Dothideomycetes), a root inhabiting plant pathogen; Hortaea, a black yeast; and Coprinellus, a soil inhabiting saprotrophic Basidiomycete. Of special interest is also the list of species, top scoring on substrate association of “Function;Family” observation scoring on pectin plus lignin (see Table 3).

3.7. Analysis of Variation of Biomass Degrading Capacity among Species of Same Genus

The enzyme biomass degrading profile among the high number of genome sequenced species of Aspergillus, Penicillium and Fusarium is highly varying. All three genera include species with strong and medium strong enzyme profiles, as well as species with only meager biomass degrading capacity. In contrast to this the genus Diaporthe and Colletotricum appear to be more uniform in total degrading capacity across genome sequenced species included in the study. In numbers: The species of Aspergillus included (in all 103) have a diversified ranking from top A. latus (5) to bottom ranked A. cejpii (1109). The 48 Penicillium species included have ranking positions varying between P. sp. 61, P. janthinellum 203, and the lowest ranking in biomass degrading capacity P. decumbens 1258. The genome sequences included from Fusarium species (in all 180 species) have a ranking, ranging from F. sp. (NRRL 22101) 54 to bottom F. ventricosum 1201. Albeit fewer species sequenced the diversity of enzyme profiles of the genus Colletotrichum and Diaporthe appear to be much more potent and much narrower: Colletotricum, 34 sequenced species included, C. cameliae 14; and bottom ranked species C. falcatum at 324. Diaporthe, 7 genome sequenced species, ranking as high as 8–12, 42 and 94, respectively, in Total degrading capacity.

3.8. Redundancy Multiplication Score: Ratio of Redundant vs. Unique “Function;Family” Observations

The level of “Function;Family” observations including redundant observations as compared to the level of unique non-redundant observations is given as ratios in Table 4. This table includes calculation for the ten species of each of the four types of enzyme portfolios, cellulolytic, xylanolytic, pectinolytic and ligninolytic; plus, a “Total” cell wall polymer degrading capacity, summed up across the four types of enzymes. For each of such sets of 10 species, the number of non-redundant “Function;Family” observations is also listed. To the right in Table 4 is the calculated redundancy multiplication; describing the boosting in degrading capacity, possibly caused by higher redundancy in number of “Function;Family” observations.
For three groupings, “Total”, “Cellulose” and “Xylan” it appears that the two rumen fungi, P. ruminatium and N. californiae (both Neocallimastigomycetes, Chytridiomycota) have the highest redundancy multiplication score (marked by *); similary, Piromyces E2 is excelling in Redundancy Multiplication Score on Xylan; to be noted, this type of specialized rumen fungi have their cell wall degrading enzymes placed in a specialized cellulosome structure and a high duplication genome structure. The highest Redundancy Multiplication Score after the three rumen fungi are found for the Basidiomycete M. citricolor, for both pectin and lignin, as well as for total; closely followed by V. longisporum, Coniochaeta (Cellulose), Diaporthe ampelina, Piromyces E2 and P. finis (Xylan), and Exidia glandulosa (Lignin). The lowest Redundancy Multiplication Score is found among Ascomycetous hits of pectin-active as well as cellulose-active enzyme observations.

3.9. Taxonomic Distribution of Fungal Phyla According to Enzyme Biomass Degrading Capacity

A pie-chart visualization of ratio of species belonging to the various taxonomic fungal phyla on the listing of biomass degrading capacity is shown in Figure 3. The first 500 species are heavily dominated by ascomycetous species, with a few anaerobic chytrids (rumen fungi) prominently placed on top of the list; Basidiomycetes represented by only 22 species. In position 500–1000 the number of Basidiomycetes is growing. However, among the genome-sequenced species, listed from 1000 to 1932 in ranking of biomass degrading enzyme capacity the other non-ascomycota phyla starts to be more prominently represented. Overall enzyme degrading capacity of fungal phyla (beyond the Chytridio-, Asco- and Basidiomycota described above) are all low-ranking: Mucoromycota, highest ranking, Rhizopus oryzae 1329; Zoopagomycota, highest, Basidiobolus meristosporus 1419; Blastocladiomycota, highest, Allomyces macrogynus 1662; Cryptomycota, highest, Rozella allomyces, 1880; Microsporidia highest ranking, 1897; all out of a total of 1932 species analyzed.

3.10. Biomass Degrading Capacity of Iconic Species and Life Forms

Fungi and fungal enzymes used industrially. It is surprising to see that the species most frequently used in industrial biomass conversion are not found among the fungal species we here found to have the highest level of biomass conversion enzyme capacity: Species included of Trichoderma rank according to total biomass degrading capacity as numbers 916, 1072, 1112, 1113, and 1232 (respectively, for T. virens, T. harzianum, T. viride, T. asperellum and T. reesei). Species of Aspergillus rank higher, A. oryzae 424, A. hancockii 447, A. flavus 475, A. terreus 647 and A. nidulans 716, A. niger 795 and A. fumigatus 859. Therefore, do also the two basidiomycetes, Ganoderma lucidum 678 and Trametes versicolor 735. Notably, the industrial use of, e.g., species of Aspergillus or Trichoderma for producing blends of enzymes are chosen just as much for their high-performance growth characteristics in upscale fermenters as well as for their highly efficient enzyme secretion machinery. Not for their efficiency in biomass conversion by their native enzymes.
White rot fungi. Similarly, it is also surprising that some of the widely studied white rot fungi, known to produce, e.g., specific lignin-cellulose degrading and complex xylan degrading CAZymes are not among the topscoring in biomass degrading capacity: Pleurotus ostreatus 798, Phanerochate chrysosporium 632, Armillaria mellea 660. Brown rot fungi. As expected brown rot fungi are ranked low in enzymatic biomass degrading capacity: Serpula lacrymans 1471, Coniophora puteana 1039, Fomitopsis pinicola 1139.
Wood degraders as compared to dung fungi and indoor fungi. The most potent among the wood degraders is the inconspicuous species Exidia glandulosa 35 and Xylaria striata 88. Next level in enzymatic biomass conversion capacity, among wood degraders are species of Hypoxylon and Calonectria here ranked as 540 and 546. For comparison the dung fungi Podospora comata and P. anserina are ranked 587 and 588; while the indoor fungi Stachybotrys chartarum is ranked as 141, hereby being among the top biomass degrading capacity species.
Edible fungi. The enzyme biomass conversion capacity among edible fungi, calculated as total number of “Function;Family” observations deserves special attention. They are all possible candidates for being used for fermentation as they have a long track record of being consumed as food, neither posing risk to workers health nor representing a regulatory and safety obstacle for being used for food and feed. (Notably, allergenicity cannot a priori be ruled out). A selection of iconic edible fungi, all ranked among the upper half is here listed, indicating their ranking according to biomass conversion capacity: Chinese mushroom, Auricularia auriculaejudae (synonym Hirneola) 509; Hiericium coralloides 796, Pleurotus ostreatus 875, Flammulina velutipes 889, Volvariella volvata 949. In addition to such species, a large proportion of the edible mushrooms are placed in the second half of the ranking list, to be regarded as low in biomass conversion capacity. The late fall mushroom Sarcomyxa edulis 1136, Cantharellus cibarius 1221, Fistulina hepatica 1296, Boletus edulis 1276, Agaricus bisporus 1.335, Sparassis crispa 1404, Tuber sp., 1422 to 1531, Lactarius deliciosus 1470 and Ustilago maydis (corn smut) 1623.
Insect cultivated fungi. Among the most highly optimized (enzymatic digestive) biological systems in Nature is the co-evolution of termites and leaf cutter ants with basidiomycetous fungi. The termites and the leaf cutter ants are cultivating specific species of Basidiomycetous fungi to produce enzymes, which in two steps convert the collected plant biomass to nutritious fungal-derived protein and sugar; or seen from the opposite perspective: a biological system where the fungus has lured the termites or ants to provide it with continuous food supply, protected humid underground shelter and meticulous weeding, actively defending the fungal colony from intruding microbial infections. Leaf cutter ants cultivate species of Leucoagaricus [43]; the termites cultivate species of Termitomyces, both genera of Agaricomycetes. Surprisingly, a preferred species, L. gongylophorus rank as low as 1570 in total biomass degrading capacity, while other genome sequenced Leucoagaricus sp. included in this study rank as 903 and 758. Similarly, surprisingly, Termitomyces eurrhizus ranks as low as 1196; other, T. spp. rank even lower in enzyme degrading profile (e.g., 1302) in the current study. The fungi co-evolved with termites and leaf cutter ants may to a large extent have been optimized not only in enzyme profile but maybe more in growth characteristics (e.g., formation of highly structured gongylidiae). Which, together with the enzymes have led to the high biomass conversion, from plant to nutritious larval feed for the larvae so successfully sustaining the colony development.
Thermophilic fungi, industrially exploited. Enzymes from a number of thermophilic fungal species have been industrially exploited, explicitly for their high temperature stability. Selected thermophilic species included in this study: Thermothelomyces thermophilum here ranks 891; Thermoascaceaca sp. 1098; Chaetomium thermophilum 1135, Thermoascus crustaceus 1263; and Thermomyces lanuginosus 1646; Thermomucor indicae-seudaticae 1666. Even though these fungi do not have a very high biomass degrading capacity, their industrial exploitation has been very successful due to their thermostability.
Iconic fungal plant pathogens. Enzymatic degradation of plant cell wall components is seen as a part of the pathogenicity of many (or most) of the fungal species infecting and invading living plants. As here exemplified, their enzyme biomass degrading armaments are quite varying: Mycena citricolor are on the top of the overall total redundant listing, as third only after two anaerobic cow rumen fungi (see Table 1); Ilyonectria mors-panaci 97; Eutypa lata 119; Stenocarpella maydis 127; Rice blast, Pyricularia oryzae 570; Pyrenophora tritici-repentes 620; Gauemannomyces tritici 635; Pyricularia grisea 675; Puccinia arachidis 711; Botrytis cinerea 718; Rhizoctonia solani 775; Venturia oleagina 785; Monilinia fructigena 982; Heterobasidion annosum 1017; Claviceps purpurea 1018; Tilletia indica 1607; Synchytrium endobioticum (potato wart disease; Chytridiomycota) 1745; Taphrina betulina (witches broom of birch) 1786. Two groups of plant pathogens deserve special attention, the rusts and the smuts. Two plant pathogenic rust-species are among the fungi with the absolute lowest biomass degrading capacity: Melampsora occidentalis, ranking 1891, has two cellulose-active observations only and no other types of biomass degrading enzyme; Endocronartium harknessii, ranking 1892 has two pectin-active enzymes only; Uromyces vicia-fabae ranking 1893 has two cellulose-active observations only; and Melampsora larici-populina, ranking 1901 has one lignin-active “Function;Family” observation. However, other species of rust fungi have a richer enzyme capacity for breaking down plant cell walls, e.g., Uromyces transversalis ranking 665; Puccinia arachidis as 771; while Puccinia graminis ranks significantly lower, 1744; Puccinia striiformis 1828. Notably, no genome sequenced species of smut fungi have high capacity for biomass degradation, all are ranking very low with regard to biomass degrading capacity: Ustilago trichophera 1285; Ustilago tritici 1486; Violaceomyces palustris 1487; and Ustilago esculenta 1638. For species with such extremely low capacity for biomass degradation, elucidating the roles of the few enzyme observations present could give valuable information, elucidating the enzymatic substrate interaction between rust and smut fungi and their hosts.
Mycorrhiza-forming fungi. Through the ectomycorrhizal symbiosis, primarily with tree species, Basidiomycetous fungi do not need to live only on absorptive growth; however, the mycorrhizal fungi have been shown also to have a basic set of digestive plant cell wall degrading enzymes. Based on this conceptual understanding the following ranking of species on degradation capacity make good sense: Boletus edulis 1276; Suillus luteus 1307; Lactarius indigo 1331; Paxillus involutus 1379; Russula sp. 1469; Xerocomus sp. 1472; Amanita 1521; Russula 1568, 1638; Amanita inopinata 1849 and A. jacksonii 1852. The last two species have an extremely reduced portfolio of biomass degrading enzymes, A. inopinata has two enzyme “Function;Family” observations active on cellulose and seven on lignin; and for the latter, A. jacksonii, one on cellulose and eight, active on lignin.
Endomycorrhiza-forming fungi. Only rather few of this system-biology-wise highly important life form has been genome sequenced and included in this study. The sequenced species all rank rather closely, following the same pattern as ectomycorrhizal fungi: Gigaspora margarita 1378, G. rosea 1451, Glomus cerebriforme 1590, Oehlia diaphana 1711. Studies revealing the specific role of these very few enzyme “Function;Family” observations found in Endomycorrhizal fungi could be highly interesting; especially seen in the light this life form being so ecologically essential for entire habitats.
Fungi used in food processing. A few fungal species used in food processing, maturation and fermentation are included in this study. Among those are the following iconic species: Penicillium camemberti having a total of 919 “Function;Family” observations and Penicillium roqueforti 1156; Aspergillus oryzae 423, Aspergillus sojae 304 and Rhizopus oryzae 1329; the first two are used for highly optimized French cheese making; the latter three used in Japanese cuisine, misu, tempeh and soy sauce.
Fungi used in biological control of plant diseases. Against insects: Metarhizium majus 1264; M. robertsii 1273; M. sp. 1558; Beauveria pseudobassiana 1344; B. sp. 1371, 1372, 1398, 1399. Against fungal pathogens: Clonostachys rosea, being both an endophyte and a mycoparasite has a good armament also of plant cell wall degrading enzymes, ranking as high as 31 on the total biomass degrading capacity “Function;Family” observation list.
Fungal species as models used in mycological and genetic research. None of the fungal research model species are ranking as having an outstanding biomass degrading capacity: Schizophyllum commune 849; Coprinopsis cinerea 869; Neurospora crassa 1096; Trametes (Pycnoporus) cinnabarina 928; Rhizophlyctis rosea 935; Arthrobotrys oligospora 957; Ustilago maydis 1548; Allomyces macrogynus 1662; Entomophthora muscae 1701; Rozella allomyces 1880; Catenaria anguillulae 1863; Batrachochytridum dendrabatidis 1865; B. salamandrivorans 1874. However, one could also in this grouping include the rather high ranking of enzyme biomass degrading capacity and specificity diversity of species of Aspergillus (A. oryzae, A. nidulans etc.) used for biological production in industry, being species ranking high with regard to biomass conversion capacity (see above, Industrial used fungi).
Black yeasts, halophiles and xerophiles. Extremophilic species of black yeasts and molds, being both halophilic and xerophilic have not yet been exploited industrially to their full potential. One reason is that many of them are human pathogens and therefore neither safe nor permissibly to use in industry. For the non-pathogenic species of black yeasts, their industrial relevance is not primarily for a rich enzyme diversity of “Function;Family” observations. Their industrial relevance is connected to special molecular characteristics of tolerating extremely low water activity and also (related to) tolerating high concentration of salt. A selection of Black yeast species, included in this survey are here listed: Aureobasidium pullulans 679; Hortaea thailandica 1132; and the halophilic molds Wallemia hederae 1790; W. mellicola 1881.
Human pathogens. A high number of fungal human pathogens have been genome sequenced. As human cells do not have walls, enzymatic lignocellulosic biomass degrading capacity is not per se expected to be significant for their pathogenicity. Still, interesting observations, also of relevance for understanding their pathogenesis fully, can be achieved by analyzing their portfolio of CAZymes (see Table S1). Below is a selection of human pathogens, each of them ranked among the 1932 fungal genomes analyzed: Aspergillus fumigatus 859; Trichotecium roseum 987; Sporothrix brasiliensis 1007; Trichosporon coremiiforme 1267; Cutaneotrichosporon dermatis 1327; Cryptococcus amylolentus 1599; Cryptococcus wingfieldii 1656; Cryptococcus gattii 1789. Further several species included in this study are animal pathogens, e.g., Raffaelea lauricola 1006 pathogen of Beetles; Piedraia hortae 1750 on human and animal hair; Malessezia spp. 1791 a human and animal dermatophyte. Halocinogenic fungus, Psilocybe spp. rank as 417, 1057; the highly toxic fungus Amanita phalloides has ranking 1805.
Fungal production of pharmaceutical drugs. Species of Monascus (e.g., M. purpureus ranking as 1514) and species of Aspergillus (especially A. terreus ranking as 647) have dominated the biological production of drugs to control human hyper-tension.

4. Discussion

4.1. Discussion and Conclusions

The fungal digestive enzyme battery is an integrated part of fungal evolutionary speciation, as the organism gains fitness advantage for growth and reproduction by efficiently mobilizing accessible substrates [14]. Efficiency in substrate mobilization depends on having the right type of enzyme proteins (stable and substrate-accessible), combined with having optimized portfolio of enzyme functions, suitable for the substrates, available in the ecosystem of the fungus. This combination of enzyme key features, type of protein and molecular function is the basis for the new methodological approach presented here for comparative ranking of fungi according to their biomass-digestive CAZyme profiles: The integrated “Function;Family” observation is the fitness feature that evolutionary pressure is targeting; having the right type of enzymes for the functions needed is a competitive advantage for absorptive metabolism of the heterotrophic fungal life-form. By accumulating “Function;Family” observations for each of the major cell wall components, in two modes, with and without observation redundancy, we can describe each genome by one number for unique observations and one number for total degradation capacity (incl redundant observations). This, both informative and evolutionary relevant as well as reductionistic approach enables comparative ranking of enzyme degrading capacity as well as richness in enzyme function specificities, hereby identifying enzyme hotspots (taxonomic and eco-physiological), across a high number of available fungal genome sequences. Notably, the time is right for such across Fungal Kingdom genome analysis, as species from all phyla, together representing most of the larger segments and life forms of the Fungal Kingdom by now have been sequenced and made available for the international scientific community, 1000 fungal genome community project by the US Department of Energy Joint Genome Institute and Mycocosm [6,44,45].
In the present study, the CAZyme “Function;Family” observation-based analysis was developed into two different types of ranking: Differentiating between richness in enzyme function specificity diversity, counting only unique observations; and the organismal total CAZyme degrading capacity including also redundant “Function;Family” observations. Using this in a Fungal-Kingdom-wide analysis, including comparative analysis of enzyme activities, targeting many substrates opens up for three additional types of conceptually new findings: (i) The factor by which the enzyme capacity is enhanced by organismal evolutionary development of several redundant “Function;Family” observations, varies between fungal phyla as well as between the different types of substrate targeted (here quantified as a Redundancy Multiplication Score). (ii) Substrate association analysis revealed new ranking of species, especially interesting for elucidating which species are excelling when summing up the pectin plus lignin number of observations. (iii) Analysis of intergeneric variation of CAZyme richness (made possible where multiple genome sequenced species were included) enabled the description of two different patterns. In some fungal genera, the enzyme profiles of the species rank quite closely with regard to richness in degrading capacity as well as in function diversity. While in other genera, the species are found to vary significantly with regard to enzyme profile richness, being spread almost from top to bottom of the ranking list.
The results obtained demonstrate that the “Function;Family” observation-based methodological approach opens for new and surprising insight into the richest fungal enzyme hotspots in Nature: It also provides significant new enzyme knowledge about fungal roles in degradation of substrates and in host interaction and pathogenicity. It stands out prominently that a dominant characteristic among the species identified to be richest in enzyme specificities and biomass degrading capacity is a strong and broad eco-physiological profile: Typically including ability to be both biotrophic and saprotrophic, able to attack all parts of the plants and several types of substrates: M. citricolor (Basidiomycota) a devastating pathogen on coffee, attacking all parts of the plant, not the least the berries; V. longisporum (Ascomycota) both soil-inhabiting and a devastating plant pathogen; Coniochaeta (Ascomycota) a pleomorphic yeast, both living as saprotroph and as tree pathogen, as well as human pathogen; P. roridum (Ascomycota), soil inhabiting and a facultative plant pathogen. Diaporthe sp. (Ascomycota), a devastating pathogen of a wide spectrum of species, invading all parts of the plants, green, wooden and seeds; biotrophic and necrotrophic die back. Notably, all of the above-mentioned species degrade dicots. A hypothesis based on the results here reported could be that among the richest enzyme profile species, the dicot-invading (or both dicot- and monocot-invading) fungi have a high capacity CAZyme portfolio dominated by a very large variety of pectin degrading enzymes as compared to monocot invading species.
Interestingly, one more essential character is prominent for the majority of the especially rich CAZyme producing species here identified. A surprisingly large fraction of the richest and most versatile, talented species with regard to enzyme specificity diversity as well as total enzyme degrading capacity is also characterized by being talented in production of bioactive metabolites, of which many are recognized as mycotoxins. This is the case for eight out of the ten top-ranking species of redundant observations (Table 1) and for all the ten unique observations top-ranking species (Table 2). One interpretation of this phenomenon is straight forward: Being extremely efficient in degrading (plant) biomass, goes hand in hand evolutionary with having a strong line of defense, in order to safeguard the mobilized nutritional elements for own use. Hereby creating increased fitness (competitiveness) by protecting the pool of monomeric and short sugar oligos formed as a result of the enzyme degradation. A new line of research, making integrated studies of digestive enzymes and metabolite profiles of fungi from genomes is emerging [46,47]. It seems as we are approaching having sufficient evidence for formulating hypothesis of examples co-development of the two major elements of the fungal secretome, enzyme proteins and biologically active secondary metabolites.
Another interesting result of this study is that several of Nature’s enzyme Hotspots are found in unexpected life forms. Cadophora sp. (Ascomycota), an endophyte belonging to the dark septate endophyte group (DSE) is among the highest ranked species (on both xylan and pectin). The reporting here is the first to give evidence that a member of the DSE ranks among the strongest species with regard to overall enzyme capacity and biomass specificity diversity. It is assumed that the DSE root-endophytes represent a special plant-fungus interaction; comparing the DSE profile of enzyme “Function;Family” observations with the profile of other types of symbiotic fungi might help us to better understand their system biology role, e.g., in carbon sequestration and cycling and ecosystem functioning [29,30]. Based on the current study we propose a possible new role for the DSE fungi, also serving as biomass degraders in the rhizosphere soil surrounding the host roots; and suggest that richness in enzyme function diversity could reflect adaptation and specialization of endophytes, broadly invading many types of plant tissue without causing devastating harm to their host plant.
Additionally, other species (here shown to have both the highest capacity and the broadest enzyme function specificity diversity), live in habitats and have ecophysiological specializations not earlier recognized as being hotspot for enzyme activities. It is highly surprising to find a black yeast, Rachicladosporium antarcticum, genome sequenced and annotated in 2017 [48], generally characterized as an endolithic “rock fungus”, to globally being among the most highly talented enzyme portfolio species. It could be suggested that living in such organic substrate-meager environments as this speacies does makes it highly essential to be able to efficiently degrade whatever become available. Other surprises among the hotspots are the basidiomycetes Exidia glandulosa, especially excelling on xylan and lignin living on wood and Chalara, (Ascomycota) a specialized xylan-degrader of coniferous needles. In contrast to this, the rather low ranking of all the to date industrially enzymatically exploited fungal species is truly surprising (Trichoderma sp. rank between 916 and 1232; Aspergillus sp. between 424 (A. oryzae) and 745 (A. niger). Notably, the industrial use of fungi for fermentation and for production of enzyme blends as well as single enzymes rely on much more than enzymes, such as strong growth performance in submerged fermentation and a highly efficient enzyme secretion mechanism. On the other hand, a reason that the highest enzyme performing species are understudied and almost totally unexploited is that many of them are known for posing risk of workers health when handled in the laboratory and even more facing regulatory issues in approval of upscaled production facilities. This significant inherent bias is, e.g., true for species of Colletotrichum and for species of Paramyrothecium [28], but recombinant enzyme production in approved workhorse hosts overcomes issues of simultaneous mycotoxin production.
Notably, the two species with the highest number of “Function;Family” observations belong to the early lineage, anaerobic, zoosporic rumen fungi (Neocallimagistomycota). The molecular organization of biomass degrading enzymes in the rumen microbiome (of both bacteria and fungi) known as the cellulosome, is unique in Nature. The cellulosome is fascinating in its complexity, highly optimized and specialized, through horizontal gene transfer evolution [49]. Furthermore, high number of “Function;Family” observations in the Neocallimastigomycota species may reflect not only high biomass degrading capacity but probably also a specific genome organization with a very high number of gene copies. Unfortunately, the rumen fungi have been left out from much of the recent rumen microbiome studies as only the prokaryotes have been included in the metagenome sequence analysis. However, new and interesting attempts have been made for developing methods for including also the anaerobic rumen fungi in the rumen microbiome analysis [50]. Based on the results of the current study, showing rumen fungi to be top ranking among all fungal species analyzed we hypothesize that the rumen fungi play a role as Key Stone species, playing a more prominent functional role than the ratio of fungal biomass and fungal DNA constitute as compared to bacterial biomass and DNA present in the rumen (fungi estimated to be between 8 and 12% of rumen microbiome) [51]. Thus far, none of the enzymes from rumen fungi or rumen bacteria have been industrially exploited. One reason being their anaerobic adaptation contrasting the predominantly aerobic industrial processing, another, that the complexity of the cellulosome structure is difficult to take advantage of in industrial fermentations and biorefinery processing. Most promising could be to use rumen fungi in a probiotic manner or possibly more advanced by combining it with special feed components (substrate oligoes and/or selected enzymes) to strengthen feed conversion and digestion at the same time as methane emission is reduced.
Recent studies have investigated different biomass degrading capacity among closely related species [52]. The results of the current study open for studying the variation among species, belonging to the same genus in both biomass-degrading capacity and function specificity diversity. More specifically, to elucidate this issue we analyzed comparatively the high number of species by ranking separately all species of the following five genera, Aspergillus (103), Penicillium (48), Fusarium (180), Colletotrichum (34). The preliminary conclusion from this is that variation among species within one genus apparently follows two different patterns. Aspergillus, Fusarium and Penicillium all have some species which have a very rich enzyme portfolio, in both total capacity and function diversity, ranked among the top 100. However, these genera also have species ranked in the middle part and even in the lower part of the total list of 1932 species. This result coincides with [14], where an enzyme profile relatedness analysis was made (by binary intergeneric comparison of “Function;Family” observations), dividing Aspergillus and Penicillium into sections. These sections were shown to be held together by the observations they shared to have as well as by the observations they shared not having. In contrast to this stands the ranking pattern of species of Colletotricum. This genus exhibits a pattern where the sequenced species are ranked rather close to each other, within a narrower part of the ranking list. Similar pattern is seen for species of Diaporthe, where in all seven species are included in this study, of which as much as four are placed among the top10 in biomass degrading capacity. Thus, the genus Diaporthe as such appears to be a real hotspot in enzyme biomass degrading capacity (see Table 1 and Table S1).
The term Redundancy Multiplication Score, RMS, is here introduced as a quantitative measure for characterizing different evolutionary trends in optimizing biomass degrading capacity (see Table 4): Highest RMS was found among anaerobic fungi and in the exceptional Basidiomycete, M. citricolor. The lowest RMS was found in species of the ascomycetous genera Colletotricum, Diaporthe, and Coniochaeta; notably, equally low RMS found for species of these three genera, both among enzymes active on the highly complex pectin substrate as well as on the much simpler cellulose. A preliminary conclusion is that RMS is primarily varying between fungal genera; and exceptionally high RMS is found in anaerobic fungi.

4.2. Applied Perspectives

Improved use of the global biological resources is urgently needed. We currently lose as much as approximately 35% as food waste [53] and estimated 15% more by not upgrading the food and non-food processing side-streams to their full potential [5]. Hereby all in all loosing, about half of all food and feed produced. This is a scary fact but most importantly, it provides a perspective of hope for improved food security by upgrading what was hitherto wasted; and it accentuates the need for new research in fungal carbohydrate active enzymes. Biotechnology, including use of enzymes to accomplish a range of conversions, is an integral part of accelerating the transition to a more circular economy, including improved use of the biological resources through increased resource circularity and production of bio-based substitutes for fossil-based materials and chemicals [54]. Plant biomass, bio- and agro-industrial waste streams, and even aquatic biomass and certain synthetic materials (e.g., plastic) must be utilized and/or recycled more efficiently to support the development of a sustainable bioeconomy. The target aim is increased “biologization” of the economy to help transform waste and materials into new products with defined, desirable properties [55]. Conscientious development of a sustainable bioeconomy provides an opportunity to decouple increased resource consumption from economic growth. Since the complexity and diversity of different biological substrates is reciprocated by the plethora of enzymes evolved to convert and degrade them, the diversity of enzymes is poised to help transform waste and materials into new products with defined, desirable properties. The new method presented in the present report for identifying the species, richest in biomass digestive enzymes can open for a wide spectrum of new inventions and new applications. A summary overview can be achieved by not distinguishing the specific ranking 1–10, but simply including all species with Top10 scorings on more than one substrate. Based on this principle the following Hotspot species overview is achieved (see Table 5).
As shown in Table 5, P. roridum has amazing industrial enzyme potential, excelling on all four substrates; if it was not for its toxicity profile. Would a knock-out or block of the mycotoxin synthesis pathways be a feasible, regulatory-acceptable strategy to pursue? Would this strategy be workable also for, e.g., Colletotricum?
In a broader perspective the results presented in the present study hint at a major avenue of new research for identification of novel fungal enzymes, function specificity diversity and degrading capacity hotspots: The data (i) provide an expanded basis for identifying new candidates for non-GMO production hosts for new types of biomass degrading enzyme blends, optimized by nature. The findings presented clearly outline that species for non-GMO enzyme blend production organisms should be chosen, depending on which primary cell wall components that are the main targets for biomass upgrading. (ii) help identifying candidate species for new whole-cell biocatalyst systems, suitable for biorefinery processing. (iii) provide a new foundation for identifying candidates suitable as new production host systems for recombinant production of mono-component enzymes and enzyme blends: blends inspired by linkage analysis, learning from Nature, how to optimize enzyme blends for specific types of biomass, see, e.g., M. citricolor, exceptional strong in pectin and lignin degradation but also efficient in cellulose and hemicellulose (symptoms in Figure 1). (iv) contribute to improved, evidence-based and intelligent strategies for understanding for discovery of new and improved enzymes and enzyme blends for efficient and value adding biomass conversion.
Increased understanding of the fungal CAZyme portfolio provides insight into the role of biomass degrading enzymes for fungi of different lifeforms, eco-physiological specializations and taxonomic affiliation; exemplified by the spectrum of iconic species identified as enzyme hotspots. The result of this study can therefore be used as basis for studying evolution of the fungal digestive enzyme system and for improving the understanding of possible co-evolution of enzymes and metabolite profiles in fungi and directly for providing a new conceptual understanding of the role of fungi in biomass conversion and carbon-recycling. Additionally, for finding new hotspots of biologically active secondary metabolites, e.g., for drug discovery. Analogously, whether there is any possible connection between fungal CAZyme profiles and mycotoxin production calls for further study. Experience from antimicrobial metabolite discovery (unpublished), revealed that fungi with a strong capacity for plant cell wall degradation is a hotspot also for finding antimicrobial metabolites. Studies next in line for learning from Nature is to further compare enzymes originating from different species and to look deeper into the different enzyme systems (e.g., different CAZyme profiles) employed by fungi to degrade biomass. Specifically, such additional work involves analyzing the LPMO profiles and elucidating the composition of the sets of “Function;Family” observations of the species here revealed to be global hotspots; and obviously to make a similar “Function;Family” observation-based analysis, for identifying bacterial hotspots with regard to enzyme function specificity diversity and overall degrading capacity.

Supplementary Materials

The following are available online at https://www.mdpi.com/2309-608X/7/3/207/s1, Table S1: List of the rank of all 1932 fungal species/strains analyzed with regard to biomass degrading capacity, i.e., total number of “Function;Family” observations based on bioinformatics analysis of the fungal genome sequences (data supporting Table 1); Table S2: List of the rank of all 1932 fungal species/strains with regard to total number of unique “Function;Family” observations, reflecting the enzyme function specificity diversity of all the fungal genomes analyzed. Table S3: Categorization of “Family;Function” of enzymes in relation to substrate association.

Author Contributions

Conceptualization, L.L.; methodology, L.L., K.B. and A.S.M.; software, K.B.; validation, L.L., K.B. and A.S.M.; formal analysis, L.L. and K.B.; investigation, L.L.; data curation, K.B.; writing—original draft preparation, L.L.; writing—review and editing, A.S.M. and L.L.; visualization, L.L., K.B. and A.S.M. All authors have read and agreed to the published version of the manuscript.

Funding

This work was funded by the European Commission H2020 Bio-based Industries Joint Consortium via the Macro Cascade Project, BBI Grant no. 720755, as well as by the MARIKAT JPI Cofund Blue BioEconomy Project Grant no. 9082-00021B, and the Technical University of Denmark.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest. The sponsors had no role in the design, execution, interpretation, or writing of the study.

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Figure 1. Flow diagram describing the steps from downloading the full fungal genomes from NCBI and prediction of genomic proteins using AUGUSTUS. The carbohydrate-active enzymes were assigned a CAZy family and molecular function prediction via CUPP (see text). The predicted Function;Family observations were then assigned to their respective target substrates. The * indication added as fourht number in some EC numbers (molecular function numbers) indicate that no full EC number is available in the CAZy database. A similar molecular function (same EC number) from two different CAZy families are considered as two different observations by combining the EC number and the CAZy family into a combined string.
Figure 1. Flow diagram describing the steps from downloading the full fungal genomes from NCBI and prediction of genomic proteins using AUGUSTUS. The carbohydrate-active enzymes were assigned a CAZy family and molecular function prediction via CUPP (see text). The predicted Function;Family observations were then assigned to their respective target substrates. The * indication added as fourht number in some EC numbers (molecular function numbers) indicate that no full EC number is available in the CAZy database. A similar molecular function (same EC number) from two different CAZy families are considered as two different observations by combining the EC number and the CAZy family into a combined string.
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Figure 2. Attack of American Coffee Spot, by Mycena citricolor. (a) on coffee leaves, leading to total degradation of attacked areas, forming conspicuous holes in the leaves. (b) Minute fruiting bodies (caps) of M. citricolor invading coffee berries. The berry is strongly affected by the fungal infection, causing brown necrotic tissue. The entire infected area is sunken in, flattening the shape of the infected coffee fruit. In short, the figure hints the effect of a plant pathogen with a powerful, pectinolytic as well as ligninolytic secretome of biomass degrading enzymes. Photos: Andrew Dominick. University of Wisconsin-La Crosse and Direcction General de Sanidad Vegetal, Sagarpa (Secretaria de Agricultura Ganaderia Desarrollo Rural Pesca y Alimentacion), Mexico.
Figure 2. Attack of American Coffee Spot, by Mycena citricolor. (a) on coffee leaves, leading to total degradation of attacked areas, forming conspicuous holes in the leaves. (b) Minute fruiting bodies (caps) of M. citricolor invading coffee berries. The berry is strongly affected by the fungal infection, causing brown necrotic tissue. The entire infected area is sunken in, flattening the shape of the infected coffee fruit. In short, the figure hints the effect of a plant pathogen with a powerful, pectinolytic as well as ligninolytic secretome of biomass degrading enzymes. Photos: Andrew Dominick. University of Wisconsin-La Crosse and Direcction General de Sanidad Vegetal, Sagarpa (Secretaria de Agricultura Ganaderia Desarrollo Rural Pesca y Alimentacion), Mexico.
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Figure 3. Pie chart representation of representation (in number of species) of fungal phyla in the upper most part of the list of Total biomass-degrading capacity: (a): 1–500, (b): 500–1000 and (c): 1000–1932. Ascomycota species dominates from 1–1000; Basidiomycota grow from 22 to 86 to 335 from upper part to lower part of the ranking list. All 8 fungal phyla are represented in the second half of the ranked listing of in all 1932 species, although some are in such low numbers that values are not visible in the charts, so numbers have been added with the phylum name. Sequencing projects are still biased towards over-representation of Ascomycota and under-representation of especially Chytridiomycota, and Blastocladiomycota.
Figure 3. Pie chart representation of representation (in number of species) of fungal phyla in the upper most part of the list of Total biomass-degrading capacity: (a): 1–500, (b): 500–1000 and (c): 1000–1932. Ascomycota species dominates from 1–1000; Basidiomycota grow from 22 to 86 to 335 from upper part to lower part of the ranking list. All 8 fungal phyla are represented in the second half of the ranked listing of in all 1932 species, although some are in such low numbers that values are not visible in the charts, so numbers have been added with the phylum name. Sequencing projects are still biased towards over-representation of Ascomycota and under-representation of especially Chytridiomycota, and Blastocladiomycota.
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Table 1. Listing of the ten top-ranked species with regard to biomass degrading capacity, (all observations included), specifying the number of “Function;Family” observations. The table includes ranking according to “Total” (A), followed by ranking according to enzyme observations with affinity for each of the target substrates, Cellulose (B), Xylan (C), Pectin (D) and Lignin (E). The total list of observations for the analyzed 1932 genomes is given in Table S1.
Table 1. Listing of the ten top-ranked species with regard to biomass degrading capacity, (all observations included), specifying the number of “Function;Family” observations. The table includes ranking according to “Total” (A), followed by ranking according to enzyme observations with affinity for each of the target substrates, Cellulose (B), Xylan (C), Pectin (D) and Lignin (E). The total list of observations for the analyzed 1932 genomes is given in Table S1.
A Ranking: TotalTaxonomy Target Substrate of Encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Pecoramyces ruminatiumNeocallimastigomycetesChytridiomycota248852080541
Neocallimastix californiaeNeocallimastigomycetesChytridiomycota2321221720526
Mycena citricolorAgaricomycetesBasidiomycota9120450149494
Verticillium longisporumSordariomycetesAscomycota1391767495484
Coniochaeta sp. 2T2.1SordariomycetesAscomycota11710210898425
Paramyrothecium roridumSordariomycetesAscomycota1061636379411
Cadophora sp. DSE1049LeotiomycetesAscomycota1051387591409
Diaporthe ampelinaSordariomycetesAscomycota1161295897400
Diaporthe longicollaSordariomycetesAscomycota1111285690385
Diaporthe sp. NJD1SordariomycetesAscomycota1111185894381
B Ranking: CelluloseTaxonomy Target Substrate of Encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Pecoramyces ruminatiumNeocallimastigomycetesChytridiomycota248852080541
Neocallimastix californiaeNeocallimastigomycetesChytridiomycota2321221720526
Verticillium longisporumSordariomycetesAscomycota1391767495484
Piromyces sp. E2NeocallimastigomycetesChytridiomycota128471170292
Coniochaeta sp. 2T2.1SordariomycetesAscomycota11710210898425
Diaporthe ampelinaSordariomycetesAscomycota1161295897400
Diaporthe longicollaSordariomycetesAscomycota1111285690385
Diaporthe sp. NJD1SordariomycetesAscomycota1111185894381
Diaporthe capsiciSordariomycetesAscomycota1071185893376
Paramyrothecium roridumSordariomycetesAscomycota1061636379411
C Ranking: XylanTaxonomy Target Substrate of Encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Pecoramyces ruminatiumNeocallimastigomycetesChytridiomycota248852080541
Neocallimastix californiaeNeocallimastigomycetesChytridiomycota2321221720526
Piromyces sp. E2NeocallimastigomycetesChytridiomycota128471170292
Coniochaeta sp. 2T2.1SordariomycetesAscomycota11710210898425
Cadophora sp. DSE1049LeotiomycetesAscomycota1051387591409
Verticillium longisporumSordariomycetesAscomycota1391767495484
Rachicladosporium antarcticumDothideomycetesAscomycota68327256228
Piromyces finnisNeocallimastigoChytridiomycota9130710192
Exidia glandulosaAgaricomycetesBasidiomycota826170114327
Chalara longipesLeotiomycetesAscomycota94826979324
D Ranking: PectinTaxonomy Target Substrate of Encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Mycena citricolorAgaricomycetesBasidiomycota9120450149494
Verticillium longisporumSordariomycetesAscomycota1391767495484
Paramyrothecium roridumSordariomycetesAscomycota1061636379411
Colletotrichum truncatumSordariomycetesAscomycota901505972371
Colletotrichum camelliaeSordariomycetesAscomycota901396577371
Colletotrichum sp. COLG25SordariomycetesAscomycota901396376368
Colletotrichum karstiSordariomycetesAscomycota901395771357
Colletotrichum tropicaleSordariomycetesAscomycota891396377368
Cadophora sp. DSE1049LeotiomycetesAscomycota1051387591409
Aspergillus latusEurotiomycetesAscomycota951375358343
E Ranking: LigninTaxonomy Target Substrate of Encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Mycena citricolorAgaricomycetesBasidiomycota9120450149494
Exidia glandulosaAgaricomycetesBasidiomycota826170114327
Hymenopellis chiangmaiaeAgaricomycetesBasidiomycota777044104295
Ganoderma boninenseAgaricomycetesBasidiomycota773644104261
Neonothopanus nambiAgaricomycetesBasidiomycota581833102211
Coniochaeta sp. 2T2.1SordariomycetesAscomycota11710210898425
Ganoderma sp. BRIUMScAgaricomycetesBasidiomycota62313498225
Diaporthe ampelinaSordariomycetesAscomycota1161295897400
Hymenopellis radicataAgaricomycetesBasidiomycota58553496243
Verticillium longisporumSordariomycetesAscomycota1391767495484
Table 2. Listing of the ten top-ranked species with regard to enzyme function specificity diversity (including only unique observations), specifying the number of “Function;Family” observations. The table includes ranking according to “Total” (A), followed by ranking according to enzyme observations with affinity for each of the target substrates, Cellulose (B), Xylan (C), Pectin (D) and lignin (E). (*) indicates more species with same number of observations. The total list of observations for the analyzed 1932 genomes is given in Table S1.
Table 2. Listing of the ten top-ranked species with regard to enzyme function specificity diversity (including only unique observations), specifying the number of “Function;Family” observations. The table includes ranking according to “Total” (A), followed by ranking according to enzyme observations with affinity for each of the target substrates, Cellulose (B), Xylan (C), Pectin (D) and lignin (E). (*) indicates more species with same number of observations. The total list of observations for the analyzed 1932 genomes is given in Table S1.
A Ranked: Total Taxonomy Target Substrate of Encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Colletotrichum sp. COLG25SordariomycetesAscomycota17532418112
Colletotrichum tropicaleSordariomycetesAscomycota16532518112
Colletotrichum aenigmaSordariomycetesAscomycota16532518112
Colletotrichum asianumSordariomycetesAscomycota16532418111
Colletotrichum sp. COLG31SordariomycetesAscomycota16532418111
Colletotrichum siamenseSordariomycetesAscomycota16532318110
Paramyrothecium roridumSordariomycetesAscomycota18492517109 *
Colletotrichum viniferumSordariomycetesAscomycota16512319109 *
Colletotrichum fructicolaSordariomycetesAscomycota15522418109 *
Colletotrichum gloeosporioidesSordariomycetesAscomycota15522418109 *
B Ranked CelluloseTaxonomy Target substrate of encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Paramyrothecium roridumSordariomycetesAscomycota18492517109
Gliomastix tumulicolaSordariomycetesAscomycota1840241597
Hymenoscyphus herbarumLeotiomycetesAscomycota18432219102
Aaosphaeria arxiiDothideomycetesAscomycota1841221697
Memnoniella echinataSordariomycetesAscomycota1841211797
Clavariopsis aquaticaSordariomycetesAscomycota1835191890
Xylaria striataSordariomycetesAscomycota17 *432517102
Colletotrichum sp. COLG25SordariomycetesAscomycota17 *532418112
Paraphaeosphaeria sporulosaDothideomycetesAscomycota17 *41241799
Stagonosporopsis tanacetiDothideomycetesAscomycota17 *462318104
C Ranked: XylanTaxonomy Target substrate of encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Cadophora sp. DSE1049LeotiomycetesAscomycota16452616103
Paramyrothecium roridumSordariomycetesAscomycota18492517109
Xylaria striataSordariomycetesAscomycota17432517102
Colletotrichum tropicaleSordariomycetesAscomycota16532518112
Colletotrichum aenigmaSordariomycetesAscomycota16532518112
Clonostachys roseaSordariomycetesAscomycota16452515101
Pleosporales sp. UM 1110 2012DothideomycetesAscomycota1639251797
Gliomastix tumulicolaSordariomycetesAscomycota184024 *1597
Colletotrichum sp. COLG25SordariomycetesAscomycota175324 *18112
Paraphaeosphaeria sporulosaDothideomycetesAscomycota174124 *1799
D Ranked: PectinTaxonomy Target substrate of encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Colletotrichum tropicaleSordariomycetesAscomycota16532518112
Colletotrichum aenigmaSordariomycetesAscomycota16532518112
Colletotrichum sp. COLG25SordariomycetesAscomycota17532418112
Colletotrichum asianumSordariomycetesAscomycota16532418111
Colletotrichum sp. COLG31SordariomycetesAscomycota16532418111
Colletotrichum siamenseSordariomycetesAscomycota16532318110
Colletotrichum fructicolaSordariomycetesAscomycota15522418109
Colletotrichum gloeosporioidesSordariomycetesAscomycota15522418109
Colletotrichum viniferumSordariomycetesAscomycota1651 *2319109
Colletotrichum camelliaeSordariomycetesAscomycota1651 *2318108
E Ranked: LigninTaxonomy Target substrate of encoded CAZymes
SpeciesClassPhylumCellulosePectinXylanLigninTotal
Colletotrichum viniferumSordariomycetesAscomycota16512319 *109
Colletotrichum musaeSordariomycetesAscomycota16472219 *104
Fusarium oxysporumSordariomycetesAscomycota16442219 *101
Hymenoscyphus herbarumLeotiomycetesAscomycota18432219 *102
Fusarium oxysporumSordariomycetesAscomycota15422119 *97
Eutypa lataSordariomycetesAscomycota16392119 *95
Auricularia subglabraAgaricomycetesBasidiomycota16232119 *79
Hymenoscyphus salicellusLeotiomycetesAscomycota16422019 *97
Hymenoscyphus infarciensLeotiomycetesAscomycota16402019 *95
Auricularia corneaAgaricomycetesBasidiomycota17252019 *81
Table 3. Enzyme profile of the 10 species with highest “Pectin+Lignin” biomass degrading capacity. Number of Pectin plus lignin observations is listed in right hand column. One basidiomycete (M. citricolor) and one Ascomycete (V. longisporum) stands out to be unique among all 1932 species analyzed. The heatmap shows the highly varying enzyme profile found in the species with highest total degrading capacity on pectin and lignin.
Table 3. Enzyme profile of the 10 species with highest “Pectin+Lignin” biomass degrading capacity. Number of Pectin plus lignin observations is listed in right hand column. One basidiomycete (M. citricolor) and one Ascomycete (V. longisporum) stands out to be unique among all 1932 species analyzed. The heatmap shows the highly varying enzyme profile found in the species with highest total degrading capacity on pectin and lignin.
SpeciesClassPhylumCellulosePectinXylanLigninTotalPectin + Lignin
Mycena citricolorAgaricomycetesBasidiomycota9120450149494353
Verticillium longisporumSordariomycetesAscomycota1391767495484271
Paramyrothecium roridumSordariomycetesAscomycota1061636379411242
Cadophora sp. DSE1049LeotiomycetesAscomycota1051387591409229
Diaporthe ampelinaSordariomycetesAscomycota1161295897400226
Colletotrichum truncatumSordariomycetesAscomycota901505972371222
Lachnum nothofagiLeotiomycetesAscomycota921246095371219
Diaporthe longicollaSordariomycetesAscomycota1111285690385218
Colletotrichum camelliaeSordariomycetesAscomycota901396577371217
Colletotrichum tropicaleSordariomycetesAscomycota891396377368217
Table 4. Left column is names of top scoring sets of species with total-ranked observations (including redundant observations); the scores are given in second column. The third column from the left is the number of unique “Function;Family” observations of the same sets of degrading capacity Top ranking species. The right-hand column is the ratio, Redundant over Unique observations, named as Redundancy Multiplication Score. * marks the species/substrate with the strongest (>8) Redundancy Multiplication factor; ¤ marks the species with the lowest (<3) Redundancy Multiplication Score.
Table 4. Left column is names of top scoring sets of species with total-ranked observations (including redundant observations); the scores are given in second column. The third column from the left is the number of unique “Function;Family” observations of the same sets of degrading capacity Top ranking species. The right-hand column is the ratio, Redundant over Unique observations, named as Redundancy Multiplication Score. * marks the species/substrate with the strongest (>8) Redundancy Multiplication factor; ¤ marks the species with the lowest (<3) Redundancy Multiplication Score.
All ObservationsOnly Unique ObservationsRedundancy Multiplication Score
TOTAL
Pecoramyces ruminatium208 1613.0 *
Neocallimastix californiae172 1511.5 *
Mycena citricolor117 157.8
Verticillium longisporum108 224.9
Coniochaeta sp. 2T2.1 75 262.9
Paramyrothecium roridum74 184.1
Cadophora sp. DSE1049 72 184.0
Diaporthe ampelina71 107.1
Diaporthe longicolla70 203.5
Diaporthe sp. NJDP169 233.0
Cellulose
Pecoramyces ruminatium204 248.5 *
Neocallimastix californiae176 374.8
Verticillium longisporum163 493.3
Piromyces sp. E2 150 453.3
Coniochaeta sp. 2T2.1139 512.7¤
Diaporthe ampelina139 532.6¤
Diaporthe longicola139 492.8¤
Diaporthe sp. NJD1139 532.6¤
Diaporthe capsici138 453.1
Paramyrothecium roridum137 393.5
Xylan
Pecoramyces ruminatium149 188.3 *
Neocallimastix californiae114 167.1
Piromyces sp. E2104 176.1
Coniochaeta sp. 2T2.1104 156.9
Cadophora sp. DSE1049 102 166.4
Verticillium longisporum98 137.5
Rachicladosporium antarcticum98 147.0
Piromyces finnis97 185.4
Exidia glandulosa96 195.1
Chalara longipes95 185.3
Pectin
Mycena citricolor204 248.5 *
Verticillium longisporum176 374.8
Paramyrothecium roridum163 493.3
Colletotrichum truncatum150 453.3
Colletotrichum camelliae139 512.7¤
Colletotrichum sp. COLG25 139 532.6¤
Colletotrichum karsti139 492.8¤
Colletotrichum tropicale139 532.6¤
Cadophora sp. DSE1049138 453.1
Aspergillus latus137 393.5
Lignin
Mycena citricolor149 188.3 *
Exidia glandulosa114 167.1
Hymenopellis chiangmaiae104 176.1
Ganoderma boninense104 156.9
Neonothopanus nambi102 166.4
Coniochaeta sp. 2T2.198 137.5
Ganoderma sp. BRIUMSc98 147.0
Diaporthe ampelina97 185.4
Hymenopellis radicata96 195.1
Verticillium longisporum95 185.3
Table 5. Overview of the fungal species, which on two or more substrates rank among Top10 of all 1932 fungal genomes analyzed; Total carbohydrate biomass degrading capacity: According to total degrading capacity, including all observations;Function specificity diversity: according to richness in function specificity diversity of CAZymes. Two species stands out, V. longisporum in total degrading capacity on all four substrates; and Colletotrichum COLG25 in enzyme function specificity diversity.
Table 5. Overview of the fungal species, which on two or more substrates rank among Top10 of all 1932 fungal genomes analyzed; Total carbohydrate biomass degrading capacity: According to total degrading capacity, including all observations;Function specificity diversity: according to richness in function specificity diversity of CAZymes. Two species stands out, V. longisporum in total degrading capacity on all four substrates; and Colletotrichum COLG25 in enzyme function specificity diversity.
Total Carbohydrate Biomass Degrading Capacity
Target Substrate of Encoded CAZymes
Verticillium longisporumAscomycotaCelluloseXylanLigninPectin
Coniochaeta sp.AscomycotaCelluloseXylanLignin
Pecaromyces ruminatumNeocallimastigoCelluloseXylan
Neocallimastix californiaNeocallimastigoCellulose Xylan
Mycena citricolorBasidiomycotaPectinLignin
Paramyrothecium roridumAscomycotaCelluloseXylan
Cadophora sp.AscomycotaXylanPectin
Diaporthe ampelinaAscomycotaCelluloseLignin
Exidia glandulosaBasidiomycotaXylanLignin
Function specificity diversity
Target substrate of encoded CAZymes
Colletotricum COLG25AscomycotaCelluloseXylanPectin
Paramyrothecium roridumAscomycotaCelluloseXylan
Gliomastix tumulicolaAscomycotaCelluloseXylan
Colletotrichum viniferumAscomycotaPectin Lignin
Colletotrichum tropicaleAscomycotaXylanLignin
Colletotrichum aenigmaAscomycotaXylanPectin
Hymenoschuphus herbarumAscomycotaCelluloseLignin
Xylaria strictaAscomycotaCelluloseXylan
Paraphaerosphaeria sporulosaAscomycotaCelluloseXylan
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Lange, L.; Barrett, K.; Meyer, A.S. New Method for Identifying Fungal Kingdom Enzyme Hotspots from Genome Sequences. J. Fungi 2021, 7, 207. https://doi.org/10.3390/jof7030207

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Lange L, Barrett K, Meyer AS. New Method for Identifying Fungal Kingdom Enzyme Hotspots from Genome Sequences. Journal of Fungi. 2021; 7(3):207. https://doi.org/10.3390/jof7030207

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Lange, Lene, Kristian Barrett, and Anne S. Meyer. 2021. "New Method for Identifying Fungal Kingdom Enzyme Hotspots from Genome Sequences" Journal of Fungi 7, no. 3: 207. https://doi.org/10.3390/jof7030207

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