Next Article in Journal
Emergence of Candida auris in Brazil in a COVID-19 Intensive Care Unit
Next Article in Special Issue
Diversity, Ecological Role and Biotechnological Potential of Antarctic Marine Fungi
Previous Article in Journal / Special Issue
Diversity and N2O Production Potential of Fungi in an Oceanic Oxygen Minimum Zone
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Mold and Yeast-Like Fungi in the Seaside Air of the Gulf of Gdańsk (Southern Baltic) after an Emergency Disposal of Raw Sewage

1
Department of Immunobiology and Environment Microbiology, Faculty of Health Sciences with Institute of Maritime and Tropical Medicine, Medical University of Gdańsk, 80-210 Gdańsk, Poland
2
Department of Nuclear Medicine, Faculty of Health Sciences with Institute of Maritime and Tropical Medicine, Medical University of Gdańsk, 80-210 Gdańsk, Poland
3
Institute of Marine and Environmental Sciences, University of Szczecin, 70-453 Szczecin, Poland
*
Author to whom correspondence should be addressed.
These authors have contributed equally to this work.
J. Fungi 2021, 7(3), 219; https://doi.org/10.3390/jof7030219
Submission received: 31 December 2020 / Revised: 15 March 2021 / Accepted: 16 March 2021 / Published: 17 March 2021
(This article belongs to the Special Issue Marine Fungus)

Abstract

:
The aim of this study was to determine the correlation between the meteorological factors and the number of molds and yeast-like fungi in the air in the five coastal towns in the years 2014–2017, and in 2018, after emergency disposal of raw sewage to the Gdańsk Gulf. In the years 2014–2018, a total number of 88 air samples were collected in duplicate in the five coastal towns of Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno. After the application of the (PCA) analysis, this demonstrated that the first principal component (PC1) had a positive correlation with the water temperature, wind speed, air temperature, and relative humidity. The second principal component (PC2) had a positive correlation with the relative humidity, wind speed, wind direction, and air temperature. In 2018, potentially pathogenic mold and yeast-like fungi (Candida albicans, Stachybotrys chartarum complex, Aspergillus section Fumigati) were detected in the seaside air. While the detected species were not observed in the years 2014–2017. We suggest that it is advisable to inform residents about the potential health risk in the event of raw sewage disposal into the water. Moreover, in wastewater treatment plants, tighter measures, including wastewater disinfection, should be introduced.

Graphical Abstract

1. Introduction

Biological aerosols are a subset of atmospheric particles consisting of both living and non-living organisms, including bacteria, viruses, pollens, molds, yeast-like fungi, and their metabolic products (e.g., mycotoxins) [1,2]. Most molds are not harmful to humans, however, previous studies, including ours, have shown that yeast-like fungi and spores of mold fungi are the etiological factors of many diseases, including allergy, pneumonia, bronchitis, neoplastic diseases, and type 1 diabetes [3,4,5,6]. The storage and sorting of organic waste, composting, agricultural production, food processing, and wastewater treatment systems emit large volumes of bioaerosols, which lead to significant exposure to biological factors [7,8,9]. Studies have demonstrated that not only emergency and uncontrolled wastewater disposals but also outflows from treatment plants and heavy rains cause an increase in the number of microorganisms, such as mold and yeast-like fungi in coastal seawater and sand [8,9,10,11,12]. Moreover, the mold and yeast-like fungi survive in salt seawater and in beach sand for many months [13,14,15]. More than 30 years ago, Anderson (1979) discovered that pathogenic fungi, for instance, Trichosporon cutaneum, Candida albicans, Microsporum gypseum, and Trichophyton mentagrophytes, could survive in the sand for over a month [16]. A similar study was conducted by other authors who demonstrated that several species of dermatophytes (Epidermophyton floccosum, Microsporum canis, M. gypseum, T. mentagrophytes, T. rubrum), and Scopulariopsis brevicaulis can survive in the sand from 25 to 360 days [17,18]. Therefore, Vogel et al. suggested that pathogenic yeast-like fungi found in seawater, sewage and beach sand could be a good additional mycological indicator in assessing the safety of marine bathing waters [18].
In terms of mycology, clean air and seawater are of key importance to the health of seaside town inhabitants. This is especially true of holiday resorts that dispose of treated sewage into seawaters. A typical example is seaside bathing areas located along the Gulf of Gdańsk—a bay in the south-eastern part of the Baltic Sea, located between Poland and Russia. Wastewater from the two largest sewage treatment plants is disposed of into the Gulf of Gdańsk [19]. The first (Gdańsk-Wschód) disposes of sewage into the Gulf of Gdańsk to a distance of 2.5 km from the shoreline through a deep water collector, the second (Gdynia-Dębogórze) uses a collector over a distance of 2.3 km to dispose of wastewater to the Bay of Puck (western part of the Gulf of Gdańsk). What is more, from the 15th to 18th May 2018, there was an emergency raw sewage disposal into the Motława River, which flows into the Gulf of Gdańsk (Figure 1). We have adopted a research hypothesis that emergency disposal of raw sewage into the Gulf of Gdańsk could have led to microbiological contamination of the water in the Gulf of Gdańsk and the local air. The preliminary results of our study showed an increase in the number of coliform bacteria and Escherichia coli in the seawater and air as a result of emergency disposal of raw sewage to the Gulf of Gdańsk in 2018 [7]. Thus far, the results of mycological tests performed after the disposal have not been presented. Therefore, the aim of this study was to determine the correlation between the meteorological factors and the number of molds and yeast-like fungi in the air in the five coastal towns in the years 2014–2017, and in 2018, after emergency disposal of raw of sewage to the Gdańsk Gulf.

2. Materials and Methods

2.1. Collection of Air Samples of the Gulf of Gdańsk

In the years 2014–2018, a total of 88 air samples were collected in duplicate, in 5 coastal towns, i.e., Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno on the Gulf of Gdansk (Figure 1). In the years 2014–2017, 62 air samples were collected between 14th May and 14th July, every 28 days between 9:00 a.m. and 2:00 p.m. In 2018 after the emergency disposal of raw sewage, the 26 air samples were collected between 14th May and 23rd July, every 14 days between 9:00 a.m. and 2:00 p.m. The air samples were not collected in the rain and heavy rainfall.
Air samples were collected at a height of 50 cm and about 100 cm from the waterline. In all cases, the samples were collected for 10 min over the Gulf of Gdansk in the 5 coastal towns of Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno. The air samples were collected by impaction with a SAS Super ISO 100 (Milan, Italy) sampler. The nozzle of the sampler was positioned perpendicular to the wind direction. The sampler automatically collected 100-L samples of air. The extracted air was then transported through small holes to a head with a Petri dish containing a Sabouraud dextrose agar medium. The maximum efficiency of the collection was for particulate matter of d50 = 2–4 μm. The flow rate was 90 Lpm. All removable parts of the air sampler were sterilized by autoclaving before sampling, and the sterilized sampler head was cleaned between samples with 70% ethanol.

2.2. Mould Fungi Incubation and Identification

The fungi were counted after a 120-hour incubation at 28 °C on Sabouraud Dextrose Agar medium by Merck (Darmstadt, Germany). Yeast-like fungi were identified by CHROMagar Candida, Graso Biotech (Starogard Gdańskicity, Poland).
Mold fungi were identified based on their macro- and microscopic features, with the use of a Nicon Eclipse E2000 microscope at 400, 600, 1000× magnification and a key for the identification of fungi [20,21]. Mould colonies were identified on the basis of the color, texture, topography of the culture surface, smell of the colony, color of the reverse of the colony, and the presence of the diffuse pigment. Microscopic features of the fungal colonies were identified based on their microscopic features, i.e., the presence of macroconidia and microconidia, their shape, and appearance [20,21].

2.3. Sample Analysis of Mould Fungi

The number of colonies of fungi were expressed as a colony-forming unit (CFU) per 1 m3 of the air (CFU/m3). When applying the impact method, we used the Feller table attached to the manual of the air sampler [5,22].
The colonies collected should be revised by the equation:
Pr = N[1/N + 1/N − 1 + 1/N − 2 + 1/N − r + 1]
where Pr is the revised colony in stage, N is the number of sieve pores, and r is the number of viable particles counted on the agar plate.
The number of colonies of fungi (CFU/m3) was calculated using the following equation:
C(CFU/m3) = T × 1000t(min) × F(L/min)
where C—airborne fungi concentration; CFU—colony-forming unit; T—total colonies after application of the Pr statistical correction; t—sampling time and F—airflow rate.

2.4. Characterisation of Meteorological Conditions

During the collection of air samples between spring and summer during 2014–2017 and in 2018, we recorded air and water temperature, humidity, wind speed, and wind direction using a GMH 3330 thermo-hygrometer by Greisinger (Remscheidcity, Germany). The air temperature during 2014–2017 ranged from 26 °C to 3 °C (spring season) and from 20 °C to 16 °C (summer season), respectively. Relative humidity in the spring season was between 30% and 88%, and from 59% to 82% in the summer season. Wind speed in the spring season varied between 0 and 31 km/h and between 7 and 25 km/h in the summer. The air temperature in 2018 fluctuated between 27 °C and 10 °C in the spring and between 27 °C to 15 °C in the summer. Relative humidity in the spring season was between 39% and 93%, and from 44% to 70% in the summer season. Wind speed in the spring season varied between 0 and 15 km/h and between 2.6 and 32 km/h in the summer. Air samples were not collected when it rained.

2.5. Statistical Analysis

To search for hidden relationships and regularities between meteorological factors and the number of mold and yeast-like fungi in the air, we used one of the numerous methods of factor analysis. For data analysis, Principal Component Analysis (PCA) ready-made procedures from the “ggfortify”, “FactoMineR,” and “factoextra” packages [23,24,25,26] were used. The algorithm of the PCA method allowed the data to be transformed (using the features of the eigenvalues and eigenvectors of the covariance matrix or the correlation matrix for this purpose) in order to obtain the greatest possible differences in standard deviations in the new variables. The first major component of PC1 is related to most of the variability of the original data set, and the second major component of PC2 is related to the second largest component, and so on [27]. Assuming that the first few components contained a significant amount of variation in the original data set, together they may account for almost all of the variability in the data and thus simplify the interpretation of the results. The obtained results of the statistical analysis made it possible to determine the correlation between meteorological factors, the number of molds, the number of yeast-like fungi in the coastal air in the researched locations on the Gulf of Gdańsk, and PC1 and PC2. The PCA statistical analysis was performed for 2 research periods, 2014–2017 and 2018.

3. Results

3.1. The Principal Component Analysis of Mold and Yeast-Like Fungi Detected in Air Samples in the Five Seaside Towns in the Study Period of 2014–2017 and in 2018

The first three main principal components explained almost 78% of the total variance. The first principal component (PC1) explained 33.54% of the total variance. The second principal component (PC2) explained 27.23% of the total variance. The third principal component (PC3) explained 17.15% of the variance (Table 1). The PCA loading plot of the first two principal components compared the numbers of mold and yeast-like fungi and the meteorological factors in the coastal towns of Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno in the years 2014–2017, and in 2018 (Figure 2).
Table 2 shows the values of the correlation between the variables used in the model and the main components shown in Figure 2. For each of the determined correlation values, the p-value was given. Table 2 includes only those variables that, at the assumed significance level, gave a statistically significant result p < 0.00001.
The first principal component (PC1) had a positive correlation (p < 0.00001) with the water temperature, wind speed, air temperature, and relative humidity, explaining 33.54% of the total variance observed. The second principal component (PC2) had a positive correlation (p < 0.00001) with the relative humidity, wind speed, and wind direction, and a negative correlation with the air temperature, explaining 27.23% of the variance (Table 2).

3.2. The Correlation between the Number of Mold Fungi Aspergillus sp., Penicillium sp., Cladosporium sp. in the Research Period of 2014–2017 and in 2018

In the next stage of the study, statistical analysis based on PCA was used to evaluate the number of mold fungi Aspergillus sp. (Table 3 and Table 4), Penicillium sp., (Table 5 and Table 6) and Cladosporium sp. (Table 7 and Table 8) in the years 2014–2017 and in 2018.

3.2.1. The Correlation between the Number of Mold Fungi Aspergillus sp., the Meteorological Elements in the Research Period of 2014–2017 and in 2018

The analysis of the PCA eigenvalues of the correlation matrix (Table 3) revealed the three main principal components, which could explain 79.16% of the total variance. The first principal components (PC1) explained 33.10% of the total variance. The second principal component (PC2) explained 27.49% of the total variance. The third principal component (PC3) explained 18.57% of the variance.
The PCA loading plot of the first two principal components comparing the numbers of Aspergillus sp. and the meteorological factors in the five coastal towns in the years 2014–2017, and in 2018 (Figure 3).
Table 4 shows the values of the correlation between the variables used in the model and the principal components shown in Figure 3, along with the p-value. Table 4 presents only those variables that, at the assumed significance level, gave a statistically significant result p < 0.00001.
The first principal component was a significant correlation (p < 0.00001) with the water temperature, wind speed, and air temperature, explaining 33.10% of the total variance observed (Table 4). The second principal component (PC2) was correlated with the relative humidity, wind speed, and air temperature explaining 27.49% of the variance.

3.2.2. The Correlation between the Number of Mold Fungi Penicillium sp. the Meteorological Elements in the Research Period of 2014–2017 and in 2018

Analysis of the eigenvalues of the correlation matrix (Table 5) revealed the three main principal components, which could explain 77.14% of the total variance. The first principal components (PC1) explained 33.20% of the total variance. The second principal component (PC2) explained 27.79% of the total variance. The third principal component (PC3) explained 16.16% of the variance.
The PCA loading plot of the first two principal components comparing the numbers of Penicillium sp. and the meteorological factors in the five coastal towns in the years 2014–2017, and in 2018 (Figure 4).
Table 6 presents the values of the correlation between the variables used in the model and the main components presented in Figure 4. For each of the determined correlation values, the p-value was given. Table 6 contains only those variables which, at the assumed significance level, gave a statistically significant result.
The first principal component (PC1) was the combination of the wind speed and water temperature and then relative humidity and air temperature, explaining 33.10% of the total variance observed (Table 6). The principal component (PC2) was correlated with the air temperature, relative humidity, water temperature (p < 0.00001), and wind direction (p = 0.00016), explaining 27.49% of the variance.

3.2.3. The Correlation between the Number of Mold Fungi Cladosporium sp. and the Meteorological Factors in the Research Period of 2014–2017 and in 2018

The PCA analysis of the eigenvalues of the correlation matrix (Table 7) revealed the three main principal components, which could explain 78.2% of the total variance. The first principal components (PC1) explained 32.76% of the total variance. The second principal component (PC2) explained 28.42% of the total variance. The third principal component (PC3) explained 17.0% of the variance.
Table 8 presents the values of the correlation between the variables used in the model and the main components presented in Figure 5. For each of the determined correlation values, the p-value was given. Table 8 lists only those variables that, at the assumed significance level, gave a statistically significant result.
The most important principal component (PC1) of mold fungi Cladosporium sp. was the significant correlation (p < 0.00001) with the water temperature, wind speed, and air temperature, explaining 32.76% of the total variance observed (Table 8). The second principal component (PC2) was the significant correlation with the relative humidity, air temperature, and wind speed, explaining 28.42% of the variance.

3.3. The Qualitative Assessment of Mold and Yeast-Like Fungi in the Atmospheric Air of the Seaside Towns in the Years 2014–2017

In the air samples collected in the years 2014–2017 in the towns of Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno, Ascomycota (98.29%), Basidiomycota (1.52%), and Zygomycota, (Fungi Incertae Sedis) were detected (0.19%) (Figure 3).
Three classes of Ascomycota fungi were found—Eurotiomycetes (77.50%), Dothideomycetes (18.44%), and Saccharomycetes (2.34%). In the Eurotiomycetes class, the following genus was isolated: Penicillium (63.24%), Aspergillus (13.56%), and Trichophyton (0.70%). Within the Penicillium genus, Penicillium section Viridicata (40.11%) and Penicillium section Chrysogena (23.13%) were detected. Within the Aspergillus genus, there was Aspergillus section Nigri (13.56%). Within the Trichophyton genus, the Trichophyton mentagrophytes complex (0.70%) was isolated. In the class of Dothideomycetes, the Cladosporium genus was found, with the Cladosporium herbarum complex (16.79%) and the Aureobasidium genus, with the Aureobasidium pullulans complex (1.65%). In the Saccharomycetes class, the Saccharomycetes genus was isolated (2.34%). In the Basidiomycota phylum, the Cystobasidiomycetes class, the Rhodotorula genus, with the Rhodotorula sp. (1.52%) was detected. In the Zygomycota phylum, the Mucoromycotina class, with the Mucor mucedo group (0.19%) was detected. The percentage of mold and yeast-like fungi in the seaside air is shown in Figure 6.

3.4. The Qualitative Assessment of Mold and Yeast-Like Fungi in the Air of Seaside Towns in 2018

Ascomycota (96.17%), Basidiomycota (1.21%), and Zygomycota (Fungi Incertae Sedis) (2.62%) were detected in the air samples collected in 2018 in the seaside towns of Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno (Figure 4). In the Ascomycota phylum, four classes of fungi were found: Eurotiomycetes (60.07%), Dothideomycetes (4.60%), Saccharomycetes (27.26%), and Sordariomycetes (4.24%).
The genus isolated within the Eurotiomycetes class were: Penicillium (20.72%), Aspergillus (38.5%), and Trichophyton (0.85%). Within the Penicillium genus, Penicillium section Viridicata (11.87%) and Penicillium section Chrysogena (8.84%) were detected. Within the Aspergillus genus, the species: Aspergillus section Nigri (37.05%) and Aspergillus section Fumigati (1.45%) were isolated. Within the Trichophyton genus, the Trichophyton mentagrophytes complex was detected (0.85%). In the Dothideomycetes class, there was Cladosporium genus, the Cladosporium herbarum species complex (4.31%), and the Alternaria genus with the Alternaria alternata complex (0.29%). In the Sordariomycetes class, the Stachobytris genus with the Stachybotrys chartarum complex (4.24%) was found. In the Saccharomycetes class, the Candida genus was isolated with Candida albicans (27.26%). In the Basidiomycota phylum, the Cystobasidiomycetes class, the Rhodotorula genus, and the Rhodotorula sp. (1.21%) were detected. In the Zygomycota phylum, the Mucoromycotina class with the Mucor mucedo group (2.62%) was found. In 2018, potentially pathogenic and allergenic mold and yeast-like fungi were detected in the seaside air, such as A. section Fumigati (1.45%), S. chartarum complex (4.24%), and C. albicans (27.26%). The species were not observed in the years 2014–2017. The percentage share of these mold and yeast-like fungi in the samples of seaside air is shown in Figure 7.

4. Discussion

The analysis based on the PCA correlation of mold and yeast-like fungi detected in air samples in the seaside towns and meteorological factors showed a statistically significant relationship (p < 0.00001). The principal component (PC1) was correlated with the air and water temperature, and wind speed explains 33.54% of the total variance. The second principal component (PC2) was correlated with the relative air humidity, air temperature, direction, and wind speed, and explains 27.23% of the total variance (Table 2). Similar research results were obtained by Grinn-Gofron and Bosiacka [28]. Their 4-year study showed that air temperature, dew point, relative humidity, and average wind speed had the greatest influence on the composition of spores in the air [28]. Previous interdisciplinary studies too, including our research, showed that the direction and speed of the wind are one of the most important meteorological factors affecting the formation of aerosols at the water-air interface [29,30,31,32]. In our study, the important meteorological factors affecting airborne spore of Aspergillus sp. and Penicillium sp. concentrations were relative humidity and wind speed. The same results were noted by Grinn-Gofroń in Szczecin. The daily values of relative humidity and average wind speed were positively correlated for p = 0.001 and p = 0.01, respectively [33]. In addition, the principal component (PC1) and (PC2) of Cladosporium sp. was significantly correlated (p < 0.00001) with the wind speed, air temperature, and relative humidity. In the same way, air temperature, wind speed, and relative humidity were associated with Cladosporium spore dispersal in Morocco [34]. In addition, our PCA statistical study of the seaside air of 2018 revealed that, compared to the number of fungi detected in the years 2014–2017, the highest number of mold and yeast-like fungi, after emergency disposal of sewage into the Gulf of Gdańsk, was detected in Hel, Sopot, and Gdańsk-Brzeźno (Figure 2). We believe that the greater number of mold fungi in the air samples in these seaside towns could have been influenced not only by water and air temperature, wind speed, and humidity but also by the direction of the wind (SE) blowing from the Bay of Gdańsk. We suggest that it is advisable to inform residents about the potential health risk in the event of raw sewage disposal into the water.
On the other hand, in Gdynia, in 2018, neither mold nor yeast-like fungi were found compared to the period of 2014–2017. The lack of mold and yeast-like fungi in the air of Gdynia in 2018 could be caused by the direction of the wind blowing from the sea (NE). The Gulf of Gdańsk is partially separated from the Baltic Sea by the Hel Peninsula and the city of Hel. In Hel, the dominant wind direction is west, and in Gdynia, a north-east direction. In the city of Gdynia, due to the presence of the Hel Peninsula, the wind blowing from the direction of the sea is less frequently observed.
To our knowledge, no results of mycological studies on the quality of seaside air after emergency disposal of raw sewage are available. Therefore, the outcomes of 2018 were compared to the quality of air at the sewage treatment plant in order to indicate the likely origin of the species. Filamentous fungi of the genus Aspergillus, Cladosporium, and Mucor and yeast-like fungi, for example, Candida, were detected in domestic human and animal sewage [35,36,37,38]. Michałkiewicz et al. found that the majority of yeast-like fungi isolated from the air of the four wastewater treatment plants was Candida [39]. Other studies demonstrated that the following mold and yeast-like fungi were predominant: Cladosporium sp., A. fumigatus, A. alternata, C. albicans, and Rhodotorula sp. [40,41,42,43,44]. Potentially pathogenic fungi, such as Olpidium, Paecilomyces, Aspergillus, Rhodotorula, Penicillium, Candida, Synchytrium, Phyllosticta, and Mucor have been detected in three wastewater treatment plants located in the Gauteng province of the Republic of South Africa [45]. In Portuguese studies, mold fungi Aspergillus, Fusarium, and yeast-like fungi Candida were found in beach sand contaminated with leaking toilet sewage [12].
In turn, other researchers conducted a sanitary evaluation of sand and water from 16 beaches of São Paulo State, Brazil [46]. Ninety-six samples each of wet and dry sand and seawater were collected and analyzed for fecal indicator bacteria. Correlation analysis indicated a significant relationship between fecal indicator densities in wet sand and seawater. There was a significant correlation between the densities of fecal coliforms and fecal streptococci for both types of sand, and this correlation was higher in wet sand. These data suggest the necessity of some criteria for microbiological control [46]. Transmission of infectious diseases in terrestrial beach environments can occur via direct exposure to microbes found in sand or through the flux of microbes from water to sand within the swash or intertidal zone. In addition to direct exposure, sand can also serve as a vehicle for transferring pathogenic microbes to and from the adjacent water [10].
Recent research suggests that being in and using the beach may be a risk factor for infectious diseases, thus monitoring of both seawater, beach sand, and coastal air is warranted [7,10,46,47].
In conclusion, the study results of 2018 indicate that untreated wastewater associated with emergency disposal to the Gulf of Gdańsk was a likely source of mold and yeast-like fungi in the seaside air. The analysis of PCA data demonstrated a statistically significant relationship between the meteorological factors and the number of mold and yeast-like fungi reported in the period of 2014–2017 and in 2018. Although failures of sewage treatment plant collectors, heavy rainfall, and floods occur quite often, they should not lead to an increase in the number of potentially pathogenic bacteria and mold and yeast-like fungi in the coastal seawater and air. Therefore, it is important to build new wastewater treatment plants, and expand and modernize the existing ones, thus that pathogenic microorganisms are effectively eliminated in the process of wastewater treatment. Moreover, tighter measures, including wastewater disinfection, should be introduced in wastewater treatment plants.

Author Contributions

Conceptualization, M.M. and K.Z.; methodology, M.M. and K.Z.; validation, R.M., P.W. and K.Z.; formal analysis, M.M. and P.W.; investigation, M.M.; statistical analysis, P.W.; data curation, K.Z.; R.M. and P.W.; writing—original draft preparation, M.M. and K.Z.; writing—review and editing, K.Z., M.M., M.K., R.M. and P.W.; supervision, K.Z., R.M. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Medical University of Gdańsk, grant number ST-02-0108/07/780.

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.

References

  1. Walser, S.M.; Gerstner, D.G.; Brenner, B.; Bünger, J.; Eikmann, T.; Janssen, B.; Kolb, S.; Kolk, A.; Nowak, D.; Raulf, M.; et al. Evaluation of exposure-response relationships for health effects of microbial bioaerosols-A systematic review. Int. J. Hygen Environ. Health 2015, 218, 577–589. [Google Scholar] [CrossRef] [PubMed]
  2. Schlosser, O.; Robert, S.; Debeaupuis, C. Aspergillus fumigatus and mesophilic moulds in air in the surrounding environment downwind of non-hazardous waste landfill sites. Int. J. Hygen Environ. Health 2016, 219, 239–251. [Google Scholar] [CrossRef] [PubMed]
  3. Kowalewska, B.; Kawko, M.; Zorena, K.; Myśliwiec, M. Yeast-like fungi in the gastrointestinal tract in children and adolescents with diabetes type 1. Pediatr. Endocrinol. Diabetes Metab. 2014, 22, 170–177. [Google Scholar] [CrossRef] [PubMed]
  4. Kowalewska, B.; Zorena, K.; Szmigiero-Kawko, M.; Wąż, P.; Myśliwiec, M. Higher diversity in fungal species discriminates children with type 1 diabetes mellitus from healthy control. Patient Prefer. Adherence 2016, 10, 591–599. [Google Scholar]
  5. Michalska, M.; Wąż, P.; Zorena, K.; Bartoszewicz, M.; Korzeniowska, K.; Krawczyk, S.; Myśliwiec, M. Potential effects of microbial air quality on the number of new cases of diabetes type 1 in children in two regions of Poland: A pilot study. Infect. Drug Resist. 2019, 12, 2323–2334. [Google Scholar] [CrossRef] [Green Version]
  6. Zhang, I.; Pletcher, S.D.; Goldberg, A.N.; Barker, B.M.; Cope, E.K. Fungal Microbiota in Chronic Airway Inflammatory Disease and Emerging Relationships with the Host Immune Response. Front. Microbiol. 2017, 8, 2477. [Google Scholar] [CrossRef] [Green Version]
  7. Michalska, M.; Zorena, K.; Bartoszewicz, M. Analysis of faecal bacteria isolated from air and sweater samples following an emergency sewage discharge into the gulf of Gdansk in 2018–preliminary study. Int. Marit. Health 2019, 70, 239–243. [Google Scholar] [CrossRef]
  8. Noble, R.T.; Weisberg, S.B.; Leecaster, M.K.; McGee, C.D.; Dorsey, J.H.; Vainik, P.; Orozco-Borbon, V. Storm effects on regional beach water quality along the southern California shoreline. J. Water Health 2003, 1, 23–31. [Google Scholar] [CrossRef]
  9. Lyons, B.P.; Devlin, M.J.; Hamid, S.A.; Al-Otiabi, A.F.; Al-Enezi, M.; Massoud, M.S.; Al-Zaidan, A.; Smith, A.; Morris, S.; Bersuder, P.; et al. Microbial water quality and sedimentary faecal sterols as markers of sewage contamination in Kuwait. Mar. Pollut. Bull. 2015, 100, 689–698. [Google Scholar] [CrossRef] [PubMed]
  10. Solo-Gabriele, H.; Harwood, V.; Kay, D.; Fujioka, R.; Sadowsky, M.; Whitman, R.; Brandão, J. Beach sand and the potential for infectious disease transmission: Observations and recommendations. J. Mar. Biol. Assoc. UK 2016, 96, 101–120. [Google Scholar] [CrossRef] [Green Version]
  11. O’Mullan, G.D.; Dueker, E.M.; Juhl, A.R. Challenges to Managing Microbial Fecal Pollution in Coastal Environments: Extra-Enteric Ecology and Microbial Exchange Among Water, Sediment, and Air. Curr. Pollut. Rep. 2017, 3, 1. [Google Scholar] [CrossRef]
  12. Brandão, J.; Albergaria, I.; Albuquerque, J.; José, S.; Grossinho, J.; Ferreira, F.C.; Raposo, A.; Rodrigues, R.; Silva, C.; Jordao, L.; et al. Untreated sewage contamination of beach sand from a leaking underground sewage system. Sci. Total Environ. 2020, 740, 140237. [Google Scholar] [CrossRef]
  13. Velonakis, E.; Dimitriadi, D.; Papadogiannakis, E.; Vatopoulos, A. Present status of effect of microorganisms from sand beach on public health. J. Coast. Life Med. 2014, 2, 746–756. [Google Scholar]
  14. Whitman, R.; Harwood, V.J.; Edge, T.A.; Nevers, M.B.; Byappanahalli, M.N.; Vijayavel, K.; Brandão, J.; Sadowsky, M.J.; Alm, E.W.; Crowe, A.; et al. Microbes in Beach Sands: Integrating Environment, Ecology and Public Health. Rev. Environ. Sci. Biotechnol. 2014, 13, 329–368. [Google Scholar] [CrossRef] [Green Version]
  15. Pougnet, R.; Pougnet, L.; Allio, I.; Lucas, D.; Dewitte, J.-D.; Loddé, B. Maritime environment health risks related to pathogenic microorganisms in seawater. Int. Marit. Health 2018, 69, 35–45. [Google Scholar] [CrossRef]
  16. Carrillo-Muñoz, A.; Rodriguez, J.T.; Madrenys-Brunet, N.; Dronda-Ayza, A. Comparative study on the survival of 5 species of dermatophytes and S. brevicaulis in beach sand, under laboratory conditions. Rev. Iberoam. Micol. 1990, 7, 36–38. [Google Scholar]
  17. Vogel, C.; Rogerson, A.; Schatz, S.; Laubach, H.; Tallman, A.; Fell, J. Prevalence of yeast in beach sand at three bathing beaches in South Florida. Water Res. 2007, 41, 1915–1920. [Google Scholar] [CrossRef] [PubMed]
  18. Anderson, J.H. In vitro survival of human pathogenic fungi in Hawaiian beach sand. Sabouraudia 1979, 17, 13–22. [Google Scholar] [CrossRef] [PubMed]
  19. Quant, B.; Bray, R.; Olańczuk-Neyman, K.; Jankowska, K.; Kulbat, E.; Łuczkiewicz, A.; Sokołowska, A.; Fudala, S. Badania Nad Dezynfekcją Ścieków Oczyszczonych Odprowadzanych do Wód Powiserzchniowych; Monografie Komitetu Inżynierii Środowiska Polskiej Akademii Nauk: Lublin, Poland, 2009; Volume 61, pp. 19–29. (In Polish) [Google Scholar]
  20. Käärik, A.; Keller, J.; Kiffer, E.; Perreau, J.; Reisinger, O.; Nilsson, S. Atlas of Airborne Fungal Spores in Europe; Springer: Berlin/Heidelberg, Germany, 1983. [Google Scholar]
  21. Campbell, C.K.; Johnson, E.M.; Warnock, D.W. Identification of Pathogenic Fungi; Wiley-Blackwell Chichester, West Sussex: Hoboken, NJ, USA, 2013. [Google Scholar]
  22. Feller, W. An Introduction to Probability Theory and Its Applications; John Wiley and Sous Inc.: New York, NY, USA, 1950; Volume II. [Google Scholar]
  23. Tang, Y.; Horikoshi, M.; Li, W. ggfortify: Unified Interface to Visualize Statistical Result of Popular R Packages. R J. 2016, 8, 474. [Google Scholar] [CrossRef] [Green Version]
  24. Horikoshi, M.; Tang, Y. ggfortify: Data Visualization Tools for Statistical Analysis Results. 2016. Available online: https://CRAN.R-project.org/package=ggfortify (accessed on 10 February 2020).
  25. Alboukadel Kassambara and Fabian Mundt, factoextra: Extract and Visualize the Results of Multivariate Data Analyses. R Package Version 1.0.7. 2020. Available online: https://CRAN.R-project.org/package=factoextra (accessed on 10 February 2020).
  26. Le, S.; Josse, J.; Husson, F. FactoMineR: An R Package for Multivariate Analysis. J. Stat. Softw. 2008, 25, 1–18. [Google Scholar] [CrossRef] [Green Version]
  27. Chao, H.J.; Schwartz, J.; Milton, D.K.; Burge, H.A. Populations and determinants of airborne fungi in large office buildings. Environ. Health Perspect. 2002, 110, 777–782. [Google Scholar] [CrossRef] [Green Version]
  28. Grinn-Gofroń, A.; Bosiacka, B. Effects of meteorological factors on the composition of selected fungal spores in the air. Aerobiologia (Bologna) 2015, 31, 63–72. [Google Scholar] [CrossRef] [Green Version]
  29. Michalska, M.; Bartoszewicz, M.; Cieszyńska, M.; Nowacki, J. Bioaerozol morski w rejonie Zatoki Gdańskiej. Med. Srod. 2011, 14, 24–28. [Google Scholar]
  30. Rahlff, J.; Stolle, C.; Giebel, H.A.; Brinkhoff, T.; Ribas-Ribas, M.; Hodapp, D.; Wurl, O. High wind speeds prevent formation of a distinct bacterioneuston community in the sea-surface microlayer. FEMS Microbiol. Ecol. 2017, 93, 93. [Google Scholar] [CrossRef] [PubMed]
  31. Marks, R.; Górecka, E.; McCartney, K.; Borkowski, W. Rising bubbles as mechanism for scavenging and aerosolization of diatoms. J. Aerosol. Sci. 2019, 128, 79–88. [Google Scholar] [CrossRef]
  32. Ruiz-Gil, T.; Acuña, J.J.; Fujiyoshi, S.; Tanaka, D.; Noda, J.; Maruyama, F.; Jorquera, M.A. Airborne bacterial communities of outdoor environments and their associated influencing factors. Environ. Int. 2020, 145, 106156. [Google Scholar] [CrossRef] [PubMed]
  33. Grinn-Gofroń, A. Airborne Aspergillus and Penicillium in the atmosphere of Szczecin, (Poland) (2004–2009). Aerobiologia (Bologna) 2011, 27, 67–76. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  34. Sidel, F.F.B.; Bouziane, H. Fungal Spores of Cladosporium in the Air of Tetouan Meteorological Parameters and Forecast Models. Int. J. Environ. Sci. Nat. Res. 2017, 3, 555609. [Google Scholar]
  35. Park, J.H.; Ryu, S.H.; Lee, J.Y.; Kim, H.J.; Kwak, S.H.; Jung, J.; Lee, J.; Sung, H.; Kim, S.-H. Airborne fungal spores and invasive aspergillosis in hematologic units in a tertiary hospital during construction: A prospective cohort study. Antimicrob. Resist. Infect. Control 2019, 8, 88. [Google Scholar] [CrossRef]
  36. Korzeniewska, E. Emission of bacteria and fungi in the air from wastewater treatment plants-A review. Front. Biosci. (Schol. Ed.) 2011, 1, 393–407. [Google Scholar] [CrossRef] [Green Version]
  37. Niazi, S.; Hassanvand, M.S.; Mahvi, A.H.; Nabizadeh, R.; Alimohammadi, M.; Nabavi, S.; Faridi, S.; Dehghani, A.; Hoseini, M.; Moradi-Joo, M.; et al. Assessment of bioaerosol contamination (bacteria and fungi) in the largest urban wastewater treatment plant in the Middle East. Environ. Sci. Pollut. Res. Int. 2015, 22, 16014–16021. [Google Scholar] [CrossRef]
  38. Zhang, H.; Feng, J.; Chen, S.; Li, B.; Sekar, R.; Zhao, Z.; Jia, J.; Wang, Y.; Kang, P. Disentangling the Drivers of Diversity and Distribution of Fungal Community Composition in Wastewater Treatment Plants Across Spatial Scales. Front. Microbiol. 2019, 9, 1291. [Google Scholar] [CrossRef]
  39. Michałkiewicz, M.; Pruss, A.; Dymaczewski, Z.; Jeż-Walkowiak, J.; Kwaśna, S. Microbiological Air Monitoring around Municipal Wastewater Treatment Plants. Pol. J. Environ. Stud. 2011, 20, 1243–1250. [Google Scholar]
  40. Cyprowski, M.; Sowiak, M.; Soroka, P.M.; Buczyńska, A.; Kozajda, A.; Szadkowska-Stańczyk, I. Ocena zawodowej ekspozycji na aerozole grzybowe w oczyszczalniach ścieków. Med. Pr. 2008, 59, 365–371. [Google Scholar]
  41. Filipkowska, Z.; Gotkowska-Płachta, A.; Korzeniewska, E. Grzyby pleśniowe oraz drożdże i grzyby drożdżoidalne w powietrzu atmosferycznym na terenie oczyszczalni ścieków z systemem stawów napowietrzanych i stabilizacyjnych. Woda-Środowisko-Obsz. Wiej. 2008, 8, 69–82. (In Polish) [Google Scholar]
  42. Małecka-Adamowicz, M.; Kubera, Ł.; Donderski, W.; Kolet, K. Microbial air contamination on the premises of the sewage treatment plant in Bydgoszcz (Poland) and antibiotic resistance of Staphylococcus spp. Arch. Environ. Prot. 2017, 43, 58–65. [Google Scholar] [CrossRef] [Green Version]
  43. Bednarz, A.; Pawłowska, S. A fungal spore calendar for the atmosphere of Szczecin, Poland. Acta Agrobot. 2016, 69, 1669. [Google Scholar] [CrossRef] [Green Version]
  44. Kowalski, M.; Wolany, J.; Pastuszka, J.S.; Płaza, G.; Wlazło, A.; Ulfig, K.; Malina, A. Characteristics of airborne bacteria and fungi in some Polish wastewater treatment plants. Int. J. Environ. Sci. Technol. 2017, 14, 2181–2192. [Google Scholar] [CrossRef] [Green Version]
  45. Assress, H.A.; Selvarajan, R.; Nyoni, H.; Ntushelo, K.; Mamba, B.B.; Msagati, T.A.M. Diversity, Co-occurrence and Implications of Fungal Communities in Wastewater Treatment Plants. Sci. Rep. 2019, 9, 14056. [Google Scholar] [CrossRef] [Green Version]
  46. Sato, M.I.Z.; Di Bari, M.; Lamparelli, C.C.; Truzzi, A.C.; Coelho, M.C.L.S.; Hachich, E.M. Sanitary quality of sands from marine recreational beaches of São Paulo, Brazil. Braz. J. Microbiol. 2005, 36, 321–326. [Google Scholar] [CrossRef] [Green Version]
  47. Sabino, R.; Rodrigues, R.; Costa, I.; Carneiro, C.; Cunha, M.; Duarte, A.; Faria, N.; Ferreira, F.; Gargaté, M.J.; Júlio, C.; et al. Routine screening of harmful microorganisms in beach sands: Implications to public health. Sci. Total Environ. 2014, 15, 1062–1069. [Google Scholar] [CrossRef] [PubMed]
Figure 1. The emergency discharge of raw sewage into the Motława River to the Gulf of Gdańsk in 2018. Map showing the five coastal towns: Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno, where microbiological coastal air were samples collected. The wind direction marked on the map were Southeast (SE) and Northeast (NE) (red arrow). Place of emergency discharge of raw sewage into the Motława River to the Gulf of Gdańsk (black arrow).
Figure 1. The emergency discharge of raw sewage into the Motława River to the Gulf of Gdańsk in 2018. Map showing the five coastal towns: Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno, where microbiological coastal air were samples collected. The wind direction marked on the map were Southeast (SE) and Northeast (NE) (red arrow). Place of emergency discharge of raw sewage into the Motława River to the Gulf of Gdańsk (black arrow).
Jof 07 00219 g001
Figure 2. Principal component analysis (PCA) of mold and yeast-like fungi detected in air samples in the seaside towns and meteorological factors. The plot score of the first two principal components contains almost 60.78% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Figure 2. Principal component analysis (PCA) of mold and yeast-like fungi detected in air samples in the seaside towns and meteorological factors. The plot score of the first two principal components contains almost 60.78% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Jof 07 00219 g002
Figure 3. Principal component analysis (PCA) of Aspergillus sp. detected in air samples in the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk Brzeźno). The plot score of the first two principal components contained almost 60.59% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Figure 3. Principal component analysis (PCA) of Aspergillus sp. detected in air samples in the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk Brzeźno). The plot score of the first two principal components contained almost 60.59% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Jof 07 00219 g003
Figure 4. Principal component analysis (PCA) of Penicillium sp. detected in air samples in the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk Brzeźno). Here the plot score of the first two principal components is reported. It contains almost 60.98% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Figure 4. Principal component analysis (PCA) of Penicillium sp. detected in air samples in the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk Brzeźno). Here the plot score of the first two principal components is reported. It contains almost 60.98% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Jof 07 00219 g004
Figure 5. Principal component analysis (PCA) of Cladosporium sp. detected in air samples in the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk Brzeźno). The plot score of the first two principal component contains almost 61.17% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Figure 5. Principal component analysis (PCA) of Cladosporium sp. detected in air samples in the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk Brzeźno). The plot score of the first two principal component contains almost 61.17% of the explained variance. Two clusters can be distinguished: The red one is composed in the study period of 2014–2017 and the blue cluster in 2018.
Jof 07 00219 g005
Figure 6. The percentage share of mold and yeast-like fungi in the air of the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno) in the years 2014–2017.
Figure 6. The percentage share of mold and yeast-like fungi in the air of the seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno) in the years 2014–2017.
Jof 07 00219 g006
Figure 7. The percentage share of mold and yeast-like fungi in the air of seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno) in 2018. The red frame marks the species were not observed in the years 2014–2017.
Figure 7. The percentage share of mold and yeast-like fungi in the air of seaside towns (Hel, Puck, Gdynia, Sopot, and Gdańsk-Brzeźno) in 2018. The red frame marks the species were not observed in the years 2014–2017.
Jof 07 00219 g007
Table 1. Eigenvalues and values of the explained variance for the model from the mold and yeast-like fungi license.
Table 1. Eigenvalues and values of the explained variance for the model from the mold and yeast-like fungi license.
EigenvalueExplained Part of Multivariate Variability of Accessions [%]Cumulative Part of Multivariate Variability [%]
PC12.012733.545833.5458
PC21.634127.235860.7816
PC31.029417.156777.9383
PC40.812313.537791.4760
PC50.29314.884796.3607
PC60.21843.6393100.0000
Table 2. The values of the correlation between PC1, PC2, and the variables used to build the model.
Table 2. The values of the correlation between PC1, PC2, and the variables used to build the model.
VariablesPC1PC2
Correlationp-ValueCorrelationp-Value
water temperature (°C)0.8220<0.00001−0.3612<0.00001
wind speed (km/h)0.7567<0.000010.5178<0.00001
air temperature (°C)0.6263<0.00001−0.6215<0.00001
relative humidity %0.4883<0.000010.8031<0.00001
the number of mold and yeast-like fungi (CFU/m3)0.3608<0.00001−0.20390.00665
wind direction--0.4035<0.00001
Table 3. Eigenvalues and values of the explained variance for the model from the Aspergillus sp. license.
Table 3. Eigenvalues and values of the explained variance for the model from the Aspergillus sp. license.
EigenvalueExplained Part of Multivariate Variability of Accessions [%]Cumulative Part of Multivariate Variability [%]
PC11.985933.098833.0988
PC21.649627.493060.5919
PC31.114118.568879.1606
PC40.738212.303791.4644
PC50.29524.919696.3840
PC60.21703.6160100.0000
Table 4. The values of the correlation between PC1, PC2, and the variables used to build the model.
Table 4. The values of the correlation between PC1, PC2, and the variables used to build the model.
VariablesPC1PC2
Correlationp-ValueCorrelationp-Value
water temperature (°C)0.8264<0.00001−0.3557<0.00001
wind speed (km/h)0.7576<0.000010.5263<0.00001
air temperature (°C)0.6393<0.00001−0.6195<0.00001
relative humidity %0.4825<0.000010.8094<0.00001
the number of Aspergillus sp. (CFU/m3)0.29210.00008−0.28270.00014
Table 5. Eigenvalues and values of the explained variance for the model from the Penicillium sp. license.
Table 5. Eigenvalues and values of the explained variance for the model from the Penicillium sp. license.
EigenvalueExplained Part of Multivariate Variability of Accessions [%]Cumulative Part of Multivariate Variability [%]
PC11.991833.196733.1967
PC21.667127.785560.9822
PC30.969316.155577.1377
PC40.869914.498991.6367
PC50.29424.904196.5408
PC60.20763.4592100.0000
Table 6. The values of the correlation between PC1, PC2, and the variables used to build the model.
Table 6. The values of the correlation between PC1, PC2, and the variables used to build the model.
VariablesPC1PC2
Correlationp-ValueCorrelationp-Value
wind speed (km/h)0.8688<0.000010.28110.00016
water temperature (°C)0.6987<0.00001−0.5693<0.00001
relative humidity %0.6545<0.000010.6085<0.00001
air temperature (°C)0.4711<0.00001−0.7575<0.00001
the number of Penicillium sp. (CFU/m3)0.3130<0.000010.32160.00001
wind direction- 0.4653<0.00001
Table 7. Eigenvalues and values of the explained variance for the model from the Cladosporium sp. license.
Table 7. Eigenvalues and values of the explained variance for the model from the Cladosporium sp. license.
EigenvalueExplained Part of Multivariate Variability of Accessions [%]Cumulative Part of Multivariate Variability [%]
PC11.965532.757732.7577
PC21.705028.417361.1751
PC31.019116.984578.1596
PC40.800113.335891.4954
PC50.29214.868196.3634
PC60.21823.6366100.0000
Table 8. The values of the correlation between PC1, PC2, and the variables used to build the model.
Table 8. The values of the correlation between PC1, PC2, and the variables used to build the model.
VariablesPC1PC2
Correlationp-ValueCorrelationp-Value
water temperature (°C)0.8287<0.00001−0.3116<0.00001
wind speed (km/h)0.7492<0.000010.5426<0.00001
air temperature (°C)0.6621<0.00001−0.6036<0.00001
relative humidity %0.4723<0.000010.7982<0.00001
the number of Cladosporium sp. (CFU/m3)0.21990.00336−0.4275<0.00001
wind direction 0.3597<0.00001
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Michalska, M.; Kurpas, M.; Zorena, K.; Wąż, P.; Marks, R. Mold and Yeast-Like Fungi in the Seaside Air of the Gulf of Gdańsk (Southern Baltic) after an Emergency Disposal of Raw Sewage. J. Fungi 2021, 7, 219. https://doi.org/10.3390/jof7030219

AMA Style

Michalska M, Kurpas M, Zorena K, Wąż P, Marks R. Mold and Yeast-Like Fungi in the Seaside Air of the Gulf of Gdańsk (Southern Baltic) after an Emergency Disposal of Raw Sewage. Journal of Fungi. 2021; 7(3):219. https://doi.org/10.3390/jof7030219

Chicago/Turabian Style

Michalska, Małgorzata, Monika Kurpas, Katarzyna Zorena, Piotr Wąż, and Roman Marks. 2021. "Mold and Yeast-Like Fungi in the Seaside Air of the Gulf of Gdańsk (Southern Baltic) after an Emergency Disposal of Raw Sewage" Journal of Fungi 7, no. 3: 219. https://doi.org/10.3390/jof7030219

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop