Next Article in Journal
Digital Technologies and Open Data Sources in Marine Biotoxins’ Risk Analysis: The Case of Ciguatera Fish Poisoning
Previous Article in Journal
Phytopathogenic Fungi and Toxicity
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Microbiological and Toxicological Hazards in Sewage Treatment Plant Bioaerosol and Dust

1
Department of Environmental Biotechnology, Lodz University of Technology, 90-530 Łódź, Poland
2
Department of Personal Protective Equipment, Central Institute for Labour Protection—National Research Institute, 90-133 Łódź, Poland
3
Institute for Bioanalytics and Agro-Metabolomics, Department of Agrobiotechnology University of Natural Resources and Life Sciences Vienna (BOKU), A-3430 Tulln, Austria
4
Faculty of Chemistry, Rzeszów University of Technology, 35-959 Rzeszów, Poland
5
Institute of Immunology and Experimental Therapy, Polish Academy of Sciences, 53-113 Wrocław, Poland
*
Author to whom correspondence should be addressed.
Toxins 2021, 13(10), 691; https://doi.org/10.3390/toxins13100691
Submission received: 26 August 2021 / Revised: 23 September 2021 / Accepted: 24 September 2021 / Published: 28 September 2021

Abstract

:
Despite the awareness that work in the sewage treatment plant is associated with biological hazards, they have not been fully recognised so far. The research aims to comprehensively evaluate microbiological and toxicological hazards in the air and settled dust in workstations in a sewage treatment plant. The number of microorganisms in the air and settled dust was determined using the culture method and the diversity was evaluated using high-throughput sequencing. Endotoxin concentration was assessed with GC-MS (gas chromatography-mass spectrometry) while secondary metabolites with LC-MS/MS (liquid chromatography coupled to tandem mass spectrometry). Moreover, cytotoxicity of settled dust against a human lung epithelial lung cell line was determined with the MTT (3-(4,5-dimethylthiazol-2-yl)-2,5-diphenyltetrazolium bromide) assay and UHPLC-Q-ToF-UHRMS (ultra-high-performance liquid chromatography-quadrupole time-of-flight ultrahigh-resolution mass spectrometry) analysis was performed to determine the source of cytotoxicity. The total dust concentration in the sewage treatment plant was low and ranged from 0.030 mg m−3 to 0.044 mg m−3. The highest microbiological contamination was observed in sludge thickening building and screenings storage. Three secondary metabolites were detected in the air and sixteen in the settled dust. They were dominated by compounds typical of lichen and plants and Aspergillus, Penicillium and Fusarium genera mould. The settled dust from the sludge thickening building revealed high cytotoxicity to human lung epithelial cells A-549 (IC50 = 6.98 after 72 h). This effect can be attributed to a biocidal compound—didecyldimethylammonium chloride (DDAC-C10) and seven toxic compounds: 4-hydroxynonenal, carbofuran, cerulenin, diethylphosphate, fenpropimorph, naphthalene and onchidal. The presence of DDAC-C10 and other biocidal substances in the sewage treatment plant environment may bring negative results for biological sewage treatment and the natural environment in the future and contribute to microorganisms’ increasing antibiotics resistance. Therefore, the concentration of antibiotics, pesticides and disinfectants in sewage treatment plant workstations should be monitored.
Key Contribution: Despite a relatively low concentration of airborne dust and microbial contamination at the sewage treatment plant, we proved a threat to workers’ health resulting from high cytotoxicity of settled dust to human lung epithelial cells A-549. We found secondary metabolites, including those from Aspergillus, Penicillium and Fusarium genera mould, and other biocidal compounds (antibiotics, pesticides and disinfectants) that may be responsible for the high cytotoxicity of the settled dust from the tested working environment).

1. Introduction

Over 300 km3 of sewage is produced globally every year, which, combined with the progressing urbanisation, leads to an increasing number of wastewater treatment plants (WWTPs) [1,2]. Wastewater treatment plants are complexes of technological buildings where industrial wastewater and sewage are treated, i.e., dissolved substances, colloids and suspensions are removed from wastewater before discharge to water or the ground [3]. The European Environment Agency (EEA) published a complete database of the existing urban WWTPs in Europe describing 25,906 such facilities [4]. In Poland, there are over 3257 WWTPs [3].
The wastewater treatment plants can be divided into a few different categories depending on the applied wastewater treatment methods and the related processes. In mechanical ones, only non-soluble contaminants (e.g., sedimented or floating solids and fats) are removed with grates, screens and grit chambers. In the chemical WWTPs, wastewater is treated through precipitation of some soluble compounds and neutralised with chemical methods (e.g., coagulation, sorption on active carbon). In biological WWTPs, organic contaminants and biogenic and refractory compounds are removed from wastewater through biological decomposition using microorganisms. Wastewater treatment plants with high removal of biogens enable higher nitrogen and phosphorus reduction [2,3]. Wastewater biological treatment systems include around a billion active microorganism species, and activated sludge can contain about 4 × 108 cells mL−1. Wastewater biological treatment broadly uses aeration, mixing and compressing to intensify the growth and proliferation of the microorganisms. Wastewater turbulences, intensive flow rate and aeration are considered to promote bioaerosol formation and release into the wastewater treatment plant’s atmosphere [5,6].
The bioaerosol formed in the wastewater treatment plants includes numerous bacilli (Klebsiella pneumoniae, Escherichia coli, Enterobacter agglomerans, Aeromonas hydrophila, Pseudomonas spp.), haemolytic staphylococci (e.g., Staphylococcus aureus), haemolytic streptococci (Streptococcus faecalis, Streptococcus pneumoniae) and Gram-negative coccobaccilli such as Acinetobacter, some Bacillus genera and coliform bacteria [7,8]. Li et al. detected 300 bacteria species, including opportunistic pathogens such as Comamonas testosteroni and Moraxella osloensis in bioaerosol from a wastewater treatment plant [9]. Han et al. also point out the potential harmfulness of Acinetobacter lwoffii, Aeromonas caviae, Arcobacter spp., Bacillus spp., Bacteroides spp., Flavobacterium spp., Mycobacterium spp., Pseudomonas fluorescens, Zoogloea spp., Kluyvera intermedia, Staphylococcus lentus, Clostridium spp. and Enterobacter spp. bacteria to the health of wastewater treatment plant employees [10,11]. Wastewater and bioaerosol generated in a WWTPs were also reported as the source of drug-resistant microorganisms and genes that induce antibiotic resistance [12]. The dominant fungi identified in the wastewater treatment plant air included Cephalotrichum spp., Alternaria spp., Penicillium spp., Monilia spp. and Aspergillus spp. [13].
In addition to the potentially pathogenic microorganism species, wastewater treatment plant staff are exposed to inhalation of bacterial endotoxin from the Gram-negative bacteria cell wall. Smit et al. discovered a positive, dose-dependent relationship between exposure to endotoxins and adverse respiratory effects in humans, including wheezing breath, dyspnoea and cough [14].
The wastewater treatment plant staff often complain about ill-health, cough and breathing problems [15]. The most common diseases caused by exposure to harmful biological factors in wastewater include allergic alveolitis, rhinitis and pharyngitis, conjunctivitis, diarrhoea and other infections of the alimentary tract and central nervous system lesions [16]. Friis et al. discovered a higher number of stomach cancer cases among wastewater treatment plant staff, which can be related to the presence of Helicobacter pylori bacteria in the work environment [15].
A disease unit described as ‘Sewage Worker’s Syndrome’ is accompanied by such symptoms as general discomfort, weakness, acute rhinitis and fever [17].
The issue of harmful biological factors hazards in a WWTP’s work environment is known and broadly investigated. However, there are no comprehensive tests that would include the presence of cultivable and non-cultivable microorganisms and metabolites of microbiological origin in the air and settled dust in such facilities. No cytotoxicity analyses have been carried out so far for the dust in wastewater treatment plants.
That is why this paper was aimed to carry out a comprehensive evaluation of microbiological and toxicological hazards in a sewage treatment plant. It presents the quantity, diversity and profile of chemical compounds of biological origin (including endotoxins and secondary metabolites) occurring in the air and settled dust in a sewage treatment plant. The cytotoxicity was evaluated of settled dust from workstations in the sewage treatment plant against a human lung epithelial cell line and tests were carried out using UHPLC-Q-ToF-UHRMS (ultra-high-performance liquid chromatography-quadrupole time-of-flight ultrahigh-resolution mass spectrometry) to determine why dust from the sewage treatment plant was highly cytotoxic. Such evaluation can be used to define provisions to protect workers from risks to their health and safety, including the prevention of such risks arising or likely to arise from exposure to biological agents at workstations at WWTPs. The results can be utilised by health and safety professionals to recognise activities in which workers may be potentially exposed to biological agents due to their work and thus undertake preventive measures, including the use of appropriate personal protective equipment.

2. Results and Discussion

2.1. Microclimatic Conditions

The microclimate parameters at the workstations in the sewage treatment plant are summarised in Table 1. The air temperature in the tested places ranged from 17.4 °C (Workstation 2) to 26.4 °C (Workstation 6). The highest (73.1%) and the lowest (69.8%) relative air humidity were reported for the same workstations, respectively. The airflow rate ranged between 0.03 m s−1 (Workstation 4) and 0.87 m s−1 (Workstation 1).
The microclimate conditions at different workstations were highly diversified. Statistically, significant differences were revealed for the measurements carried out on consecutive days and for workstations located close to one another in an open space during measurements performed on the same day. In all cases, the relative humidity at the workstations was high (>57%), which can provide suitable conditions for microorganisms development in the air and their transmission to greater distances, considering the temperature of ca. 25 °C and the reported airflow rate values.

2.2. Dust Concentrations at Workstations

The total dust concentration in the sewage plant was very low and ranged from 0.030 mg m−3 (external background) to 0.044 mg m−3 (screenings storage; Table 2). At all measurement points, the aerodynamic diameter of the dominant suspended dust fraction was less than 1 µm (Table 2). Its share in the total quantity of the measured dust ranged from 73.9% in the sludge thickening building to 92.3% in the sewage treatment plant’s environment (screenings storage). The particles with diameters ranging from 1 to 4 µm (1.7–7.5%) constituted the smallest part of the total dust amount.
The dust concentration values do not exceed the permissible threshold values at the workstations, and so according to domestic law, there is no need to use respiratory protection against particles. The use of respiratory protection is then voluntary, and the adequate equipment is selected depending on the user’s work comfort needs. The possible exposure to the SARS-COV-2 virus is also taken into account.

2.3. Microbial Contamination

The bacteria count in sewage treatment plant air ranged from 3.05 × 102 CFU m−3 (Workstation 3) to 3.71 × 103 CFU m−3 (Workstation 4). Actinomycetes were detected only at Workstation 2 (15.0 CFU m−3) and the same number was detected in the control atmospheric air (0.5 km away from the sewage treatment plant). The count of mannitol-positive Staphylococci ranged from 2.5 CFU m−3 to 65.0 CFU m−3. The concentration of Enterobacteriaceae family bacteria ranged from 2.5 CFU m−3 (Workstation 1) to 1.98 × 102 CFU m−3 (Workstation 5) (Table 3). The count of Pseudomonas fluorescens bacteria was also low and amounted to 7.5 CFU m−3–40.0 CFU m−3. Haemolytic Staphylococci were most numerous at Workstation 5 (3.25 × 102 CFU m−3), while their lowest counts were observed at Workstation 3 and 5 (50.0 CFU m−3). The fungi count at the tested workstations ranged from 1.91 × 103 CFU m−3 (Workstation 4) to 3.23 × 104 CFU m−3 (Workstation 5), while for xerophilic fungi, the values ranged from 1.13 × 103 CFU m−3 (Workstation 3) to 2.39 × 104 CFU m−3 (Workstation 6) (Table 3).
The results show that the highest microbiological contamination occurred at Workstation 4 (sludge thickening building) and 5 (screenings storage). However, a statistical analysis of the results comparing the microbiological contamination in the air from the tested workstations and control atmospheric air revealed only a few statistically significant differences. It suggests a comparable microbiological condition of the air in and outside the sewage treatment plant premises.
The microorganisms count in the sewage treatment plant air was tested in many previous papers, but the characteristic levels have not been determined, so there is still a need to conduct microbiological analyses in such facilities. Li et al. detected the highest count of bacteria (1.7 × 103 CFU m−3) and fungi (9.3 × 102 CFU m−3) in a sewage treatment plant in China at sludge thickening stations [9]. The microorganisms count reported by other authors for sewage treatment plant air is highly diversified and ranges from 102 to 105 CFU m−3 [2,8]. Moreover, bacteria concentrations in bioaerosol in such work environments can be twice higher and fungi concentrations 8–10 times higher in spring than winter [13]. The volume of microorganisms emission to the air in a sewage treatment plant was proven to vary and depend on the season but also the facility size, quantity and nature of the treated sewage and the sewage treatment process, i.e., sewage treatment plant operation and applied technology [2,18].
Settled dust at the tested sewage treatment plant workstations occurred only in the sludge thickening building, while other workstations were located in an open space, where settled dust did not accumulate.
Enterobacteriaceae family bacteria (1.14 × 106 CFU g−1) and mannitol-positive Staphylococci (4.03 × 105 CFU g−1) dominated the dust samples collected from the sludge thickening building, while the total bacteria count was 2.73 × 105 CFU g−1. A similar contamination level was reported for fungi and xerophilic fungi (2.00 × 105 CFU g−1). In the tested dust, Actinomycetes (1.74 × 103 CFU g−1) and haemolytic Staphylococci (2.08 × 103 CFU g−1) (Figure 1) were the least numerous.
The literature provides no data on the microorganisms count in the settled dust from workstations in a sewage treatment plant. Only settled dust from the agricultural work environment (poultry breeding rooms, cereal dust) was microbiologically characterised. A higher count of bacteria (3.33 × 107 CFU g−1–1.57 × 108 CFU g−1) and P. fluorescens bacteria (1.00 × 105 CFU g−1–5.73 × 105 CFU g−1) was reported. The haemolytic Staphylococci count was higher for poultry farm dust (8.50 × 105 CFU g−1) and similar for cereal dust (2.98 × 103 CFU g−1) [19,20]. The counts of Actinomycetes (≤2.05 × 103 CFU g−1) and xerophilic fungi (3.35 × 105 CFU g−1–4.45 × 105 CFU g−1) were on a similar level.
The lowest counts were in turn reported for mannitol-positive Staphylococci (1.20 × 104 CFU g−1–3.49 × 104 CFU g−1), Enterobacteriaceae family bacteria (≤2.30 × 104 CFU g−1) and fungi (7.48 × 104 CFU g−1–8.75 × 105 CFU g−1).

2.4. Diversity of Microorganisms from the Sewage Plant Workstations

High-throughput sequencing of the DNA from the air and settled dust collected at Workstation 4 in the sewage treatment plant (sludge thickening building) revealed a high phylogenetic diversity of the microorganisms (Figure 2a,b). One hundred and seventy (170) genera of bacteria/archeons and 475 genera of fungi, representing 19 and 9 types, respectively, were detected in the dust. The number of bacteria/archeons genera identified in the air amounted to 166 (19 types), and the number of fungal genera amounted to 475 (7 types).
Both the dust and the air were mainly contaminated by Actinobacteria (68.0 and 21.0%), Proteobacteria (28.0 and 36.0%) and Firmicutes (2.0 and 23.0%). Moreover, a significant share was discovered of the bacteria genus and Bacteroidetes (11.0%) in the settled dust in the sewage treatment plant. Other bacteria types constituted less than 1% OTU (operational taxonomic unit) in the tested air and settled dust (Figure 2a).
The bacteria genera observed most often among Actinobacteria in the dust included Bifidobacterium (5.0%), Gordonia (3.0%), Corynebacterium (1.0%), Terracoccus (1.0%), Candidatus Microthrix (0.94%) and Cellulosimicrobium (0.71%). The Proteobacteria were dominated by Sphingomonas (4.0%), Acinetobacter (4.0%), Psychrobacter (4.0%), Pseudomonas (4.0%), Serratia (2.0%) and Stenotrophomonas (1.04%) genera. The Firmicutes identified most often in the sewage treatment plant’s dust include Turicibacter (1.0%). The Chryseobacterium (10.0%) genus representing Bacteroidetes occurred in the dust with high OTU values.
The air collected from the sewage treatment plant was dominated by such Actinobacteria genera as Cellulosimicrobium (59.0%) and Bifidobacterium (6.0%). Pseudomonas (12.0%) and Stenotrophomonas (8.0%) were the most common Proteobacteria. The presence of 44 bacteria genera with the OTU < 1% (Table S1) was confirmed among the Firmicutes.
Ascomycota and Basidiomycota were the most common fungi in both sample types (dust and air) (Figure 2b). In the settled dust, Mycosphaerella (12.0%), Cladosporium (6.0%), Neoascochyta (5.0%), Alternaria (4.0%), Didymella (4.0%), Chalastospora (3.0%), Botrytis (2.0%) and Citeromyces (2.0%) had the highest OTU among Ascomycota (59.0%). Basidiomycota were dominated by Cryptococcus (3.0%), Cystobasidium (3.0%), Rhodotorula (1.0%) and Sporobolomyces (1.0%). The Aspergillus and Penicillium genera fungi quantities were similar (2.0–3.0%) in the dust and air samples. Moreover, a high percentage of Mortierella genera representing Mortierellomycota was observed in the dust.
For fungi in the air samples, the most common DNA sequences related to Ascomycota included Cladosporium (14.0%), Mycosphaerella (7.0%), Alternaria (5.0%), Didymella (2.0%), Candida (2.0%) and Dissoconium (1.0%) genera. The highest OUT of Basidiomycota in the air was identified for Sporobolomyces (4.0%), Hypholoma (3.0%), Udeniomyces (3.0%), Coprinellus (1.0%), Bjerkandera (1.0%) and Malassezia (1.0%) (Table S2).
Tests presenting in such a detailed way the bacteria and fungi diversity in the sewage treatment plant’s air and settled dust were carried for the first time under this study. Previously, many authors were interested in the qualitative and quantitative composition of microorganisms in sludge and sewage.
The bacteria genera most often isolated from the air in mechanical and biological sewage treatment plants included Citobacter, Enterobacter, Klebsiella, Serratia and Pantoea, whereas pathogenic bacteria such as Salmonella, Escherichia and Shigella were rarely isolated [21,22]. Absidia, Actinomucor, Alternaria, Aspergillus, Cladosporium, Fusarium, Geotrichum, Mucor and Penicillium mould and Candida, Cryptococcus and Rhodotorula yeast were most often described as fungi characteristic for sewage treatment plant environment [21,23].
In the present study, a high-throughput DNA sequencing from the samples collected in the sludge thickening building revealed a broader spectrum of microorganisms occurring in the sewage treatment plant air and dust, including potentially pathogenic microorganisms that can threaten human life. The presence of Corynebacterium and Pseudomonas genera was detected (12.0%)—their pathogenic species represent Hazard category 2 according to Directive 2000/54/EC of the European Parliament and of the Council of 18 September 2000 on the Protection of Workers from Risks Related to Exposure to Biological Agents at Work. The identified fungi with high OTU values included Aspergillus, Candida, Cryptococcus and Penicillium, which may include species representing Employee’s Health Hazard Group 2.
Moreover, Candidatus Microthrix bacteria representing filiform bacteria often occurring in the air in sewage treatment plants using activated sludge technology were detected in the tested samples. The presence of such bacteria can be related to sludge sedimentation problems, i.e., “swelling” [24,25].

2.5. Endotoxin Concentrations

Settled dust in the tested sewage treatment station occurred only in the sludge thickening building (Workstation 4). The endotoxin concentration in the dust samples amounted to 0.214 nmol LPS mg−1 on average (Figure 3).
The concentration was lower than that published in the data for dust from livestock breeding facilities. Pomorska et al. documented the LPS concentration in the livestock buildings for horses at 11 nmol LPS mg−1 to 110 nmol LPS mg−1; in the livestock buildings for poultry, it ranged from 65 nmol LPS mg−1 to 176 nmol LPS mg−1 and for sheep from 61 nmol LPS mg−1 to 226 nmol LPS mg−1 [26]. The bacterial endotoxin concentrations obtained in the present study are higher than the values described in the literature for household rooms of different functions (kitchen, bedroom, living room—from 0.092 nmol LPS mg−1 to 0.155 nmol LPS mg−1) [27]. Based on studies carried out in many sewage treatment plants in Finland and Norway, the endotoxin concentration in such work environments is diversified and ranges from 0.6 to 370 ng m−3 in the air [28,29]. The highest endotoxin concentrations were confirmed for the sewage sludge treatment areas.
Interestingly, endotoxins from different bacteria can differ in their molecular structures [30,31]. Moreover, bacteria can adopt to an unfavourable environment to ensure viability. It is known that bacteria are able to modify their primary LPS structure under certain growth conditions. Thereby they can reinforce the external membrane to assure optimal protection against the environment [32,33].
The literature examples demonstrate that exposure to bacterial endotoxin through inhalation may result in respiratory tract inflammation and toxic pneumonia caused by the non-specific activation of alveolar macrophages that release inflammation mediators. Endotoxins may also cause fever, chills, cough and flu symptoms [34,35].

2.6. Secondary Metabolites

In the sludge thickening building of the sewage treatment plant, three chemical compounds were detected in the air and 16 in the settled dust (Table 4). Metabolites characteristic for Aspergillus (3-Nitropropionic acid) and Penicillium (Flavoglaucin) genera mould were detected in the air, next to metabolites not related to any specific mould genus (non-specific)—asperphenamate. Compounds produced by Penicillium spp., (quinolactacin A, citreohybridinol, flavoglaucin, pentoxifylline), Fusarium spp. (beauvericin, enniatin A1, enniatin B, enniatin B1) and Aspergillus (3-Nitropropionic acid) dominated in the air. Lichen (lecanoric acid, usnic acid) and plant (prunasin) metabolites, and non-specific compounds (asperglaucide, asperphenamate, cyclo(L-Pro-L-Tyr, emodin) (Table 4) were also detected. It is worth pointing out that the concentrations of lichen and plant metabolites were higher (14–123 ng g−1) than those of metabolites of microbiological origin (concentration range: 0.24–18.1 ng g−1).
Previously, the literature published no such detailed analysis of mycotoxins content in the air and settled dust from a sewage treatment plant. The latest studies included assessing four metabolite concentrations: aflatoxin B1, gliotoxin, ochratoxin A and sterigmatocystin. The authors detected in the air only aflatoxin B1 and sterigmatoxin at concentrations lower than ng m−3 [36].

2.7. Cytotoxic Effects of Dust Samples

This study is the first to show the cytotoxic effect of the settled dust samples from a sewage treatment plant. Human lung epithelial cells A-549 (Photo 1) were exposed to 0.3 to 100 mg mL−1 concentrations of water-soluble fractions of dust for 48 and 72 h. The curve representing the test dust’s cytotoxicity is shown in Figure 4.
High cytotoxicity of the tested dust was observed. Concentrations of 20 mg mL−1 and more caused 100% cytotoxicity for the tested cells after 48 h and 72 h of exposure. Low IC50 values (6.98–7.72%, depending on the exposure duration) confirm the high cytotoxicity of the tested dust, which inhibits the test cell population growth by 50%. High cytotoxicity of the dust settled in the sludge thickening buildings suggests the presence of non-biological inhalation hazards at the tested workstation, related to the process carried out at the workstation.
Changes in both cell culture and morphology were also observed (Figure 5).
Control cells formed a regular monolayer with typical homogenous rhomboid cells and a clearly outlined cell nucleus and cytoplasm. After exposition to dust samples, a significant decrease in A-549 cells density, destruction of monolayer (no confluence), increased the amount of detached cells, and floating cells were detected especially in the presence of two highest tested concentrations (20 and 100 mg mL−1). Vacuolisation of the cell cytoplasm, intracytoplasmic granules and chromatin condensation were typical for lower concentration (10 mg mL−1). To conclude, the main mechanism of cytotoxic action was monolayer reduction—thus the high cytotoxicity. High cytotoxicity of dust samples may be caused by the presence of fungi metabolites, such as beauvericin and enniatins, which are produced by Fusarium species. Several authors demonstrated cytotoxic activity of beauvericin. It can induce apoptosis in A-549 cells through cell cycle arrest in the S phase and apoptosis through the MEK1/2/ERK42/44/90RSK signalling pathway [37]. Beauvericin showed cytotoxicity in MTT assay against A549 cells with IC50 value of 10.4 μM [37]. Lee et al. investigated the cytotoxic activity of beauvericin and enniatins using the sulphorhodamine B (SRB) method [38]. They observed very strong cytotoxicity of these compounds. The EC50 values (the concentration of a drug that gives a half-maximal response) were as follows: from 0.5 to 1.54 μM for enniatins and 1.43 μM for beauvericin.
In our research, the metabolites of Aspergillus, Penicillium and Fusarium species dominated the air and dust samples. It is worth noting that according to our best knowledge, the impact of sewage treatment plant dust on human lung cells has not been published so far. The literature shows the effect of individual metabolites of microbiological origin, e.g., mycotoxins, or antibiotics and other substances, but so far the complex mixture of dust from the working environment in a sewage treatment plant has not been studied, the total impact of which may be different. According to the International Agency for Research on Cancer (IARC), some mycotoxins, depending on the mould species, are classified carcinogenic to humans, but they were not detected in our study [39]. Instead, naphthalene was present, classified as ‘possibly carcinogenic to humans’ (Group 2B) [39]. It also could contribute to the strong cytotoxicity of our samples. Naphthalene is an air pollutant due to emissions from the chemical industry. It is used to synthesise various chemical compounds, dyes, insecticides, solvents, synthetic resins and tannins [40]. Its presence may indicate the origin of wastewater from industrial sources. The high cytotoxicity of the dust settled in the sludge thickening building indicates the presence of non-biological inhalation hazards at this workplace, related to the technological process carried out.

2.8. Targeted and Untargeted UPLC-HRMS Analysis

The results obtained in the process of identification of toxic compounds in dust are summarised in Table 5. The targeted identification of pesticides was performed using the TargetScreener (Bruker Daltonics) method based on tight tolerances matching of analyte retention time, precursor m/z, fragments m/z, precursor and fragments isotopic pattern and also precursor-to-fragment signals intensity ratios.
TargetScreener broadband CID (bbCID) method in positive mode confirmed the presence of didecyldimethylammonium chloride (DDAC-C10; Figure S1). DDAC-C10 is an alkyl quaternary ammonium salt with chain lengths of ten carbons widely used in numerous products for its broad bactericidal, viricidal and fungicidal properties. The broad toxic action of this compound on cells is based on its strong binding to negatively charged lipid bilayers leading to dissociation of the cell-membrane components and, as a result to cell death. DDAC-C10 is widely used, for example, as a biocide for the cleaning/sanitation of surfaces in the areas of food, feed and medical production sectors, and domestically, as a pesticide in ornamental plants protection products, as an antiseptic for wood and as a fungicide for coolants [41]. During the COVID-19 pandemic, large quantities of disinfectants (Penetone XF-7117, Maquat 256-MN, Vesta-Syde SQ 64 Ready-ToUse Disinfectant, Multi-Purpose Disinfectant 10 Cleaner, FSC 35K and many others) containing such active substances as DDAC-C10 have been recommended for the control of the virus SARS-CoV-2 by Environmental Protection Agency (EPA). These disinfectants have been commonly used in households, public buildings and workplaces [42]. The compound in the dust in the sewage treatment plant may originate from two sources: tested workstation after disinfection or sewage. The presence of DDAC in the wastewater treatment plant environment may affect the emergence of drug-resistant microorganisms. Bacterial resistance to quaternary ammonium compounds (QAC) including DDAC is among the best-studied of disinfectant resistance mechanisms. Most QAC-resistant isolates (Gram-positive and Gram-negative bacteria) are resistant by virtue of possessing one or more efflux pumps [43,44]. These pumps are membrane-bound, proton-motive force-dependent cation export proteins that belong either to the major facilitator family of transport proteins or to the small multidrug resistance protein family.
When resistance to one antibacterial agent is accompanied by the appearance of resistance to another agent can be the result of cross-resistance or co-resistance [45]. Cross-resistance can occur when different antimicrobial agents attack the same target, initiate a common pathway to cell death, or share a common route of access to their respective targets. Co-resistance can occur when the genes specifying resistant phenotypes are located together on a mobile genetic element (e.g., plasmid or transposon). Cross-resistance with other classes of antimicrobial agents via alteration of the efflux pump cannot be ruled out, particularly for cationic compounds like the aminoglycosides. Likewise, coresistance of disinfectant-resistant bacteria to antibiotics occurs as a result of QAC resistance genes being located on transmissible plasmids and within conserved regions of integrons, each of which has been shown to carry multiple antibiotic resistance genes [45]. Plasmids from a number of clinical isolates bearing qac genes and demonstrating a range of resistance phenotypes to a variety of antibiotics were characterised in literature [46]. Lemaitre et al., found plasmids bearing genes for QAC and tetracycline resistance e.g., for Listeria spp [47].
Additional AutoMSMS measurements in positive and negative ionisation modes were carried out and analysed in MetaboScape 2021 software for untargeted data profiling. Annotation was based on automatic matching of precursor m/z up to 2 ppm error, isotopic pattern matching up to 15 mSigma, and MSMS comparison. Seven toxic compounds were identified in positive mode: 4-hydroxynonenal, carbofuran, cerulenin, diethylphosphate, fenpropimorph, naphthalene and onchidal. The compound 4-hydroxynonenal was assigned to m/z 157.1225. This compound has been reported as a apoptotic agent in many cell cultures [48]. Carbofuran is a pesticide that is commonly used as an insecticide, acaricide and nematicide [49]. Cerulenin is an antifungal antibiotic that inhibits the growth of several species of mycobacteria [50]. Diethylphosphate is a known neurotoxin that is used as a pesticide [51]. Fenpropimorph is a fungicide [52]. Naphthalene has been shown to cause red blood cell haemolysis and may selectively injure the intrapulmonary airways’ nonciliated epithelial cells [53]. Onchidal is a naturally occurring neurotoxin [54].

3. Conclusions

The total dust concentration in the sewage treatment plant was very low, and no permissible dust concentration limits were exceeded at the workstations. Therefore, there is no need to use respiratory protection against particles.
The highest microbiological contamination of all tested places was discovered for Workstations 4 (sludge thickening building) and 5 (screenings storage). Still, the results reveal low (similar to the control atmospheric air) microbiological contamination at the tested workstations in the sewage treatment plant.
This is the first study to thoroughly analyse mycotoxins in the air and settled dust in a sewage treatment station. Three chemical compounds were detected in the air and sixteen in the settled dust from the referenced work environment. Compounds characteristic for lichen and plants and Aspergillus, Penicillium and Fusarium genera mould dominated the identified metabolites. Settled dust from the workstation in the sludge thickening building revealed high cytotoxicity to human lung epithelial cells A-549. It suggests the presence of non-biological inhalation hazards at the tested workstation—compounds from the group of antibiotics, pesticides and disinfectants, which may adversely affect employees’ health. Their presence might negatively affect biological sewage treatment and the natural environment and contribute to increasing antibiotic resistance of microorganisms in the future.

4. Materials and Methods

4.1. Workstations in the Tested Sewage Treatment Plant

The tests were carried out in a treatment plant processing sewage from an area inhabited by ca. 820,000 people, designed for the maximum dry weather flow rate of 215,300 m3/d and 1,026,260 population equivalent load. It is a typical mechanical and biological sewage treatment plant with improved removal of biogenic compounds. The biological process is periodically supported with an iron coagulant and an external source of carbon. In 2020, over 163,000 m3 of sewage were supplied to the tested sewage treatment plant a day and nearly 7000 m3 of sewage per hour. The tests were carried out at six workstations described in Table 6.

4.2. Airborne Dust Concentration Measurement

A portable laser photometer DustTrak™ DRX Aerosol Monitor 8533 (TSI, Shoreview, MN, USA) was used to measure airborne dust concentration. Size-segregated mass concentrations of particulate matter (PM) corresponding to PM1 (particles and droplets with diameters < 1 μm), PM2.5 (<2.5 μm), PM4 (<4 μm), PM10 (<10 μm) and total PM (all particles from the measured diameter size range) were determined. The instrument’s detection range ranged from 0.001 to 150 mg m−3 for particles 0.1–15 μm in size. Zero calibration was performed prior to each experiment. The measurements were obtained at the height of 1.5 m from ground level in triplicates for each location, with a sampling rate of 3 L min−1 and a sampling interval of 5 s.

4.3. Microbial Contamination Analysis

Microorganism numbers were determined for the air and settled dust from the sewage treatment plant workstations.
Microbiological contamination of the air was determined using a MAS-100 Eco Air Sampler (Merck, Germany) according to the EN 13098 standard. Air samples of 20 L–100 L were collected onto MEA (Malt Extract Agar, Merck, Germany) medium with (0.1%) chloramphenicol (fungi); DG18 Agar (DG18 LAB -AGAR™, Biocorp, Poland) (xerophilic fungi); TSA (Triptic Soy Agar, Merck, Germany) with (0.2%) nystatin (bacteria); Columbia Blood Agar, (Oxoid, France) (haemolytic Staphylococcus spp.); Pochon’s agar (Labomix, Poland) with (0.2%) nystatin (actinomycetes); Chapman Agar (Merck, Germany) (mannitol-positive Staphylococcus spp.); King B medium (Hi Media Laboratories, India) (Pseudomonas fluorescens); and Violet Red Bile Glucose Agar (VRBG LAB-AGAR, Biocorp, Poland) (Enterobacteriaceae). Samples of air were collected from three locations at the height of 1.5 m during routine work (Table 6). Atmospheric air samples (external background) were collected at a distance of 0.5 km from the sewage treatment plant.
Samples of settled dust from working environments were microbiologically analysed. For this purpose, 10–15 g the dust samples from flat surfaces of technological devices were collected in sterile containers, mixed, and 0.1 g of each of the mixed samples was suspended in 9.9 mL of saline solution (0.85% NaCl). The samples were diluted from 10−2 to 10−6 in triplicates and plated onto the abovementioned media.
All samples (air, dust) were incubated at either 37 °C ± 2 °C for 24–48 h (Enterobacteriaceae, mannitol-positive Staphylococcus spp., haemolytic Staphylococcus spp.), 25 °C ± 2 °C for 5–7 days (fungi, xerophilic fungi, actinomycetes), or 30 °C ± 2 °C for 48 h (bacteria, Pseudomonas fluorescens).
After incubation, the colonies were counted, and the results were expressed in CFU m−3 for air and CFU g−1 for settled dust. The final result was calculated as the arithmetic mean of three independent repetitions.

4.4. Assessment of Microbial Diversity by High-Throughput Sequencing

Air and dust samples for DNA extraction were collected from Workstation 4. Air (7000 L) was passed through sterile gelatine filters (80 mm, 0.3 µL Sartorius, Goettingen, Germany) using AirPort MD 8 (Sartorius, Goettingen, Germany).
Genomic DNA was isolated using a modified method based on Genomic Mini AX Bacteria + set (A&A Biotechnology, Poland). Additional mechanical lysis of the samples in a FastPrep-24 device type was performed using zirconium oxide beads. After the isolation, the DNA was additionally treated using Anti-Inhibitor Kit (A&A Biotechnology, Poland). The presence of bacterial DNA in the tested samples was confirmed with the real-time PCR. The real-time PCR reaction was carried out in Mx3000P thermocycler (Stratagene, La Jolla, CA, USA), using SYBR Green dye as a fluorochrome. The isolated DNA concentration ranged from 2 to 30 µg mL−1. Universal starters [55] amplifying the 16s rRNA bacterial gene’s fragment were used in the reaction. Before the library of V3-V4 and ITS amplicons were prepared, the DNA eluates had been checked for their quality and quantity. The libraries were prepared according to the guidelines of 16S Metagenomic Sequencing Library Preparation Part # 15044223 Rev. B; Herculase II Fusion DNA Polymerase Nextera XT Index Kit V2 was used for the two-step PCR.
The libraries were prepared by Macrogen (South Korea). The library’s quality was checked according to Illumina qPCR Quantification Protocol Guide.
The sequencing was performed by Macrogen (South Korea) using the paired-end technology on Illumina MiSeq (2 × 300 bp) platform.
Bioinformatic analysis of the sequencing results was carried out for qualitative and quantitative taxonomic identification as described by [56]. The analysis was performed using CLC Genomic Workbench v. 12 (Qiagen) + Microbial Genomics Module Plugin v. 4.1 (Qiagen).

4.5. Analysis of Endotoxin in Dust Samples

3-hydroxy fatty acids (3-OH FAs), which are unique compounds within the conserved portion of lipopolysaccharides (LPS), were used to identify endotoxins in settled dust samples from the waste sorting plant. The samples were subjected to hydrolysis to obtain fatty acid methyl esters in a 2M methanolic HCl at 85 °C for 18 h. Then they were extracted to a solid phase. The material was derivatised to obtain silyl derivatives using bis(trimethylsilyl)-trifluoroacetamide (Merck) and pyridine at 60 °C for 20 min. A quantitative analysis was performed using deuterated 3-hydroxytetradecanoic acid.
The derivatives were analysed using gas chromatography-mass spectrometry (Agilent GC 7890B) at a DB-5ms column (Agilent) at 150–280 °C (6 °C/min), MS/MS in the SIM mode. The results were expressed in LPS nmol per mg of dust.

4.6. Secondary Metabolites

For secondary metabolite analyses, air samples (2000 L) from gelatine filters and 1 g of dust were dissolved in 8 and 10 mL extraction solvent (acetonitrile/water/acetic acid 79:20:1, v/v/v), respectively. Next, dust and air samples were extracted for 90 min and diluted in the same solvent volume prior to injection. Secondary metabolite concentrations were analysed and quantified using LC-MS/MS, as described by Sulyok et al. with further modification [57]. Parameters for liquid chromatography and mass spectrometry are described elsewhere [57]. The limits of detection (LOD) of extrolites are presented in supplementary materials Table S3.

4.7. Cell Culture and Cytotoxicity Testing

Human adenocarcinoma lung (alveolar) epithelial cell line A-549 (Cell Line Service GmbH, Germany) from passage 36 was used as a model cell line for dust and air pollution cytotoxicity testing [20]. In short, the cells were cultured (37 °C, 5% CO2) as a monolayer in Dulbecco’s modified Eagle’s medium:Ham’s F12 basic (1:1, v/v, CLS GmbH, Germany) with 2 mM glutamine, 5% foetal bovine serum (FBS; CLS GmbH, Germany) and 25 mM of HEPES (Sigma-Aldrich). After reaching 80% confluence, cells were detached, centrifuged (187× g, 5 min) and re-suspended in fresh culture medium. The number of cells and viability was assessed with a haemocytometer by trypan blue exclusion.
Dust samples were suspended in culture medium, mixed (stock dust concentration was 100 mg mL−1), extracted (40 min, 160 rpm), pH adjusted to neutral (7.0 ± 0.2) and double filtered (0.22 m, Membrane Solutions, Auburn, WA, USA). The final tested concentrations of extract were from 0.3 to 20 mg mL−1. Cytotoxicity was estimated with MTT (3-(4,5-dimethylthiazol-2-yl)-2,5-diphenyltetrazolium bromide) assay as described previously [58]. The cells were exposed to dust extract for 48 and 72 h (37 °C, 5% CO2). The morphology of A-549 cells was controlled under an inverted microscope Nikon Ts2 with contrast EMBOSS, integrated with a digital camera Jenoptic Subra Full HD Color. The IC50 was determined both from the plotted curves and according to the OECD Guidelines for the Testing of Chemicals [59,60].

4.8. UHPLC-Q-ToF-UHRMS Analysis

Dust samples (1 g) were suspended in 1 mL LC-MS-grade methanol purchased from Aldrich (Poland) and extracted (1 h, 150 rpm, ambient temperature). Methanol extracts were filtered through syringe filters (0.22 m) (Membrane Solutions, Auburn, WA USA), transferred into HPLC vials and inserted into Elute autosampler. A sample chamber of the autosampler was held at 5 °C for analysis time.
Instrumental configuration consisted of a Bruker Elute UHPLC system operated by Hystar 3.3 software and a mass spectrometer Bruker Impact II (Bruker Daltonik GmbH) ESI QTOF-MS equipped with Data Analysis 4.2 (Bruker Daltonik GmbH), TASQ (2021b) and Metaboscape (ver. 2021b). A Bruker UHPLC column Intensity Solo (C18 silica, 1.8 μm particles, 100 × 2.1 mm) with column guard was used for all analyses. Two mobile phases were: A = Water/methanol (99:1) with 5 mM ammonium formate and 0.01% formic acid, B = Methanol with 5 mM ammonium formate and 0.01% formic acid (v/v). All chemicals were of analytical reagent grade. Deionised water (18 MΩ.cm) was produced locally. Autosampler was held at a temperature of 4 °C. The volume of 5 μL of the extract was loaded on the column at a flow rate of 200 μL min−1, using 4% B. For Targetscreener bbCID measurements B percentage was changed with time: 1 min—18.3% B, 2.5 min—50%, 14–16 min 99.9%, 16.1–20 min—4%. The solvent flow was 200 μL min−1 from 0 to 1 min, gradually changing from 200 to 223 μL min−1 from 1 to 2.5 min and from 223 μL min−1 to 400 μL min−1 from 2.5 to 14 min, then from 400 μL min−1 to 480 μL min−1 from 14 to 19 min and back to 200 μL min−1 from 19.1 to 20 min. For AutoMSMS measurements, flows and percentages were identical as provided above with the exception that 99.9% B was held up to 25 min at 480 μL min−1 and 4% B was from 26.1 to 30 min. The column was held at 40 °C. The column exit was connected to ESI source. Internal calibration on 10 mM sodium formate (water: isopropanol 1:1 v/v) ions was performed automatically in Metaboscape using a syringe pump at an infusion flow rate of 0.12 mL h−1, using a high precision calibration (HPC) mode. Analyses in positive bbCID mode were carried out using the following parameters: 50–1000 m/z; capillary voltage: 4 kV; nebuliser: 4 bar; dry gas: 8 L min−1; drying gas temperature: 200 °C; hexapole voltage: 30 Vpp; funnel 1: 300 Vpp; funnel 2: 300 Vpp; pre-pulse storage time: 8 μs; transfer time: 60 μs. For autoMSMS mode m/z range was 50-1500, CID (collision-induced dissociation) was used with the following settings: absolute area threshold: 5000 counts; active exclusion 2 spectra; release after 0.3 min, isolation mass: for m/z = 100, the width was 4, for 300 it was 5, for 500 it was 6 and for 1000 it was 8): 15, 10, 5 eV; collision energy values was 30 eV. Targeted identification was performed in TASQ (ver. 2021b). The untargeted annotations were performed in Metaboscape (ver. 2021b) with a criterion of mass deviation (Δm/z) under 2 ppm and mSigma value under 15 as the maximum acceptable deviation of the mass of the compound and the isotopic pattern, respectively. The molecular formulas were obtained using the Smart Formula tool and the C, H, N, O, P, S, Cl, Br, I and F elements. MSMS spectra were automatically matched against MSMS libraries: Bruker HMDB 2.0 library, MassBank of North America (MoNA) library [61] and NIST ver. 2014 MSMS library [62].

4.9. Statistical Analysis

Statistical analyses were conducted using Statistica 13.1 (Statsoft, Tulsa, OK, USA). Descriptive statistics for all variables of interest were calculated. Microorganism numbers in the air and dust samples as well as microclimatic conditions and dust concentrations were compared between the tested workstations using one-way analysis of variance (ANOVA) at a significance level of 0.05 following Levene’s test. When a statistical difference was detected (p < 0.05), means were compared using Tukey’s post-hoc procedure at a 0.05 significance level.
For cytotoxicity testing, two-way analysis of variance (ANOVA) was conducted using OriginPro 6.1 (Northampton, MA, USA) software to evaluate the experimental data. The significant differences between the means were compared using Scheffe’s multiple comparison test, and they were accepted to be significant at p < 0.05.
Linear regression analysis was used to determine the correlation between the number of microorganisms in the air and settled dust at particular locations within the cattle farm. The significance tests were performed at the 0.05 significance level using a literature correlation scale [63].

Supplementary Materials

The following are available online at https://www.mdpi.com/article/10.3390/toxins13100691/s1. Table S1: Diversity of bacterial/archaeal genera in dust and air samples. Table S2: Diversity of fungal genera in dust and air samples. Table S3: The limits of detection of extrolites in dust samples. Figure S1: EICs of DDAC-C10 ions measured with bbCID Targetscreener positive method.

Author Contributions

Conceptualization, K.M. and B.G.; methodology, J.S., M.O., M.S., A.N., T.R., J.N. and B.S.; soft-ware, M.S., B.S. and T.R.; formal analysis, J.S. and M.O.; investigation, J.S., M.O., M.S., A.N., T.R., J.N. and B.S.; resources, J.S., M.O., M.S., A.N., T.R., J.N. and B.S.; data curation, J.S., M.O., T.R. and J.N.; writing—original draft preparation, J.S., A.N. and J.N.; writing—review and editing, J.S. and M.O.; visualization, J.S., M.O. and A.N.; supervision, B.G. and K.M.; project administration, K.M.; funding acquisition, K.M. and B.G. All authors have read and agreed to the published version of the manuscript.

Funding

This paper has been based on the results of a research task carried out within the fifth stage of the National Programme “Improvement of safety and working conditions” partly supported in 2021–2022—within the scope of state services—by the Minister responsible for labour (task no. 3.SP.07 entitled ‘Development of an application for the selection of respiratory protective devices against bioaerosol in selected work environments’). The Central Institute for Labour Protection–National Research Institute is the Programme’s main co-ordinator.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are available on request from the corresponding author.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Wu, L.; Ning, D.; Zhang, B.; Li, Y.; Zhang, P.; Shan, X.; Zhang, Q.; Brown, M.R.; Li, Z.; Van Nostrand, J.D.; et al. Global diversity and biogeography of bacterial communities in wastewater treatment plants. Nat. Microbiol. 2019, 4, 1183–1195. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  2. Han, Y.; Li, L.; Wang, Y.; Ma, J.; Li, P.; Han, C.; Liu, J. Composition, dispersion, and health risks of bioaerosols in wastewater treatment plants: A review. Front. Environ. Sci. Eng. 2020, 15, 38. [Google Scholar] [CrossRef]
  3. Central Statistical Office (GUS) Environmental Protection. 2019. Available online: https://stat.gov.pl/obszary-tematyczne/srodowisko-energia/srodowisko/ochrona-srodowiska-2019,1,20.html (accessed on 24 August 2021).
  4. European Environment Agency Urban Waste Water Directive Treatment Plants Data Viewer. Available online: https://www.eea.europa.eu/themes/water/european-waters/water-use-and-environmental-pressures/uwwtd/data-viewer-urban-wastewater-treatment-directive-1/urban-waste-water-directive-treatment (accessed on 24 August 2021).
  5. Michałkiewicz, M.; Kruszelnicka, I.; Widomska, M. The Variability of the Concentration of Bioaerosols Above the Chambers of Biological Wastewater Treatment. Ecol. Chem. Eng. 2018, 25, 267–278. [Google Scholar] [CrossRef] [Green Version]
  6. Yang, T.; Jiang, L.; Han, Y.; Liu, J.; Wang, X.; Yan, X.; Liu, J. Linking aerosol characteristics of size distributions, core potential pathogens and toxic metal(loid)s to wastewater treatment process. Environ. Pollut. 2020, 264, 114741. [Google Scholar] [CrossRef] [PubMed]
  7. Wlazło, A.; Pastuszka, J.S.; Łudzeń-Izbińska, B. Assessment of workers’ exposure to airborne bacteria at a small wastewater treatment plant. Med. Pr. 2002, 53, 109–114. [Google Scholar] [PubMed]
  8. Gotkowska-Płachta, A.; Filipkowska, Z.; Korzeniewska, E.; Janczukowicz, W.; Dixon, B.; Gołaś, I.; Szwalgin, D. Airborne Microorganisms Emitted from Wastewater Treatment Plant Treating Domestic Wastewater and Meat Processing Industry Wastes. CLEAN Soil Air Water 2013, 41, 429–436. [Google Scholar] [CrossRef]
  9. Li, J.; Zhou, L.; Zhang, X.; Xu, C.; Dong, L.; Yao, M. Bioaerosol emissions and detection of airborne antibiotic resistance genes from a wastewater treatment plant. Atmos. Environ. 2016, 124, 404–412. [Google Scholar] [CrossRef]
  10. Han, Y.; Wang, Y.; Li, L.; Xu, G.; Liu, J.; Yang, K. Bacterial population and chemicals in bioaerosols from indoor environment: Sludge dewatering houses in nine municipal wastewater treatment plants. Sci. Total Environ. 2018, 618, 469–478. [Google Scholar] [CrossRef] [PubMed]
  11. Han, Y.; Yang, K.; Yang, T.; Zhang, M.; Li, L. Bioaerosols emission and exposure risk of a wastewater treatment plant with A2O treatment process. Ecotoxicol. Environ. Saf. 2019, 169, 161–168. [Google Scholar] [CrossRef]
  12. Gaviria-Figueroa, A.; Preisner, E.C.; Hoque, S.; Feigley, C.E.; Norman, R.S. Emission and dispersal of antibiotic resistance genes through bioaerosols generated during the treatment of municipal sewage. Sci. Total Environ. 2019, 686, 402–412. [Google Scholar] [CrossRef]
  13. Dehghani, M.; Sorooshian, A.; Ghorbani, M.; Fazlzadeh, M.; Miri, M.; Badiee, P.; Parvizi, A.; Ansari, M.; Baghani, A.N.; Delikhoon, M. Seasonal Variation in Culturable Bioaerosols in a Wastewater Treatment Plant. Aerosol Air Qual. Res. 2018, 18, 2826–2839. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  14. Smit, L.A.M.; Heederik, D.; Doekes, G.; Blom, C.; van Zweden, I.; Wouters, I.M. Exposure-response analysis of allergy and respiratory symptoms in endotoxin-exposed adults. Eur. Respir. J. 2008, 31, 1241–1248. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  15. Krajewski, J.A.; Cyprowski, M.; Szymczak, W.; Gruchała, J. Health complaints from Workplace exposure to bioaerosols: A quwstionnaire stydy in sewage workers. Ann. Agric. Environ. Med. 2004, 11, 199–204. [Google Scholar]
  16. Thorn, J.; Kerekes, E. Health effects among employees in sewage treatment plants: A literature survey. Am. J. Ind. Med. 2001, 40, 170–179. [Google Scholar] [CrossRef] [PubMed]
  17. Korzeniewska, E. Emission of bacteria and fungi in the air from wastewater treatment plants—A review. Front. Biosci. 2011, S3, 159. [Google Scholar] [CrossRef] [Green Version]
  18. Szyłak-Szydłowski, M.; Kulig, A.; Miaśkiewicz-Pęska, E. Seasonal changes in the concentrations of airborne bacteria emitted from a large wastewater treatment plant. Int. Biodeterior. Biodegrad. 2016, 115, 11–16. [Google Scholar] [CrossRef]
  19. Skóra, J.; Matusiak, K.; Wojewódzki, P.; Nowak, A.; Sulyok, M.; Ligocka, A.; Okrasa, M.; Hermann, J.; Gutarowska, B. Evaluation of microbiological and chemical contaminants in poultry farms. Int. J. Environ. Res. Public Health 2016, 13, 192. [Google Scholar] [CrossRef]
  20. Gutarowska, B.; Szulc, J.; Nowak, A.; Otlewska, A.; Okrasa, M.; Jachowicz, A.; Majchrzycka, K. Dust at various workplaces-microbiological and toxicological threats. Int. J. Environ. Res. Public Health 2018, 15, 877. [Google Scholar] [CrossRef] [Green Version]
  21. Korzeniewska, E.; Filipkowska, Z.; Gotkowska-Płachta, A.; Janczukowicz, W.; Dixon, B.; Czułowska, M. Determination of emitted airborne microorganisms from a BIO-PAK wastewater treatment plant. Water Res. 2009, 43, 2841–2851. [Google Scholar] [CrossRef]
  22. Korzeniewska, E.; Filipkowska, Z.; Gotkowska-Płachta, A.; Janczukowicz, W.; Rutkowski, B. Bacteriological pollution of the atmospheric air at the municipal and dairy wastewater treatment plant area and in its surroundings. Arch. Environ. Prot. 2008, 34, 13–23. [Google Scholar]
  23. 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-Sr.-Obsz. Wiej. 2008, 8, 69–82. [Google Scholar]
  24. Nierychlo, M.; McIlroy, S.J.; Kucheryavskiy, S.; Jiang, C.; Ziegler, A.S.; Kondrotaite, Z.; Stokholm-Bjerregaard, M.; Nielsen, P.H. Candidatus Amarolinea and Candidatus Microthrix Are Mainly Responsible for Filamentous Bulking in Danish Municipal Wastewater Treatment Plants. Front. Microbiol. 2020, 11. [Google Scholar] [CrossRef]
  25. Jon McIlroy, S.; Kristiansen, R.; Albertsen, M.; Michael Karst, S.; Rossetti, S.; Lund Nielsen, J.; Tandoi, V.; James Seviour, R.; Nielsen, P.H. Metabolic model for the filamentous ‘Candidatus Microthrix parvicella’ based on genomic and metagenomic analyses. ISME J. 2013, 7, 1161–1172. [Google Scholar] [CrossRef] [PubMed]
  26. Pomorska, D.; Larsson, L.; Skórska, C.; Sitkowska, J.; Dutkiewicz, J. Levels of bacterial endotoxin in the samples of settled dust collected in animal houses. Bull. Vet. Inst. Pulawy 2009, 53, 37–41. [Google Scholar]
  27. Park, J.-H.; Szponar, B.; Larsson, L.; Gold, D.R.; Milton, D.K. Characterization of Lipopolysaccharides Present in Settled House Dust. Appl. Environ. Microbiol. 2004, 70, 262–267. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  28. Melbostad, E.; Eduard, W.; Skogstad, A.; Sandven, P.; Lassen, J.; Søstrand, P.; Heldal, K. Exposure to bacterial aerosols and work-related symptoms in sewage workers. Am. J. Ind. Med. 1994, 25, 59–63. [Google Scholar] [CrossRef] [PubMed]
  29. Laitinen, S.; Nevalainen, A.; Kotimaa, M.; Liesivuori, J.; Martikainen, P.J. Relationship between bacterial counts and endotoxin concentrations in the air of wastewater treatment plants. Appl. Environ. Microbiol. 1992, 58, 3774–3776. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  30. Peterson, A.A.; Munford, R.S. Dephosphorylation of the lipid A moiety of Escherichia coli lipopolysaccharide by mouse macrophages. Infect. Immun. 1987, 55, 974–978. [Google Scholar] [CrossRef] [Green Version]
  31. Steimle, A.; Autenrieth, I.B.; Frick, J.-S. Structure and function: Lipid A modifications in commensals and pathogens. Int. J. Med. Microbiol. 2016, 306, 290–301. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  32. Reich, J.; Weyer, F.; Tamura, H.; Nagaoka, I.; Motschmann, H. Low Endotoxin Recovery—Masking of Naturally Occuring Endotoxin. Int. J. Mol. Sci. 2019, 20, 838. [Google Scholar] [CrossRef] [Green Version]
  33. Yan, A.; Guan, Z.; Raetz, C.R.H. An Undecaprenyl Phosphate-Aminoarabinose Flippase Required for Polymyxin Resistance in Escherichia coli. J. Biol. Chem. 2007, 282, 36077–36089. [Google Scholar] [CrossRef] [Green Version]
  34. Ławniczek-Wałczyk, A.; Górny, R.L. Endotoxins and β-glucans as markers of microbiological contamination—Characteristics, detection, and environmental exposure. Ann. Agric. Environ. Med. 2010, 17, 193–208. [Google Scholar]
  35. Degobbi, C.; Saldiva, P.H.N.; Rogers, C. Endotoxin as modifier of particulate matter toxicity: A review of the literature. Aerobiologia 2011, 27, 97–105. [Google Scholar] [CrossRef]
  36. Schlosser, O.; Robert, S.; Noyon, N. Airborne mycotoxins in waste recycling and recovery facilities: Occupational exposure and health risk assessment. Waste Manag. 2020, 105, 395–404. [Google Scholar] [CrossRef]
  37. Lu, C.-L.; Lin, H.-I.; Chen, B.-F.; Jow, G.-M. Beauvericin-induced cell apoptosis through the mitogen-activated protein kinase pathway in human nonsmall cell lung cancer A549 cells. J. Toxicol. Sci. 2016, 41, 429–437. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  38. Lee, H.-S.; Song, H.-H.; Jeong, J.-H.; Shin, C.-G.; Choi, S.-U.; Lee, C. Cytotoxicities of enniatins H, I, and MK1688 from Fusarium oxysporum KFCC 11363P. Toxicon 2008, 51, 1178–1185. [Google Scholar] [CrossRef] [PubMed]
  39. IARC (International Agency for Research on Cancer). Monographs on the Evaluation of Carcinogenic Risks to Humans: Agents Classified by the IARC Monographs; IARC: Lyon, France, 2012; Volume 1. [Google Scholar]
  40. Jia, C.; Batterman, S. A Critical Review of Naphthalene Sources and Exposures Relevant to Indoor and Outdoor Air. Int. J. Environ. Res. Public Health 2010, 7, 2903–2939. [Google Scholar] [CrossRef] [PubMed]
  41. Kwon, D.Y.; Kim, E.; Kwon, J.-T.; Lee, D.-H.; Park, S.-Y.; Kim, H.-M.; Kim, P.; Choi, K. Ethylene glycol potentiated didecyldimethylammonium chloride toxicity in human bronchial epithelial cells. Mol. Cell. Toxicol. 2015, 11, 161–166. [Google Scholar] [CrossRef]
  42. ECRI. Disinfectant Concentrations, Contact Times, and Use Settings for EPA’s List of Products Effective against SARS-CoV-2, the Cause of COVID-19; ECRI: Plymouth Meeting, PA, USA, 2020. [Google Scholar]
  43. Heir, E.; Sundheim, G.; Holck, A.L. The qacG gene on plasmid pST94 confers resistance to quaternary ammonium compounds in staphylococci isolated from the food industry. J. Appl. Microbiol. 1999, 86, 378–388. [Google Scholar] [CrossRef]
  44. Sundheim, G.; Langsrud, S.; Heir, E.; Holck, A.L. Bacterial resistance to disinfectants containing quaternary ammonium compounds. Int. Biodeterior. Biodegrad. 1998, 41, 235–239. [Google Scholar] [CrossRef]
  45. Chapman, J.S. Disinfectant resistance mechanisms, cross-resistance, and co-resistance. Int. Biodeterior. Biodegrad. 2003, 51, 271–276. [Google Scholar] [CrossRef]
  46. Littlejohn, T. Substrate specificity and energetics of antiseptic and disinfectant resistance in Staphylococcus aureus. FEMS Microbiol. Lett. 1992, 95, 259–265. [Google Scholar] [CrossRef]
  47. Lemaître, J.P.; Echchannaoui, K.; Michaut, G.; Divies, C.; Rousset, A. Plasmid-Mediated Resistance to Antimicrobial Agents among Listeriae. J. Food Prot. 1998, 61, 1459–1464. [Google Scholar] [CrossRef] [PubMed]
  48. Abarikwu, S.; Pant, A.; Farombi, E. 4-Hydroxynonenal induces mitochondrial-mediated apoptosis and oxidative stress in SH-SY5Y human neuronal cells. Basic Clin. Pharmacol. Toxicol. 2012, 110, 441–448. [Google Scholar] [CrossRef]
  49. Gupta, R.C. Carbofuran toxicity. J. Toxicol. Environ. Health 1994, 43, 383–418. [Google Scholar] [CrossRef]
  50. Parrish, N.; Kuhajda, F.; Heine, H.; Bishai, W.; Dick, J. Antimycobacterial activity of cerulenin and its effects on lipid biosynthesis. J. Antimicrob. Chemother. 1999, 43, 219–226. [Google Scholar] [CrossRef] [Green Version]
  51. Olivares-Bañuelos, T.N.; Martínez-Hernández, I.; Hernández-Kelly, L.C.; Chi-Castañeda, D.; Vega, L.; Ortega, A. The neurotoxin diethyl dithiophosphate impairs glutamate transport in cultured Bergmann glia cells. Neurochem. Int. 2019, 123, 77–84. [Google Scholar] [CrossRef]
  52. Debieu, D.; Gall, C.; Gredt, M.; Bach, J.; Malosse, C.; Leroux, P. Ergosterol biosynthesis and its inhibition by fenpropimorph in Fusarium species. Phytochemistry 1992, 31, 1223–1233. [Google Scholar] [CrossRef]
  53. Sanctucci, K.; Shah, B. Association of Naphthalene with Acute Hemolytic Anemia. Acad. Emergy Med. 2000, 7, 42–47. [Google Scholar] [CrossRef]
  54. Abramson, S.N.; Radic, Z.; Manker, D.; Faulkner, D.J.; Taylor, P. Onchidal: A naturally occurring irreversible inhibitor of acetylcholinesterase with a novel mechanism of action. Mol. Pharmacol. 1989, 36, 349–354. [Google Scholar]
  55. Ferris, M.J.; Muyzer, G.; Ward, D.M.; Spring, O. Denaturing Gradient Gel Electrophoresis Profiles of 16S rRNA-Defined Populations Inhabiting a Hot Spring Microbial Mat Community. Appl. Environ. Microbiol. 1996, 62, 340–346. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  56. Jensen, E.A.; Berryman, D.E.; Murphy, E.R.; Carroll, R.K.; Joshua Busken, J.B. Reports analysis of mouse gut microbiomes via greater nucleotide diversity. Biotechniques 2019, 67, 55–62. [Google Scholar] [CrossRef] [PubMed]
  57. Sulyok, M.; Stadler, D.; Steiner, D.; Krska, R. Validation of an LC-MS/MS-based dilute-and-shoot approach for the quantification of >500 mycotoxins and other secondary metabolites in food crops: Challenges and solutions. Anal. Bioanal. Chem. 2020, 412, 2607–2620. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  58. Szulc, J.; Okrasa, M.; Dybka-Stępień, K.; Sulyok, M.; Nowak, A.; Otlewska, A.; Szponar, B.; Majchrzycka, K. Assessment of microbiological indoor air quality in cattle breeding farms. Aerosol Air Qual. Res. 2020, 20, 1353–1373. [Google Scholar] [CrossRef] [Green Version]
  59. OECD Guidelines for the Testing of Chemicals, Section 4. Test No. 442D: In Vitro Skin Sensitisation Are-nrf2 Luciferase Test Method. Available online: https://ntp.niehs.nih.gov/iccvam/suppdocs/feddocs/oecd/oecd-tg442d-508.pdf (accessed on 24 August 2021).
  60. GESTIS: International Occupational Exposure Limit Values for Chemical Agents. Available online: https://limitvalue.ifa.dguv.de/ (accessed on 24 August 2021).
  61. MassBank of North America (MoNA). Available online: https://mona.fiehnlab.ucdavis.edu/ (accessed on 24 August 2021).
  62. National Institute of Standards and Technology Mass Spectrometry Data Center. Available online: https://chemdata.nist.gov/ (accessed on 24 August 2021).
  63. Hinkle, D.; Wiersma, W.; Jurs, S.G. Applied Statistics for Behavioral Sciences, 5th ed.; Houghton Mifflin Harcourt: Boston, MA, USA, 2003. [Google Scholar]
Figure 1. The number of microorganisms in the dust collected from the sludge thickening building in the sewage treatment plant.
Figure 1. The number of microorganisms in the dust collected from the sludge thickening building in the sewage treatment plant.
Toxins 13 00691 g001
Figure 2. Phylogenetic distribution of (a) bacteria and (b) fungi sequences assigned to the genera in the dust and air samples.
Figure 2. Phylogenetic distribution of (a) bacteria and (b) fungi sequences assigned to the genera in the dust and air samples.
Toxins 13 00691 g002
Figure 3. Bacterial endotoxin concentration in settled dust from the sewage treatment plant.
Figure 3. Bacterial endotoxin concentration in settled dust from the sewage treatment plant.
Toxins 13 00691 g003
Figure 4. Curve presenting cytotoxic activity of water-soluble dust sample fractions towards A-549 cells. Each point stands for the mean absorbance values from four repetitions (±SD). Results statistically different from negative control: a after 48 h; b after 72 h exposition (p < 0.05, ANOVA).
Figure 4. Curve presenting cytotoxic activity of water-soluble dust sample fractions towards A-549 cells. Each point stands for the mean absorbance values from four repetitions (±SD). Results statistically different from negative control: a after 48 h; b after 72 h exposition (p < 0.05, ANOVA).
Toxins 13 00691 g004
Figure 5. Morphology of human lung cells A-549 in culture after 48-h exposition to dust sample. Objectives 20 and 40× (Nikon Ts2, contrast EMBOSS, Japan).
Figure 5. Morphology of human lung cells A-549 in culture after 48-h exposition to dust sample. Objectives 20 and 40× (Nikon Ts2, contrast EMBOSS, Japan).
Toxins 13 00691 g005
Table 1. Microclimate parameters in the sewage treatment plant.
Table 1. Microclimate parameters in the sewage treatment plant.
No.*Temperature (°C)Relative Humidity (%)Airflow Rate (m s−1)
1M:17.6 bM:71.0 aM:0.87 d
SD:0.3SD:1.8SD:0.28
2M:17.4 bM:73.1 aM:0.55 cd
SD:0.3SD:1.5SD:0.34
3M:20.1 aM:65.3 bdM:0.39 bc
SD:1.0SD:3.2SD:0.11
4M:21.5 aM:57.7 cM:0.03 a
SD:0.5SD:1.3SD:0.01
5M:24.8 cdM:71.1 abM:0.31 abc
SD:0.7SD:4.7SD:0.21
6M:26.4 dM:69.8 abM:0.37 abc
SD:2.7SD:5.1SD:0.10
EBM:22.1 acM:58.2 cdM:0.03 ab
SD:0.2SD:1.0SD:0.02
No.*—tested workstation number; EB—external background (atmospheric air sampled 0.25 km from the sorting plant); M—mean; SD—standard deviation; a, b, c, d—significant statistical differences occur for the means marked with different letters within the particular parameter (column), ANOVA, p < 0.05; Tukey’s HSD test, p < 0.05.
Table 2. Airborne dust concentration in the sewage treatment plant.
Table 2. Airborne dust concentration in the sewage treatment plant.
No.Dust Concentration Corresponding to Different Fractions, mg m−3
PM1PM2.5PM4PM10PMtotal
1M:0.040 aM:0.040 aM:0.041 bM:0.042 cM:0.044 a
SD:0.081SD:0.081SD:0.082SD:0.087SD:0.099
2M:0.037 acM:0.038 abM:0.038 abM:0.040 abcM:0.041 ab
SD:0.004SD:0.004SD:0.005SD:0.007SD:0.008
3M:0.036 acM:0.037 acM:0.037 abM:0.038 abM:0.040 ab
SD:0.003SD:0.003SD:0.003SD:0.005SD:0.011
4M:0.032 bM:0.033 bM:0.035 acM:0.041 abcM:0.043 a
SD:0.006SD:0.006SD:0.006SD:0.009SD:0.013
5M:0.044 bM:0.044 bM:0.045 cM:0.047 dM:0.047 b
SD:0.005SD:0.005SD:0.005SD:0.006SD:0.007
6M:0.033 bcM:0.034 bcM:0.034 acM:0.037 adM:0.039 ab
SD:0.006SD:0.006SD:0.006SD:0.008SD:0.012
EBM:0.030 aM:0.030 aM:0.031 bM:0.034 bcM:0.036 a
SD:0.006SD:0.006SD:0.007SD:0.010SD:0.017
No.—tested workstation number; EB—external background (atmospheric air sampled 0.25 km from the sorting plant); M—mean; SD—standard deviation; a, b, c, d—statistically significant differences occur for the means marked with different letters within the particular dust fraction (ANOVA, α = 0.05; Tukey’s HSD test, α = 0.05).
Table 3. Microorganisms count in the sewage treatment plant air.
Table 3. Microorganisms count in the sewage treatment plant air.
No.Microorganisms Count, CFU m−3
BacteriaActinomycetesMannitol-Positive StaphylococciEnterobacteriaceaePseudomonas fluorescensHaemolytic StaphylococciFungiXerophilic Fungi
1M:7.75 × 102 AM:0.00 AM:2.50 × 100 AM:2.50 × 100 AM:4.00 × 101 BM:5.75 × 101 AM:2.75 × 103 AM:1.89 × 103 A
SD:5.74 × 101SD: 0.00SD:5.00 × 100SD:5.00 × 100SD:8.16 × 100SD:5.00 × 100SD:5.11 × 102SD:7.54 × 102
2M:3.75 × 102 AM:1.50 × 101 BM:2.50 × 100 AM:1.50 × 101 AM:1.50 × 101 AM:5.75 × 101 AM:2.69 × 103 AM:1.87 × 103 A
SD:1.49 × 102SD:1.00 × 101SD:5.00 × 100SD:1.00 × 101SD:1.00 × 101SD:1.71 × 101SD:5.36 × 102SD:3.74 × 102
3M:3.05 × 102 AM:0.00 AM:7.50 × 100 AM:1.50 × 101 AM:7.50 × 100 AM:5.00 × 101 AM:2.13 × 103 AM:1.13 × 103 A
SD:6.40 × 101SD:0.00SD:9.57 × 100SD:1.00 × 101SD:9.57 × 100SD:1.41 × 101SD:4.46 × 102SD:1.13 × 102
4M:3.71 × 103 BM:0.00 AM:6.50 × 101 BM:1.50 × 101 AM:2.00 × 101 ABM:2.10 × 102 AM:1.91 × 103 AM:1.55 × 103 A
SD:7.57 × 102SD:0.00SD:3.00 × 101SD:1.00 × 101SD:1.63 × 101SD:1.01 × 102SD:4.38 × 102SD:1.54 × 102
5M:6.28 × 102 AM:0.00 AM:1.00 × 101 AM:1.98 × 102 CM:1.00 × 101 AM:3.25 × 102 AM:3.23 × 104 BM:1.26 × 104 AB
SD:1.61 × 102SD:0.00SD:1.15 × 101SD:1.07 × 103SD:1.15 × 101SD:4.50 × 102SD:2.34 × 104SD:1.84 × 104
6M:3.38 × 102 AM:0.00 AM:6.75 × 101 BM:6.85 × 101 BM:1.00 × 101 AM:5.00 × 101 AM:2.80 × 104 ABM:2.39 × 104 B
SD:5.06 × 101SD:0.00SD:2.22 × 101SD:9.50 × 101SD:1.15 × 101SD:8.16 × 100SD:1.73 × 104SD:1.97 × 104
EBM:2.15 × 102 AM:1.50 × 101 BM:2.50 × 100 AM:1.00 × 101 AM:0.00 AM:1.50 × 101 AM:1.02 × 104 ABM:1.01 × 104 AB
SD:6.81 × 101SD:1.00 × 101SD:5.00 × 100SD:0.00 × 100SD:0.00SD:1.00 × 101SD:1.08 × 104SD:1.09 × 104
No.—tested workstation number; EB—external background (atmospheric air sampled 0.25 km from the sorting plant); M—mean; SD—standard deviation; A, B, C—the means marked with the same letter in the same column do not differ in a statistically significant way (Tukey’s HSD test; p < 0.05).
Table 4. The concentration of metabolites detected in the air and dust settled at the workstations in the sewage treatment plant.
Table 4. The concentration of metabolites detected in the air and dust settled at the workstations in the sewage treatment plant.
MetaboliteConcentration
Air, ng m−3Dust, ng g−1
3-Nitropropionic acid1.985.87
Quinolactacin A<LOD1.58
Citreohybridinol<LOD3.49
Flavoglaucin1.541.65
Pentoxifylline<LOD0.90
Beauvericin<LOD0.24
Enniatin A1<LOD0.58
Enniatin B<LOD2.32
Enniatin B1<LOD1.21
Lecanoric acid<LOD129
Usnic acid<LOD14.0
Prunasin<LOD23.1
Asperglaucide<LOD2.30
Asperphenamate0.467.37
cyclo(L-Pro-L-Tyr)<LOD18.1
Emodin<LOD2.59
<LOD—below the limit of detection.
Table 5. Identification parameters of toxic compounds found in dust.
Table 5. Identification parameters of toxic compounds found in dust.
CompoundRT, minMeasured m/zMass Error, ppmMolecular FormulaIon FormulaMeas. ModemSigmaMS/MS
Didecyldimethylammonium chloride12.11326.380.49C22H48ClN[M−Cl]++bbCID8.0yes
4-Hydroxynonenal6.15157.121.25C9H16O2[M+H]++AutoMSMS5.6yes
Carbofuran29.92222.110.94C12H15NO3[M+H]++AutoMSMS12.1yes
Cerulenin0.08224.130.96C12H17NO3[M+H]++AutoMSMS12.8yes
Diethylphosphate5.78155.050.91C4H11O4P[M+H]++AutoMSMS6.1yes
Fenpropimorph13.42304.260.64C20H33NO[M+H]++AutoMSMS0.8yes
Naphthalene6.73129.070.98C10H8[M+H]++AutoMSMS6.3yes
Onchidal15.62277.180.63C17H24O3[M+H]++AutoMSMS-no
Table 6. Characteristics of the workstations tested in the sewage treatment plant.
Table 6. Characteristics of the workstations tested in the sewage treatment plant.
No.Workstation NameDescription
1Primary settlement tank inletRectangular primary settlement tank (6 tanks ca. 4000 m3 volume each) featured with scrapers. The final stage of sewage mechanical treatment is carried out here. The sludge separated on the bottom is scraped to the hoppers from where it is removed to the fermentation chambers.
2Activated sludge chamber inletActivated sludge rectangular chambers (7 chambers ca. 19,900 m3 volume each). Biological treatment of the sewage is carried out here. Organic and biogenic compounds (nitrogen, phosphorus) from the sewage are decomposed by the microorganisms in the activated sludge. The process varies, depending on a number of factors, including oxygen content, temperature, bacteria genus, supplied sewage characteristics and the adopted treatment method.
3Aeration chambersOxygen (nitrification) zone composed of two piston flow chambers, equipped with a fine bubble aeration system.
4Sludge thickening buildingThe sludge (primary and surplus) is thickened before being fed for further treatment. The primary sludge is gravitationally thickened in primary sludge hoppers and optionally in gravitational hoppers (3 hoppers 539 m3 volume each). The surplus sludge is thickened at sludge belt thickeners (5 thickeners 91.5 m3/h capacity each) using polyelectrolyte. The thickened sludge is stabilised through methane fermentation.
5Screenings storageThe screenings obtained through mechanical treatment are deposited in a separated storage area. A coarse grate with 100 mm mesh size is used in the sewage treatment plant—it protects fine grates against large items supplied by combined sewers. Then the sewage is divided into 1 ÷ 4 lines in the main inlet chamber. Each line is handled by a set of two grates. Hook and slot grates work at two lines (6 mm clearance) and disc screen sets on the other two lines (55 mm clearance), with mills and lamellar grating.
6Sludge lagoonsThe wastewater from the grate room flows into four non-aerated sand traps. The sand collected at the bottom is scraped to the hoppers and pumped as a pulp into scrapers and then to the chamber scrubbers. The removed sand as a mineral (containing less than 3% of organic compounds) is deposited in sludge lagoons.
Microclimatic conditions (temperature, relative humidity, air velocity) were measured using a thermo-anemometer VelociCalc® Multi-Function Velocity Meter 9545 (TSI, Shoreview, MN, USA).
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Szulc, J.; Okrasa, M.; Majchrzycka, K.; Sulyok, M.; Nowak, A.; Ruman, T.; Nizioł, J.; Szponar, B.; Gutarowska, B. Microbiological and Toxicological Hazards in Sewage Treatment Plant Bioaerosol and Dust. Toxins 2021, 13, 691. https://doi.org/10.3390/toxins13100691

AMA Style

Szulc J, Okrasa M, Majchrzycka K, Sulyok M, Nowak A, Ruman T, Nizioł J, Szponar B, Gutarowska B. Microbiological and Toxicological Hazards in Sewage Treatment Plant Bioaerosol and Dust. Toxins. 2021; 13(10):691. https://doi.org/10.3390/toxins13100691

Chicago/Turabian Style

Szulc, Justyna, Małgorzata Okrasa, Katarzyna Majchrzycka, Michael Sulyok, Adriana Nowak, Tomasz Ruman, Joanna Nizioł, Bogumiła Szponar, and Beata Gutarowska. 2021. "Microbiological and Toxicological Hazards in Sewage Treatment Plant Bioaerosol and Dust" Toxins 13, no. 10: 691. https://doi.org/10.3390/toxins13100691

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