Abstract
Bioaerosols are an important component of particulate matter in the atmosphere and are harmful to human health. In this study, the concentration, size distribution, and factors influencing culturable airborne bacteria and fungi in the atmosphere were investigated using a six-stage impactor device in the city of Xinxiang, China, during the winter season. The results revealed that the concentration of culturable airborne bacteria and fungi varied significantly during the sampling period: 4595 ± 3410 and 6358 ± 5032 CFU/m3, respectively. The particle sizes of the bioaerosols were mainly within stage V (1.1–2.1 μm), and fine particulate matter accounted for 45.9% ± 18.9% of airborne bacteria and 52.0% ± 18.5% of airborne fungi, respectively. With the deterioration of air quality, the concentration of airborne fungi gradually increased, and that of airborne bacteria increased when the air quality index was lower than 200 and decreased when it was higher than 200. With respect to the diurnal variation pattern of bioaerosol concentration, the highest and lowest concentrations were registered at night and noon, respectively, probably because of changes in ultraviolet radiation intensity. Bioaerosol concentration positively correlated with humidity, concentration of PM2.5, PM10, SO2, and NO2 and negatively correlated with O3 concentration. The risk of exposure of humans to the airborne bacteria was primarily associated with the respiratory inhalation pathway, and the risk of skin exposure was negligible. These results should improve our understanding of the threat of bioaerosols to public health.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Avoid common mistakes on your manuscript.
Introduction
In the past decades, due to rapid urbanization and industrial and economic development, massive consumption of energy and a rapid increase in traffic have caused a significant increase in the emission of air pollutants as well as deterioration of air quality. An increase in suspended particulate matter (PM) and haze pollution in the atmosphere has been reported worldwide, including in China, and can significantly adversely affect ecosystems and human health (Tao et al. 2014; Zhuang et al. 2014; Latif et al. 2018).
Bioaerosols are a group of organic aerosols with a particle size in the range of nm10–100 mm. Specifically, they include airborne particles and large molecules that either carry living organisms or are released from living organisms (Ariyap and Amyot 2004). The biological organisms or dispersal units (dead or alive, isolated or aggregated), including bacteria, fungi, protozoa, algae, spores, pollen, lichen, archaea, viruses, and their solid fragments or excretions, including detritus, microbial fragments, plant debris/leaf litter, animal tissue and excrements, brochosomes, all comprise the bioaerosol (Després et al., 2012). They are often dispersed attached to other biological or non-biological particles, such as soil, dust, skin flakes, saliva, or water droplets (Zhai et al. 2018). Bioaerosols are an important component of PM and are harmful to human health. They can cause or aggravate skin allergies, respiratory tract infections, asthma, cardiovascular diseases, and chronic lung diseases through damaged skin, the mucosa, digestive tract, and respiratory tract (Douwes et al. 2003; Yamamoto et al. 2012; Walser et al. 2015; Frohlich-Nowoisky et al. 2016). Via microbiological and chemical processes, bioaerosols affect atmospheric chemistry and vice versa. This adverse impact may be harmful and deteriorative (Burrows et al. 2009). Additionally, bioaerosols are closely related to ecological processes and play an important role in the natural cycling of matter (Fang et al. 2016). Research on bioaerosols in an ambient atmosphere has gradually become a hot spot in the field of environmental studies.
Most of China has frequently been affected by severe haze or smog days in recent years. Especially in winter, an anomalous steady atmosphere caused by sudden stratospheric warming has often occurred and is conducive to PM formation and cumulation and to haze pollution (Zhang et al. 2016; Shi et al. 2018). At a high concentration of atmospheric chemicals on haze days, potential synergistic effects between biological and chemical pollutants may further intensify the hazards to human health (WHO 2005). Therefore, it is essential to investigate the bioaerosol characteristics, influencing factors, and risks of resulting exposure for public health in a period of frequent haze days.
Some researchers have focused on studying bioaerosols from the atmospheric environment in recent years (Xu et al. 2011; Xie et al. 2018b; Bragoszewska and Pastuszka 2018). Nonetheless, bioaerosols have significant regional characteristics owing to the broad diversity and tremendous variability of microbial composition. Bioaerosols have different sources of origin and are influenced by seasonal factors, local climatic differences, local human activities, and local wind currents (Shaffer and Lighthart 1997). The concentrations and distribution characteristics of bioaerosols in central China have seldom been investigated. A typical medium-sized city, Xinxiang, was chosen as a model for sampling of culturable bioaerosols in this study. Xinxiang is located in central China and is a Beijing-Tianjin-Hebei Air Pollution Transmission Channel City (2 + 26 City) (Ministry of Ecology and Environment of the People’s Republic of China 2017), which has been affected by haze frequently in recent years. During the winters of 2016–2018, PM2.5 was considered the chief pollutant in the atmosphere of Xinxiang (XEPB 67,68,2018).
The objective of this study was to provide a basis for studying the environmental and health effects of bioaerosols on haze days of winter on public health. It is also expected to serve as a reference for studies on the atmospheric environment of the Beijing-Tianjin-Hebei region and the surrounding area.
Materials and methods
Sampling sites
Xinxiang (35.3 °N, 113.9 °E, 72 m above sea level) is located in the northern Henan Province, has a population of over 6.10 million, and occupies an area of 8249 km2 (http://www.xinxiang.gov.cn/sitesources/xxsrmzf/page_pc/index.html). This city is between the Yellow River in the south and Tai-hang Mountain in the north. It has a temperate continental monsoon climate. In winter, the predominant wind direction was northeast (HMS 2018). The topography of Xinxiang is mainly plain; this characteristic applies to 76.6% of the total area (Zhou 1988).
The field sampling of ambient bioaerosols was carried out on the top roof of the School of Environment Building located at Henan Normal University. The distance of the site from the ground was about 30 m. The site is surrounded by trees and residential and school buildings. There are no large industrial pollution sources near the site.
Measurement of culturable bioaerosols
Sampling time and frequency
The distribution characteristics of the bioaerosols at different air quantities and diurnal periods were investigated. A six-stage impactor (Tisch Environmental, Inc., USA) was installed at a height of about 1.5 m above the building roof surface, and bioaerosols of different particle size ranges were collected. The size ranges of the particles captured are presented in Table 1. Bioaerosol with size smaller than 2.1 μm was defined as fine particles and that with size larger than 2.1 μm was defined as coarse particles because this impactor does not have a 2.5-μm cutoff point (Wu et al. 2017).
Samples were collected from the period of November 2017 to March 2018, and the main pollutants during this period was PM2.5 (78 days), PM10 (43 days), NO2 (22 days), and O3 (5 days) (Ministry of Ecology and Environment of the People’s Republic of China 2018). To detect diurnal variation, samples were collected at 9:00, 14:00, and 19:00 on each sampling day. Three consecutive replicates were collected for each sampling time point. The sampling flow rate was 28.3 L/min, and sampling time was 4 min. Each sampling device was sterilized by 75% ethanol before every sampling.
Culture method for bacterial and fungal samples
Bacterial samples were cultured on Beef-Peptone mediums (3 g beef extract, 10 g peptone, 5 g NaCl, 16 g agar, 1 L distilled H2O, pH 7.2–7.6) at 37 °C and incubated for 48 h. Fungal samples were cultured on Rose Bengal mediums (10 g glucose, 5 g peptone, 1 g KDP (potassium dihydrogen phosphate), 0.5 g MgSO4·7H2O, 15 g agar, 0.03 g rose bengal, 1 L distilled H2O) at 25°C and incubated for 72 h (Li et al. 2011).
Counting method
Colony-forming units (CFUs) were counted using positive-hole correction (Andersen, 1958). The concentration of bioaerosol was calculated via the following formula:
where c is the concentration of the bioaerosol (CFU/m3), Pr is the revised colony number at each stage, t is the sampling time (min), and Q is the sampling flow rate (L/min).
Noncarcinogenic risk assessment
A noncarcinogenic risk assessment model was used to evaluate the risk of exposure to airborne bacteria for public health. According to a study by Li et al. (2013), the exposure and health risk assessment can be evaluated based on the models developed by US EPA (US Environmental Protection Agency), which included two main exposure pathways: inhalation and dermal contact.
Dose contacted through inhalation of bioaerosols (ADDinh) can be calculated as
Dose absorbed through dermal contact with bioaerosols (ADDdermal) can be expressed as
where IR is the inhalation rate, EF is the exposure frequency, ET is the exposure time, SA denotes the exposure of skin surface area, SL is the skin adherence factor, ABS represents the dermal absorption factor, BW is the average body weight, and AT denotes the averaging time to define noncarcinogenic exposure.
The risk for noncarcinogenic pollutants was expressed as the hazard quotient (HQ) and is given by the following equation:
where hazard index (HI) represents the sum of the hazard quotients for each pathway and for each target pollutant, and RfD is the daily dose compared with the reference dose for chronic exposure. When HQ ≤ 1 or HI ≤ 1, noncarcinogenic effects are not of concern, whereas when HQ > 1 or HI > 1, noncarcinogenic effects are cause for concern.
Because of the differences among geographic conditions, the parameter values of this calculation are different for each country. The parameter values that are suitable for Chinese people are presented in Table 2.
Data analysis
The concentration of particulates such as PM2.5 and PM10 and meteorological parameters including temperature, relative humidity, and SO2, NO2, and O3 concentrations were retrieved from the Air Quality Forecast and Release System in Henan (http://1.192.88.18:8088/TodayMonitor). The basic information during the period of sampling days is listed in Table 3. SPSS 24.0 software was used to calculate descriptive statistical parameters and perform such tests as one-way analysis of variance (ANOVA), the group t test, and nonparametric Spearman’s correlation analysis. A P value of less than 0.05 indicated a statistically significant difference at a confidence level of 95%. The correlations between culturable bioaerosols and the influencing factors were then analyzed.
Results and discussion
Concentration distribution of bioaerosols during the sampling period
The concentration distribution of culturable bioaerosols is presented in Fig. 1, as determined during the sampling period from November 2017 to March 2018. The concentrations of culturable airborne bacteria and fungi varied significantly during the sampling period with the mean value of 4595 ± 3410 CFU/m3 and 6358 ± 5032 CFU/m3, respectively. The culturable airborne bacteria and fungi reached the highest concentrations on January 14, 2018 (12853 ± 4520 CFU/m3) and December 27, 2017 (16534 ± 4622 CFU/m3), respectively. The highest concentrations of fine particles of airborne bacteria (7836 ± 3530 CFU/m3) and fungi (10433 ± 2476 CFU/m3) were also detected during the same sampling period at relatively high PM2.5 concentrations of 131 ± 13 and 138 ± 21 μg/m3, respectively.
Because particles in the atmosphere act as the vector for microorganisms, an increase in the PM concentration generally leads to an increase in the concentration of bioaerosols. PM at high concentrations may contain some harmful substances such as crustal elements, pollution elements, and inorganic ions that have a negative impact on microorganisms (Sun et al. 2006; Sun et al. 2013; Gao et al. 2015b). This phenomenon probably resulted in a low concentration of airborne bacteria (2563 ± 268 CFU/m3) on December 3, 2017, at the highest PM2.5 concentration of 209 ± 16 g/m3. Rain and snow have a scouring effect on the particles in the air (Almaguer et al. 2014; Lee et al. 2016; Li et al. 2017; Xie et al. 2018b). Thus, the lowest concentrations of airborne bacteria and fungi were detected on December 17, 2017, and January 8, 2018, respectively, with snowfall before the sampling day.
Concentration and size distribution of bioaerosols at different air quality levels
The air quality index (AQI) is usually used to describe the air quality situation. According to Technical Regulation on Ambient Air Quality Index (on trial), the status of air quality was categorized into six classes: excellent (0–50), good (51–100), slight pollution (101–150), moderate pollution (151–200), heavy pollution (201–300), and serious pollution (> 300) (HJ 633- 2012 2012). Figures 2, 3, and 4 present the concentration and size distributions for culturable airborne bacteria and fungi at different AQIs. Because there was no sampling date during serious-pollution weather in the sampling period, the AQI higher than 200 was interpreted as heavy pollution.
The average culturable airborne bacteria concentrations in different AQI classes were in the range of 1237 ± 928 to 10097 ± 6380 CFU/m3. An increase in airborne bacteria concentrations with the increasing AQI was observed when AQI was lower than 200. At AQI higher than 200, the concentration of airborne bacteria decreased to 4875 ± 2745 CFU/m3. The concentration of airborne bacteria under excellent weather conditions was significantly lower than that under other weather conditions (AQI > 50; P < 0.05). Generally, the concentration of airborne fungi increased with the increasing AQI, and the highest concentration of 12729 ± 6765 CFU/m3 was observed in heavy-pollution weather. The concentration of airborne fungi in slight-pollution weather was significantly higher than that in good weather (P < 0.05).
Bioaerosols were influenced by many factors in the atmosphere (physical, chemical, and biological factors) (Zhong et al. 2016). The bioaerosol characteristics often varied significantly among regions because the atmospheric conditions differed greatly among different time points and locations (Timo 1997; Wei et al. 2015; Dong et al., 2016; Xie et al. 2018a). In Xi’an of China, the total airborne microbial concentration was found to increase initially and then to slightly decrease with the increasing AQI. The peak appeared at the moderate pollution level (Xie et al. 2018b). Wei et al. (2016) found bioaerosol concentration to be significantly higher during haze weather than during sunny weather from December 2013 to March 2014 in Beijing. Nonetheless, the community structures of airborne bacteria and fungi in PM2.5 samples did not show significant differences at different AQI levels during the 2014 APEC Summit Periods in Beijing (from October 15, 2014, to November 12, 2014) (Du et al. 2018b).
The size distribution of culturable bioaerosols is presented in Figs. 3 and 4. For airborne bacteria, the concentration distributions of particle sizes at different stages were close within the excellent-weather class. During sampling days with AQI greater than 50, the culturable airborne bacteria were found to be mainly within Stage V (1.1–2.1 μm) (34.9% ± 16.2%, 49.4% ± 8.7%, 40.8% ± 15.7%, and 34.6% ± 16.2% for good weather, slight pollution, moderate pollution, and heavy-pollution weather, respectively). With the increase in size range, the concentration distribution gradually decreased. A similar distribution trend was observed for culturable airborne fungi. On the sampling days with AQI greater than 50, the highest concentrations were seen at Stage V (1.1–2.1 μm) (49.4% ± 20.3%, 50.0% ± 13.2%, 45.0% ± 7.1%, and 52.7% ± 6.4% for good weather, slight pollution, moderate pollution, and heavy-pollution weather, respectively). In the class of excellent weather, the highest concentration, 402 ± 355 CFU/m3, was noted at stage III (25.4% ± 13.0%).
Generally, our results indicate that 45.9% ± 18.9% of culturable airborne bacteria and 52.0% ± 18.5% of culturable airborne fungi that were detected during the sampling period had a particle size less than 2.1 μm. This result was probably due to PM2.5, which was identified as the chief pollutant during 52% of the sampling period from November 2017 to March 2018 (PM10 accounted for 29%), as described in 2.2.1. the “Sampling time and frequency” subsection. The particles served as existence vectors for the microorganisms in the atmosphere. A similar phenomenon was observed in a study by Wei et al. (2015), which revealed that the biological fraction of PM2.5 in 11 major cities of China ranged from 55 to 91% in 2013. Different size distribution characteristics of culturable bioaerosols have also been observed in other regions. From January 14, 2013, to January 22, 2014, detected culturable airborne bacteria were mainly coarse particles, which accounted for approximately 55–80% of the total bioaerosol concentration on both haze days and nonhaze days in Beijing (Gao et al. 2015a). From October 8 to 22, 2014, in Xi’an, the culturable airborne bacteria and fungi were mainly within particle size ranges of 1.1–2.1 μm (25.0% ± 6.8%) and 3.3–4.7 μm (29.4% ± 4.1%), respectively (Li et al. 2015). In Qingdao, the bacterial particles were mainly coarse particles (except in the fall season), whereas the fungal particles followed a log-normal distribution (Qi et al. 2014). Therefore, characteristics of the distribution of bioaerosol particle sizes varied among regions and depended on geographical and climatic factors and atmospheric and environmental characteristics. The pollutant characteristics in different regions caused differences in the spatial distribution of bioaerosols (Li et al. 2011; Wei et al. 2015; Zhong et al. 2016; Lu et al. 2018).
Diurnal variation of the concentration and size distribution of bioaerosols
The diurnal variation in the concentration of culturable airborne bacteria and fungi during the study period is presented in Fig. 5. The lowest concentrations of airborne bacteria and fungi were observed at noon: 3624 ± 2887 and 4412 ± 3946 CFU/m3, respectively. The highest concentrations of airborne bacteria and fungi were registered at night: 5773 ± 4987 and 9780 ± 7233 CFU/m3, respectively. Moreover, the temporal variations in the culturable bioaerosols during the sampling day were not obvious (P > 0.05). This finding is probably due to the relative stability of the atmospheric environment throughout the sampling day.
The sun radiation was one of the important factors influencing the bioaerosol concentration (Dong et al. 2015). Ultraviolet radiation from the sun probably inhibited the growth of bacteria by damaging their DNA (Pakulski et al. 2007). Given that the surface solar irradiance at noon was often higher than that in the morning and evening (Tong et al. 1997; Xu et al. 2013), the reduction in solar radiation at night reduced the proportion of microbial death, resulting in accumulation of microorganisms (Hwang et al. 2010). The temporal distribution characteristics of bioaerosols during the study period were attributed to UV radiation. A similar phenomenon was observed in Beijing in a 1-year data analysis by Gao et al. (2016), which revealed the highest concentration of airborne bacteria and fungi were present at 21: 00. The lowest concentration was detected at 12:00 and 15:00, respectively. The airborne bacteria concentrations at 9:00 and 17:00 were also found to be significantly higher than that at 13:00 in Hangzhou (Fang et al. 2016).
The diurnal variations in the particle size distribution for culturable airborne bacteria and fungi were similar (Fig. 6), and no statistically significant differences were found during the three sampling diurnal periods (P > 0.05), which are depicted in Fig. 5. The particle size of culturable airborne bacteria and fungi was found to mainly be distributed within stage V, within the particle size range of 1.1–2.1 μm and with proportions of 36.2% ± 16.7% and 46.3% ± 17.4%, respectively. The diurnal fine particle concentrations of airborne bacteria and fungi were 47.2% ± 19.4% and 46.6% ± 16.5% in the morning, 40.7% ± 20.8% and 51.1% ± 22.5% at noon, and 50.0% ± 14.8% and 58.2% ± 13.6% at night, respectively.
The particle size is an important parameter for evaluation of the harmfulness of PM for human health (Du et al. 2018a). The deposition efficiency in the human respiratory tract varies among different sizes of particles (coarse particles are mainly deposited in the extrathoracic region, and fine particles can penetrate and deposit deeper in the tracheal, bronchial, and alveolar regions) (Gao et al. 2015a; Li et al. 2017). Moreover, ultrafine particles (< 0.1 μm) are deposited at a much higher efficiency rate and act as efficient carriers of toxic compounds into the pulmonary alveoli (Kawanaka et al. 2009).
Analysis of factors affecting the concentration of bioaerosols
To explore the effects of meteorological factors and particles on bioaerosols, the relations between the concentration of airborne bacterial or fungal aerosols and different particle sizes and temperatures, relative humidity levels, and PM2.5, PM10, SO2, NO2, and O3 concentrations were analyzed by Spearman’s correlation method (Fig. 7). Airborne bacteria and fungi from stage I to stage VI and total bacteria and fungi were labeled as BI-VI, FI-VI, TB, and TF, respectively.
According to Fig. 7, NO2 was an important factor influencing the culturable bioaerosol concentration and had a statistically significant association with BIII-VI (P < 0.05), TB (P < 0.01), FII-VI (P < 0.01), and TF (P < 0.01; Fig. 7). Being considered an acid gas, SO2 also showed a positive correlation with the culturable bioaerosol concentration (except at stages BI and FI). This positive correlation is probably due to the fact that SO2 and NO2 can combine with moisture in the air to form SO42- and NO3-, which are beneficial for the growth of microorganisms (Chen et al. 2008; Dong et al. 2016). A positive correlation between bioaerosols and acid gases has been observed in several other studies too (Grinn-Gofron et al. 2011; Xie et al. 2018b).
O3 showed a statistically significant association with BIII-V (P < 0.05), TB (P < 0.01), FIII-VI (P < 0.05), and TF (P < 0.01). The negative correlation between O3 and airborne bacterial and fungal concentrations in other stages was also observed (Fig. 7). A high concentration of O3 was toxic to the bioaerosol, especially after reacting with atmospheric olefins and forming so-called open air factors (Cox et al. 1973; Cox 1995).
Both PM2.5 and PM10 manifested a positive correlation with culturable bioaerosols of different particle sizes, and there were significant correlations with BIV, TB, FIII-V, and TF (P < 0.05). Because this study was conducted in winter under relatively stable atmospheric conditions, the microorganisms adhered to the particles and were difficult to disperse. Therefore, the high concentrations of culturable bioaerosols were investigated at high PM2.5 and PM10 concentrations. The significant positive correlation between culturable airborne-bacteria aerosols or culturable airborne-fungi aerosols (including coarse, fine, and total aerosols) with AQI (PM2.5) was also found in Xi’an during the autumn haze days (Li et al. 2015). On the other hand, we uncovered a significant negative correlation of the culturable airborne-bacteria concentration and culturable airborne-fungal concentration with PM2.5 and PM10 in Beijing (Gao et al. 2015a; Gao et al. 2016). As carriers of air pollutants, particles adsorb greater amounts of chemical components, which may shorten the survival period of a microorganism (Eeftens et al. 2012; Lu et al. 2018).
Most particle size stages showed a positive correlation with relative humidity, and significant correlations between BIV-V and TB and relative humidity were observed (P < 0.05). Because moisture in the air may alter the integrity of the cell wall or viral capsid (Jones et al. 2004), relative humidity was found to be the main factor affecting the culturable bioaerosols (Jo and Kang 2006; Li et al. 2011). It had different effects on different kinds of microorganisms (Macher et al. 1991; Pasanen et al. 1991; Theunissen et al. 1993). Li et al. (2017) reported high relative humidity can favor microbial growth, resulting in elevated bioaerosol concentrations. The high humidity values (about 70–80%) particularly assisted the release of basidiospores and ascospores. High relative humidity could also trigger spore release, thereby increasing the abundance of spores and improving archaeal diversity (Gabey et al. 2010; Fröhlichnowoisky et al. 2014; Zhai et al. 2018). This was probably the cause of the positive correlation between bioaerosol concentration and relative humidity in this work.
Moreover, negative correlations were noted between culturable bioaerosol concentrations and temperature (Fig. 7). This finding is consistent with the results reported by Li et al. (2017) and Lu et al. (2018), who also found a negative and positive correlation between bioaerosols (bacteria and fungi) and temperature and relative humidity, respectively. High temperature was disadvantageous for the microorganisms because it enhanced the release of toxic compounds and promoted their chemical reactions to occur on particulate surfaces (Gao et al. 2016). The increased temperature could also speed up convective air movements, which might enhance bacterial dispersal and dilution effect, leading to a decrease of bioaerosol concentrations in the atmosphere (Smets et al. 2016; Zhong et al. 2016). Nonetheless, some investigators have reached the opposite conclusions. Bioaerosol concentration increases with increasing relative humidity at sufficiently high temperatures and can hardly be influenced at low temperatures (Kethley et al. 1957). Webb and Dumasia (1968) reported that the decline rate of bioaerosols is dependent on both temperature and relative humidity.
The formation and size distribution of the bioaerosols were complicated, and many factors were involved in this process (Chen et al. 2012). The PM concentration was considered the most significant factor on the bioaerosol size distribution, as the airborne bacteria and fungi can attach to the surfaces of PM suspended in the atmosphere (Gao et al. 2015b; Dong et al. 2016). In this work, most of the particle size stages showed a positive correlation with PM2.5 and PM10. However, exceptions were found in the measurements of BI and FI, which was likely due to the aggregation of fine particulates that frequently occurred on hazy days (Kulmala et al. 2004). Sources of bioaerosols played a leading role in shaping the characteristic of bioaerosol particle size and had a larger impact than that caused by meteorological conditions (Zhai et al., 2018). The bioaerosol generated from the respiratory tract was found to be smaller than that generated from dust sources (Hoeksma et al., 2015). At a subway station, Dybwad et al. (2014) found a significantly larger fraction of bioaerosol (particles between 1.1 and 3.3 μm) during the daytime than at nighttime. Anthropogenic activities (mainly passengers) were demonstrated to be major sources of airborne bacteria and predominantly contributed to the bioaerosol particles of this range. Relative humidity is an important meteorological parameter influencing the size distribution of bioaerosol. High relative humidity will augment the probability of deposition due to the presence of suspended particles that absorb ambient moisture, leading to an increase in particle weight and size (Zhen et al., 2017). The bigger and heavier particles will have a higher settling velocity in the air. Temperature could indirectly influence the size distribution of bioaerosols by changing the parameter of cross-ventilation that decides the suspension and diffusion of microbes (Zhai et al., 2018). Moreover, factors such as organic carbon, elementary carbon, NH4+, SO42–, NO3–, metals, and polycyclic aromatic hydrocarbons have been shown to affect the size distributions of the bacterial aerosol (Lai et al. 2010; Chen et al. 2012). The size distributions of airborne fungi were influenced by various factors such as microorganism species, spore age, sample culture medium, and differences in aggregation rates of spores (Nasir et al. 2012).
Noncarcinogenic exposure risk assessment
Assessment of culturable bioaerosols during the sampling period was conducted in this study, and it is important for people to understand the risk of air quality for the living environment and take preventive measures. Table 4 summarizes the hazard quotients for inhalation (HQinh) and dermal (HQdermal) routes and the HI of bioaerosols at different time points and air quality classes during the sampling period.
In this study, the highest diurnal risk of exposure to bioaerosols was noted at night, and with the rise in AQI, the risk increased too. The ranges of HQinh for adult males, adult females, and children were 1.28 × 10-2 to 1.04 × 10-1, 1.04 × 10-2 to 8.49 × 10-2, and 5.19 × 10-3 to 4.24 × 10-2, respectively, which were several orders of magnitude higher than those of HQdermal. Therefore, the risk of exposure to bioaerosols in the atmosphere was primarily associated with the respiratory inhalation pathway. The risk of exposure of skin was negligible. For different populations, the order of HQinh values was as follows: adult males > adult females > children, whereas that of HQdermal values was children > adult females > adult males.
Nevertheless, the risk of exposure to bioaerosols analyzed in this study was relatively low when compared with those analyzed in other studies (Li et al. 2013). We recommended that outdoor activities be avoided when AQI is higher than 150, especially at night. Some necessary protective measures are still essential for people living in high-AQI atmospheric conditions. The noncarcinogenic risk assessment model used in this work was based on the concentration of airborne bacteria. The community structure of opportunistic pathogenic airborne bacteria is closely related to human health (Fan et al. 2019), but is not considered in this evaluation process. In addition, the bioaerosols investigated in this study contained only culturable airborne bacteria, which represent only a small part of the airborne microorganisms. In further studies, other analytical methods, such as molecular tools, should be considered to comprehensively reveal the species and quantities of bioaerosols and their effects on public health.
Conclusion
In this study, we monitored the concentration of culturable airborne bacteria and fungi at different air quality levels and during different diurnal periods in winter in Xinxiang, China. The concentrations of culturable airborne bacteria and fungi were strongly linked to air quality (AQI). The particle sizes of bioaerosols were mainly within stage V (1.1–2.1 μm), and fine PM accounted for 45.9% ± 18.9% of airborne bacteria and 52.0% ± 18.5% of airborne fungi, respectively. Analysis of diurnal variation of bioaerosols showed that the concentration was obviously higher at night than in the morning or at noon. Bioaerosol concentration positively correlated with humidity and concentrations of PM2.5, PM10, SO2, and NO2 and negatively correlated with the concentration of O3. The risk of exposure to bioaerosols among humans was primarily associated with the respiratory inhalation pathway, and the risk of skin exposure was negligible.
References
Almaguer M, Aira MJ, Rodríguez-Rajo FJ, Rojas TI (2014) Temporal dynamics of airborne fungi in Havana (Cuba) during dry and rainy seasons: influence of meteorological parameters. Int J Biometeorol 58(7):1459–1470
Andersen AA (1958) New sampler for the collection, sizing, and enumeration of viable airborne particles. J Bacterial 76(5):471–484
Ariya PA, Amyot M (2004) New directions: the role of bioaerosols in atmospheric chemistry and physics. Atmos Environ 38:1231–1232
Bragoszewska E, Pastuszka JS (2018) Influence of meteorological factors on the level and characteristics of culturable bacteria in the air in Gliwice, Upper Silesia (Poland). Aerobiologia 34(2):241–255
Burrows SM, Elbert W, Lawrence MG, Poschl U (2009) Bacteria in the global atmosphere – Part 1: review and synthesis of literature data for different ecosystems. Atmos Chem Phys 9:9263–9280
Chen GH, Song GX, Jiang LL, Zhang YH, Zhao NQ, Chen BH, Kan HD (2008) Short-term effects of ambient gaseous pollutants and particulate matter on daily mortality in Shanghai, China. J Occup Health 50(1):41–47
Chen XY, Ran PX, Ho KF, Lu WJ, Li B, Gu ZP, Song CJ, Wang J (2012) Concentrations and size distributions of airborne microorganisms in Guangzhou during summer. Aerosol Air Qual Res 12:1336–1344
Cox CS (1995) Stability of airborne microbes and allergens. In: Cox CS, Wathes CM (eds) Bioaerosols Handbook. Lewis Publishers New York, pp 77–99
Cox CS, Hood AM, Baxter J (1973) Method for comparing concentrations of the open-air factor. Appl Microbiol 26(4):640–642
Després V, Huffman J, Burrows S, Hoose C, Safatov A, Buryak G, Fröhlich-Nowoisky J, Elbert W, Andreae M, Pöschl U, Jaenicke R (2012) Primary biological aerosol particles in the atmosphere: a review. Tellus B 64(1):145–153
Dong LJ, Qi JH, Shao CC, Zhong X, Gao DM, Cao WW, Gao JW, Bai R, Long GY, Chu CC (2016) Concentration and size distribution of total airborne microbes in hazy and foggy weather. Sci Total Environ 541:1011–1018
Douwes J, Thorne P, Pearce N, Heederik D (2003) Bioaerosol health effects and exposure assessment: progress and prospects. Ann Occup Hyg 47(3):187–200
Du PR, Du R, Ren WS, Lu ZD, Zhang Y, Fu PQ (2018a) Variations of bacteria and fungi in PM2.5 in Beijing, China. Atmos Environ 172:55–64
Du PR, Du R, Lu ZD, Ren WS, Fu PQ (2018b) Variation of bacterial and fungal community structures in PM2.5 collected during the 2014 APEC summit periods. Aerosol Air Qual Res 18(2):444–455
Dybwad M, Skogan G, JM BB (2014) Temporal variability of the bioaerosol background at a subway station: concentration level, size distribution, and diversity of airborne bacteria. Appl Environ Microb 80(1):257–270
Eeftens M, Tsai MY, Ampe C, Anwander B, Beelen R, Bellander T, Cesaroni G, Cirach M, Cyrys J, de Hoogh K, Nazelle AD, de Vocht F, Declercq C, Dedele A, Eriksen K, Galassi C, Grazuleviciene R, Grivas G, Hoek G (2012) Spatial variation of PM2.5, PM10, PM2.5 absorbance and PMcoarse concentrations between and within 20 European study areas and the relationship with NO2 - Results of the ESCAPE project. Atmos Environ 62(12):303–317
Fan CL, Li YP, Liu PX, Mu FF, Xie ZS, Lu R, Qi YZ, Wang BB, Jin C (2019) Characteristics of airborne opportunistic pathogenic bacteria during autumn and winter in Xi'an, China. Sci Total Environ 672:834–845
Fang ZG, Yao WC, Lou XQ, Hao CM, Gong CJ, Ouyang ZY (2016) Profile and characteristics of culturable airborne bacteria in Hangzhou, southeast of China. Aerosol Air Qual Res 16(7):1690–1700
Frohlich-Nowoisky J, Kampf CJ, Weber B, Huffman JA, Pohlker C, Andreae MO, Lang-Yona N, Burrows SM, Gunthe SS, Elbert W, Su H, Hoor P, Thines E, Hoffmann T, Despres VR, Poschl U (2016) Bioaerosols in the earth system: Climate, health, and ecosystem interactions. Atmos Res 182:346–376
Fröhlichnowoisky J, Ruzene Nespoli C, Pickersgill DA, Galand PE, MüllergermannI NT (2014) Diversity and seasonal dynamics of airborne archaea. Biogeosciences 11:6067–6079
Gabey AM, Gallagher MW, Whitehead J, Dorsey JR, Kaye PH, Stanley WR (2010) Measurements and comparison of primary biological aerosol above and belowa tropical forest canopy using a dual channel fluorescence spectrometer. Atmos Chem Phys 10:4453–4466
Gao M, Jia RZ, Qiu TL, Han ML, Song Y, Wang XM (2015a) Seasonal size distribution of airborne culturable bacteria and fungi and preliminary estimation of their deposition in human lungs during non-haze and haze days. Atmos Environ 118:203–210
Gao M, Qiu TL, Jia RZ, Han ML, Song Y, Wang XM (2015b) Concentration and size distribution of viable bioaerosols during non-haze and haze days in Beijing. Environ Sci Pollut R 22(6):4359–4368
Gao M, Yan X, Qiu TL, Han ML, Wang XM (2016) Variation of correlations between factors and culturable airborne bacteria and fungi. Atmos Environ 128:10–19
Grinn-Gofron A, Strzelczak A, Wolski T (2011) The relationships between air pollutants, meteorological parameters and concentration of airborne fungal spores. Environ Pollut 159(2):602–608
HJ 633-2012 (2012) Technical regulation on ambient air quality index (on trial). Ministry of Ecology and Environment of the People’s Republic of China. http://kjs.mee.gov.cn/hjbhbz/bzwb/jcffbz/201203/t20120302_224166.shtml. Accessed 10 May 2018.
HMS (2018) Henan Meteorological Service. http://henan.weather.com.cn/xinxiang/index.shtml. Accessed 24 July 2019
Hoeksma P, Aarnink AJA, Venglovsky J, Gregová G., Čornejová T (2015) Effects of temperature and relative humidity on the survival of airborne bacteria
Hwang GB, Jung JH, Jeong TG, Lee BU (2010) Effect of hybrid UV-thermal energy stimuli on inactivation of S. epidermidis and B. subtilis bacterial bioaerosols. Sci Total Environ 408(23):5903–5909
Jones AM, Harrison RM (2004) The effects of meteorological factors on atmospheric bioaerosol concentrations-a review. Sci Total Environ 326(1-3):151–180
Jo WK, Kang JH (2006) Workplace exposure to bioaerosols in pet shops, pet clinics, and flower gardens. Chemosphere 65(10):1755–1761
Kawanaka Y, Tsuchiya Y, Yun SJ, Sakamoto K (2009) Size distributions of polycyclic aromatic hydrocarbons in the atmosphere and estimation of the contribution of ultrafine particles to their lung deposition. Environ Sci Technol 43(17):6851–6856
Kethley TW, Fincher EL, Cown WB (1957) The effect of sampling method upon the apparent response of airborne bacteria to temperature and relative humidity. J Infect Dis 100(1):97–102
Kulmala M, Laakso L, Lehtinen KEJ, Riipinen I, Dal Maso M, Anttila T, Kerminen VM, Hõrrak U, VanaM TH (2004) Initial steps of aerosol growth. Atmos Chem Phys 4(11–12):2553–2560
Latif MT, Othman M, Idris N, Juneng L, Abdullah AM, Hamzah W, Khan MF, Sulaiman NMN, Jewaratnam J, Aghamohammadi N, Sahani M, Xiang CJ, Ahamad F, Amil N, Darus M, Varkkey H, Tangang F, Jaafar A (2018) Impact of regional haze towards air quality in Malaysia: a review. Atmos Environ 177:28–44
Lai SC, Ho KF, Zhang YY, Lee SC, Huang Y, Zou SC (2010) Characteristics of residential indoor carbonaceous aerosols: a case study in Guangzhou, Pearl River Delta Region. Aerosol Air Qual Res 10:472–478
Lee BU, Lee G, Heo KJ (2016) Concentration of culturable bioaerosols during winter. J Aerosol Sci 94:1–8
Li MF, Qi JH, Zhang HD, Zhang S, Li L, Gao DM (2011) Concentration and size distribution of bioaerosols in an outdoor environment in the Qingdao coastal region. Sci Total Environ 409(19):3812–3819
Li YP, Fu HL, Wang W, Liu J, Meng QL, Wang WK (2015) Characteristics of bacterial and fungal aerosols during the autumn haze days in Xi'an, China. Atmos Environ 122:439–447
Li YP, Lu R, Li WX, Xie ZS, Song Y (2017) Concentrations and size distributions of viable bioaerosols under various weather conditions in a typical semi-arid city of Northwest China. J Aerosol Sci 106:83–92
Li YP, Zhang HF, Qiu XH, Zhang YR, Wang HR (2013) Dispersion and risk assessment of bacterial aerosols emitted from rotating-brush aerator during summer in a wastewater treatment plant of Xi’an, China. Aerosol Air Qual Res 13:1807–1814
Lu R, Li YP, Li WX, Xie ZS, Fan CL, Liu PX, Deng SX (2018) Bacterial community structure in atmospheric particulate matters of different sizes during the haze days in Xi’an, China. Sci Total Environ 637(638):244–252
Macher JM, Huang FY, Flores M (1991) A two-year study of microbiological indoor air quality in a new apartment. Arch Environ Health 46(1):25–29
Ministry of Ecology and Environment of the People's Republic of China (2017) http://www.mee.gov.cn/gkml/hbb/bwj/201708/t20170831_420711.htm. Accessed 10 Nov 2017
Ministry of Ecology and Environment of the People's Republic of China (2018). Data service. http://www.mee.gov.cn/. Accessed 10 May 2018
Nasir ZA, Colbeck I, Sultan S, Ahmed S (2012) Bioaerosols in residential microenvironments in low income countries: a case study from Pakistan. Environ Pollut 168:15–22
Pakulski JD, Baldwin A, Dean AL, Durkin S, KarentZD KCA, Scott K, Spero HJ, WilhelM SW, Amin R, Jeffrey WH (2007) Responses of heterotrophic bacteria to solar irradiance in the eastern Pacific Ocean. Aquat Microb Ecol 47(2):153–162
Pasanen AL, Pasanen P, Jantunen MJ, Kalliokoski P (1991) Significance of air humidity and air velocity for fungal spore release into the air. Atmos Environ Part A 25(2):459–462
Qi JH, Shao Q, Xu WB, Gao DM, Jin C (2014) Seasonal distribution of bioaerosols in the coastal region of Qingdao. J Ocean U China 13(1):57–65
Shaffer BT, Lighthart B (1997) Survey of culturable airborne bacteria at four diverse locations in Oregon: urban, rural, forest, and coastal. Microb Ecol 34:167–177
Shi CN, Yuan RM, Wu BW, Meng YJ, Zhang H, Zhang HQ, Gong ZQ (2018) Meteorological conditions conducive to PM2.5 pollution in winter 2016/2017 in the Western Yangtze River Delta, China. Sci Total Environ 642:1221–1232
Smets W, Moretti S, Denys S, Lebeer S (2016) Airborne bacteria in the atmosphere: presence, purpose, and potential. Atmos Environ 139:214–221
Sun ZQ, Mu YJ, Liu YJ, Shao LY (2013) A comparison study on airborne particles during haze days and non-haze days in Beijing. Sci Total Environ 456(7):1–8
Sun YL, Zhuang GS, Tang AH, Wang Y, An ZS (2006) Chemical characteristics of PM2.5 and PM10 in haze-fog episodes in Beijing. Environ Sci Technol 40(10):3148–3155
Tao Y, Mi SQ, Zhou SH, Wang SG, Xie XY (2014) Air pollution and hospital admissions for respiratory diseases in Lanzhou, China. Environ Pollut 185:196–201
Theunissen HJ, Lemmens-den Toom NA, Burggraaf A, Stolz E, Michel MF (1993) Influence of temperature and relative humidity on the survival of Chlamydia pneumoniae in aerosols. Appl Environ Microb 59(8):2589–2593
Timo K (1997) The number of Cladosporium conidia in the air in different weather conditions. Grana 36(1):54–61
Tong YY, Lighthart B (1997) Solar radiation is shown to select for pigmented bacteria in the ambient outdoor atmosphere. Photochem Photobiol 65(1):103–106
Walser SM, Gerstner DG, Brenner B, Bunger J, Eikmann T, Janssen B, Kolb S, Kolk A, Nowak D, Raulf M, Sagunski H, Sedlmaier N, Suchenwirth R, Wiesmuller G, Wollin KM, Tesseraux I, Herr CEW (2015) Evaluation of exposure–response relationships for health effects of microbial bioaerosols - a systematic review. Int J Hyg Environ Health 218(7):557–589
Webb SJ, Dumasia MD (1968) An infrared study of the influence of growth media and myo-inositol on structural changes in DNA induced by dehydration and ultraviolet light. Can J Microbiol 14(8):841–852
Wei K, Zheng YH, Li J, Shen FX, Zou ZL, Fan HQ, Li XY, Wu CY, Yao MS (2015) Microbial aerosol characteristics in highly polluted and near-pristine environments featuring different climatic conditions. Sci Bull 60(16):1439–1447
Wei K, Zou ZL, Zheng YH, Li J, Shen FX, Wu CY, Wu YS, Hu M, Yao MS (2016) Ambient bioaerosol particle dynamics observed during haze and sunny days in Beijing. Sci Total Environ 550:751–759
WHO (2005) Air quality guidelines-global update world. Health Organization Regional Office, Copenhagen
Wu B, Meng K, Wei LM, Cai YM, Chai TJ (2017) Seasonal fluctuations of microbial aerosol in live poultry markets and the detection of endotoxin. Front Microbiol 8:1–8
Xie ZS, Fan CL, Lu R, Liu PX, Wang BB, Du SL, Jin C, Deng SX, Li YP (2018a) Characteristics of ambient bioaerosols during haze episodes in China: a review. Environ Pollut 243:1930–1942
Xie ZS, Li YP, Lu R, Li WX, Fan CL, Liu PX, Wang JL, Wang WK (2018b) Characteristics of total airborne microbes at various air quality levels. J Aerosol Sci 116:57–65
XEPB (2016) Xinxiang Environmental Protection Bureau. The yearbook of environmental quality of Xinxiang, 2016. http://www.xxhb.gov.cn/news/58_11502. Accessed 24 July 2019
XEPB (2017) Xinxiang Environmental Protection Bureau. The yearbook of environmental quality of Xinxiang, 2017. http://www.xxhb.gov.cn/news/58_13553. Accessed 24 July 2019
XEPB (2018) Xinxiang Environmental Protection Bureau. The yearbook of environmental quality of Xinxiang, 2018. http://www.xxhb.gov.cn/news/58_15135. Accessed 24 July 2019
Xu WZ, Chen H, Li DH, Zhao FS, Yang Y (2013) A case study of aerosol characteristics during a haze episode over Beijing. Procedia Environ Sci 18:404–411
Xu ZQ, Wu Y, Shen FX, Chen Q, Tan MM, Yao MS (2011) Bioaerosol science, technology, and engineering: past, present, and future. Aerosol Sci Technol 45(11):1337–1349
Yamamoto N, Bibby K, Qian J, Hospodsky D, Rismani-Yazdi H, Nazaroff WW, Peccia J (2012) Particle-size distributions and seasonal diversity of allergenic and pathogenic fungi in outdoor air. Isme J 6(10):1801–1811
Zhai YB, Li X, Wang TF, Wang B, Li CT, Zeng GM (2018) A review on airborne microorganisms in particulate matters: composition, characteristics and influence factors. Environ Int 113:74–90
Zhang Z, Zhang X, Gong D, Kim SJ, Mao R, Zhao X (2016) Possible influence of atmospheric circulations on winter haze pollution in the Beijing-Tianjin-Hebei region, northern China. Atmos Chem Phys 16(2):561–571
Zhen Q, Deng Y, Wang Y, Wang X, Zhang H, Sun X, Ouyang Z (2017) Meteorological factors had more impact on airborne bacterial communities than air pollutants. Sci Total Environ 601(602):703–712
Zhong X, Qi JH, Li HT, Dong LJ, Gao DM (2016) Seasonal distribution of microbial activity in bioaerosols in the outdoor environment of the Qingdao coastal region. Atmos Environ 140:506–513
Zhou YF (1988) Xinxiangshi. Guangming Daily Press, Beijing (in Chinese)
Zhuang XL, Wang YS, He H, Liu JG, Wang XM, Zhu TY, Ge MF, Zhou J, Tang GQ, Ma JZ (2014) Haze insights and mitigation in China: an overview. J Environ Sci-China 26(1):2–12
Funding
This research was financially supported by the National Natural Science Foundation of China (No. 51408199) and the Natural Science Foundation of Henan Province of China (No. 182300410157).
Author information
Authors and Affiliations
Corresponding author
Additional information
Responsible Editor: Diane Purchase
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Yan, X., Qiu, D., Zheng, S. et al. Distribution characteristics and noncarcinogenic risk assessment of culturable airborne bacteria and fungi during winter in Xinxiang, China. Environ Sci Pollut Res 26, 36698–36709 (2019). https://doi.org/10.1007/s11356-019-06720-8
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11356-019-06720-8