Mapping Urban Aerosolized Fungi: Predicting Spatial and Temporal Indoor Concentrations

IF 0.8 4区 社会学 Q4 ENVIRONMENTAL STUDIES
Ashley N. J. Douglas, F. Torpy, N. Surawski, P. Irga
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引用次数: 4

Abstract

The prediction of bioaerosols, specifically airborne fungi, can be achieved using various mapping techniques, potentially enabling the determination of ambient indoor concentrations within environments where people spend most of their time. The concentration and composition of indoor air pollutants are determined by a multitude of variables, with building ventilation type being the most predominant factor in most scenarios. A predictive statistical model-based methodology for mapping airborne fungi was developed utilizing satellite-based technology. Mapping was carried out for total aerosolized fungal spores and the diversity of aerosolized fungi in Sydney, Australia, over four seasons. Corresponding data for a range of environmental parameters known to influence airborne fungi were also used, notably green space density, land cover, altitude, meteorological variables, and other locally determined factors. Statistical models previously developed from the combined meteorological and environmental variable data were used to establish spatiotemporal models for airborne fungi across the study area for each season. Results showed that the models produced reasonable predictions of monitored 1 Corresponding author: Peter.Irga@uts.edu.au. Human Ecology Review, Volume 24, Number 2, 2018 82 aeromycota concentrations; although, the accuracy of these predictions for individual survey periods was variable. Using known indoor/outdoor (I/O) ratios of airborne fungi for the area, the prevalence and concentrations of indoor aeromycota were modeled for buildings with both natural and mechanical ventilation. As accurate manual assessment of the aeromycota is labor, time, and cost intensive, the current findings should assist in the prediction of fungal aerosols in both urban and indoor environments. Additionally, understanding the indoor microbiome has great importance for the health and well-being of the occupants concerned.
绘制城市气溶胶真菌图:预测室内时空浓度
生物气溶胶,特别是空气中真菌的预测可以使用各种绘图技术来实现,这可能有助于确定人们大部分时间所处环境中的室内环境浓度。室内空气污染物的浓度和组成由多个变量决定,在大多数情况下,建筑通风类型是最主要的因素。利用卫星技术开发了一种基于预测统计模型的空中真菌测绘方法。对澳大利亚悉尼四个季节的雾化真菌孢子总数和雾化真菌多样性进行了测绘。还使用了一系列已知影响空气传播真菌的环境参数的相应数据,特别是绿地密度、土地覆盖、海拔、气象变量和其他当地确定的因素。以前根据气象和环境变量组合数据开发的统计模型被用于建立每个季节研究区域空气传播真菌的时空模型。结果表明,模型对监测的1位通讯作者进行了合理的预测:Peter.Irga@uts.edu.au.《人类生态学评论》,第24卷,2018年第2期,82个空气真菌门浓度;尽管如此,这些预测在各个调查期间的准确性是可变的。利用该地区已知的室内/室外(I/O)空气传播真菌比率,对具有自然通风和机械通风的建筑物的室内空气真菌门的流行率和浓度进行了建模。由于对空气真菌门的准确手动评估需要耗费人力、时间和成本,目前的研究结果应有助于预测城市和室内环境中的真菌气溶胶。此外,了解室内微生物组对相关居住者的健康和福祉具有重要意义。
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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
0
期刊介绍: Human Ecology Review (ISSN 1074-4827) is a refereed journal published twice a year by the Society for Human Ecology. The Journal publishes peer-reviewed research and theory on the interaction between humans and the environment and other links between culture and nature (Research in Human Ecology), essays and applications relevant to human ecology (Human Ecology Forum), book reviews (Contemporary Human Ecology), and relevant commentary, announcements, and awards (Human Ecology Bulletin).
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