利用降水和环境空气样本和自动化人工智能对花粉计数方法进行初步比较,以支持国家监测目标

IF 2.2 3区 环境科学与生态学 Q2 BIOLOGY
Gregory A. Wetherbee, David A. Gay, Eric R. Uram, Terri L. Williams, Andrew P. Johnson
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引用次数: 0

摘要

考虑到花粉在整个环境中的地方性,对人类健康的影响,以及在美国需要对花粉进行更广泛、更好的测量,国家大气沉积计划(NADP)国家趋势网络(NTN)内制定了一个初步项目。通过几种方法测量了环境空气中的花粉,并在NTN的三个监测点的降水湿沉降样品中测量了花粉。开发了一种在过滤器上计数花粉的方法,并提供了NADP大气湿沉降样品和大容量环境空气采样器(HVAS)的花粉计数,以与2021花粉季节期间位于同一地点的传统国家过敏局显微镜样品和市售花粉传感器(PS)计数方法进行比较。该项目的目标是测试可用的空气监测基础设施的潜力,以获得改进的空气过敏原空间测量,比较各种方法的花粉计数结果,并确定使用湿沉降样品进行花粉采集的适用性。一般类别属的花粉季节的开始和衰老与每个地点的每种方法相比都是有利的,这表明使用湿沉降和环境空气采样过滤器进行花粉监测可以为科学研究提供有用的信息,但不太可能达到公共卫生目标。花粉计数进行对数变换,用于Pearson乘积矩相关性。对于每日PS数据和传统计数数据,所有地点的树木花粉计数都是相关的(R = 0.69–0.84),但草花粉和杂草花粉方法之间的统计相关性较弱(0.40 <; R <; 0.60)或被认为不相关(R <; 0.40)。NADP沉淀样品中的总花粉计数仅在三个位点中的一个位点与传统和PS计数相关。每周HVAS过滤样品的花粉计数与树木的PS计数相关(R = 0.62)和树的NAB计数(R = 0.68)和杂草(R = 0.72)。方法之间的数据相关性表明,随着方法的进一步发展,可以整合各种技术来扩大和增强现有的花粉监测网络。改进专门针对花粉捕获和分析的环境空气和大气沉积采样方法,可以支持从现有大气监测网络中收集准确、高效、有意义的空气过敏原数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Initial comparison of pollen counting methods using precipitation and ambient air samples and automated artificial intelligence to support national monitoring objectives

Initial comparison of pollen counting methods using precipitation and ambient air samples and automated artificial intelligence to support national monitoring objectives

Given the endemic nature of pollen throughout the environment, the impact upon human health, and the need for more extensive and better measurements of pollen in the USA, a preliminary project within the National Atmospheric Deposition Program’s (NADP) National Trends Network (NTN) was developed. Pollen was measured in ambient air by several methods and in precipitation wet deposition samples at three monitoring sites in the NTN. A method for counting pollen on filters was developed and provided pollen counts for NADP atmospheric wet-deposition samples and high-volume ambient air samplers (HVAS) for comparison with co-located traditional National Allergy Bureau microscopy samples and a commercially available pollen sensor (PS) counting method during the 2021 pollen season. The goals of this project were to test the potential of available air-monitoring infrastructures to obtain improved spatial measurements of aeroallergens, compare pollen counting results from the various methods, and to determine the suitability of using wet deposition samples for pollen collection. The onset and senescence of pollen seasons for general categories of genera compared favorably for each method at each site, indicating that pollen monitoring using wet-deposition and ambient air sampling filters could provide useful information to inform scientific studies, but not likely for public health objectives. Pollen counts were log transformed for Pearson product moment correlation. Tree pollen counts were correlated at all sites for daily PS data and traditional counting data (R = 0.69–0.84), but statistical correlations between methods for grass and weed pollen were weak (0.40 < R < 0.60) or considered not correlated (R < 0.40). Total pollen counts in NADP precipitation samples were correlated with traditional and PS counts at only one of three sites. Pollen counts for the weekly HVAS filter samples were correlated with PS counts for trees (R = 0.62) and with NAB counts for trees (R = 0.68) and weeds (R = 0.72). Correlations in the data between methods suggest that, given further methods development, a variety of techniques could be integrated to expand and enhance existing pollen monitoring networks. Improved ambient air and atmospheric deposition sampling methods specifically targeted for pollen capture and analysis could support the collection of accurate and efficient meaningful aeroallergen data from existing atmospheric monitoring networks.

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来源期刊
Aerobiologia
Aerobiologia 环境科学-环境科学
CiteScore
4.50
自引率
15.00%
发文量
37
审稿时长
18-36 weeks
期刊介绍: Associated with the International Association for Aerobiology, Aerobiologia is an international medium for original research and review articles in the interdisciplinary fields of aerobiology and interaction of human, plant and animal systems on the biosphere. Coverage includes bioaerosols, transport mechanisms, biometeorology, climatology, air-sea interaction, land-surface/atmosphere interaction, biological pollution, biological input to global change, microbiology, aeromycology, aeropalynology, arthropod dispersal and environmental policy. Emphasis is placed on respiratory allergology, plant pathology, pest management, biological weathering and biodeterioration, indoor air quality, air-conditioning technology, industrial aerobiology and more. Aerobiologia serves aerobiologists, and other professionals in medicine, public health, industrial and environmental hygiene, biological sciences, agriculture, atmospheric physics, botany, environmental science and cultural heritage.
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