Institute for Research and Education to Advance Community Health (IREACH), Elson S. Floyd College of Medicine, Washington State University, Seattle, WA, USA.
Department of Genetics and Genomic Sciences, Icahn School of Medicine at Mount Sinai, New York, NY, USA.
Sci Total Environ. 2024 Apr 15;921:171102. doi: 10.1016/j.scitotenv.2024.171102. Epub 2024 Feb 21.
Air toxics are atmospheric pollutants with hazardous effects on health and the environment. Although methodological constraints have limited the number of air toxics assessed for associations with health and disease, advances in machine learning (ML) enable the assessment of a much larger set of environmental exposures. We used ML methods to conduct a retrospective study to identify combinations of 109 air toxics associated with asthma symptoms among 269 elementary school students in Spokane, Washington. Data on the frequency of asthma symptoms for these children were obtained from Spokane Public Schools. Their exposure to air toxics was estimated by using the Environmental Protection Agency's Air Toxics Screening Assessment and National Air Toxics Assessment. We defined three exposure periods: the most recent year (2019), the last three years (2017-2019), and the last five years (2014-2019). We analyzed the data using the ML-based Data-driven ExposurE Profile (DEEP) extraction method. DEEP identified 25 air toxic combinations associated with asthma symptoms in at least one exposure period. Three combinations (1,1,1-trichloroethane, 2-nitropropane, and 2,4,6-trichlorophenol) were significantly associated with asthma symptoms in all three exposure periods. Four air toxics (1,1,1-trichloroethane, 1,1,2,2-tetrachloroethane, BIS (2-ethylhexyl) phthalate (DEHP), and 2,4-dinitrophenol) were associated only in combination with other toxics, and would not have been identified by traditional statistical methods. The application of DEEP also identified a vulnerable subpopulation of children who were exposed to 13 of the 25 significant combinations in at least one exposure period. On average, these children experienced the largest number of asthma symptoms in our sample. By providing evidence on air toxic combinations associated with childhood asthma, our findings may contribute to the regulation of these toxics to improve children's respiratory health.
空气毒物是对健康和环境具有有害影响的大气污染物。尽管方法学上的限制限制了评估与健康和疾病相关的空气毒物的数量,但机器学习 (ML) 的进步使得评估更大的一组环境暴露成为可能。我们使用 ML 方法进行了一项回顾性研究,以确定在华盛顿州斯波坎的 269 名小学生中与哮喘症状相关的 109 种空气毒物的组合。这些儿童的哮喘症状数据来自斯波坎公立学校。他们的空气毒物暴露是通过使用环境保护署的空气毒物筛选评估和国家空气毒物评估来估计的。我们定义了三个暴露期:最近一年(2019 年)、过去三年(2017-2019 年)和过去五年(2014-2019 年)。我们使用基于机器学习的 Data-driven ExposurE Profile (DEEP) 提取方法分析数据。DEEP 确定了 25 种与哮喘症状相关的空气毒物组合,这些组合在至少一个暴露期内存在。三种组合(1,1,1-三氯乙烷、2-硝基丙烷和 2,4,6-三氯苯酚)在所有三个暴露期均与哮喘症状显著相关。四种空气毒物(1,1,1-三氯乙烷、1,1,2,2-四氯乙烷、邻苯二甲酸二异辛酯(DEHP)和 2,4-二硝基苯酚)仅与其他毒物联合存在相关,传统统计方法无法识别。DEEP 的应用还确定了一个易受伤害的儿童亚群,这些儿童在至少一个暴露期内接触了 25 种显著组合中的 13 种。平均而言,这些儿童在我们的样本中经历了最多的哮喘症状。通过提供与儿童哮喘相关的空气毒物组合的证据,我们的研究结果可能有助于这些毒物的监管,以改善儿童的呼吸道健康。