Department of Environmental Health, Boston University School of Public Health, Boston, MA.
Department of Environmental Health, Boston University School of Public Health, Boston, MA.
Ann Epidemiol. 2022 Sep;73:38-47. doi: 10.1016/j.annepidem.2022.06.034. Epub 2022 Jun 30.
Children may be exposed to numerous in-home environmental exposures (IHEE) that trigger asthma exacerbations. Spatially linking social and environmental exposures to electronic health records (EHR) can aid exposure assessment, epidemiology, and clinical treatment, but EHR data on exposures are missing for many children with asthma. To address the issue, we predicted presence of indoor asthma trigger allergens, and estimated effects of their key geospatial predictors.
Our study samples were comprised of children with asthma who provided self-reported IHEE data in EHR at a safety-net hospital in New England during 2004-2015. We used an ensemble machine learning algorithm and 86 multilevel features (e.g., individual, housing, neighborhood) to predict presence of cockroaches, rodents (mice or rats), mold, and bedroom carpeting/rugs in homes. We reduced dimensionality via elastic net regression and estimated effects by the G-computation causal inference method.
Our models reasonably predicted presence of cockroaches (area under receiver operating curves [AUC] = 0.65), rodents (AUC = 0.64), and bedroom carpeting/rugs (AUC = 0.64), but not mold (AUC = 0.54). In models adjusted for confounders, higher average household sizes in census tracts were associated with more reports of pests (cockroaches and rodents). Tax-exempt parcels were associated with more reports of cockroaches in homes. Living in a White-segregated neighborhood was linked with lower reported rodent presence, and mixed residential/commercial housing and newer buildings were associated with more reports of bedroom carpeting/rugs in bedrooms.
We innovatively applied a machine learning and causal inference mixture methodology to detail IHEE among children with asthma using EHR and geospatial data, which could have wide applicability and utility.
儿童可能会接触到许多引发哮喘发作的家庭环境暴露(IHEE)。将社会和环境暴露与电子健康记录(EHR)进行空间联系,可以辅助暴露评估、流行病学和临床治疗,但许多哮喘儿童的 EHR 数据中都缺少暴露信息。为了解决这个问题,我们预测了室内哮喘触发过敏原的存在,并估计了其关键地理空间预测因素的影响。
我们的研究样本包括在新英格兰一家社区医院的 EHR 中报告了 IHEE 数据的哮喘儿童。我们使用了一个集成机器学习算法和 86 个多层次特征(如个人、住房、邻里)来预测家中蟑螂、啮齿动物(老鼠或大鼠)、霉菌和卧室地毯/地毯的存在。我们通过弹性网络回归降低了维度,并通过因果推理的 G 计算方法估计了影响。
我们的模型合理地预测了蟑螂(接收者操作特征曲线下面积[AUC] = 0.65)、啮齿动物(AUC = 0.64)和卧室地毯/地毯(AUC = 0.64)的存在情况,但未预测到霉菌(AUC = 0.54)。在调整了混杂因素的模型中,在普查区中,家庭平均规模越大,害虫(蟑螂和啮齿动物)的报告就越多。免税地段与家中蟑螂的报告增多有关。居住在白人群居的社区与报告的啮齿动物存在量较低有关,而混合住宅/商业住房和较新的建筑与卧室中更多的卧室地毯/地毯报告有关。
我们创新性地应用了机器学习和因果推理混合方法,利用 EHR 和地理空间数据详细描述了哮喘儿童的 IHEE,这可能具有广泛的适用性和实用性。