Jeon Hyeon-Ju, Jeon Hyeon-Jin, Jeon Seung Ho
Data Assimilation Group, Korea Institute of Atmospheric Prediction Systems (KIAPS), Seoul, Republic of Korea.
Department of Artificial Intelligence, Dongguk University, Seoul, Republic of Korea.
PLoS One. 2024 Jun 13;19(6):e0304106. doi: 10.1371/journal.pone.0304106. eCollection 2024.
Air pollution causes and exacerbates allergic diseases including asthma, allergic rhinitis, and atopic dermatitis. Precise prediction of the number of patients afflicted with these diseases and analysis of the environmental conditions that contribute to disease outbreaks play crucial roles in the effective management of hospital services. Therefore, this study aims to predict the daily number of patients with these allergic diseases and determine the impact of particulate matter (PM10) on each disease. To analyze the spatiotemporal correlations between allergic diseases (asthma, atopic dermatitis, and allergic rhinitis) and PM10 concentrations, we propose a multi-variable spatiotemporal graph convolutional network (MST-GCN)-based disease prediction model. Data on the number of patients were collected from the National Health Insurance Service from January 2013 to December 2017, and the PM10 data were collected from Airkorea during the same period. As a result, the proposed disease prediction model showed higher performance (R2 0.87) than the other deep-learning baseline methods. The synergic effect of spatial and temporal analyses improved the prediction performance of the number of patients. The prediction accuracies for allergic rhinitis, asthma, and atopic dermatitis achieved R2 scores of 0.96, 0.92, and 0.86, respectively. In the ablation study of environmental factors, PM10 improved the prediction accuracy by 10.13%, based on the R2 score.
空气污染会引发并加剧包括哮喘、过敏性鼻炎和特应性皮炎在内的过敏性疾病。准确预测患这些疾病的患者数量,并分析导致疾病爆发的环境条件,对医院服务的有效管理起着至关重要的作用。因此,本研究旨在预测这些过敏性疾病的每日患者数量,并确定颗粒物(PM10)对每种疾病的影响。为了分析过敏性疾病(哮喘、特应性皮炎和过敏性鼻炎)与PM10浓度之间的时空相关性,我们提出了一种基于多变量时空图卷积网络(MST-GCN)的疾病预测模型。患者数量数据收集自2013年1月至2017年12月的国民健康保险服务机构,PM10数据则在同一时期从韩国空气监测系统收集。结果,所提出的疾病预测模型表现出比其他深度学习基线方法更高的性能(R2为0.87)。时空分析的协同效应提高了患者数量的预测性能。过敏性鼻炎、哮喘和特应性皮炎的预测准确率分别达到了R2分数0.96、0.92和0.86。在环境因素的消融研究中,基于R2分数,PM10将预测准确率提高了10.13%。