Environmental Engineering Department, Ajou University, Suwon, 16499, Korea.
Department of Allergy and Clinical Immunology, Ajou University School of Medicine, Suwon, 16499, Korea.
Respir Res. 2023 Dec 1;24(1):302. doi: 10.1186/s12931-023-02616-x.
Air pollution, weather, pollen, and influenza are typical aggravating factors for asthma. Previous studies have identified risk factors using regression-based and ensemble models. However, studies that consider complex relationships and interactions among these factors have yet to be conducted. Although deep learning algorithms can address this problem, further research on modeling and interpreting the results is warranted.
In this study, from 2015 to 2019, information about air pollutants, weather conditions, pollen, and influenza were utilized to predict the number of emergency room patients and outpatients with asthma using recurrent neural network, long short-term memory (LSTM), and gated recurrent unit models. The relative importance of the environmental factors in asthma exacerbation was quantified through a feature importance analysis.
We found that LSTM was the best algorithm for modeling patients with asthma. Our results demonstrated that influenza, temperature, PM, NO CO, and pollen had a significant impact on asthma exacerbation. In addition, the week of the year and the number of holidays per week were an important factor to model the seasonality of the number of asthma patients and the effect of holiday clinic closures, respectively.
LSTM is an excellent algorithm for modeling complex epidemiological relationships, encompassing nonlinearity, lagged responses, and interactions. Our study findings can guide policymakers in their efforts to understand the environmental factors of asthma exacerbation.
空气污染、天气、花粉和流感是哮喘的典型加重因素。以前的研究使用基于回归和集成模型确定了风险因素。然而,尚未研究考虑这些因素之间复杂关系和相互作用的研究。虽然深度学习算法可以解决这个问题,但需要进一步研究建模和解释结果。
在这项研究中,我们利用 2015 年至 2019 年的空气污染物、天气条件、花粉和流感信息,使用递归神经网络、长短期记忆 (LSTM) 和门控递归单元模型预测急诊室和门诊哮喘患者人数。通过特征重要性分析量化了环境因素在哮喘恶化中的相对重要性。
我们发现 LSTM 是哮喘建模的最佳算法。我们的结果表明,流感、温度、PM、NO CO 和花粉对哮喘恶化有重大影响。此外,一年中的星期数和每周的节假日数是分别对哮喘患者人数的季节性和节假日诊所关闭的影响进行建模的重要因素。
LSTM 是一种出色的算法,可用于建模复杂的流行病学关系,包括非线性、滞后响应和相互作用。我们的研究结果可以指导政策制定者了解哮喘恶化的环境因素。