基于机器学习的各类空气污染物对哮喘患者就诊影响分析

Toxics Pub Date : 2022-10-27 DOI:10.3390/toxics10110644
Soyeon Lee, Hyeeun Ku, Changwan Hyun, Minhyeok Lee
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引用次数: 4

摘要

哮喘是一种慢性呼吸系统疾病,表现为气道炎症、胸痛、喘息、咳嗽和呼吸困难,全球约有3亿人受到影响。尽管各种研究表明空气污染与哮喘之间存在关联,但很少有研究使用统计和机器学习算法来调查每种空气污染物对哮喘的影响。本研究的目的是通过三种分析方法来评估空气污染物与哮喘患者就诊频率之间的关系:通过Pearson相关系数进行线性相关分析,使用最小绝对收缩和选择算子(LASSO)和随机森林(RF)模型进行基于机器学习的分析,以调查空气污染物的影响。这项研究使用2013年至2017年收集的韩国首尔医院访问数据库对哮喘患者进行了研究。数据集包括门诊就诊(n = 17,787,982)、住院(n = 215,696)和急诊就诊(n = 85,482)。对2013 ~ 2017年首尔市内25个地点的每日大气环境信息进行了评价。三种分析模型显示,在哮喘患者的平均门诊就诊中,NO2是最显著的污染物。例如,NO2对门诊医院访问量的影响最大,产生正相关(r=0.331)。在入院的哮喘患者中,一氧化碳是平均最显著的污染物。结果显示,CO与住院率呈正相关(I = 3.329)。此外,在线性相关分析中,NO2和CO与哮喘患者门诊就诊和住院之间存在显著的时间滞后。特别是,在线性相关分析中,二氧化氮和一氧化碳显示出增加住院率的滞后4。本研究提供了PM2.5、PM10、NO2、CO、SO2和O3与哮喘患者就诊频率相关的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning-Based Analyses of the Effects of Various Types of Air Pollutants on Hospital Visits by Asthma Patients.

Machine Learning-Based Analyses of the Effects of Various Types of Air Pollutants on Hospital Visits by Asthma Patients.

Machine Learning-Based Analyses of the Effects of Various Types of Air Pollutants on Hospital Visits by Asthma Patients.

Machine Learning-Based Analyses of the Effects of Various Types of Air Pollutants on Hospital Visits by Asthma Patients.

Asthma is a chronic respiratory disorder defined by airway inflammation, chest pains, wheezing, coughing, and difficulty breathing that affects an estimated 300 million individuals globally. Although various studies have shown an association between air pollution and asthma, few studies have used statistical and machine learning algorithms to investigate the effect of each individual air pollutant on asthma. The purpose of this research was to assess the association between air pollutants and the frequency of hospital visits by asthma patients using three analysis methods: linear correlation analyses were performed by Pearson correlation coefficients, and least absolute shrinkage and selection operator (LASSO) and random forest (RF) models were used for machine learning-based analyses to investigate the effect of air pollutants. This research studied asthma patients using the hospital visit database in Seoul, South Korea, collected between 2013 and 2017. The data set included outpatient hospital visits (n = 17,787,982), hospital admissions (n = 215,696), and emergency department visits (n = 85,482). The daily atmospheric environmental information from 2013 to 2017 at 25 locations in Seoul was evaluated. The three analysis models revealed that NO2 was the most significant pollutant on average in outpatient hospital visits by asthma patients. For example, NO2 had the greatest impact on outpatient hospital visits, resulting in a positive association (r=0.331). In hospital admissions of asthma patients, CO was the most significant pollutant on average. It was observed that CO exhibited the most positive association with hospital admissions (I = 3.329). Additionally, a significant time lag was found between both NO2 and CO and outpatient hospital visits and hospital admissions of asthma patients in the linear correlation analysis. In particular, NO2 and CO were shown to increase hospital admissions at lag 4 in the linear correlation analysis. This study provides evidence that PM2.5, PM10, NO2, CO, SO2, and O3 are associated with the frequency of hospital visits by asthma patients.

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