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基于空气污染物的结膜炎患者人数的机器学习预测:初步研究。

Machine learning prediction on number of patients due to conjunctivitis based on air pollutants: a preliminary study.

机构信息

Department of Ophthalmology, Affiliated Hospital of Hangzhou Normal University, Hangzhou, China.

出版信息

Eur Rev Med Pharmacol Sci. 2020 Oct;24(20):10330-10337. doi: 10.26355/eurrev_202010_23380.

Abstract

OBJECTIVE

A prediction of the number of patients with conjunctivitis plays an important role in providing adequate treatment at the hospital, but such accurate predictive model currently does not exist. The current study sought to use machine learning (ML) prediction based on past patient for conjunctivitis and several air pollutants. The optimal machine learning prediction model was selected to predict conjunctivitis-related number patients.

PATIENTS AND METHODS

The average daily air pollutants concentrations (CO, O3, NO2, SO2, PM10, PM2.5) and weather data (highest and lowest temperature) were collected. Data were randomly divided into training dataset and test dataset, and normalized mean square error (NMSE) was calculated by 10 fold cross validation, comparing between the ability of seven ML methods to predict the number of patients due to conjunctivitis (Lasso penalized linear model, Decision tree, Boosting regression, Bagging regression, Random forest, Support vector, and Neural network). According to the accuracy of impact prediction, the important air and weather factors that affect conjunctivitis were identified.

RESULTS

A total of 84,977 cases to treat conjunctivitis were obtained from the ophthalmology center of the Affiliated Hospital of Hangzhou Normal University. For all patients together, the NMSE of the different methods were as follows: Lasso penalized linear regression: 0.755, Decision tree: 0.710, Boosting regression: 0.616, Bagging regression: 0.615, Random forest: 0.392, Support vectors: 0.688, and Neural network: 0.476. Further analyses, stratified by gender and age at diagnosis, supported Random forest as being superior to others ML methods. The main factors affecting conjunctivitis were: O3, NO2, SO2 and air temperature.

CONCLUSIONS

Machine learning algorithm can predict the number of patients due to conjunctivitis, among which, the Random forest algorithm had the highest accuracy. Machine learning algorithm could provide accurate information for hospitals dealing with conjunctivitis caused by air factors.

摘要

目的

预测结膜炎患者数量对医院提供充足治疗至关重要,但目前尚无此类准确的预测模型。本研究旨在使用基于过去患者的机器学习(ML)预测和几种空气污染物来预测结膜炎。选择最佳的机器学习预测模型来预测与结膜炎相关的患者数量。

患者和方法

收集了平均每日空气污染物浓度(CO、O3、NO2、SO2、PM10、PM2.5)和气象数据(最高和最低温度)。数据被随机分为训练数据集和测试数据集,并通过 10 折交叉验证计算归一化均方误差(NMSE),比较 7 种 ML 方法预测因结膜炎导致的患者数量的能力(Lasso 惩罚线性模型、决策树、Boosting 回归、Bagging 回归、随机森林、支持向量和神经网络)。根据影响预测的准确性,确定影响结膜炎的重要空气和气象因素。

结果

从杭州师范大学附属医院眼科中心共获得 84977 例治疗结膜炎的病例。对于所有患者,不同方法的 NMSE 如下:Lasso 惩罚线性回归:0.755;决策树:0.710;Boosting 回归:0.616;Bagging 回归:0.615;随机森林:0.392;支持向量机:0.688;神经网络:0.476。进一步的分析,按性别和诊断时的年龄分层,支持随机森林优于其他 ML 方法。影响结膜炎的主要因素是:O3、NO2、SO2 和空气温度。

结论

机器学习算法可以预测因结膜炎导致的患者数量,其中随机森林算法的准确性最高。机器学习算法可以为处理因空气因素引起的结膜炎的医院提供准确的信息。

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