基于国家脑卒中筛查数据,使用机器学习模型研究高血压患者的药物依从性

Xuemeng Li, Haifeng Xu, Mei Li, Dongsheng Zhao
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引用次数: 4

摘要

脑卒中的高发病率、高流行率和高死亡率给中国家庭和社会带来了沉重的负担。2009年,中国卫生部启动了全国脑卒中筛查与干预项目。在国家计划中,对中风的危险因素进行筛查,并对40岁以上的中风高危人群进行随访。从经验上发现,高血压是脑卒中的重要危险因素。提高高血压药物的依从性,可以有效控制血压,进一步降低脑卒中的发生率。在本研究中,我们首先采用过采样和欠采样的方法来处理不平衡数据集。然后,我们建立了逻辑回归模型、决策树模型、神经网络模型和随机森林模型四种机器学习模型,对高血压患者的药物依从性进行分类。我们用召回率和精确率来评价这些模型,综合考虑这两个标准,基于决策树的模型达到了最好的性能。本文构建的模型可在脑卒中筛查项目中识别抗高血压药物依从性低的人群,提高随访干预的效率,有效控制血压,降低脑卒中发生的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning Models to Study Medication Adherence in Hypertensive Patients Based on National Stroke Screening Data
Stroke, with high incidence, prevalence and mortality, has brought a heavy burden to families as well as society in China nowadays. In 2009, the China national stroke screening and intervention program was launched by the Ministry of Health of China. In the national program, risk factors of stroke are screened and people aged over 40 with high-risk of stroke will be followed-up. From the experience, it is found that hypertension is an important risk factor of stroke. Improving the adherence of hypertension medication can effectively control blood pressure and further decrease stroke incidence. In this study, firstly, we employ oversampling and undersampling method to process the imbalanced dataset. Then, we build four machine learning models, namely logistic regression model, decision tree model, neural network model and random forest model, to classify medication adherence in hypertensive patients. We use the recall and precision to evaluate these models, and considering these two criteria, the model based on decision tree achieves best performance. The models constructed in this paper can be used to identify people with low adherence of antihypertensive drugs in the stroke screening program and improve the efficiency of the follow-up interventions, which can effectively control blood pressure and reduce the possibility of stroke.
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