Logistic回归、决策树和随机森林三种研究方法在军队人群中2型糖尿病危险因素和分类研究中的比较

Mohammad Saheb-Honar, M. Gholampour Dehaki, M. H. Kazemi-Galougahi, Saeed Soleiman-Meigooni
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引用次数: 3

摘要

背景:2型糖尿病(T2DM)是世界范围内发病率和死亡率最高的非传染性疾病之一。目前没有关于伊朗军队T2DM状况的研究。目的:我们旨在测量该人群中2型糖尿病的患病率,并确定与2型糖尿病风险相关的变量,以便对个体进行分类。方法:采用3661名伊朗陆军地面部队人员的数据。比较2型糖尿病患者和非2型糖尿病患者的特征。我们用两种基于树的监督学习算法,决策树和随机森林(RF)来检验逻辑回归的分类能力。AJA医学科学大学伦理委员会批准本研究,批准代码995685。结果:T2DM患病率比普通人群低3%。我们的研究结果显示,T2DM的发病率随着受试者年龄的增长而增加。工作人员患2型糖尿病的比例高于其他军衔。2型糖尿病在肥胖和超重人群中更为常见。2型糖尿病患病率最高的是血脂水平高的受试者。logistic回归、决策树和RF的受试者工作特征曲线以下面积分别为73.8%、77.1%和97.1%。结论:年龄、体重指数、总胆固醇、低密度脂蛋白胆固醇和甘油三酯与T2DM风险相关。与逻辑回归和决策树相比,该方法具有更好的分类性能。
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A Comparison of Three Research Methods: Logistic Regression, Decision Tree, and Random Forest to Reveal Association of Type 2 Diabetes with Risk Factors and Classify Subjects in a Military Population
Background: Type 2 diabetes mellitus (T2DM) is one of the major non-communicable diseases, causing morbidity and mortality worldwide. There is no study on T2DM status in Iran Army Forces. Objectives: We aimed to measure the prevalence of T2DM in this population and identify variables associated with T2DM risk in order to classify individuals. Methods: Data from 3661 Iran Army Ground Forces were employed. Characteristics of the subjects with and without T2DM were compared. We examined the classification ability of logistic regression with two tree-based supervised learning algorithms, decision tree and random forest (RF). The ethical committee of AJA University of Medical Sciences approved this study by the approval code 995685. Results: The prevalence of T2DM was 3% less than in the general population. Our results showed that the incidence of T2DM increases as subjects become older. The proportions of staff members with T2DM were more than the other military ranks. T2DM is more common in obese and overweight groups. The highest prevalence of T2DM is in the subjects with high levels of lipid profile. The areas below the receiver operating characteristic curve for logistic regression, decision tree, and RF were 73.8%, 77.1%, and 97.1%, respectively. Conclusions: Age, body mass index, total cholesterol, low-density lipoprotein cholesterol, and triglyceride are associated with T2DM risk. The RF has superior classification performance in comparison with logistic regression and decision tree.
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