The Risk Factors of Hypertension and Their Predictive Power in Identifying Patients Using a Decision Tree

Mehdi Moradinazr, Farid Najafi, Fatemeh Rajati
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Abstract

Hypertension (HTN) is the most important controllable risk factor for non-communicable diseases that can have various causes, which vary in different subgroups. This secondary analysis was conducted using the data obtained through the recruitment phase of Ravansar non-communicable cohort study (RaNCD). The multivariable logistic regression was used to determine the risk factors of HTN, and a decision tree with the CART algorithm was used to determine the predictive power of these variables. Of the 10,046 individuals aged 35 to 65 participating in RaNCD, 1579 (15.72%) of the participants had HTN. Aging and diabetes were the most important risk factors of HTN. The sensitivity and specificity of the decision tree for the training and testing models were very similar, such that the sensitivity of training was 69.0% and testing 68.0%, and their specificity was 73.0% and 71.0%, respectively. Overall, the accuracy rate of the training and testing models was 70% and 68%, respectively. The variable that best discriminated people with HTN from non-HTN was diabetes. In people with diabetes, the incidence of HTN was 5 years higher than those without diabetes. Since the predictive power and effect of the risk factors of HTN vary from one group to another, the decision tree can be of great help in identifying people with HTN due to the latent nature of the disease.

Abstract Image

高血压的风险因素及其利用决策树识别患者的预测能力
高血压(HTN)是导致非传染性疾病的最重要的可控风险因素,而导致非传染性疾病的原因多种多样,在不同的亚群体中也各不相同。这项二次分析是利用拉旺萨非传染性队列研究(RaNCD)招募阶段获得的数据进行的。研究采用多变量逻辑回归法来确定高血压的风险因素,并使用 CART 算法的决策树来确定这些变量的预测能力。在参加 RaNCD 的 10,046 名 35 至 65 岁的人中,有 1579 人(15.72%)患有高血压。年龄和糖尿病是高血压的最重要风险因素。决策树的训练模型和测试模型的灵敏度和特异性非常相似,训练模型的灵敏度为 69.0%,测试模型的灵敏度为 68.0%,特异性分别为 73.0%和 71.0%。总体而言,训练模型和测试模型的准确率分别为 70% 和 68%。最能区分高血压患者和非高血压患者的变量是糖尿病。糖尿病患者的高血压发病率比非糖尿病患者高 5 年。由于高血压的风险因素对不同人群的预测能力和影响各不相同,决策树对识别高血压患者有很大帮助,因为该疾病具有潜伏性。
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