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Automatic Classification of Hypertension Types Based on Personal Features by Machine Learning Algorithms

机译:基于机器学习算法的个人特征自动分类高血压类型

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Hypertension (high blood pressure) is an important disease seen among the public, and early detection of hypertension is significant for early treatment. Hypertension is depicted as systolic blood pressure higher than 140?mmHg or diastolic blood pressure higher than 90?mmHg. In this paper, in order to detect the hypertension types based on the personal information and features, four machine learning (ML) methods including C4.5 decision tree classifier (DTC), random forest, linear discriminant analysis (LDA), and linear support vector machine (LSVM) have been used and then compared with each other. In the literature, we have first carried out the classification of hypertension types using classification algorithms based on personal data. To further explain the variability of the classifier type, four different classifier algorithms were selected for solving this problem. In the hypertension dataset, there are eight features including sex, age, height (cm), weight (kg), systolic blood pressure (mmHg), diastolic blood pressure (mmHg), heart rate (bpm), and BMI (kg/m2) to explain the hypertension status and then there are four classes comprising the normal (healthy), prehypertension, stage-1 hypertension, and stage-2 hypertension. In the classification of the hypertension dataset, the obtained classification accuracies are 99.5%, 99.5%, 96.3%, and 92.7% using the C4.5 decision tree classifier, random forest, LDA, and LSVM. The obtained results have shown that ML methods could be confidently used in the automatic determination of the hypertension types.
机译:高血压(高血压)是公众中看到的重要疾病,早期检测高血压是早期治疗的重要性。高血压被描绘为收缩压高于140?mmHg或舒张压高于90ΩmmHg的血压。在本文中,为了根据个人信息和特征检测高血压类型,四种机器学习(ML)方法,包括C4.5决策树分类器(DTC),随机林,线性判别分析(LDA)和线性支持矢量机(LSVM)已被使用,然后相互比较。在文献中,我们首先使用基于个人数据的分类算法进行高血压类型的分类。为了进一步解释分类器类型的可变性,选择了四种不同的分类器算法来解决这个问题。在高血压数据集中,存在八个特征,包括性别,年龄,高度(cm),重量(kg),收缩压(mmhg),舒张压(mmhg),心率(bpm)和bmi(kg / m2 )解释高血压状态,然后有四种阶级,包括正常(健康),毛细血管,第1阶段高血压和第2阶段高血压。在高血压数据集的分类中,使用C4.5决策树分类器,随机林,LDA和LSVM,所获得的分类精度为99.5%,99.5%,96.3%和92.7%。得到的结果表明,可以在自动测定高血压类型的情况下自信地使用ML方法。

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