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Classification of Elderly Group with Hypertension for Preventing Cardiovascular Disease Complication

机译:老年高血压人群预防心血管疾病并发症的分类

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Nowadays, the amount of elderly people in the world population is increasing dramatically, so their health problem is the main concern. Cardiovascular Disease (CVD) is one of the major health problems for elderly people. Especially, hypertension is the main risk factor causing CVD. Consequently, recognizing the ability to control hypertension is very important for providing appropriate treatment recommendations. Therefore, this paper proposes a classification of an elderly group respecting the controllability of hypertension for preventing CVD complications. Decision tree, artificial neuron network, and K-nearest neighbors are employed and compared for classifying elderly group. Moreover, this paper also aims to find the most suitable classifier for the datasets used in this study. Total cholesterol, low-density lipoprotein cholesterol, high-density lipoprotein cholesterol, body mass index, and smoking are considered in this paper as the significant risk factors of hypertension development. All data of these factors are collected from secondary data related to elderly people having hypertension with the number of 748 datasets. Finally, the elderly people are classified into two groups including potential controllable group and potential uncontrollable group. The results show that the decision tree provides the highest accuracy of classification for this dataset with 99.11%.
机译:如今,世界上老年人口的数量急剧增加,因此,人们的主要健康问题是老年人。心血管疾病(CVD)是老年人的主要健康问题之一。特别是,高血压是引起CVD的主要危险因素。因此,认识到控制高血压的能力对于提供适当的治疗建议非常重要。因此,本文提出了一种考虑到高血压的可控制性以预防CVD并发症的老年人群的分类。决策树,人工神经元网络和K近邻被用来比较老年人群。此外,本文还旨在为该研究中使用的数据集找到最合适的分类器。总胆固醇,低密度脂蛋白胆固醇,高密度脂蛋白胆固醇,体重指数和吸烟被认为是高血压发展的重要危险因素。这些因素的所有数据均来自与患有高血压的老年人相关的次要数据,其数量为748个数据集。最后,将老年人分为潜在可控组和潜在不可控组两类。结果表明,决策树为该数据集提供了最高的分类准确率,为99.11%。

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