K-Nearest Neighbor Algorithm for Efficient Heart Disease Classification System

Ahmed Subhi Abdalkafor, K. Alheeti
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Abstract

Healthcare is considered significant topic in the recent research area. However, one of the most commonly diseases which is heart diseases disease. The possibility of early detection to reduce the number of deaths because it is difficult to predict a heart disorder quickly. Recently, many researchers focused on the implementation of several feature extraction techniques and the help of artificial intelligence algorithms to classify this disease, but classification accuracy remained the only difference between these studies. In this paper, the proposed work for the classification of heart diseases was implemented and tested after selecting methods and techniques for data pre-processing and extracting important features that led to obtaining a competitive classification accuracy that reached higher than 93.5% compared to related studies. This finding encourages us and other field researchers to use methods for feature extraction and other strategies described in this paper to classify other diseases.
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高效心脏病分类系统的k近邻算法
医疗保健被认为是近年来研究领域的重要课题。然而,最常见的疾病之一是心脏病。早期发现的可能性减少了死亡人数,因为很难快速预测心脏疾病。近年来,许多研究人员专注于几种特征提取技术的实现和人工智能算法的帮助下对这种疾病进行分类,但分类精度仍然是这些研究之间唯一的区别。在本文中,通过选择数据预处理的方法和技术,提取重要特征,实现了所提出的心脏病分类工作并进行了测试,与相关研究相比,获得了高于93.5%的有竞争力的分类准确率。这一发现鼓励我们和其他领域的研究人员使用本文描述的特征提取方法和其他策略来对其他疾病进行分类。
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