Development of Rule-Based Diagnostic Algorithms with Artificial Intelligence Methods for the Determination of Cardiovascular Diseases

Buse Nur Karaman
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Abstract

According to the World Health Organization (WHO) data, heart diseases are among the diseases with the highest mortality rate. Cardiovascular diseases, known as cardiovascular diseases, are defined as the formation of plaque on the inner wall of the vessel, the hardening of the vessels, the narrowing of the vessel and making the blood flow difficult. The diagnosis of the disease is made by examining various clinical findings. The clinical findings and tests take time, prolonging the diagnostic phase. For this reason, new tools and methods are being researched to facilitate the disease diagnosis process. Materials and Methods: Heart disease dataset from Kaggle, a public sharing site, was used in the study. There are 14 features in the dataset. The features were selected with the Eta correlation coefficient and reduced to 11. Rule-based diagnostic algorithms have been developed with the help of decision tree algorithms. Results: As a result of the study, rule-based algorithms were developed at approximately 5 levels, with an average accuracy rate of 94.15, sensitivity of 0.98, and specificity of 0.91. Conclusion: According to the model performances, it has a high accuracy rate developed with artificial intelligence methods for the diagnosis of CVD, and it is thought that it can be used as a rule-based diagnostic algorithm by the clinician.
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基于规则的心血管疾病诊断算法与人工智能方法的发展
根据世界卫生组织(WHO)的数据,心脏病是死亡率最高的疾病之一。心血管疾病,简称心血管疾病,定义为血管内壁形成斑块,血管硬化,血管变窄,使血液流动困难。这种疾病的诊断是通过检查各种临床表现来作出的。临床发现和测试需要时间,延长了诊断阶段。因此,正在研究新的工具和方法,以促进疾病诊断过程。材料和方法:研究中使用了公共分享网站Kaggle的心脏病数据集。数据集中有14个特征。利用Eta相关系数选择特征,并将其约为11。基于规则的诊断算法在决策树算法的帮助下得到了发展。结果:研究结果表明,基于规则的算法开发了大约5个级别,平均准确率为94.15,灵敏度为0.98,特异性为0.91。结论:从模型性能来看,结合人工智能方法开发的CVD诊断准确率较高,可作为临床医生基于规则的诊断算法。
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