基于多种机器学习算法的心血管疾病检测及其性能分析

Zainab Ali, Noman Naseer, Hammad Nazeer
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摘要

心脏病在世界各地都被证明是致命的。心律失常、心力衰竭、先天性心脏病等心血管疾病是导致死亡的主要原因。在这种疾病中,心脏不能向身体其他部位提供足够的血液,以使其发挥正常功能。心血管疾病的检测是通过传统的侵入性程序,如CT和血管造影,但它们在解决这些问题和局限性方面存在局限性,因此需要及早准确诊断这种疾病,以避免对患者造成进一步的伤害,提前保护他们的生命。现代世界需要智能和现代的解决方案,因此在这方面,建立在智能机器学习系统上的计算策略已经被发现在识别心脏病方面更加准确和有效。该研究旨在开发一个集成多种机器学习算法的系统,包括k -最近邻居,Naïve Byes,线性回归,决策树和随机森林,用于检测心血管疾病。开发了五种机器学习算法模型,并根据两个目标类别(有无心血管疾病)的准确性、精度、f1分数、宏观平均和加权平均等其他几个性能指标来观察它们的性能。针对每个模型生成的分类报告被用来评估所构建模型的有效性和强度。
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Cardiovascular Disease Detection Using Multiple Machine Learning Algorithms and their Performance Analysis
Heart problems have proven to be lethal all around the world. Cardiovascular diseases like cardiac rhythm disorders, heart failure, congenital heart diseases, etc. are the leading cause of death. In this disease, the heart fails to provide enough blood to other body regions to allow it to perform its regular functions. Cardiovascular disease is detected by traditional invasive procedures such as CT and angiography but they have their limitation to combat such problems and limitations, therefore early and precise diagnosis of this disease is needed for avoiding further damage to patients and protecting their lives in advance. The modern world required intelligent and modern solutions thus in this regard computational strategies built on intelligent machine learning systems have been discovered to be more accurate and effective in the identification of heart disease. This study aimed to develop a system that integrates multiple machine learning algorithms, including K-nearest Neighbor, Naïve Byes, Linear Regression, Decision Tree, and Random Forest, which are used to detect cardiovascular disease. Five machine learning algorithm models were developed and their performances were observed based on several other performance indicators like accuracy, Precision, F1-score, Macro Average, and Weighted average among two target classes i.e. Presence and absence of cardiovascular disease. Classification reports generated against each model were utilized to assess the efficacy and strength of the constructed model.
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