Identification of Cardiovascular Disorders Using Machine Learning Classification Algorithms

Faisal Bin Ashraf, Tanvinur Rahman Siam, Zulker Nayen, Farhan Uz Zaman
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引用次数: 2

Abstract

Early detection of myocardial infarction is crucial for necessary medical support and reducing its mortality rate. Every year a huge amount of people are suffering and dying of different heart diseases. The advent of Machine Learning techniques to learn and predict future events based on the data has brought about revolutionary changes in the field of healthcare. These techniques can be used to predict heart disease, and also to identify the type of disease that the patient is suffering from. In this work, we have used a dataset that contains the clinical records of patients who have been admitted into a hospital with a heart problem and experimented with different classification algorithms to predict the type of heart problem that the patient got. We have experimented with the dataset from a different perspectives and a thorough discussion reveals that XGB ensemble classification performs best for this multi-class classification problem. This algorithm gives the best evaluation metric of 99% balanced accuracy, 0.99 ROC AUC, and a perfect F1 score.
使用机器学习分类算法识别心血管疾病
心肌梗死的早期发现对于必要的医疗支持和降低其死亡率至关重要。每年都有大量的人遭受不同的心脏疾病的折磨和死亡。基于数据学习和预测未来事件的机器学习技术的出现,给医疗保健领域带来了革命性的变化。这些技术可以用来预测心脏病,也可以用来确定病人所患的疾病类型。在这项工作中,我们使用了一个数据集,其中包含了因心脏问题而入院的患者的临床记录,并尝试了不同的分类算法来预测患者所患心脏问题的类型。我们从不同的角度对数据集进行了实验,并进行了深入的讨论,结果表明XGB集成分类在这个多类分类问题上表现最好。该算法给出了99%的平衡精度、0.99的ROC AUC和完美的F1分数的最佳评价指标。
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