The Cardiovascular Disease Prediction Using Machine Learning

S. Pandey
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Abstract

Because of technology developments, the ECG yields improved outcomes in the realm of biomedical science and research. The Electrocardiogram reveals basic the heart's electrical activity. Early detection of aberrant heart disorders is crucial for diagnosing cardiac problems and averting sudden cardiac deaths. Measurements on an electrocardiogram (ECG) among people with comparable cardiac issues are essentially equal. Analyzing the Electrocardiogram characteristics can help predict abnormalities. Medical professionals presently base the preponderance of their Electrocardiogram diagnosis on their unique particular areas of expertise, which places a substantial load on their shoulders and reduces their performance. The use of technology that automatically analyses ECGs as hospital personnel performs their duties will be advantageous. A suitable algorithm must be able to categories Input signal with uncertain awesome feature on just how much they approximate Input signal having known characteristics in order to speed up the identification of heart illnesses. A possibility of identifying a tachycardia is raised if this predictor can reliably recognize connections, and this technique may be helpful in lab settings. To accurately diagnose myocardial illness, a powerful machine learning technique should be used. Through using recommended method, the effectiveness of cardiovascular disease identification using ECG dataset was evaluated. The reliability, sensitivities, and validity obtained using the Svm algorithm were 99.314%, 97.60%, and 97.60% respectively.
利用机器学习进行心血管疾病预测
由于技术的发展,心电图在生物医学科学和研究领域产生了更好的结果。心电图显示心脏的基本电活动。早期发现异常心脏疾病对于诊断心脏问题和避免心脏性猝死至关重要。具有类似心脏问题的人的心电图(ECG)测量基本上是相等的。分析心电图特征有助于预测异常。目前,医疗专业人员的心电图诊断主要基于他们独特的专业领域,这给他们的肩膀带来了巨大的负担,降低了他们的表现。在医院工作人员履行职责时,使用自动分析心电图的技术将是有利的。一种合适的算法必须能够将具有不确定特征的输入信号分类为具有已知特征的输入信号的近似程度,以加快对心脏病的识别。如果该预测器能够可靠地识别连接,则可以提高识别心动过速的可能性,并且该技术可能在实验室环境中有所帮助。为了准确诊断心肌疾病,应该使用强大的机器学习技术。采用推荐方法,对心电数据集识别心血管疾病的有效性进行了评价。Svm算法得到的信度、灵敏度和效度分别为99.314%、97.60%和97.60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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