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A Comprehensive Analysis on Risk Prediction of Acute Coronary Syndrome Using Machine Learning Approaches

机译:机器学习方法对急性冠脉综合征风险预测的综合分析

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Acute Coronary Syndrome (ACS) is liable for the sudden death. The originator of tachycardia is drug addiction, hyperpiesia polygenic disorder, lipidemia. From the healthcare unit, ACS patients dataset has been collected. By preprocessing the information the chances of the exigency of tachycardia by possessing machine learning (ML) approaches are analyzed. The proficiency of ML techniques for prediction is authentic than any other traditional systems. The central scheme of this analysis is to anticipate the significant contingency of tachycardia. Neural Network, SVM, AdaBoost, Bagging, K-NN, Random Forest approaches are used as long as anticipating the betrayal of ACS. The high-grade exactness with AdaBoost and Bagging are 75.49% and 76.28%. The precision and recall for AdaBoost are 0.741; 0.75 and 0.755; 0.763 for Bagging techniques respectively.
机译:急性冠状动脉综合征(ACS)应对猝死负责。心动过速的始发者是药物成瘾,高血尿症多基因障碍,血脂过多。从医疗保健部门收集了ACS患者数据集。通过预处理信息,可以通过拥有机器学习(ML)方法来分析心动过速的可能性。 ML技术用于预测的能力比任何其他传统系统都可靠。该分析的中心方案是预期心动过速的重大意外事件。神经网络,SVM,AdaBoost,Bagging,K-NN,随机森林方法都可以使用,只要可以预料到ACS的背叛。 AdaBoost和Bagging的高等级准确性分别为75.49 \%和76.28 \%。 AdaBoost的精度和召回率为0.741; 0.75和0.755;套袋技术分别为0.763。

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