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Detection and Classification of Cardiac Arrhythmias by Machine Learning: a Systematic Review

机译:机器学习检测和分类心律失常:系统评价

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Machine learning (ML) techniques can perform as better as humans at key healthcare tasks. Recent advances make it possible to perform, using ML, automatic high-level feature extraction and classification of cardiac arrhythmia. In this work, we aimed through a systematic literature review to identify the principal methods, databases, and contributions of ML on cardiac arrhythmias classification. Electronic database including PubMed, Science Direct, IEEE, Scielo, Scopus, and Web of Science were searched, from 2014 to 2019, by combining the following keywords “ECG”, “heart signals”, “ar-rhythmia”, “classification” and “machine learning”. 28 studies were selected as eligible. Classifications classes ranged from 2 to 17, with prevalence of 2 classes (71.4% of the studies). The most frequent applied methods were Artificial Neural Network (13 articles), followed by Support Vector Machines and Mixed techniques (5 articles respectively). MIT-BIH Arrhythmia Database was used in 15 studies (54%), whereas 8 (28.5%) utilized their own data. The approach basis for evaluating the results is the confusion matrix, where up to 82% of the studies used accuracy, 67.8% precision, and 46% sensitivity/specificity. Classification of cardiac arrhythmias through ECG is of increasing interest from the research groups, and ML classification is showing rising levels of performance. It would benefit both patients and clinicians.
机译:机器学习(ML)技术可以在关键医疗任务中作为人类表现得更好。最近的进展使得可以使用ML,自动高级特征提取和心脏心律失常分类进行。在这项工作中,我们通过系统的文献审查来确定ML对心律失常分类的主要方法,数据库和贡献。从2014年到2019年,通过组合以下关键词“ECG”,“心脏信号”,“AR-Rhythmia”,“分类”和“科学”,Scielo,Scielo,Scielo,Scielo,Scielo,Scopus和Scips和Sciel和Scips的网络和科学网站。 “机器学习”。 28项研究被选为符合条件。分类课程的范围从2到17次,患有2级的患病率(71.4%的研究)。最常见的应用方法是人工神经网络(13篇),其次是支持载体机和混合技术(分别为5篇)。 MIT-BIH心律失常数据库用于15项研究(54%),而8(28.5%)利用自己的数据。评估结果的方法是混淆矩阵,其中高达82%的研究使用精度,精度为67.8%,灵敏度/特异性为46%。通过ECG的心脏心律失常分类是对研究组的利益增加,ML分类显示出现上升的性能水平。它会使患者和临床医生受益。

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