Heartbeat Pattern and Arrhythmia Classification: A Review

Q3 Health Professions Frontiers in Biomedical Technologies Pub Date : 2023-12-26 DOI:10.18502/fbt.v11i1.14520
Shashank Dwivedi, Abuzar Mohammad
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Abstract

In today’s era, the lifestyle of people has become much more sophisticated due to the involvement of stress, anxiety, and depression in the daily routine of human beings. In such a scenario, cardiac diseases are growing rapidly in youngsters and senior citizens. It is also observed that cardiac diseases are crucial and sensitive, including life-threatening chances. So, it is essential to detect and prevent such cardiac disorders within the required time for recovery. Since there has been a lot of research in the prediction and prevention of cardiac disorders, cardiac arrhythmia is also one of the majorly occurring diseases in the bulk of the population. The electrocardiogram is the cheap and best way to diagnose the problem of cardiac arrhythmia, and a huge amount of data is collected daily in hospitals and pathological centers. Previously, various automated models were developed for detecting cardiac arrhythmia using deep learning approaches and machine learning. In this work, we have reviewed recently developed automated models and evaluated their performance based on specific parameters like deployed datasets, variation of input data, applied application, methodology, and results obtained by the developed model. The limitations of reviewed papers are also mentioned in addition to their future scope for improvement.
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心跳模式和心律失常分类:综述
当今时代,由于压力、焦虑和抑郁卷入了人类的日常生活,人们的生活方式变得更加复杂。在这种情况下,心脏病在年轻人和老年人中迅速增长。人们还注意到,心脏疾病非常关键和敏感,包括危及生命的机会。因此,必须在规定的康复时间内检测和预防此类心脏疾病。由于人们对心脏疾病的预测和预防进行了大量研究,心律失常也成为大多数人的主要疾病之一。心电图是诊断心律失常的最廉价、最好的方法,医院和病理中心每天都要收集大量数据。此前,人们利用深度学习方法和机器学习开发了各种自动模型来检测心律失常。在这项工作中,我们回顾了最近开发的自动模型,并根据具体参数(如部署的数据集、输入数据的变化、应用、方法和开发模型获得的结果)对其性能进行了评估。此外,我们还提到了受评论文的局限性以及未来的改进空间。
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来源期刊
Frontiers in Biomedical Technologies
Frontiers in Biomedical Technologies Health Professions-Medical Laboratory Technology
CiteScore
0.80
自引率
0.00%
发文量
34
审稿时长
12 weeks
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