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A Survey on Machine Learning Approaches to ECG Processing

机译:ECG处理的机器学习方法概述

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Electrocardiogram (ECG) signals convey a substantial amount of information that can be used for detecting and predicting the occurrence of several diseases and conditions. Approaches to ECG analysis were traditionally based on Signal Processing (SP), but several recent work have managed to substantially increase the quality of the analyses by using Machine Learning (ML) techniques. Still, while ML offers the potential to extract a substantially more information and predict diseases with better accuracy, it is also intrinsically more computationally expensive. Given the importance of this field and recent advances, we present a survey on ML approaches to ECG processing, focusing on particular diseases and conditions that can be detected and the different algorithms used for that. Moreover, we also discuss recent implementations of such algorithms on low-power wearable devices. We identify an opportunity for the development of novel embedded architectures that could enable the continuous monitoring of ECG signals and identify emerging technologies that could help in paving the way towards that.
机译:心电图(ECG)信号传达了大量信息,可用于检测和预测几种疾病和状况的发生。心电图分析的方法传统上是基于信号处理(SP)的,但是最近的一些工作已经通过使用机器学习(ML)技术设法大大提高了分析的质量。尽管如此,尽管ML可以提取更多的信息并以更高的准确性预测疾病,但从本质上讲,它在计算上也更加昂贵。考虑到该领域的重要性和最新进展,我们针对心电图处理的机器学习方法进行了一项调查,重点关注可以检测到的特定疾病和状况以及用于此目的的不同算法。此外,我们还讨论了这种算法在低功耗可穿戴设备上的最新实现。我们确定了开发新型嵌入式架构的机会,该架构可以实现对ECG信号的连续监控,并确定可以帮助实现这一目标的新兴技术。

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