机器学习在动态心电图中的应用

J. Xue, Long Yu
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引用次数: 11

摘要

动态心电图(AECG)是许多心脏电生理相关病例的重要诊断工具。AECG涵盖了广泛的设备和应用。这些设备和应用程序的核心是负责信号调节、心电图搏动检测和分类以及事件检测的算法。多年来,由于研究人员、工程师和医生的巨大努力,以及电子和信号处理,特别是机器学习(ML)的快速发展,算法开发和实现取得了巨大进展。当前机器学习领域的努力和进展是前所未有的,其中许多ML算法也已成功应用于AECG应用。这篇综述涵盖了ML算法的一些关键AECG应用。然而,我们没有对ML算法进行全面的综述,而是专注于AECG的核心任务,并讨论ML可以为解决AECG面临的关键挑战带来什么。综述中列出的AECG信号处理的中心任务包括信号预处理、节拍检测和分类、事件检测和事件预测。根据其应用和目标,每个AECG设备/系统可能具有不同的部分和形式的信号组件,但这些是该领域工作人员最相关和最关心的主题。
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Applications of Machine Learning in Ambulatory ECG
The ambulatory ECG (AECG) is an important diagnostic tool for many heart electrophysiology-related cases. AECG covers a wide spectrum of devices and applications. At the core of these devices and applications are the algorithms responsible for signal conditioning, ECG beat detection and classification, and event detections. Over the years, there has been huge progress for algorithm development and implementation thanks to great efforts by researchers, engineers, and physicians, alongside the rapid development of electronics and signal processing, especially machine learning (ML). The current efforts and progress in machine learning fields are unprecedented, and many of these ML algorithms have also been successfully applied to AECG applications. This review covers some key AECG applications of ML algorithms. However, instead of doing a general review of ML algorithms, we are focusing on the central tasks of AECG and discussing what ML can bring to solve the key challenges AECG is facing. The center tasks of AECG signal processing listed in the review include signal preprocessing, beat detection and classification, event detection, and event prediction. Each AECG device/system might have different portions and forms of those signal components depending on its application and the target, but these are the topics most relevant and of greatest concern to the people working in this area.
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审稿时长
11 weeks
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