Enhancing Electrocardiogram (ECG) Analysis of Implantable Cardiac Monitor Data: An Efficient Pipeline for Multi-Label Classification

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-10-21 DOI:10.3390/make5040077
Amnon Bleich, Antje Linnemann, Benjamin Jaidi, Björn H. Diem, Tim O. F. Conrad
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Abstract

Implantable Cardiac Monitor (ICM) devices are demonstrating, as of today, the fastest-growing market for implantable cardiac devices. As such, they are becoming increasingly common in patients for measuring heart electrical activity. ICMs constantly monitor and record a patient’s heart rhythm, and when triggered, send it to a secure server where health care professionals (HCPs) can review it. These devices employ a relatively simplistic rule-based algorithm (due to energy consumption constraints) to make alerts for abnormal heart rhythms. This algorithm is usually parameterized to an over-sensitive mode in order to not miss a case (resulting in a relatively high false-positive rate), and this, combined with the device’s nature of constantly monitoring the heart rhythm and its growing popularity, results in HCPs having to analyze and diagnose an increasingly growing number of data. In order to reduce the load on the latter, automated methods for ECG analysis are nowadays becoming a great tool to assist HCPs in their analysis. While state-of-the-art algorithms are data-driven rather than rule-based, training data for ICMs often consist of specific characteristics that make their analysis unique and particularly challenging. This study presents the challenges and solutions in automatically analyzing ICM data and introduces a method for its classification that outperforms existing methods on such data. It carries this out by combining high-frequency noise detection (which often occurs in ICM data) with a semi-supervised learning pipeline that allows for the re-labeling of training episodes and by using segmentation and dimension-reduction techniques that are robust to morphology variations of the sECG signal (which are typical to ICM data). As a result, it performs better than state-of-the-art techniques on such data with, e.g., an F1 score of 0.51 vs. 0.38 of our baseline state-of-the-art technique in correctly calling atrial fibrillation in ICM data. As such, it could be used in numerous ways, such as aiding HCPs in the analysis of ECGs originating from ICMs by, e.g., suggesting a rhythm type.
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增强对可植入心脏监护仪数据的心电图分析:一种高效的多标签分类方法
植入式心脏监测器(ICM)设备是目前增长最快的植入式心脏设备市场。正因为如此,它们在患者中测量心脏电活动变得越来越普遍。icm不断监测和记录患者的心律,当触发时,将其发送到安全的服务器,供医疗保健专业人员(hcp)查看。这些设备采用相对简单的基于规则的算法(由于能量消耗限制)来发出异常心律警报。该算法通常被参数化为过度敏感模式,以避免漏诊(导致相对较高的假阳性率),再加上该设备不断监测心律的性质及其日益普及,导致HCPs不得不分析和诊断越来越多的数据。为了减轻后者的负担,自动化的心电分析方法如今已成为辅助医护人员进行分析的重要工具。虽然最先进的算法是数据驱动的,而不是基于规则的,但icm的训练数据通常包含特定的特征,这使得它们的分析独特且特别具有挑战性。本研究提出了自动分析ICM数据的挑战和解决方案,并介绍了一种优于现有方法的ICM数据分类方法。它通过将高频噪声检测(通常发生在ICM数据中)与半监督学习管道相结合来实现这一目标,该管道允许重新标记训练集,并通过使用分割和降维技术,这些技术对sECG信号的形态变化(这是ICM数据的典型特征)具有鲁棒性。因此,在这些数据上,它比最先进的技术表现得更好,例如,在正确调用ICM数据中的心房颤动方面,F1得分为0.51,而我们的基线最先进技术为0.38。因此,它可以在许多方面使用,例如,通过提示心律类型,帮助HCPs分析源自ICMs的心电图。
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CiteScore
6.30
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0.00%
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审稿时长
7 weeks
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