Enhancing ECG Analysis of Implantable Cardiac Monitor Data: An Efficient Pipeline for Multi-Label Classification
Amnon Bleich, Antje Linnemann, Benjamin Jaidi, Bj\"orn H Diem, Tim, OF Conrad

TL;DR
This paper introduces an efficient multi-label classification pipeline for ECG data from Implantable Cardiac Monitors, aiming to assist healthcare professionals by improving automated analysis of challenging ICM data.
Contribution
The study presents a novel classification method tailored for ICM ECG data, outperforming existing approaches and addressing unique data characteristics.
Findings
Outperforms existing methods on ICM ECG data
Reduces false positives in arrhythmia detection
Enhances automated ECG analysis accuracy
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 (denote HCPs from here on) can review it. These devices employ a relatively simplistic rule-based algorithm (due to energy consumption constraints) to alert for abnormal heart rhythms. This algorithm is usually parameterized to an over-sensitive mode in order to not miss a case (resulting in 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 amount of…
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Taxonomy
TopicsECG Monitoring and Analysis · EEG and Brain-Computer Interfaces
