Kumar Devender, Puthusserypady Sadasivan, Dominguez Helena, Sharma Kamal, Bardram Jakob E
Department of Health Technology, Technical University of Denmark, Kongens Lyngby, Denmark.
Department of Cardiology, Bispebjerg-Frederiksberg Hospital, Copenhagen, Denmark.
Front Cardiovasc Med. 2022 Jul 1;9:893090. doi: 10.3389/fcvm.2022.893090. eCollection 2022.
ECG is a non-invasive tool for arrhythmia detection. In recent years, wearable ECG-based ambulatory arrhythmia monitoring has gained increasing attention. However, arrhythmia detection algorithms trained on existing public arrhythmia databases show higher FPR when applied to such ambulatory ECG recordings. It is primarily because the existing public databases are relatively clean as they are recorded using clinical-grade ECG devices in controlled clinical environments. They may not represent the signal quality and artifacts present in ambulatory patient-operated ECG. To help build and evaluate arrhythmia detection algorithms that can work on wearable ECG from free-living conditions, we present the design and development of the CACHET-CADB, a multi-site contextualized ECG database from free-living conditions. The CACHET-CADB is subpart of the REAFEL study, which aims at reaching the frail elderly patient to optimize the diagnosis of atrial fibrillation. In contrast to the existing databases, along with the ECG, CACHET-CADB also provides the continuous recording of patients' contextual data such as activities, body positions, movement accelerations, symptoms, stress level, and sleep quality. These contextual data can aid in improving the machine/deep learning-based automated arrhythmia detection algorithms on patient-operated wearable ECG. Currently, CACHET-CADB has 259 days of contextualized ECG recordings from 24 patients and 1,602 manually annotated 10 s heart-rhythm samples. The length of the ECG records in the CACHET-CADB varies from 24 h to 3 weeks. The patient's ambulatory context information (activities, movement acceleration, body position, etc.) is extracted for every 10 s interval cumulatively. From the analysis, nearly 11% of the ECG data in the database is found to be noisy. A software toolkit for the use of the CACHET-CADB is also provided.
心电图是一种用于心律失常检测的非侵入性工具。近年来,基于可穿戴式心电图的动态心律失常监测越来越受到关注。然而,在现有公共心律失常数据库上训练的心律失常检测算法应用于此类动态心电图记录时,误报率较高。这主要是因为现有的公共数据库相对干净,它们是在受控的临床环境中使用临床级心电图设备记录的。它们可能无法代表患者自行操作的动态心电图中存在的信号质量和伪影。为了帮助构建和评估能够在自由生活条件下的可穿戴式心电图上运行的心律失常检测算法,我们展示了CACHET-CADB的设计与开发,这是一个来自自由生活条件的多站点情境化心电图数据库。CACHET-CADB是REAFEL研究的子部分,该研究旨在接触体弱的老年患者以优化房颤诊断。与现有数据库不同,CACHET-CADB除了心电图外,还提供患者情境数据的连续记录,如活动、身体姿势、运动加速度、症状、压力水平和睡眠质量。这些情境数据有助于改进基于机器学习/深度学习的患者自行操作的可穿戴式心电图自动心律失常检测算法。目前,CACHET-CADB有来自24名患者的259天情境化心电图记录以及1602个手动标注的10秒心律样本。CACHET-CADB中的心电图记录长度从24小时到3周不等。每10秒间隔累计提取患者的动态情境信息(活动、运动加速度、身体姿势等)。通过分析发现,数据库中近11%的心电图数据有噪声。还提供了一个使用CACHET-CADB的软件工具包。