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引用次数: 9

摘要

DeepQ心律失常数据库是第一个用于心律失常检测器评估的普遍可用的大规模数据集,包含来自299名独特患者的897条带注释的单导联心电图记录。DeepQ包括逐拍、节奏集和心跳基点注释。在心电图测量期间,每位患者进行一系列躺着、坐着和行走的活动,并将3个5分钟的记录输入数据库。注释由一组经过认证的心脏病技术人员手工标注,并由台湾台北退伍军人总医院的心脏病专家审核。这个数据库的目的有三个方面。首先,从规模的角度来看,我们建立了这个数据库,使其成为最大的代表性参考集,拥有更多的独特患者和更多种类的心律失常。其次,从多样性的角度来看,我们的数据库包含了三种不同活动模式下的充分注释的心电测量,便于可穿戴ECG贴片和AAMI评估的心律失常分类器训练。第三,从质量的角度来看,它可以作为MIT-BIH心律失常数据库的补充,用于心律失常检测器的开发和评估。该数据集的添加有助于使用机器学习模型和深度神经网络进行详尽的研究,并解决患者之间的可变性。此外,我们还描述了该数据库的开发和注释过程,以及我们正在进行的改进。我们计划公开DeepQ数据库,以推进开发门诊、移动心律失常检测器的医学研究。
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DeepQ Arrhythmia Database: A Large-Scale Dataset for Arrhythmia Detector Evaluation
DeepQ Arrhythmia Database, the first generally available large-scale dataset for arrhythmia detector evaluation, contains 897 annotated single-lead ECG recordings from 299 unique patients. DeepQ includes beat-by-beat, rhythm episodes, and heartbeats fiducial points annotations. Each patient was engaged in a sequence of lying down, sitting, and walking activities during the ECG measurement and contributed three five-minute records to the database. Annotations were manually labeled by a group of certified cardiographic technicians and audited by a cardiologist at Taipei Veteran General Hospital, Taiwan. The aim of this database is in three folds. First, from the scale perspective, we build this database to be the largest representative reference set with greater number of unique patients and more variety of arrhythmic heartbeats. Second, from the diversity perspective, our database contains fully annotated ECG measures from three different activity modes and facilitates the arrhythmia classifier training for wearable ECG patches and AAMI assessment. Thirdly, from the quality point of view, it serves as a complement to the MIT-BIH Arrhythmia Database in the development and evaluation of the arrhythmia detector. The addition of this dataset can help facilitate the exhaustive studies using machine learning models and deep neural networks, and address the inter-patient variability. Further, we describe the development and annotation procedure of this database, as well as our on-going enhancement. We plan to make DeepQ database publicly available to advance medical research in developing outpatient, mobile arrhythmia detectors.
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