元数据
计算机科学
标杆管理
人工智能
机器学习
数据挖掘
人口统计学的
万维网
社会学
业务
人口学
营销
作者
Patrick Wagner,Nils Strodthoff,R. Bousseljot,D. Kreiseler,Fatima I Lunze,Wojciech Samek,Tobias Schaeffter
标识
DOI:10.1038/s41597-020-0495-6
摘要
Abstract Electrocardiography (ECG) is a key non-invasive diagnostic tool for cardiovascular diseases which is increasingly supported by algorithms based on machine learning. Major obstacles for the development of automatic ECG interpretation algorithms are both the lack of public datasets and well-defined benchmarking procedures to allow comparison s of different algorithms. To address these issues, we put forward PTB-XL , the to-date largest freely accessible clinical 12-lead ECG-waveform dataset comprising 21837 records from 18885 patients of 10 seconds length. The ECG-waveform data was annotated by up to two cardiologists as a multi-label dataset, where diagnostic labels were further aggregated into super and subclasses. The dataset covers a broad range of diagnostic classes including, in particular, a large fraction of healthy records. The combination with additional metadata on demographics, additional diagnostic statements, diagnosis likelihoods, manually annotated signal properties as well as suggested folds for splitting training and test sets turns the dataset into a rich resource for the development and the evaluation of automatic ECG interpretation algorithms.
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