Chapman University, Orange, USA.
Shaoxing People's Hospital (Shaoxing Hospital Zhejiang University School of Medicine), Shaoxing, China.
Sci Data. 2020 Feb 12;7(1):48. doi: 10.1038/s41597-020-0386-x.
This newly inaugurated research database for 12-lead electrocardiogram signals was created under the auspices of Chapman University and Shaoxing People's Hospital (Shaoxing Hospital Zhejiang University School of Medicine) and aims to enable the scientific community in conducting new studies on arrhythmia and other cardiovascular conditions. Certain types of arrhythmias, such as atrial fibrillation, have a pronounced negative impact on public health, quality of life, and medical expenditures. As a non-invasive test, long term ECG monitoring is a major and vital diagnostic tool for detecting these conditions. This practice, however, generates large amounts of data, the analysis of which requires considerable time and effort by human experts. Advancement of modern machine learning and statistical tools can be trained on high quality, large data to achieve exceptional levels of automated diagnostic accuracy. Thus, we collected and disseminated this novel database that contains 12-lead ECGs of 10,646 patients with a 500 Hz sampling rate that features 11 common rhythms and 67 additional cardiovascular conditions, all labeled by professional experts. The dataset consists of 10-second, 12-dimension ECGs and labels for rhythms and other conditions for each subject. The dataset can be used to design, compare, and fine-tune new and classical statistical and machine learning techniques in studies focused on arrhythmia and other cardiovascular conditions.
这个新开设的 12 导联心电图信号研究数据库是由查普曼大学和绍兴市人民医院(浙江大学绍兴医院)共同创建的,旨在为科学界开展心律失常和其他心血管疾病的新研究提供支持。某些类型的心律失常,如心房颤动,对公众健康、生活质量和医疗支出有显著的负面影响。作为一种非侵入性测试,长期心电图监测是检测这些病症的主要和重要诊断工具。然而,这种做法会产生大量数据,需要人类专家花费大量时间和精力进行分析。现代机器学习和统计工具的进步可以通过高质量、大数据进行训练,从而实现卓越的自动化诊断准确性。因此,我们收集并发布了这个新的数据库,其中包含 10646 名患者的 12 导联心电图,采样率为 500 Hz,具有 11 种常见节律和 67 种额外的心血管病症,所有病症均由专业专家进行标注。该数据集由 10 秒、12 维 ECG 以及每个患者的节律和其他病症标签组成。该数据集可用于设计、比较和微调专注于心律失常和其他心血管疾病的新的和经典的统计和机器学习技术。