Back to Search Start Over

Artificial Intelligence System for Detection and Screening of Cardiac Abnormalities using Electrocardiogram Images

Authors :
Zhang, Deyun
Geng, Shijia
Zhou, Yang
Xu, Weilun
Wei, Guodong
Wang, Kai
Yu, Jie
Zhu, Qiang
Li, Yongkui
Zhao, Yonghong
Chen, Xingyue
Zhang, Rui
Fu, Zhaoji
Zhou, Rongbo
E, Yanqi
Fan, Sumei
Zhao, Qinghao
Cheng, Chuandong
Peng, Nan
Zhang, Liang
Zheng, Linlin
Chu, Jianjun
Xu, Hongbin
Tan, Chen
Liu, Jian
Tao, Huayue
Liu, Tong
Chen, Kangyin
Jiang, Chenyang
Liu, Xingpeng
Hong, Shenda
Publication Year :
2023

Abstract

The artificial intelligence (AI) system has achieved expert-level performance in electrocardiogram (ECG) signal analysis. However, in underdeveloped countries or regions where the healthcare information system is imperfect, only paper ECGs can be provided. Analysis of real-world ECG images (photos or scans of paper ECGs) remains challenging due to complex environments or interference. In this study, we present an AI system developed to detect and screen cardiac abnormalities (CAs) from real-world ECG images. The system was evaluated on a large dataset of 52,357 patients from multiple regions and populations across the world. On the detection task, the AI system obtained area under the receiver operating curve (AUC) of 0.996 (hold-out test), 0.994 (external test 1), 0.984 (external test 2), and 0.979 (external test 3), respectively. Meanwhile, the detection results of AI system showed a strong correlation with the diagnosis of cardiologists (cardiologist 1 (R=0.794, p<1e-3), cardiologist 2 (R=0.812, p<1e-3)). On the screening task, the AI system achieved AUCs of 0.894 (hold-out test) and 0.850 (external test). The screening performance of the AI system was better than that of the cardiologists (AI system (0.846) vs. cardiologist 1 (0.520) vs. cardiologist 2 (0.480)). Our study demonstrates the feasibility of an accurate, objective, easy-to-use, fast, and low-cost AI system for CA detection and screening. The system has the potential to be used by healthcare professionals, caregivers, and general users to assess CAs based on real-world ECG images.<br />Comment: 47 pages, 29 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.10301
Document Type :
Working Paper