ECG-Image-Database: A Dataset of ECG Images with Real-World Imaging and Scanning Artifacts; A Foundation for Computerized ECG Image Digitization and Analysis
Matthew A. Reyna, Deepanshi, James Weigle, Zuzana Koscova and, Kiersten Campbell, Kshama Kodthalu Shivashankara, Soheil Saghafi and, Sepideh Nikookar, Mohsen Motie-Shirazi, Yashar Kiarashi, Salman, Seyedi, Gari D. Clifford, Reza Sameni

TL;DR
The paper introduces a large, diverse dataset of ECG images with real-world artifacts, generated from raw ECG data, to facilitate development of robust ECG digitization and analysis algorithms.
Contribution
It provides a comprehensive dataset of ECG images with realistic distortions and ground truth data, created using an open-source toolkit, supporting machine learning research in ECG digitization.
Findings
Created 35,595 ECG images with artifacts
Generated images from 1,977 real ECG records
Used in PhysioNet Challenge 2024
Abstract
We introduce the ECG-Image-Database, a large and diverse collection of electrocardiogram (ECG) images generated from ECG time-series data, with real-world scanning, imaging, and physical artifacts. We used ECG-Image-Kit, an open-source Python toolkit, to generate realistic images of 12-lead ECG printouts from raw ECG time-series. The images include realistic distortions such as noise, wrinkles, stains, and perspective shifts, generated both digitally and physically. The toolkit was applied to 977 12-lead ECG records from the PTB-XL database and 1,000 from Emory Healthcare to create high-fidelity synthetic ECG images. These unique images were subjected to both programmatic distortions using ECG-Image-Kit and physical effects like soaking, staining, and mold growth, followed by scanning and photography under various lighting conditions to create real-world artifacts. The resulting…
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