Artificial intelligence-based model to classify cardiac functions from chest radiographs: a multi-institutional, retrospective model development and validation study

The Lancet Digital Health - Tập 5 - Trang e525-e533 - 2023
Daiju Ueda1,2, Toshimasa Matsumoto1,2, Shoichi Ehara3, Akira Yamamoto1, Shannon L Walston1, Asahiro Ito4, Taro Shimono1, Masatsugu Shiba5,2, Tohru Takeshita6, Daiju Fukuda4, Yukio Miki1
1Department of Diagnostic and Interventional Radiology, Graduate School of Medicine, Osaka Metropolitan University, Osaka, Japan
2Smart Life Science Lab, Center for Health Science Innovation, Osaka Metropolitan University, Osaka, Japan
3Department of Intensive Care Medicine, Graduate School of Medicine, Osaka Metropolitan University, Osaka, Japan
4Department of Cardiovascular Medicine, Graduate School of Medicine, Osaka Metropolitan University, Osaka, Japan
5Department of Biofunctional Analysis, Graduate School of Medicine, Osaka Metropolitan University, Osaka, Japan
6Department of Radiology, Osaka Habikino Medical Center, Habikino, Japan

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