1. Deep learning model to detect significant aortic regurgitation using electrocardiography
- Author
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Katsuhito Fujiu, Satoshi Kodera, Hiroki Shinohara, Shinnosuke Sawano, Hiroyuki Morita, Kota Ninomiya, Yasutomi Higashikuni, Issei Komuro, Norifumi Takeda, Susumu Katsushika, Koki Nakanishi, Masao Daimon, Tomohisa Seki, Tomoko Nakao, Hiroshi Akazawa, and Mitsuhiko Nakamoto
- Subjects
medicine.medical_specialty ,Paired Data ,Receiver operating characteristic ,Artificial neural network ,medicine.diagnostic_test ,business.industry ,Deep learning ,Aortic Valve Insufficiency ,Convolutional neural network ,Electrocardiography ,QRS complex ,Deep Learning ,Framingham Heart Study ,Artificial Intelligence ,Internal medicine ,medicine ,Cardiology ,Humans ,Artificial intelligence ,Cardiology and Cardiovascular Medicine ,business ,Algorithms ,Retrospective Studies - Abstract
BACKGROUND Aortic regurgitation (AR) is a common heart disease, with a relatively high prevalence of 4.9% in the Framingham Heart Study. Because the prevalence increases with advancing age, an upward shift in the age distribution may increase the burden of AR. To provide an effective screening method for AR, we developed a deep learning-based artificial intelligence algorithm for the diagnosis of significant AR using electrocardiography (ECG). METHODS Our dataset comprised 29,859 paired data of ECG and echocardiography, including 412 AR cases, from January 2015 to December 2019. This dataset was divided into training, validation, and test datasets. We developed a multi-input neural network model, which comprised a two-dimensional convolutional neural network (2D-CNN) using raw ECG data and a fully connected deep neural network (FC-DNN) using ECG features, and compared its performance with the performances of a 2D-CNN model and other machine learning models. In addition, we used gradient-weighted class activation mapping (Grad-CAM) to identify which parts of ECG waveforms had the most effect on algorithm decision making. RESULTS The area under the receiver operating characteristic curve of the multi-input model (0.802; 95% CI, 0.762-0.837) was significantly greater than that of the 2D-CNN model alone (0.734; 95% CI, 0.679-0.783; p
- Published
- 2022
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