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Abstract

Accurate assessment of cardiac function is crucial for the diagnosis of cardiovascular disease1, screening for cardiotoxicity2 and decisions regarding the clinical management of patients with a critical illness3. However, human assessment of cardiac function focuses on a limited sampling of cardiac cycles and has considerable inter-observer variability despite years oftraining4,5. Here, to overcome this challenge, we present a video-based deep learning algorithm-EchoNet-Dynamic-that surpasses the performance of human experts in the critical tasks of segmenting the left ventricle, estimating ejection fraction and assessing cardiomyopathy. Trained on echocardiogram videos, our model accurately segments the left ventricle with a Dice similarity coefficient of 0.92, predicts ejection fraction with a mean absolute error of 4.1% and reliably classifies heart failure with reduced ejection fraction (area under the curve of 0.97). In an external dataset from another healthcare system, EchoNetDynamic predicts the ejection fraction with a mean absolute error of 6.0% and classifies heart failure with reduced ejection fraction with an area under the curve of 0.96. Prospective evaluation with repeated human measurements confirms that the model has variance that is comparable to or less than that of human experts. By leveraging information across multiple cardiac cycles, our model can rapidly identify subtle changes in ejection fraction, is more reproducible than human evaluation and lays the foundation for precise diagnosis of cardiovascular disease in real time. As a resource to promote further innovation, we also make publicly available a large dataset of10,030 annotated echocardiogram videos.

Details

Title
Video-based AI for beat-to-beat assessment of cardiac function
Author
Ouyang, David 1 ; He, Bryan 2 ; Ghorbani, Amirata 3 ; Yuan, Neal 4 ; Ebinger, Joseph 4 ; Langlotz, Curtis P; Heidenreich, Paul A; Harrington, Robert A; Liang, David H; Ashley, Euan A; Zou, James Y

 Department of Medicine, Stanford University, Stanford, CA, USA 
 Department of Computer Science, Stanford University, Stanford, CA, USA 
 Department of Electrical Engineering, Stanford University, Stanford, CA, USA 
 Smidt Heart Institute, Cedars-Sinai Medical Center, Los Angeles, CA, USA 
Pages
252-256,256A-256L
Section
Article
Publication year
2020
Publication date
Apr 9, 2020
Publisher
Nature Publishing Group
ISSN
00280836
e-ISSN
14764687
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2390651658
Copyright
Copyright Nature Publishing Group Apr 9, 2020