Author
Listed:
- Rohan Shad
(Stanford University)
- Nicolas Quach
(Stanford University)
- Robyn Fong
(Stanford University)
- Patpilai Kasinpila
(Stanford University)
- Cayley Bowles
(Stanford University)
- Miguel Castro
(Houston Methodist DeBakey Heart Centre)
- Ashrith Guha
(Houston Methodist DeBakey Heart Centre)
- Erik E. Suarez
(Houston Methodist DeBakey Heart Centre)
- Stefan Jovinge
(Spectrum Health Grand Rapids)
- Sangjin Lee
(Spectrum Health Grand Rapids)
- Theodore Boeve
(Spectrum Health Grand Rapids)
- Myriam Amsallem
(Stanford University)
- Xiu Tang
(Stanford University)
- Francois Haddad
(Stanford University)
- Yasuhiro Shudo
(Stanford University)
- Y. Joseph Woo
(Stanford University)
- Jeffrey Teuteberg
(Stanford University
Stanford Artificial Intelligence in Medicine Centre)
- John P. Cunningham
(Columbia University)
- Curtis P. Langlotz
(Stanford Artificial Intelligence in Medicine Centre
Stanford University)
- William Hiesinger
(Stanford University
Stanford Artificial Intelligence in Medicine Centre)
Abstract
Despite progressive improvements over the decades, the rich temporally resolved data in an echocardiogram remain underutilized. Human assessments reduce the complex patterns of cardiac wall motion, to a small list of measurements of heart function. All modern echocardiography artificial intelligence (AI) systems are similarly limited by design – automating measurements of the same reductionist metrics rather than utilizing the embedded wealth of data. This underutilization is most evident where clinical decision making is guided by subjective assessments of disease acuity. Predicting the likelihood of developing post-operative right ventricular failure (RV failure) in the setting of mechanical circulatory support is one such example. Here we describe a video AI system trained to predict post-operative RV failure using the full spatiotemporal density of information in pre-operative echocardiography. We achieve an AUC of 0.729, and show that this ML system significantly outperforms a team of human experts at the same task on independent evaluation.
Suggested Citation
Rohan Shad & Nicolas Quach & Robyn Fong & Patpilai Kasinpila & Cayley Bowles & Miguel Castro & Ashrith Guha & Erik E. Suarez & Stefan Jovinge & Sangjin Lee & Theodore Boeve & Myriam Amsallem & Xiu Tan, 2021.
"Predicting post-operative right ventricular failure using video-based deep learning,"
Nature Communications, Nature, vol. 12(1), pages 1-8, December.
Handle:
RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-25503-9
DOI: 10.1038/s41467-021-25503-9
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