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Deep-learning-assisted analysis of echocardiographic videos improves predictions of all-cause mortality

Authors :
Gregory J. Wehner
Joseph B. Leader
Dustin N. Hartzel
Brendan J. Carry
Christopher W. Good
David P. vanMaanen
Jonathan D. Suever
John M. Pfeifer
Christopher M. Haggerty
H. Lester Kirchner
Aalpen A. Patel
Sushravya Raghunath
Brandon K. Fornwalt
Alvaro E. Ulloa Cerna
Christopher D. Nevius
Amro Alsaid
Linyuan Jing
Marios S. Pattichis
Source :
Nature biomedical engineering. 5(6)
Publication Year :
2020

Abstract

Machine learning promises to assist physicians with predictions of mortality and of other future clinical events by learning complex patterns from historical data, such as longitudinal electronic health records. Here we show that a convolutional neural network trained on raw pixel data in 812,278 echocardiographic videos from 34,362 individuals provides superior predictions of one-year all-cause mortality. The model’s predictions outperformed the widely used pooled cohort equations, the Seattle Heart Failure score (measured in an independent dataset of 2,404 patients with heart failure who underwent 3,384 echocardiograms), and a machine learning model involving 58 human-derived variables from echocardiograms and 100 clinical variables derived from electronic health records. We also show that cardiologists assisted by the model substantially improved the sensitivity of their predictions of one-year all-cause mortality by 13% while maintaining prediction specificity. Large unstructured datasets may enable deep learning to improve a wide range of clinical prediction models. A deep learning model trained on raw pixel data in hundreds of thousands of echocardiographic videos for the prediction of one-year all-cause mortality outperforms clinical scores and improves predictions by cardiologists.

Details

ISSN :
2157846X
Volume :
5
Issue :
6
Database :
OpenAIRE
Journal :
Nature biomedical engineering
Accession number :
edsair.doi.dedup.....9ef63536e7e36d65d0500f3d39492053