Predicting Survival From Large Echocardiography and Electronic Health Record Datasets: Optimization With Machine Learning.

JACC Cardiovasc Imaging

Department of Imaging Science and Innovation, Geisinger, Danville, Pennsylvania; Department of Biomedical Engineering, University of Kentucky, Lexington, Kentucky; Department of Radiology, Geisinger, Danville, Pennsylvania. Electronic address:

Published: April 2019

AI Article Synopsis

  • The study aimed to enhance survival predictions after echocardiography using machine learning techniques rather than just traditional methods relying on ejection fraction and comorbidities.
  • Researchers analyzed data from over 171,000 patients and compared the effectiveness of nonlinear machine learning models against standard logistic regression models using multiple data inputs.
  • Results showed that machine learning models, particularly random forest models incorporating extensive echocardiographic data, significantly outperformed traditional clinical risk assessments in predicting patient survival outcomes.

Article Abstract

Objectives: The goal of this study was to use machine learning to more accurately predict survival after echocardiography.

Background: Predicting patient outcomes (e.g., survival) following echocardiography is primarily based on ejection fraction (EF) and comorbidities. However, there may be significant predictive information within additional echocardiography-derived measurements combined with clinical electronic health record data.

Methods: Mortality was studied in 171,510 unselected patients who underwent 331,317 echocardiograms in a large regional health system. The authors investigated the predictive performance of nonlinear machine learning models compared with that of linear logistic regression models using 3 different inputs: 1) clinical variables, including 90 cardiovascular-relevant International Classification of Diseases, Tenth Revision, codes, and age, sex, height, weight, heart rate, blood pressures, low-density lipoprotein, high-density lipoprotein, and smoking; 2) clinical variables plus physician-reported EF; and 3) clinical variables and EF, plus 57 additional echocardiographic measurements. Missing data were imputed with a multivariate imputation by using a chained equations algorithm (MICE). The authors compared models versus each other and baseline clinical scoring systems by using a mean area under the curve (AUC) over 10 cross-validation folds and across 10 survival durations (6 to 60 months).

Results: Machine learning models achieved significantly higher prediction accuracy (all AUC >0.82) over common clinical risk scores (AUC = 0.61 to 0.79), with the nonlinear random forest models outperforming logistic regression (p < 0.01). The random forest model including all echocardiographic measurements yielded the highest prediction accuracy (p < 0.01 across all models and survival durations). Only 10 variables were needed to achieve 96% of the maximum prediction accuracy, with 6 of these variables being derived from echocardiography. Tricuspid regurgitation velocity was more predictive of survival than LVEF. In a subset of studies with complete data for the top 10 variables, multivariate imputation by chained equations yielded slightly reduced predictive accuracies (difference in AUC of 0.003) compared with the original data.

Conclusions: Machine learning can fully utilize large combinations of disparate input variables to predict survival after echocardiography with superior accuracy.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6286869PMC
http://dx.doi.org/10.1016/j.jcmg.2018.04.026DOI Listing

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