Use of machine-learning algorithms to determine features of systolic blood pressure variability that predict poor outcomes in hypertensive patients
Author(s)
Lacson, Ronilda; Baker, Bowen; Suresh, Harini; Andriole, Katherine; Szolovits, Peter; Lacson, Eduardo; ... Show more Show less
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Background: We re-analyzed data from the Systolic Blood Pressure Intervention Trial (SPRINT) trial to identify features of systolic blood pressure (SBP) variability that portend poor cardiovascular outcomes using a nonlinear machine-learning algorithm. Methods: We included all patients who completed 1 year of the study without reaching any primary endpoint during the first year, specifically: myocardial infarction, other acute coronary syndromes, stroke, heart failure or death from a cardiovascular event (n = 8799; 94%). In addition to clinical variables, features representing longitudinal SBP trends and variability were determined and combined in a random forest algorithm, optimized using cross-validation, using 70% of patients in the training set. Area under the curve (AUC) was measured using a 30% testing set. Finally, feature importance was determined by minimizing node impurity averaging over all trees in the forest for a specific feature. Results: A total of 365 patients (4.1%) reached the combined primary outcome over 37 months of follow-up. The random forest classifier had an AUC of 0.71 on the testing set. The 10 most significant features selected in order of importance by the automated algorithm included the urine albumin/creatinine (CR) ratio, estimated glomerular filtration rate, age, serum CR, history of subclinical cardiovascular disease (CVD), cholesterol, a variable representing SBP signals using wavelet transformation, high-density lipoprotein, the 90th percentile of SBP and triglyceride level. Conclusions: We successfully demonstrated use of random forest algorithm to define best prognostic longitudinal SBP representations. In addition to known risk factors for CVD, transformed variables for time series SBP measurements were found to be important in predicting poor cardiovascular outcomes and require further evaluation. Keywords: blood pressure; cardiovascular diseases; heart disease; hypertension; machine learning
Date issued
2018-07-03Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Clinical Kidney Journal
Publisher
Oxford University Press
Citation
Lacson, Ronilda C. et al. "Use of machine-learning algorithms to determine features of systolic blood pressure variability that predict poor outcomes in hypertensive patients." Clinical Kidney Journal, 12, 2 (April 2019): 206–212 © 2018 the Authors
Version: Final published version
ISSN
2048-8513