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Machine Learning–Based Prediction of Masked Hypertension Among Children With Chronic Kidney Disease

Authors :
Sunjae, Bae
Joshua A, Samuels
Joseph T, Flynn
Mark M, Mitsnefes
Susan L, Furth
Bradley A, Warady
Derek K, Ng
Source :
Hypertension. 79:2105-2113
Publication Year :
2022
Publisher :
Ovid Technologies (Wolters Kluwer Health), 2022.

Abstract

Background: Ambulatory blood pressure monitoring (ABPM) is routinely performed in children with chronic kidney disease to identify masked hypertension, a risk factor for accelerated chronic kidney disease progression. However, ABPM is burdensome, and developing an accurate prediction of masked hypertension may allow using ABPM selectively rather than routinely. Methods: To create a prediction model for masked hypertension using clinic blood pressure (BP) and other clinical characteristics, we analyzed 809 ABPM studies with nonhypertensive clinic BP among the participants of the Chronic Kidney Disease in Children study. Results: Masked hypertension was identified in 170 (21.0%) observations. We created prediction models for masked hypertension via gradient boosting, random forests, and logistic regression using 109 candidate predictors and evaluated its performance using bootstrap validation. The models showed C statistics from 0.660 (95% CI, 0.595–0.707) to 0.732 (95% CI, 0.695–0.786) and Brier scores from 0.148 (95% CI, 0.141–0.154) to 0.167 (95% CI, 0.152–0.183). Using the possible thresholds identified from this model, we stratified the dataset by clinic systolic/diastolic BP percentiles. The prevalence of masked hypertension was the lowest (4.8%) when clinic systolic/diastolic BP were both Conclusions: ABPM could be used selectively in those with low clinic BP, for example, systolic BP

Details

ISSN :
15244563 and 0194911X
Volume :
79
Database :
OpenAIRE
Journal :
Hypertension
Accession number :
edsair.doi.dedup.....b52b09e17500f97ef32f3cc709d529bc
Full Text :
https://doi.org/10.1161/hypertensionaha.121.18794