作者
Tran Quoc Bao Tran, Stefanie Lip, Clea du Toit, Tejas Kumar Kalaria, Ravi K Bhaskar, Alison Q O’Neil, Beata Graff, Michał Hoffmann, Anna Szyndler, Katarzyna Polonis, Jacek Wolf, Sandeep Reddy, Krzysztof Narkiewicz, Indranil Dasgupta, Anna F Dominiczak, Shyam Visweswaran, Linsay McCallum, Sandosh Padmanabhan
发表日期
2024/3/15
期刊
CJC Open
出版商
Elsevier
简介
Background
Inaccurate blood pressure (BP) classification results in inappropriate treatment. We tested whether machine learning (ML), using routine clinical data, can serve as a reliable alternative to ambulatory BP monitoring (ABPM) in classifying BP status.
Methods
This study employed a multicentre approach involving 3 derivation cohorts from Glasgow, Gdańsk, and Birmingham, and a fourth independent evaluation cohort. ML models were trained using office BP, ABPM, and clinical, laboratory, and demographic data, collected from patients referred for hypertension assessment. Seven ML algorithms were trained to classify patients into 5 groups, named as follows: Normal/Target; Hypertension-Masked; Normal/Target-White-Coat (WC); Hypertension-WC; and Hypertension. The 10-year cardiovascular outcomes and 27-year all-cause mortality risks were calculated for the ML-derived groups using the Cox …