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基于机器学习的高血压患者治疗后动态血压预测。

Machine Learning-Based prediction of Post-Treatment ambulatory blood pressure in patients with hypertension.

机构信息

Department of Cardiology, University of Ulsan College of Medicine, Asan Medical Center, Seoul, Korea.

出版信息

Blood Press. 2023 Dec;32(1):2209674. doi: 10.1080/08037051.2023.2209674.

Abstract

Pre-treatment prediction of individual blood pressure (BP) response to anti-hypertensive medication is important to determine the specific regimen for promptly and safely achieving a target BP. This study aimed to develop supervised machine learning (ML) models for predicting patient-specific treatment effects using 24-hour ambulatory BP monitoring (ABPM) data.. A total of 1,129 patients who had both baseline and follow-up ABPM data were randomly assigned into training, validation and test sets in a 3:1:1 ratio. Utilising the features including clinical and laboratory findings, initial ABPM data, and anti-hypertensive medication at baseline and at follow-up, ML models were developed to predict post-treatment individual BP response. Each case was labelled by the mean 24-hour and daytime BPs derived from the follow-up ABPM. At baseline, 616 (55%) patients had been treated using mono or combination therapy with 45 anti-hypertensive drugs and the remaining 513 (45%) patients had been untreated (drug-naïve). By using CatBoost, the difference between predicted vs. measured mean 24-hour systolic BP at follow-up was 8.4 ± 7.0 mm Hg (% difference of 6.6% ± 5.7%). The difference between predicted vs. measured mean 24-hour diastolic BP was 5.3 ± 4.3 mm Hg (% difference of 6.8% ± 5.5%). There were significant correlations between the CatBoost-predicted vs. the ABPM-measured changes in the mean 24-hour Systolic ( = 0.74) and diastolic ( = 0.68) BPs from baseline to follow-up. Even in the patients with renal insufficiency or diabetes, the correlations between CatBoost-predicted vs. ABPM-measured BP changes were significant. ML algorithms accurately predict the post-treatment ambulatory BP levels, which may assist clinicians in personalising anti-hypertensive treatment.

摘要

治疗前预测个体对降压药物的血压(BP)反应对于确定特定的治疗方案以迅速、安全地达到目标血压非常重要。本研究旨在使用 24 小时动态血压监测(ABPM)数据开发基于监督机器学习(ML)的模型,以预测患者的具体治疗效果。共有 1129 名患者具有基线和随访 ABPM 数据,这些患者被随机以 3:1:1 的比例分配到训练、验证和测试组中。利用包括临床和实验室检查结果、初始 ABPM 数据以及基线和随访时的降压药物在内的特征,开发了 ML 模型来预测治疗后的个体血压反应。每个病例都根据随访 ABPM 得出的 24 小时和白天平均 BP 进行标记。基线时,616 名(55%)患者接受了单药或联合治疗,使用了 45 种降压药物,其余 513 名(45%)患者未接受治疗(药物初治)。使用 CatBoost,预测的与随访时平均 24 小时收缩压的差异为 8.4±7.0mmHg(差异百分比为 6.6%±5.7%)。预测的与平均 24 小时舒张压的差异为 5.3±4.3mmHg(差异百分比为 6.8%±5.5%)。CatBoost 预测值与 ABPM 测量值之间的变化在平均 24 小时收缩压(r=0.74)和舒张压(r=0.68)之间存在显著相关性。即使在肾功能不全或糖尿病患者中,CatBoost 预测值与 ABPM 测量值之间的血压变化也存在显著相关性。ML 算法可以准确预测治疗后的动态血压水平,这可能有助于临床医生实现降压治疗的个体化。

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