Antihypertensive Drug Recommendations for Reducing Arterial Stiffness in Patients With Hypertension: Machine Learning-Based Multicohort (RIGIPREV) Study.

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Journal of Medical Internet Research Pub Date : 2024-11-25 DOI:10.2196/54357
Iván Cavero-Redondo, Arturo Martinez-Rodrigo, Alicia Saz-Lara, Nerea Moreno-Herraiz, Veronica Casado-Vicente, Leticia Gomez-Sanchez, Luis Garcia-Ortiz, Manuel A Gomez-Marcos
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Abstract

Background: High systolic blood pressure is one of the leading global risk factors for mortality, contributing significantly to cardiovascular diseases. Despite advances in treatment, a large proportion of patients with hypertension do not achieve optimal blood pressure control. Arterial stiffness (AS), measured by pulse wave velocity (PWV), is an independent predictor of cardiovascular events and overall mortality. Various antihypertensive drugs exhibit differential effects on PWV, but the extent to which these effects vary depending on individual patient characteristics is not well understood. Given the complexity of selecting the most appropriate antihypertensive medication for reducing PWV, machine learning (ML) techniques offer an opportunity to improve personalized treatment recommendations.

Objective: This study aims to develop an ML model that provides personalized recommendations for antihypertensive medications aimed at reducing PWV. The model considers individual patient characteristics, such as demographic factors, clinical data, and cardiovascular measurements, to identify the most suitable antihypertensive agent for improving AS.

Methods: This study, known as the RIGIPREV study, used data from the EVA, LOD-DIABETES, and EVIDENT studies involving individuals with hypertension with baseline and follow-up measurements. Antihypertensive drugs were grouped into classes such as angiotensin-converting enzyme inhibitors (ACEIs), angiotensin receptor blockers (ARBs), β-blockers, diuretics, and combinations of diuretics with ACEIs or ARBs. The primary outcomes were carotid-femoral and brachial-ankle PWV, while the secondary outcomes included various cardiovascular, anthropometric, and biochemical parameters. A multioutput regressor using 6 random forest models was used to predict the impact of each antihypertensive class on PWV reduction. Model performance was evaluated using the coefficient of determination (R2) and mean squared error.

Results: The random forest models exhibited strong predictive capabilities, with internal validation yielding R2 values between 0.61 and 0.74, while external validation showed a range of 0.26 to 0.46. The mean squared values ranged from 0.08 to 0.22 for internal validation and from 0.29 to 0.45 for external validation. Variable importance analysis revealed that glycated hemoglobin and weight were the most critical predictors for ACEIs, while carotid-femoral PWV and total cholesterol were key variables for ARBs. The decision tree model achieved an accuracy of 84.02% in identifying the most suitable antihypertensive drug based on individual patient characteristics. Furthermore, the system's recommendations for ARBs matched 55.3% of patients' original prescriptions.

Conclusions: This study demonstrates the utility of ML techniques in providing personalized treatment recommendations for antihypertensive therapy. By accounting for individual patient characteristics, the model improves the selection of drugs that control blood pressure and reduce AS. These findings could significantly aid clinicians in optimizing hypertension management and reducing cardiovascular risk. However, further studies with larger and more diverse populations are necessary to validate these results and extend the model's applicability.

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降低高血压患者动脉僵硬度的抗高血压药物建议:基于机器学习的多队列(RIGIPREV)研究》。
背景:高收缩压是导致死亡的全球主要风险因素之一,是心血管疾病的重要诱因。尽管治疗手段在不断进步,但仍有很大一部分高血压患者无法达到最佳血压控制效果。以脉搏波速度(PWV)测量的动脉僵化(AS)是心血管事件和总死亡率的独立预测指标。各种降压药对脉搏波速度有不同的影响,但这些影响因患者个体特征而异的程度尚不十分清楚。鉴于选择最合适的降压药以降低脉搏波速度的复杂性,机器学习(ML)技术为改善个性化治疗建议提供了机会:本研究旨在开发一种 ML 模型,为旨在降低脉搏波速度的抗高血压药物提供个性化建议。该模型考虑了患者的个体特征,如人口统计学因素、临床数据和心血管测量结果,以确定最适合改善 AS 的降压药物:这项名为 RIGIPREV 的研究使用了 EVA、LOD-DIABETES 和 EVIDENT 研究中的数据,这些数据涉及基线和随访测量的高血压患者。抗高血压药物分为血管紧张素转换酶抑制剂(ACEIs)、血管紧张素受体阻滞剂(ARBs)、β-受体阻滞剂、利尿剂以及利尿剂与 ACEIs 或 ARBs 的复方制剂等类别。主要结果是颈动脉-股动脉和肱动脉-踝动脉脉搏波速度,次要结果包括各种心血管、人体测量和生化参数。使用 6 个随机森林模型的多输出回归器来预测每类降压药对脉搏波速度降低的影响。使用判定系数(R2)和均方误差评估模型性能:随机森林模型表现出很强的预测能力,内部验证的 R2 值介于 0.61 和 0.74 之间,外部验证的 R2 值介于 0.26 和 0.46 之间。内部验证的均方值在 0.08 到 0.22 之间,外部验证的均方值在 0.29 到 0.45 之间。变量重要性分析表明,糖化血红蛋白和体重是 ACEIs 最关键的预测因素,而颈动脉-股动脉压差和总胆固醇则是 ARBs 的关键变量。决策树模型在根据患者个体特征确定最合适的降压药方面的准确率达到了 84.02%。此外,该系统对 ARBs 的推荐与患者原始处方的 55.3% 相吻合:本研究证明了多重语言技术在提供个性化降压治疗建议方面的实用性。通过考虑患者的个体特征,该模型改进了控制血压和减少 AS 的药物选择。这些发现将极大地帮助临床医生优化高血压管理和降低心血管风险。然而,要验证这些结果并扩大该模型的适用性,还需要对更大规模和更多样化的人群进行进一步研究。
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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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