Does Arterial Stiffness Predict Cardiovascular Disease in Older Adults With an Intellectual Disability?

IF 1.7 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Journal of Cardiovascular Nursing Pub Date : 2024-11-01 Epub Date: 2023-06-20 DOI:10.1097/JCN.0000000000001013
Frances O'Brien, Philip McCallion, Caitriona Ryan, Avejay Paul, Éilish Burke, Simmoune Echiverri, Mary McCarron
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引用次数: 0

Abstract

Background: Arterial stiffness has been associated with an increased risk of cardiovascular disease (CVD) in some patient populations.

Objectives: The aims of this study were to investigate (1) whether there is an association between arterial stiffness, as measured by the Mobil-O-Graph, and risk for CVD in a population of individuals with intellectual disability and (2) whether arterial stiffness can predict the risk for CVD.

Methods: This cross-sectional study included 58 individuals who participated in wave 4 of the Intellectual Disability Supplement to the Irish Longitudinal Study on Aging (2019-2020). Statistical models were used to address the first aim, whereas machine learning models were used to improve the accuracy of risk predictions in the second aim.

Results: Sample characteristics were mean (SD) age of 60.69 (10.48) years, women (62.1%), mild/moderate level of intellectual disability (91.4%), living in community group homes (53.4%), overweight/obese (84.5%), high cholesterol (46.6%), alcohol consumption (48.3%), hypertension (25.9%), diabetes (17.24%), and smokers (3.4%). Mean (SD) pulse wave velocity (arterial stiffness measured by Mobil-O-Graph) was 8.776 (1.6) m/s. Cardiovascular disease risk categories, calculated using SCORE2, were low-to-moderate risk (44.8%), high risk (46.6%), and very high risk (8.6%). Using proportional odds logistic regression, significant associations were found between arterial stiffness, diabetes diagnosis, and CVD risk SCORE2 ( P < .001). We also found the Mobil-O-Graph can predict risk of CVD, with prediction accuracy of the proportional odds logistic regression model approximately 60.12% (SE, 3.2%). Machine learning models, k -nearest neighbor, and random forest improved model predictions over and above proportional odds logistic regression at 75.85% and 77.7%, respectively.

Conclusions: Arterial stiffness, as measured by the noninvasive Mobil-O-Graph, can be used to predict risk of CVD in individuals with intellectual disabilities.

动脉僵硬度能否预测智障老年人的心血管疾病?
背景:在一些患者群体中,动脉僵化与心血管疾病(CVD)风险增加有关:在一些患者群体中,动脉僵化与心血管疾病(CVD)风险增加有关:本研究旨在调查:(1) 在智障人群中,用 Mobil-O-Graph 测量的动脉僵化与心血管疾病风险之间是否存在关联;(2) 动脉僵化是否可以预测心血管疾病风险:这项横断面研究包括参加爱尔兰老龄化纵向研究(2019-2020年)智障补充研究第4波的58人。统计模型用于实现第一个目标,而机器学习模型用于提高第二个目标中风险预测的准确性:样本特征为:平均(标清)年龄 60.69(10.48)岁,女性(62.1%),轻度/中度智障(91.4%),居住在社区集体之家(53.4%),超重/肥胖(84.5%),高胆固醇(46.6%),饮酒(48.3%),高血压(25.9%),糖尿病(17.24%),吸烟(3.4%)。平均(标清)脉搏波速度(用 Mobil-O-Graph 测量动脉僵化程度)为 8.776 (1.6) m/s。使用 SCORE2 计算出的心血管疾病风险类别为中低风险(44.8%)、高风险(46.6%)和极高风险(8.6%)。使用比例赔率逻辑回归法发现,动脉僵化、糖尿病诊断和心血管疾病风险 SCORE2 之间存在显著关联(P < .001)。我们还发现 Mobil-O-Graph 可以预测心血管疾病的风险,比例赔率逻辑回归模型的预测准确率约为 60.12%(SE,3.2%)。机器学习模型、k-近邻模型和随机森林模型的预测准确率分别为 75.85% 和 77.7%,高于比例几率逻辑回归模型:通过无创 Mobil-O-Graph 测量动脉僵化可用于预测智障人士患心血管疾病的风险。
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来源期刊
CiteScore
3.30
自引率
10.00%
发文量
154
审稿时长
>12 weeks
期刊介绍: Official journal of the Preventive Cardiovascular Nurses Association, Journal of Cardiovascular Nursing is one of the leading journals for advanced practice nurses in cardiovascular care, providing thorough coverage of timely topics and information that is extremely practical for daily, on-the-job use. Each issue addresses the physiologic, psychologic, and social needs of cardiovascular patients and their families in a variety of environments. Regular columns include By the Bedside, Progress in Prevention, Pharmacology, Dysrhythmias, and Outcomes Research.
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