Predictive Model for the Detection of Subclinical Atherosclerosis in HIV Patients on Antiretroviral Treatment.

IF 1 4区 医学 Q4 IMMUNOLOGY
César Gálvez-Barrón, Sara Gamarra-Calvo, José Ramón Blanco Ramos, Isabel Sanjoaquín Conde, Carlos Pérez-López, Antonio Miñarro, Guillermo Verdejo-Muñoz
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Abstract

Objective: Patients living with HIV (PLHIV) have a higher cardiovascular risk than others, which is why the early detection of atherosclerosis in this population is important. The present study reports predictive models of subclinical atherosclerosis for this population of patients, made up of variables that are easily collected in the clinic.

Methods: The study design is a cross-sectional observational study. PLHIV without established cardiovascular disease were recruited for this study. Predictive models of subclinical atherosclerosis (Doppler ultrasound) were developed by testing sociodemographic variables, pathological history, data related to HIV infection, laboratory parameters, and capillaroscopy as potential predictors. Logistic regression with internal validation (bootstrapping) and machine learning techniques were used to develop the models.

Results: Data from 96 HIV patients were analysed, 19 (19.8%) of whom had subclinical atherosclerosis. The predictors that went into both machine learning models and the regression model were hypertension, dyslipidaemia, protease inhibitors, triglycerides, fibrinogen, and alkaline phosphatase. Age and C-reactive protein were also part of the machine learning models. The logistic regression model had an area under the receiver operating characteristic curve (AUC) of 0.91 (95% CI: 0.84-0.99), which became 0.80 after internal validation by bootstrapping. The ma-chine learning techniques produced models with AUCs ranging from 0.73 to 0.86.

Conclusion: We report predictive models for subclinical atherosclerosis in PLHIV, demonstrating relevant predictive performance based on easily accessible parameters, making them potentially useful as a screening tool. However, given the study's limitations-primarily the sample size-external validation in larger cohorts is warranted.

抗逆转录病毒治疗HIV患者亚临床动脉粥样硬化检测的预测模型。
目的:艾滋病毒感染者(PLHIV)的心血管风险高于其他人群,这就是为什么早期发现动脉粥样硬化在这一人群中很重要。本研究报告了这类患者亚临床动脉粥样硬化的预测模型,该模型由易于在临床收集的变量组成。方法:研究设计为横断面观察性研究。无心血管疾病的PLHIV患者被纳入本研究。亚临床动脉粥样硬化的预测模型(多普勒超声)是通过测试社会人口学变量、病理史、HIV感染相关数据、实验室参数和毛细管镜检查作为潜在预测因素而建立的。逻辑回归与内部验证(bootstrapping)和机器学习技术被用来开发模型。结果:分析了96例HIV患者的资料,其中19例(19.8%)存在亚临床动脉粥样硬化。机器学习模型和回归模型的预测因子是高血压、血脂异常、蛋白酶抑制剂、甘油三酯、纤维蛋白原和碱性磷酸酶。年龄和c反应蛋白也是机器学习模型的一部分。logistic回归模型的受试者工作特征曲线下面积(AUC)为0.91 (95% CI: 0.84-0.99),经内部验证后为0.80。机器学习技术产生的模型auc范围从0.73到0.86。结论:我们报告了PLHIV亚临床动脉粥样硬化的预测模型,显示了基于易于获取的参数的相关预测性能,使其成为一种潜在的有用的筛选工具。然而,考虑到研究的局限性——主要是样本量——在更大的队列中进行外部验证是有必要的。
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来源期刊
Current HIV Research
Current HIV Research 医学-病毒学
CiteScore
1.90
自引率
10.00%
发文量
81
审稿时长
6-12 weeks
期刊介绍: Current HIV Research covers all the latest and outstanding developments of HIV research by publishing original research, review articles and guest edited thematic issues. The novel pioneering work in the basic and clinical fields on all areas of HIV research covers: virus replication and gene expression, HIV assembly, virus-cell interaction, viral pathogenesis, epidemiology and transmission, anti-retroviral therapy and adherence, drug discovery, the latest developments in HIV/AIDS vaccines and animal models, mechanisms and interactions with AIDS related diseases, social and public health issues related to HIV disease, and prevention of viral infection. Periodically, the journal invites guest editors to devote an issue on a particular area of HIV research of great interest that increases our understanding of the virus and its complex interaction with the host.
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