Department of Psychological Sciences, University of Missouri, Saint Louis, MO.
Missouri Institute of Mental Health, University of Missouri, Saint Louis, MO.
J Acquir Immune Defic Syndr. 2020 Aug 1;84(4):414-421. doi: 10.1097/QAI.0000000000002360.
Frailty is an important clinical concern for the aging population of people living with HIV (PLWH). The objective of this study was to identify the combination of risk features that distinguish frail from nonfrail individuals.
Machine learning analysis of highly dimensional risk features was performed on a clinical cohort of PLWH.
Participants included 105 older (average age = 55.6) PLWH, with at least a 3-month history of combination antiretroviral therapy (median CD4 = 546). Predictors included demographics, HIV clinical markers, comorbid health conditions, cognition, and neuroimaging (ie, volumetrics, resting-state functional connectivity, and cerebral blood flow). Gradient-boosted multivariate regressions were implemented to establish linear and interactive classification models. Model performance was determined by sensitivity/specificity (F1 score) with 5-fold cross validation.
The linear gradient-boosted multivariate regression classifier included lower current CD4 count, lower psychomotor performance, and multiple neuroimaging indices (volumes, network connectivity, and blood flow) in visual and motor brain systems (F1 score = 71%; precision = 84%; and sensitivity = 66%). The interactive model identified novel synergies between neuroimaging features, female sex, symptoms of depression, and current CD4 count.
Data-driven algorithms built from highly dimensional clinical and brain imaging features implicate disruption to the visuomotor system in older PLWH designated as frail individuals. Interactions between lower CD4 count, female sex, depressive symptoms, and neuroimaging features suggest potentiation of risk mechanisms. Longitudinal data-driven studies are needed to guide clinical strategies capable of preventing the development of frailty as PLWH reach advanced age.
衰弱是老年艾滋病毒感染者(PLWH)群体的一个重要临床关注点。本研究的目的是确定区分虚弱和非虚弱个体的风险特征组合。
对 PLWH 的临床队列进行了高维风险特征的机器学习分析。
参与者包括 105 名年龄较大(平均年龄=55.6 岁)的 PLWH,他们至少有 3 个月的联合抗逆转录病毒治疗(中位 CD4=546)。预测因素包括人口统计学、HIV 临床标志物、合并健康状况、认知和神经影像学(即容积、静息状态功能连接和脑血流)。实施梯度提升多元回归来建立线性和交互分类模型。通过 5 折交叉验证确定模型性能的灵敏度/特异性(F1 评分)。
线性梯度提升多元回归分类器包括较低的当前 CD4 计数、较低的运动表现和视觉和运动大脑系统中的多个神经影像学指标(体积、网络连接和血流)(F1 评分=71%;精度=84%;灵敏度=66%)。交互模型确定了神经影像学特征、女性性别、抑郁症状和当前 CD4 计数之间的新协同作用。
从高维临床和大脑成像特征构建的数据驱动算法表明,在被指定为虚弱的老年 PLWH 中,视觉运动系统受损。较低的 CD4 计数、女性性别、抑郁症状和神经影像学特征之间的相互作用表明风险机制的增强。需要进行纵向数据驱动研究,以指导临床策略,防止 PLWH 随着年龄的增长出现衰弱。