Humana Integrated Health Systems Sciences Institute, University of Houston, Houston, USA.
Tilman J Fertitta Family College of Medicine, Department of Health Systems and Population Health Sciences, University of Houston, Houston, USA.
BMC Geriatr. 2024 Jan 17;24(1):70. doi: 10.1186/s12877-024-04679-x.
Social connectedness is a key determinant of health and interventions have been developed to prevent social isolation in older adults. However, these interventions have historically had a low participation rate amongst minority populations. Given the sustained isolation caused by the COVID-19 pandemic, it is even more important to understand what factors are associated with an individual's decision to participate in a social intervention. To achieve this, we used machine learning techniques to model the racial and ethnic differences in participation in social connectedness interventions.
Data were obtained from a social connectedness intervention that paired college students with Houston-area community-dwelling older adults (> 65 yo) enrolled in Medicare Advantage plans. Eligible participants were contacted telephonically and asked to complete the 3-item UCLA Loneliness Scale. We used the following machine-learning methods to identify significant predictors of participation in the program: k-nearest neighbors, logistic regression, decision tree, gradient-boosted decision tree, and random forest.
The gradient-boosted decision tree models yielded the best parameters for all race/ethnicity groups (96.1% test accuracy, 0.739 AUROC). Among non-Hispanic White older adults, key features of the predictive model included Functional Comorbidity Index (FCI) score, Medicare prescription risk score, Medicare risk score, and depression and anxiety indicators within the FCI. Among non-Hispanic Black older adults, key features included disability, Medicare prescription risk score, FCI and Medicare risk scores. Among Hispanic older adults, key features included depression, FCI and Medicare risk scores.
These findings offer a substantial opportunity for the design of interventions that maximize engagement among minority groups at greater risk for adverse health outcomes.
社交联系是健康的关键决定因素,已经开发出干预措施来预防老年人的社交孤立。然而,这些干预措施在历史上在少数族裔群体中的参与率一直很低。鉴于 COVID-19 大流行造成的持续隔离,了解是什么因素与个人参与社交干预的决定相关更为重要。为了实现这一目标,我们使用机器学习技术来模拟参与社交联系干预措施的种族和民族差异。
数据来自一项社交联系干预措施,该措施将大学生与休斯顿地区的社区居住的老年人(>65 岁)配对,这些老年人参加了医疗保险优势计划。符合条件的参与者通过电话联系,并要求他们完成 3 项 UCLA 孤独量表。我们使用以下机器学习方法来确定参与该计划的显著预测因素:k-最近邻居、逻辑回归、决策树、梯度提升决策树和随机森林。
梯度提升决策树模型为所有种族/族裔群体(96.1%的测试准确性,0.739 AUROC)产生了最佳参数。在非西班牙裔白人老年人中,预测模型的关键特征包括功能共病指数(FCI)评分、医疗保险处方风险评分、医疗保险风险评分以及 FCI 中的抑郁和焦虑指标。在非西班牙裔黑人老年人中,关键特征包括残疾、医疗保险处方风险评分、FCI 和医疗保险风险评分。在西班牙裔老年人中,关键特征包括抑郁、FCI 和医疗保险风险评分。
这些发现为设计干预措施提供了一个重要机会,可以最大限度地提高处于不利健康结果风险较高的少数群体的参与度。