, Tokyo, Japan.
Department of Social Epidemiology, Graduate School of Medicine and School of Public Health, Kyoto University, Kyoto, Japan.
J Gen Intern Med. 2023 Aug;38(11):2486-2493. doi: 10.1007/s11606-023-08215-2. Epub 2023 May 1.
It is important to identify older adults at high risk of functional disability and to take preventive measures for them at an early stage. To our knowledge, there are no studies that predict functional disability among community-dwelling older adults using machine learning algorithms.
To construct a model that can predict functional disability over 5 years using basic machine learning algorithms.
A cohort study with a mean follow-up of 5.4 years.
We used data from the Japan Gerontological Evaluation Study, which involved 73,262 people aged ≥ 65 years who were not certified as requiring long-term care. The baseline survey was conducted in 2013 in 19 municipalities.
We defined the onset of functional disability as the new certification of needing long-term care that was ascertained by linking participants to public registries of long-term care insurance. All 183 candidate predictors were measured by self-report questionnaires.
During the study period, 16,361 (22.3%) participants experienced the onset of functional disability. Among machine learning-based models, ridge regression (C statistic = 0.818) and gradient boosting (0.817) effectively predicted functional disability. In both models, we identified age, self-rated health, variables related to falls and posture stabilization, and diagnoses of Parkinson's disease and dementia as important features. Additionally, the ridge regression model identified the household characteristics such as the number of members, income, and receiving public assistance as important predictors, while the gradient boosting model selected moderate physical activity and driving. Based on the ridge regression model, we developed a simplified risk score for functional disability, and it also indicated good performance at the cut-off of 6/7 points.
Machine learning-based models showed effective performance prediction over 5 years. Our findings suggest that measuring and adding the variables identified as important features can improve the prediction of functional disability.
识别有发生功能障碍高风险的老年人,并在早期为他们采取预防措施非常重要。据我们所知,目前还没有使用机器学习算法预测社区居住的老年人功能障碍的研究。
构建一个可使用基本机器学习算法预测 5 年功能障碍的模型。
一项平均随访 5.4 年的队列研究。
我们使用了日本老年评估研究的数据,该研究涉及了 73262 名年龄≥65 岁、未被认定需要长期护理的人。基线调查于 2013 年在 19 个市町村进行。
我们将功能障碍的开始定义为通过将参与者与长期护理保险公共登记处相关联而确定的新的需要长期护理的认证。通过自报问卷测量了所有 183 个候选预测因子。
在研究期间,16361 名(22.3%)参与者出现了功能障碍。在基于机器学习的模型中,岭回归(C 统计量=0.818)和梯度提升(0.817)有效地预测了功能障碍。在这两个模型中,我们确定了年龄、自评健康状况、与跌倒和姿势稳定相关的变量以及帕金森病和痴呆的诊断为重要特征。此外,岭回归模型确定了家庭特征,如成员人数、收入和接受公共援助,作为重要预测因素,而梯度提升模型选择了适度的身体活动和驾驶。基于岭回归模型,我们开发了一个用于功能障碍风险的简化评分,该评分在 6/7 分的截断点也表现出良好的性能。
基于机器学习的模型在 5 年内的预测效果较好。我们的研究结果表明,测量和添加被确定为重要特征的变量可以提高功能障碍的预测效果。