Yamaya Noriki, Furukawa Tomomi, Kitazawa Kazuki, Hirao Kazuki, Fujita Takaaki, Tozato Fusae, Kitamura Yayoi, Oi Naoyuki, Iwaya Tsutomu, Tsuchiya Kenji
Nagano University of Health and Medicine, Japan.
Kagoshima University, Japan.
Sage Open Aging. 2025 Aug 20;11:30495334251365595. doi: 10.1177/30495334251365595. eCollection 2025 Jan-Dec.
This study aimed to identify predictive risk patterns for older individuals who are likely or unlikely to reverse from frailty 3 years later using the Kihon Checklist (KCL) and a machine learning model. Data were collected from community-dwelling individuals aged 65 and over with frailty but without long-term care at baseline. A decision tree analysis revealed that the cognitive function domain of the KCL was the primary determinant of frailty reversal. Among those with low cognitive function, low physical activity predicted remaining frailty status 3 years later. The derived model achieved a specificity of 81.0% and a precision of 82.6% in predicting individuals with remaining persistent frailty. These findings suggest that the pattern combining cognitive and physical risk factors plays a key role in predicting frailty outcomes, and that the proposed model may be useful for screening individuals who require targeted interventions.
本研究旨在使用基宏检查表(KCL)和机器学习模型,识别3年后可能或不可能从衰弱状态逆转的老年人的预测风险模式。数据收集自65岁及以上、基线时存在衰弱但未接受长期护理的社区居住个体。决策树分析显示,KCL的认知功能领域是衰弱逆转的主要决定因素。在认知功能低下的个体中,低体力活动预示着3年后仍处于衰弱状态。所推导的模型在预测持续衰弱个体时,特异性为81.0%,精确度为82.6%。这些发现表明,认知和身体风险因素相结合的模式在预测衰弱结果中起关键作用,并且所提出的模型可能有助于筛查需要针对性干预的个体。