Abedi Ali, Khan Shehroz S, Iaboni Andrea, Bronskill Susan E, Bethell Jennifer
KITE Research Institute, Toronto Rehabilitation Institute, University Health Network, Toronto, ON, Canada.
ICES, Toronto, ON, Canada.
J Appl Gerontol. 2025 Jun;44(6):902-915. doi: 10.1177/07334648241290589. Epub 2024 Oct 12.
The objective of this study was to use population-based clinical assessment data to build and evaluate machine-learning models for predicting social engagement among female and male residents of long-term care (LTC) homes. Routine clinical assessments from 203,970 unique residents in 647 LTC homes in Ontario, Canada, collected between April 1, 2010, and March 31, 2020, were used to build predictive models for the Index of Social Engagement (ISE) using a data-driven machine-learning approach. General and sex-specific models were built to predict the ISE. The models showed a moderate prediction ability, with random forest emerging as the optimal model. Mean absolute errors were 0.71 and 0.73 in females and males, respectively, using general models and 0.69 and 0.73 using sex-specific models. Variables most highly correlated with the ISE, including activity pursuits, cognition, and physical health and functioning, differed little by sex. Factors associated with social engagement were similar in female and male residents.
本研究的目的是利用基于人群的临床评估数据来构建和评估机器学习模型,以预测长期护理(LTC)机构中女性和男性居民的社交参与度。使用数据驱动的机器学习方法,对2010年4月1日至2020年3月31日期间在加拿大安大略省647家LTC机构中收集的203,970名独特居民的常规临床评估数据,构建社交参与指数(ISE)的预测模型。构建了通用模型和针对性别的模型来预测ISE。这些模型显示出中等的预测能力,随机森林模型成为最优模型。使用通用模型时,女性和男性的平均绝对误差分别为0.71和0.73,使用针对性别模型时分别为0.69和0.73。与ISE相关性最高的变量,包括活动追求、认知以及身体健康和功能,在性别上差异不大。女性和男性居民中与社交参与相关的因素相似。