4.7 Article

Interpretable classifiers for prediction of disability trajectories using a nationwide longitudinal database

期刊

BMC GERIATRICS
卷 22, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s12877-022-03295-x

关键词

ADL limitations; Functional disability; Trajectories; Machine learning; Explanations

资金

  1. National Natural Science Foundation of China [81973144]

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This study explores the heterogeneous disability trajectories among elderly Chinese at the community level and constructs explainable machine learning models for effective prediction of long-term disability trajectories and understanding the mechanisms of predictions. The findings suggest that machine learning shows good performance in predicting disability trajectories and provides a basis for personalized intervention measures.
Objectives To explore the heterogeneous disability trajectories and construct explainable machine learning models for effective prediction of long-term disability trajectories and understanding the mechanisms of predictions among the elderly Chinese at community level. Methods This study retrospectively collected data from the Chinese Longitudinal Healthy Longevity and Happy Family Study between 2002 and 2018. A total of 4149 subjects aged 65 + in 2002 with completed activities of daily living (ADL) information for at least three waves were included. The mixed growth model was used to identify disability trajectories, and five machine learning models were further established to predict disability trajectories using epidemiological variables. An explainable approach was deployed to understand the model's decisions. Results Three distinct disability trajectories, including normal class (77.3%), progressive class (15.5%), and high-onset class (7.2%), were identified for three-class prediction. The latter two were further merged into abnormal class, accompanied by normal class for two-class prediction. Machine learning, especially random forest and extreme gradient boosting achieved good performance in both two tasks. ADL, age, leisure activity, cognitive function, and blood pressure were key predictors. Conclusion The findings suggest that machine learning showed good performance and maybe of additional value in analyzing quality indicators in predicting disability trajectories, thereby providing basis to personalize intervention measures.

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