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Journal of general internal medicine. 2022 Aug;37(11):2727-2735. doi: 10.1007/s11606-022-07394-8 Q14.22024

An Interpretable Machine Learning Approach to Predict Fall Risk Among Community-Dwelling Older Adults: a Three-Year Longitudinal Study

一种可解释的机器学习方法预测社区居住老年人跌倒风险:一项为期三年的纵向研究 翻译改进

Takaaki Ikeda  1  2, Upul Cooray  3, Masanori Hariyama  4, Jun Aida  5  6, Katsunori Kondo  7  8, Masayasu Murakami  9, Ken Osaka  3

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作者单位

  • 1 Department of Health Policy Science, Graduate School of Medical Science, Yamagata University, Yamagata, Yamagata, Japan. tikeda@med.id.yamagata-u.ac.jp.
  • 2 Department of International and Community Oral Health, Graduate School of Dentistry, Tohoku University, Sendai, Miyagi, Japan. tikeda@med.id.yamagata-u.ac.jp.
  • 3 Department of International and Community Oral Health, Graduate School of Dentistry, Tohoku University, Sendai, Miyagi, Japan.
  • 4 Intelligent Integrated Systems Laboratory, Graduate School of Information Sciences, Tohoku University, Sendai, Miyagi, Japan.
  • 5 Department of Oral Health Promotion, Graduate School of Medical and Dental Sciences, Tokyo Medical and Dental University, Bunkyo-ku, Tokyo, Japan.
  • 6 Division for Regional Community Development, Liaison Center for Innovative Dentistry, Graduate School of Dentistry, Tohoku University, Sendai, Miyagi, Japan.
  • 7 Department of Social Preventive Medical Sciences, Center for Preventive Medical Sciences, Chiba University, Chiba, Chiba, Japan.
  • 8 Department of Gerontological Evaluation, Center for Gerontology and Social Science, National Center for Geriatrics and Gerontology, Obu, Aichi, Japan.
  • 9 Department of Health Policy Science, Graduate School of Medical Science, Yamagata University, Yamagata, Yamagata, Japan.
  • DOI: 10.1007/s11606-022-07394-8 PMID: 35112279

    摘要 Ai翻译

    Background: Adverse health effects resulting from falls are a major public health concern. Although studies have identified risk factors for falls, none have examined long-term prediction of fall risk. Furthermore, recent evidence suggests that there are additional risk factors, such as psychosocial factors.

    Objective: In this 3-year longitudinal study, we evaluated a predictive model for risk of fall among community-dwelling older adults using machine learning methods.

    Design: A 3-year follow-up prospective longitudinal study (from 2010 to 2013).

    Setting: Twenty-four municipalities in nine of the 47 prefectures (provinces) of Japan.

    Participants: Community-dwelling individuals aged ≥65 years who were functionally independent at baseline (n = 61,883).

    Methods: The baseline survey was conducted from August 2010 to January 2012, and the follow-up survey was conducted from October to December 2013. Both surveys were conducted involving self-reported questionnaires. The measured outcome at the follow-up survey was self-reported multiple falls during the previous year. The 142 variables included in the baseline survey were regarded as candidate predictors. The random-forest-based Boruta algorithm was used to select predictors, and the eXtreme Gradient Boosting algorithm with 10 repetitions of nested k-fold cross-validation was used for modeling and model evaluation. Furthermore, we used shapley additive explanations to gain insight into the behavior of the prediction model.

    Key results: Fourteen out of 142 candidate features were selected as predictors. Among these predictors, experience of falling as of the baseline survey was the most important feature, followed by self-rated health and age. Moreover, sense of coherence was newly identified as a risk factor for falls.

    Conclusions: This study suggests that machine learning tools can be adapted to explore new associative factors, make accurate predictions, and provide actionable insights for fall prevention strategies.

    Keywords: Boruta; eXtreme Gradient Boosting; fall prediction; psychosocial factors; random forest.

    Keywords:machine learning approach; fall risk prediction; older adults; longitudinal study

    Copyright © Journal of general internal medicine. 中文内容为AI机器翻译,仅供参考!

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    期刊名:Journal of general internal medicine

    缩写:J GEN INTERN MED

    ISSN:0884-8734

    e-ISSN:1525-1497

    IF/分区:4.2/Q1

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