Exploring outdoor activity limitation (OAL) factors among older adults using interpretable machine learning

被引:5
|
作者
Fan, Lingjie [1 ]
Zhang, Junjie [1 ]
Wang, Fengyi [2 ]
Liu, Shuang [3 ]
Lin, Tao [1 ]
机构
[1] Sichuan Univ, Coll Comp Sci, Chengdu, Sichuan, Peoples R China
[2] Sichuan Univ, West China Hosp, Dept Rehabil Med, Chengdu, Sichuan, Peoples R China
[3] Univ Elect Sci & Technol China, Mianyang Cent Hosp, Sch Med, Chengdu, Sichuan, Peoples R China
关键词
Aging; Outdoor activity limitation; Mobility; Interpretable machine learning; PHYSICAL-ACTIVITY; ENVIRONMENTAL BARRIERS; MOBILITY; PERFORMANCE; PEOPLE; HOME; FEAR; ASSOCIATION; PREVALENCE; TIME;
D O I
10.1007/s40520-023-02461-4
中图分类号
R592 [老年病学]; C [社会科学总论];
学科分类号
03 ; 0303 ; 100203 ;
摘要
BackgroundThe occurrence of outdoor activity limitation (OAL) among older adults is influenced by multidimensional and confounding factors associated with aging.AimThe aim of this study was to apply interpretable machine learning (ML) to develop models for multidimensional aging constraints on OAL and identify the most predictive constraints and dimensions across multidimensional aging data.MethodsThis study involved 6794 community-dwelling participants older than 65 from the National Health and Aging Trends Study (NHATS). Predictors included related to six dimensions: sociodemographics, health condition, physical capacity, neurological manifestation, daily living habits and abilities, and environmental conditions. Multidimensional interpretable machine learning models were assembled for model construction and analysis.ResultsThe multidimensional model demonstrated the best predictive performance (AUC: 0.918) compared to the six sub-dimensional models. Among the six dimensions, physical capacity had the most remarkable prediction (AUC: physical capacity: 0.895, daily habits and abilities: 0.828, physical health: 0.826, neurological performance: 0.789, sociodemographic: 0.773, and environment condition: 0.623). The top-ranked predictors were SPPB score, lifting ability, leg strength, free kneeling, laundry mode, self-rated health, age, attitude toward outdoor recreation, standing time on one foot with eyes open, and fear of falling.DiscussionReversible and variable factors, which are higher in the set of high-contribution constraints, should be prioritized as the main contributing group in terms of interventions.ConclusionThe integration of potentially reversible factors, such as neurological performance in addition to physical function into ML models, yields a more accurate assessment of OAL risk, which provides insights for targeted, sequential interventions for older adults with OAL.
引用
收藏
页码:1955 / 1966
页数:12
相关论文
共 50 条
  • [1] Exploring outdoor activity limitation (OAL) factors among older adults using interpretable machine learning
    Lingjie Fan
    Junjie Zhang
    Fengyi Wang
    Shuang Liu
    Tao Lin
    Aging Clinical and Experimental Research, 2023, 35 : 1955 - 1966
  • [2] Interpretable machine learning for identifying overweight and obesity risk factors of older adults in China
    Peng, Bozhezi
    Wu, Jiani
    Liu, Xiaofei
    Yin, Pei
    Wang, Tao
    Li, Chaoyang
    Yuan, Shengqiang
    Zhang, Yi
    GERIATRIC NURSING, 2025, 61 : 580 - 588
  • [3] Exploring the Risk Factors for Depressive Symptoms Among Chinese Rural Older Adults
    Yan, Zi
    Lu, Ruoyan
    Li, Yueping
    Zheng, Zhenquan
    JOURNAL OF PSYCHOSOCIAL NURSING AND MENTAL HEALTH SERVICES, 2020, 58 (02) : 41 - 47
  • [4] Functioning and environment: Exploring outdoor activity-friendly environments for older adults with disabilities in a Chinese long-term care facility
    Xie, Qing
    Yuan, Xiaomei
    BUILDING RESEARCH AND INFORMATION, 2022, 50 (1-2) : 43 - 59
  • [5] The Relationship between Outdoor Activity and Health in Older Adults Using GPS
    Kerr, Jacqueline
    Marshall, Simon
    Godbole, Suneeta
    Neukam, Suvi
    Crist, Katie
    Wasilenko, Kari
    Golshan, Shahrokh
    Buchner, David
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2012, 9 (12) : 4615 - 4625
  • [6] Risk prediction of functional disability among middle-aged and older adults with arthritis: A nationwide cross-sectional study using interpretable machine learning
    Li, Qinglu
    Shi, Wenting
    Wang, Nan
    Wang, Guorong
    INTERNATIONAL JOURNAL OF ORTHOPAEDIC AND TRAUMA NURSING, 2025, 56
  • [7] Using interpretable machine learning methods to identify the relative importance of lifestyle factors for overweight and obesity in adults: pooled evidence from CHNS and NHANES
    Sun, Zhiyuan
    Yuan, Yunhao
    Farrahi, Vahid
    Herold, Fabian
    Xia, Zhengwang
    Xiong, Xuan
    Qiao, Zhiyuan
    Shi, Yifan
    Yang, Yahui
    Qi, Kai
    Liu, Yufei
    Xu, Decheng
    Zou, Liye
    Chen, Aiguo
    BMC PUBLIC HEALTH, 2024, 24 (01)
  • [8] Using machine learning algorithms to investigate factors associated with complete edentulism among older adults in the United States
    Oladayo, Abimbola M.
    Harishchandra, Hikkaduwa Withanage Miyuraj
    Zeng, Erliang
    Caplan, Daniel J.
    Butali, Azeez
    Marchini, Leonardo
    SPECIAL CARE IN DENTISTRY, 2024, 44 (01) : 148 - 156
  • [9] Estimating quality of life with biomarkers among older Korean adults: A machine-learning approach
    Lee, Sung-Ha
    Choi, Incheol
    Ahn, Woo-Young
    Shin, Enyoung
    Cho, Sung-Il
    Kim, Sunyoung
    Oh, Bumjo
    ARCHIVES OF GERONTOLOGY AND GERIATRICS, 2020, 87
  • [10] Exploring the key influencing factors of low-carbon innovation from urban characteristics in China using interpretable machine learning
    Wang, Wentao
    Li, Dezhi
    Zhou, Shenghua
    Wang, Yang
    Yu, Lugang
    ENVIRONMENTAL IMPACT ASSESSMENT REVIEW, 2024, 107