7 18

Cited 0 times in

Cited 0 times in

Predictive model development for possible sarcopenia in community-dwelling older adults: a cross-sectional machine learning approach using the Korean frailty and aging cohort study

Authors
 Kwon, Sooyoung  ;  Kim, Layoung  ;  Won, Chang Won  ;  Kim, Namhee  ;  Chang, Jae Young  ;  Kim, Miji  ;  Kim, Gwang Suk 
Citation
 BMC GERIATRICS, Vol.25(1), 2025-12 
Article Number
 987 
Journal Title
BMC GERIATRICS
ISSN
 1471-2318 
Issue Date
2025-12
MeSH
Aged ; Aged, 80 and over ; Aging* / physiology ; Cohort Studies ; Cross-Sectional Studies ; Female ; Frailty* / diagnosis ; Frailty* / epidemiology ; Geriatric Assessment* / methods ; Humans ; Independent Living* ; Machine Learning* ; Male ; Republic of Korea / epidemiology ; Sarcopenia* / diagnosis ; Sarcopenia* / epidemiology
Keywords
Aged ; Community-dwelling ; Machine learning ; Cognitive impairment ; Body mass index ; Possible sarcopenia
Abstract
BackgroundSarcopenia, an age-related decline in muscle mass and physical function, is a major risk factor for frailty, a condition associated with negative health outcomes and increased disease burden in older adults. Providing simple, accurate community-based screening is essential for early prevention and improving the health and quality of life of older adults. Employing screening criteria for possible sarcopenia can broadly identify individuals at risk for sarcopenia and enhance early diagnosis and preventive measures. However, there is a lack of possible sarcopenia prediction models. This study developed and evaluated a model for predicting possible sarcopenia among community-dwelling older adults and identified key predictors.MethodsA supervised machine learning approach was used, with data from the 2022-2023 Korean Frailty and Aging Cohort Study (n = 1,761). Individuals were classified as having possible or no possible sarcopenia based on the 2019 Asian Working Group for Sarcopenia criteria. Logistic regression, random forest, support vector machine, and extreme gradient boosting machine learning models were developed, and their predictive performance was assessed using accuracy, precision, recall, F1-score, and receiver operating characteristic curve-area under the curve. Feature importance was analysed applying Shapley additive explanations.ResultsThe final sample comprised 500 individuals with possible sarcopenia (mean age: 83.0 +/- 3.76 years; 34.4% men) and 1,261 without possible sarcopenia (mean age: 81.0 +/- 3.40 years, 51.6% men). Logistic regression demonstrated the best predictive performance among the four models, with the highest recall of 0.700 and F1-score of 0.654. The most influential predictors for possible sarcopenia were lower body mass index, walking aid use, cognitive impairment, older age, and exhaustion.ConclusionsMultidomain geriatric indicators including anthropometric status (body mass index), walking aid use, cognitive function, age, and exhaustion can guide pragmatic, community-based screening for possible sarcopenia. Simple, accessible assessments of these predictors may facilitate earlier identification and referral, and should be considered in sarcopenia screening and prevention strategies.Clinical trial numberNot applicable.
Files in This Item:
90932.pdf Download
DOI
10.1186/s12877-025-06612-2
Appears in Collections:
3. College of Nursing (간호대학) > Dept. of Nursing (간호학과) > 1. Journal Papers
Yonsei Authors
Kim, Gwang Suk(김광숙) ORCID logo https://orcid.org/0000-0001-9823-6107
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/210037
사서에게 알리기
  feedback

qrcode

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

Browse

Links