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Physical frailty identification using machine learning to explore the 5-item FRAIL scale, Cardiovascular Health Study index, and Study of Osteoporotic Fractures index.
Yang, Chen-Cheng; Chen, Po-Hong; Yang, Cheng-Hong; Dai, Chia-Yen; Luo, Kuei-Hau; Chen, Tzu-Hua; Chuang, Hung-Yi; Kuo, Chao-Hung.
Afiliación
  • Yang CC; Graduate Institute of Medicine, College of Medicine, Kaohsiung Medical University, Kaohsiung City, Taiwan.
  • Chen PH; Department of Occupational and Environmental Medicine, Kaohsiung Municipal Siaogang Hospital, Kaohsiung Medical University, Kaohsiung City, Taiwan.
  • Yang CH; Department of Occupational and Environmental Medicine, Kaohsiung Medical University Hospital, Kaohsiung Medical University, Kaohsiung City, Taiwan.
  • Dai CY; Department of Electronic Engineering, National Kaohsiung University of Science and Technology, Kaohsiung City, Taiwan.
  • Luo KH; Department of Information Management, Tainan University of Technology, Tainan, Taiwan.
  • Chen TH; Department of Occupational and Environmental Medicine, Kaohsiung Medical University Hospital, Kaohsiung Medical University, Kaohsiung City, Taiwan.
  • Chuang HY; Department of Occupational and Environmental Medicine, Kaohsiung Medical University Hospital, Kaohsiung Medical University, Kaohsiung City, Taiwan.
  • Kuo CH; Department of Family Medicine, Kaohsiung Municipal Ta-tung Hospital, Kaohsiung Medical University, Kaohsiung City, Taiwan.
Front Public Health ; 12: 1303958, 2024.
Article en En | MEDLINE | ID: mdl-38784574
ABSTRACT

Background:

Physical frailty is an important issue in aging societies. Three models of physical frailty assessment, the 5-Item fatigue, resistance, ambulation, illness and loss of weight (FRAIL); Cardiovascular Health Study (CHS); and Study of Osteoporotic Fractures (SOF) indices, have been regularly used in clinical and research studies. However, no previous studies have investigated the predictive ability of machine learning (ML) for physical frailty assessment. The aim was to use two ML algorithms, random forest (RF) and extreme gradient boosting (XGBoost), to predict these three physical frailty assessment models. Materials and

methods:

Questionnaires regarding demographic characteristics, lifestyle habits, living environment, and physical frailty assessment were answered by 445 participants aged 60 years and above. The RF and XGBoost algorithms were used to assess their scores for the three physical frailty indices. Furthermore, feature importance and Shapley additive explanations (SHAP) were used to determine the important physical frailty factors.

Results:

The XGBoost algorithm obtained higher accuracy for predicting the three physical frailty indices; the areas under the curve obtained by the XGBoost algorithm for the 5-Item FRAIL, CHS, and SOF indices were 0.84. 0.79, and 0.69, respectively. The feature importance and SHAP of the XGBoost algorithm revealed that systolic blood pressure, diastolic blood pressure, age, and body mass index play important roles in all three physical frailty models.

Conclusion:

The XGBoost algorithm has a more accurate predictive rate than RF across all three physical frailty assessments. Thus, ML can be a useful tool for the early detection of physical frailty.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Evaluación Geriátrica / Fracturas Osteoporóticas / Aprendizaje Automático / Fragilidad Límite: Aged / Aged80 / Female / Humans / Male / Middle aged Idioma: En Año: 2024 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Evaluación Geriátrica / Fracturas Osteoporóticas / Aprendizaje Automático / Fragilidad Límite: Aged / Aged80 / Female / Humans / Male / Middle aged Idioma: En Año: 2024 Tipo del documento: Article