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Since conventional screening tools for assessing frailty phenotypes are resource intensive and unsuitable for routine application, efforts are underway to simplify and shorten the frailty screening protocol by using sensor-based technologies. This study explores whether machine learning combined with frailty modeling could determine the least sensor-derived features required to identify physical frailty and three key frailty phenotypes (slowness, weakness, and exhaustion). Older participants (n = 102, age = 76.54 ± 7.72 years) were fitted with five wearable sensors and completed a five times sit-to-stand test. Seventeen sensor-derived features were extracted and used for optimal feature selection based on a machine learning technique combined with frailty modeling. Mean of hip angular velocity range (indicator of slowness), mean of vertical power range (indicator of weakness), and coefficient of variation of vertical power range (indicator of exhaustion) were selected as the optimal features. A frailty model with the three optimal features had an area under the curve of 85.20%, a sensitivity of 82.70%, and a specificity of 71.09%. This study suggests that the three sensor-derived features could be used as digital biomarkers of physical frailty and phenotypes of slowness, weakness, and exhaustion. Our findings could facilitate future design of low-cost sensor-based technologies for remote physical frailty assessments via telemedicine.
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http://dx.doi.org/10.3390/s21093258 | DOI Listing |
Geroscience
September 2025
Research Institute of the McGill University Health Centre, 2155 Guy Street, Suite 500, Montreal, QC, H3H 2R9, Canada.
Frailty, often linked to sarcopenia, involves reduced muscle strength and mass. While sarcopenia has multiple causes, impaired muscle protein synthesis may contribute. Leucine and resistance training (RT) are anabolic stimuli, but the long-term effects of leucine combined with RT in pre/frail older women remain unclear.
View Article and Find Full Text PDFIntroduction: Frailty, characterized by a reduction in intrinsic capacity across multiple physiological systems, is a key concern in healthy aging. Insight in the trajectory of an individual's functional ability and intrinsic reserve capacity in a relatively younger population of older adults is lacking. This study aims to investigate the early stages of frailty by tracking trajectories of physical indicators of intrinsic capacity before frailty becomes clinically evident.
View Article and Find Full Text PDFJ Oral Rehabil
September 2025
Department of Prosthodontics, Dental School, National and Kapodistrian University of Athens, Athens, Greece.
Background: Although oral diseases and frailty can be met earlier in life, there is limited information on their association across the lifespan.
Objectives: To scope for the association of oral factors with physical frailty in Greek community-dwelling adults.
Methods: Participants were over 18 years of age with ≥ 20 natural teeth, ≥ 10 occlusal contacts, and no removable dentures.
Ann Hematol
September 2025
Centre on Aging and Mobility, University of Zurich, Zurich, Switzerland.
While frailty and anemia are prevalent conditions in aging linked to adverse outcomes, their relationship remains understudied in generally healthy older adults. We conducted a post-hoc observational study among all participants of DO-HEALTH, the largest European clinical trial designed to support healthy aging. Our analysis examined whether baseline hemoglobin levels and anemia are associated with being at least pre-frail at baseline and any yearly follow-up time point over three years.
View Article and Find Full Text PDFAging Clin Exp Res
September 2025
School of Population Health, Faculty of Health Sciences, Curtin University, Perth, Western Australia, Australia.
Background: Cognitive frailty, a novel construct integrating cognitive and physical deficits, is increasingly recognized in aging research.
Aims: This study aimed to examine the associations between cognitive frailty and cardiometabolic risk in two nationally representative cohorts from China and the United Kingdom.
Methods: We analyzed data from 7,628 participants in the China Health and Retirement Longitudinal Study (CHARLS) and 4,703 participants from the English Longitudinal Study of Ageing (ELSA), all aged ≥ 50 years.