| Literature DB >> 33571239 |
Keisuke Hirata1, Makoto Suzuki1, Naoki Iso1, Takuhiro Okabe1, Hiroshi Goto1, Kilchoon Cho1, Junichi Shimizu1.
Abstract
Previous studies have shown that functional mobility, along with other physical functions, decreases with advanced age. However, it is still unclear which domains of functioning (body structures, body functions, and activities) are most closely related to functional mobility. This study used machine learning classification to predict the rankings of Timed Up and Go tests based on the results of four assessments (soft lean mass, FEV1/FVC, knee extension torque, and one-leg standing time). We tested whether assessment results for each level could predict functional mobility assessments in older adults. Using support vector machines for machine learning classification, we verified that the four assessments of each level could classify functional mobility. Knee extension torque (from the body function domain) was the most closely related assessment. Naturally, the classification accuracy rate increased with a larger number of assessments as explanatory variables. However, knee extension torque remained the highest of all assessments. This extended to all combinations (of 2-3 assessments) that included knee extension torque. This suggests that resistance training may help protect individuals suffering from age-related declines in functional mobility.Entities:
Mesh:
Year: 2021 PMID: 33571239 PMCID: PMC7877571 DOI: 10.1371/journal.pone.0246397
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240