AI Article Synopsis

  • This study developed and validated a predictive nomogram to assess frailty risk in older adults using data from 344 participants in Hebei Province, China.
  • The predictive model incorporated six key factors: age, nutritional risk, hypertension, multimorbidity, depression, and results from a 2-Minute step test, showcasing strong discrimination ability with AUC values of 0.866 and 0.854.
  • The model is not only well-calibrated, as confirmed by various tests and calibration curves, but also aims to help older adults identify and prevent frailty early on.

Article Abstract

This study aimed to develop and validate a nomogram combined with the indicators of the physical fitness test to predict frailty risk in Chinese older adults. We recruited 344 participants from a community in Hebei Province, China. Data were collected on 57 candidate factor variables from sociodemographic factors, lifestyle factors, clinical factors, body composition test, and physical fitness test. Ultimately 6 factor variables were included in this predictive model: age, nutritional risk, hypertension, multimorbidity, depression and 2-Minute step test. The area under the curve (AUC) value in the training set and validation set is 0.866 and 0.854, which indicates that the model has a good ability to discriminate. The results of the H-L test indicate that the model is well calibrated. The calibration curves also indicate a good model fit. The model provides older adults with risk indicators to identify and prevent the onset of frailty as early as possible.

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Source
http://dx.doi.org/10.1016/j.gerinurse.2024.10.064DOI Listing

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