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Frailty identification using a sensor-based upper-extremity function test: a deep learning approach.

Mehran Asghari1, Hossein Ehsani1, Nima Toosizadeh2,3,4

  • 1Department of Rehabilitation and Movement Sciences, School of Health Professions, Rutgers Health, Rutgers University, Newark, NJ, USA.

Scientific Reports
|April 22, 2025
PubMed
Summary
This summary is machine-generated.

This study improves frailty prediction in older adults by combining biomechanical data with deep learning. Muscle co-contraction is a key indicator, with LSTM models showing the highest accuracy for identifying frailty.

Keywords:
Deep learningFrailty assessmentLong short-term memory (LSTM)Muscle co-contraction

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Area of Science:

  • Gerontology and Computational Health Science
  • Biomechanical Engineering and Artificial Intelligence

Background:

  • Aging populations necessitate improved frailty assessment tools.
  • Current methods like Fried phenotype and Rockwood score have limitations.
  • Efficient and accurate frailty prediction is crucial for preventing adverse health outcomes.

Purpose of the Study:

  • To enhance frailty prediction accuracy in older adults.
  • To investigate the utility of a combined biomechanical and deep learning approach.
  • To identify key biomechanical predictors of frailty.

Main Methods:

  • Recruited 312 older adults (non-frail, pre-frail, frail).
  • Assessed frailty using Fried index, upper-extremity function (UEF) tests, and muscle force calculations.
  • Employed machine learning (logistic regression, SVM) and deep learning (LSTM) models.

Main Results:

  • Incorporating muscle model parameters significantly improved frailty prediction.
  • The LSTM model achieved the highest accuracy (74%), outperforming SVM (67%) and regression (66%).
  • Muscle co-contraction was a critical predictor, higher in frail individuals.

Conclusions:

  • Integrating UEF tasks with deep learning offers superior frailty prediction.
  • This approach can potentially serve as a robust and efficient clinical tool.
  • Further validation in diverse populations is required to confirm generalizability.