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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Aug 7, 2021
Date Accepted: Nov 10, 2021
Date Submitted to PubMed: Jan 6, 2022

The final, peer-reviewed published version of this preprint can be found here:

Prediction of Physical Frailty in Orthogeriatric Patients Using Sensor Insole–Based Gait Analysis and Machine Learning Algorithms: Cross-sectional Study

Kraus M, Saller MM, Baumbach SF, Neuerburg C, Stumpf UC, Böcker W, Keppler AM

Prediction of Physical Frailty in Orthogeriatric Patients Using Sensor Insole–Based Gait Analysis and Machine Learning Algorithms: Cross-sectional Study

JMIR Med Inform 2022;10(1):e32724

DOI: 10.2196/32724

PMID: 34989684

PMCID: 8771341

Prediction of physical frailty in orthogeriatric patients using sensor insole based gait analysis and machine learning al-gorithms.

  • Moritz Kraus; 
  • Maximilian Michael Saller; 
  • Sebastian Felix Baumbach; 
  • Carl Neuerburg; 
  • Ulla Cordula Stumpf; 
  • Wolfgang Böcker; 
  • Alexander Martin Keppler

ABSTRACT

TPurpose: The aim of the herein presented study, was to compare the predictive value of insole data, which was collected during the Timed-Up-and-Go Test (TUG-Test), to the SARC-F and TUG-Test, to assess physical frailty (PF), defined by the Short Physical Perfor-mance Battery (SPPB), using machine learning algorithms.

Methods:

This prospective diagnostic study included patients aged >60 years, with in-dependent ambulation and no mental or neurological impairment. A comprehensive set of parameters associated to PF was assessed, including body composition, question-naires (EQ-5D, SARC-F), and physical performance tests (SPPB, TUG) including digital sensor insoles gait parameters during the TUG Test. PF was defined as a SPPB score ≤ 8 points. Advanced statistics, including random forest feature selection and machine learning algorithms (K nearest neighbors and random forest) were used to compare the diagnostic value of these parameters to identify PF patients.

Results:

Classified by the SPPB, 23 of the 57 eligible patients were defined as PF. Sev-eral gait parameters were significantly different between the two groups. The receiver operator curve of the TU Test was superior to that of the SARC-F (0.862 vs. 0.639). The recursive feature elimination algorithm identified 9 parameters, 8 of which were digital insole gait parameters. Both the K-Nearest Neighbors (KNN) algorithm and the Random Forest trained with these parameters resulted in excellent results (RF = 0.919 and KNN = 0.801). Conclusion: A gait analysis based on machine learning algorithms using sensor soles is superior to the SARC-F and the TUG Test to identify PF patients in orthogeriatric pa-tients.


 Citation

Please cite as:

Kraus M, Saller MM, Baumbach SF, Neuerburg C, Stumpf UC, Böcker W, Keppler AM

Prediction of Physical Frailty in Orthogeriatric Patients Using Sensor Insole–Based Gait Analysis and Machine Learning Algorithms: Cross-sectional Study

JMIR Med Inform 2022;10(1):e32724

DOI: 10.2196/32724

PMID: 34989684

PMCID: 8771341

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