Literature DB >> 34256799

Automatically evaluating balance using machine learning and data from a single inertial measurement unit.

Fahad Kamran1, Kathryn Harrold2, Jonathan Zwier2, Wendy Carender3, Tian Bao2, Kathleen H Sienko2, Jenna Wiens4.   

Abstract

BACKGROUND: Recently, machine learning techniques have been applied to data collected from inertial measurement units to automatically assess balance, but rely on hand-engineered features. We explore the utility of machine learning to automatically extract important features from inertial measurement unit data for balance assessment.
FINDINGS: Ten participants with balance concerns performed multiple balance exercises in a laboratory setting while wearing an inertial measurement unit on their lower back. Physical therapists watched video recordings of participants performing the exercises and rated balance on a 5-point scale. We trained machine learning models using different representations of the unprocessed inertial measurement unit data to estimate physical therapist ratings. On a held-out test set, we compared these learned models to one another, to participants' self-assessments of balance, and to models trained using hand-engineered features. Utilizing the unprocessed kinematic data from the inertial measurement unit provided significant improvements over both self-assessments and models using hand-engineered features (AUROC of 0.806 vs. 0.768, 0.665).
CONCLUSIONS: Unprocessed data from an inertial measurement unit used as input to a machine learning model produced accurate estimates of balance performance. The ability to learn from unprocessed data presents a potentially generalizable approach for assessing balance without the need for labor-intensive feature engineering, while maintaining comparable model performance.
© 2021. The Author(s).

Entities:  

Keywords:  Balance training; Machine learning; Telerehabilitation; Wearable sensors

Year:  2021        PMID: 34256799     DOI: 10.1186/s12984-021-00894-4

Source DB:  PubMed          Journal:  J Neuroeng Rehabil        ISSN: 1743-0003            Impact factor:   4.262


  3 in total

1.  Effects of multi-directional vibrotactile feedback on vestibular-deficient postural performance during continuous multi-directional support surface perturbations.

Authors:  K H Sienko; M D Balkwill; L I E Oddsson; C Wall
Journal:  J Vestib Res       Date:  2008       Impact factor: 2.435

2.  A Conceptual Framework for the Progression of Balance Exercises in Persons with Balance and Vestibular Disorders.

Authors:  B N Klatt; W J Carender; C C Lin; S F Alsubaie; C R Kinnaird; K H Sienko; S L Whitney
Journal:  Phys Med Rehabil Int       Date:  2015-04-28

3.  Relationship between the self-assessment and clinical assessment of health status and work ability.

Authors:  L Eskelinen; A Kohvakka; T Merisalo; H Hurri; G Wägar
Journal:  Scand J Work Environ Health       Date:  1991       Impact factor: 5.024

  3 in total

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