Gait Alterations and Association With Worsening Knee Pain and Physical Function: A Machine Learning Approach With Wearable Sensors in the Multicenter Osteoarthritis Study

Author:

Bacon Kathryn L.1ORCID,Felson David T.1ORCID,Jafarzadeh S. Reza1ORCID,Kolachalama Vijaya B.1ORCID,Hausdorff Jeffrey M.2,Gazit Eran3,Stefanik Joshua J.4,Corrigan Patrick5ORCID,Segal Neil A.6ORCID,Lewis Cora E.7,Nevitt Michael C.8,Kumar Deepak1ORCID

Affiliation:

1. Boston University, Massachusetts

2. Tel Aviv University and Tel Aviv Sourasky Medical Center, Tel Aviv, Israel, and Rush University Medical Center Chicago Illinois

3. Tel Aviv Sourasky Medical Center Tel Aviv Israel

4. Northeastern University Boston Massachusetts

5. Saint Louis University, Missouri

6. University of Kansas Medical Center Kansas City

7. University of Alabama at Birmingham

8. University of California San Francisco

Abstract

ObjectiveThe objective of this study was to identify gait alterations related to worsening knee pain and worsening physical function, using machine learning approaches applied to wearable sensor–derived data from a large observational cohort.MethodsParticipants in the Multicenter Osteoarthritis Study (MOST) completed a 20‐m walk test wearing inertial sensors on their lower back and ankles. Parameters describing spatiotemporal features of gait were extracted from these data. We used an ensemble machine learning technique (“super learning”) to optimally discriminate between those with and without worsening physical function and, separately, those with and without worsening pain over two years. We then used log‐binomial regression to evaluate associations of the top 10 influential variables selected with super learning with each outcome. We also assessed whether the relation of altered gait with worsening function was mediated by changes in pain.ResultsOf 2,324 participants, 29% and 24% had worsening knee pain and function over two years, respectively. From the super learner, several gait parameters were found to be influential for worsening pain and for worsening function. After adjusting for confounders, greater gait asymmetry, longer average step length, and lower dominant frequency were associated with worsening pain, and lower cadence was associated with worsening function. Worsening pain partially mediated the association of cadence with function.ConclusionWe identified gait alterations associated with worsening knee pain and those associated with worsening physical function. These alterations could be assessed with wearable sensors in clinical settings. Further research should determine whether they might be therapeutic targets to prevent worsening pain and worsening function.

Funder

Rheumatology Research Foundation

American Heart Association

National Institutes of Health

Publisher

Wiley

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