Data-Driven Quantitation of Movement Abnormality after Stroke

Author:

Parnandi Avinash1,Kaku Aakash2,Venkatesan Anita1,Pandit Natasha1,Fokas Emily1,Yu Boyang2ORCID,Kim Grace3ORCID,Nilsen Dawn4,Fernandez-Granda Carlos25ORCID,Schambra Heidi16ORCID

Affiliation:

1. Department of Neurology, NYU Grossman School of Medicine, New York, NY 10017, USA

2. NYU Center for Data Science, New York, NY 10011, USA

3. Department of Occupational Therapy, NYU Steinhardt, New York, NY 10011, USA

4. Department of Rehabilitation and Regenerative Medicine, Columbia University, New York, NY 10032, USA

5. Courant Institute of Mathematical Sciences, New York, NY 10011, USA

6. Department of Rehabilitation Medicine, NYU Grossman School of Medicine, New York, NY 10017, USA

Abstract

Stroke commonly affects the ability of the upper extremities (UEs) to move normally. In clinical settings, identifying and measuring movement abnormality is challenging due to the imprecision and impracticality of available assessments. These challenges interfere with therapeutic tracking, communication, and treatment. We thus sought to develop an approach that blends precision and pragmatism, combining high-dimensional motion capture with out-of-distribution (OOD) detection. We used an array of wearable inertial measurement units to capture upper body motion in healthy and chronic stroke subjects performing a semi-structured, unconstrained 3D tabletop task. After data were labeled by human coders, we trained two deep learning models exclusively on healthy subject data to classify elemental movements (functional primitives). We tested these healthy subject-trained models on previously unseen healthy and stroke motion data. We found that model confidence, indexed by prediction probabilities, was generally high for healthy test data but significantly dropped when encountering OOD stroke data. Prediction probabilities worsened with more severe motor impairment categories and were directly correlated with individual impairment scores. Data inputs from the paretic UE, rather than trunk, most strongly influenced model confidence. We demonstrate for the first time that using OOD detection with high-dimensional motion data can reveal clinically meaningful movement abnormality in subjects with chronic stroke.

Funder

AHA postdoctoral fellowship

NIH grants

NIH

NIH NCATS

NSF NRT-HDR Award

NYU Research Development Award

NYU Research Challenge Grant

Publisher

MDPI AG

Subject

Bioengineering

Reference72 articles.

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