DOAJ Open Access 2023

Concurrent validity of machine learning-classified functional upper extremity use from accelerometry in chronic stroke

Shashwati Geed Shashwati Geed Megan L. Grainger Abigail Mitchell Cassidy C. Anderson +11 lainnya

Abstrak

Objective: This study aims to investigate the validity of machine learning-derived amount of real-world functional upper extremity (UE) use in individuals with stroke. We hypothesized that machine learning classification of wrist-worn accelerometry will be as accurate as frame-by-frame video labeling (ground truth). A second objective was to validate the machine learning classification against measures of impairment, function, dexterity, and self-reported UE use.Design: Cross-sectional and convenience sampling.Setting: Outpatient rehabilitation.Participants: Individuals (>18 years) with neuroimaging-confirmed ischemic or hemorrhagic stroke >6-months prior (n = 31) with persistent impairment of the hemiparetic arm and upper extremity Fugl-Meyer (UEFM) score = 12–57.Methods: Participants wore an accelerometer on each arm and were video recorded while completing an “activity script” comprising activities and instrumental activities of daily living in a simulated apartment in outpatient rehabilitation. The video was annotated to determine the ground-truth amount of functional UE use.Main outcome measures: The amount of real-world UE use was estimated using a random forest classifier trained on the accelerometry data. UE motor function was measured with the Action Research Arm Test (ARAT), UEFM, and nine-hole peg test (9HPT). The amount of real-world UE use was measured using the Motor Activity Log (MAL).Results: The machine learning estimated use ratio was significantly correlated with the use ratio derived from video annotation, ARAT, UEFM, 9HPT, and to a lesser extent, MAL. Bland–Altman plots showed excellent agreement between use ratios calculated from video-annotated and machine-learning classification. Factor analysis showed that machine learning use ratios capture the same construct as ARAT, UEFM, 9HPT, and MAL and explain 83% of the variance in UE motor performance.Conclusion: Our machine learning approach provides a valid measure of functional UE use. The accuracy, validity, and small footprint of this machine learning approach makes it feasible for measurement of UE recovery in stroke rehabilitation trials.

Topik & Kata Kunci

Penulis (16)

S

Shashwati Geed

S

Shashwati Geed

M

Megan L. Grainger

A

Abigail Mitchell

C

Cassidy C. Anderson

H

Henrike L. Schmaulfuss

S

Seraphina A. Culp

E

Eilis R. McCormick

M

Maureen R. McGarry

M

Mystee N. Delgado

A

Allysa D. Noccioli

J

Julia Shelepov

A

Alexander W. Dromerick

A

Alexander W. Dromerick

P

Peter S. Lum

P

Peter S. Lum

Format Sitasi

Geed, S., Geed, S., Grainger, M.L., Mitchell, A., Anderson, C.C., Schmaulfuss, H.L. et al. (2023). Concurrent validity of machine learning-classified functional upper extremity use from accelerometry in chronic stroke. https://doi.org/10.3389/fphys.2023.1116878

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Informasi Jurnal
Tahun Terbit
2023
Sumber Database
DOAJ
DOI
10.3389/fphys.2023.1116878
Akses
Open Access ✓