Measuring hand use in the home after cervical spinal cord injury using egocentric video
Andrea Bandini, Mehdy Dousty, Sander L. Hitzig, B. Catharine Craven,, Sukhvinder Kalsi-Ryan, Jos\'e Zariffa

TL;DR
This study developed and validated a wearable egocentric video system that automatically measures hand use in the home for individuals with tetraplegia, correlating well with clinical assessments.
Contribution
The paper introduces a novel deep learning-based system for automatic, real-world measurement of hand function in home environments for tetraplegia patients.
Findings
Automatic detection of hand-object interactions with median F1-score of 0.80.
Higher motor scores correlate with increased interaction time.
Better sensation correlates with more frequent interactions.
Abstract
Background: Egocentric video has recently emerged as a potential solution for monitoring hand function in individuals living with tetraplegia in the community, especially for its ability to detect functional use in the home environment. Objective: To develop and validate a wearable vision-based system for measuring hand use in the home among individuals living with tetraplegia. Methods: Several deep learning algorithms for detecting functional hand-object interactions were developed and compared. The most accurate algorithm was used to extract measures of hand function from 65 hours of unscripted video recorded at home by 20 participants with tetraplegia. These measures were: the percentage of interaction time over total recording time (Perc); the average duration of individual interactions (Dur); the number of interactions per hour (Num). To demonstrate the clinical validity of the…
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