Quantifying Rodda and Graham Gait Classification from 3D Makerless Kinematics derived from a Single-view Video in a Heterogeneous Pediatric Clinical Cohort
Lauhitya Reddy, Seth Donahue, Jeremy Bauer, Susan Sienko, Anita Bagley, Joseph Krzak, Maura Eveld, Karen Kruger, Ross Chafetz, Vedant Kulkarni, Hyeokhyen Kwon

TL;DR
This study presents a markerless, video-based gait analysis method that accurately quantifies gait deviations in children with cerebral palsy, enabling scalable assessment in resource-limited settings.
Contribution
The paper introduces a novel single-view video pipeline for estimating Rodda and Graham gait scores without expensive 3D analysis, validated on a large pediatric cohort.
Findings
Achieved high correlation (R^2=0.80) for knee z-scores compared to 3D-IGA.
Binary screening for excess knee flexion achieved AUROC=0.88.
Supported longitudinal tracking of gait deviations over multiple visits.
Abstract
Cerebral Palsy (CP) is a neurological disorder of movement and the most common cause of lifelong physical disability in childhood. Approximately 75% of children with CP are ambulatory, and accurate gait assessment is central to preserving walking function, which deteriorates by mid-adulthood in a quarter to half of adults with CP. The Rodda and Graham classification system quantifies sagittal-plane gait deviations using ankle and knee z-scores derived from 3D Instrumented Gait Analysis (3D-IGA), but 3D-IGA is expensive and limited to specialized centers, while observational assessment shows only moderate inter-rater agreement. We developed a markerless gait analysis pipeline that quantifies Rodda and Graham knee and ankle z-scores directly from single-view clinical gait videos. Across 1,058 bilateral limb samples from 529 trials of 152 children (88 male, 63 female; age 12.1 4.0…
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