A pose-estimation plus tabular foundation model pipeline trained on 25 adults transfers to 12 pediatric hyperkinetic movement disorder cases with lightweight final-layer calibration, raising Hamming accuracy from 0.804 to 0.839 and Jaccard index from 0.548 to 0.633 on held-out patients.
Deep Learning Pose Estimation for Multi-Label Recognition of Combined Hyperkinetic Movement Disorders
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Hyperkinetic movement disorders (HMDs) such as dystonia, tremor, chorea, myoclonus, and tics are disabling motor manifestations across childhood and adulthood. Their fluctuating, intermittent, and frequently co-occurring expressions hinder clinical recognition and longitudinal monitoring, which remain largely subjective and vulnerable to inter-rater variability. Objective and scalable methods to distinguish overlapping HMD phenotypes from routine clinical videos are still lacking. Here, we developed a pose-based machine-learning framework that converts standard outpatient videos into anatomically meaningful keypoint time series and computes kinematic descriptors spanning statistical, temporal, spectral, and higher-order irregularity-complexity features.
fields
cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Simultaneous hyperkinetic movement disorders phenotyping: a cross-cohort pediatric transfer study using routine videos, markerless pose estimation and a tabular foundation model
A pose-estimation plus tabular foundation model pipeline trained on 25 adults transfers to 12 pediatric hyperkinetic movement disorder cases with lightweight final-layer calibration, raising Hamming accuracy from 0.804 to 0.839 and Jaccard index from 0.548 to 0.633 on held-out patients.