Estimating Parkinsonism Severity in Natural Gait Videos of Older Adults with Dementia
Andrea Sabo, Sina Mehdizadeh, Andrea Iaboni, Babak Taati

TL;DR
This study develops a novel spatial-temporal graph convolutional network approach to predict parkinsonism severity from gait videos of older adults with dementia, enabling unobtrusive assessment in real-world settings.
Contribution
Introduces a two-stage training method for ST-GCN models to accurately estimate parkinsonism severity from natural gait videos of dementia patients.
Findings
ST-GCN models on 3D Kinect data outperform traditional models.
Pretraining improves model performance on unseen participants.
Achieved macro F1-scores of approximately 0.53 and 0.40 for UPDRS and SAS scores.
Abstract
Drug-induced parkinsonism affects many older adults with dementia, often causing gait disturbances. New advances in vision-based human pose-estimation have opened possibilities for frequent and unobtrusive analysis of gait in residential settings. This work leverages novel spatial-temporal graph convolutional network (ST-GCN) architectures and training procedures to predict clinical scores of parkinsonism in gait from video of individuals with dementia. We propose a two-stage training approach consisting of a self-supervised pretraining stage that encourages the ST-GCN model to learn about gait patterns before predicting clinical scores in the finetuning stage. The proposed ST-GCN models are evaluated on joint trajectories extracted from video and are compared against traditional (ordinal, linear, random forest) regression models and temporal convolutional network baselines. Three 2D…
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Taxonomy
TopicsCerebral Palsy and Movement Disorders · Diabetic Foot Ulcer Assessment and Management · Stroke Rehabilitation and Recovery
