Computerized Assessment of Motor Imitation for Distinguishing Autism in Video (CAMI-2DNet)
Kaleab A. Kinfu, Carolina Pacheco, Alice D. Sperry, Deana Crocetti, Bahar Tun\c{c}gen\c{c}, Stewart H. Mostofsky, Ren\'e Vidal

TL;DR
CAMI-2DNet is a deep learning approach that assesses motor imitation impairments in videos to distinguish autism spectrum conditions, eliminating the need for manual data normalization and annotations.
Contribution
It introduces CAMI-2DNet, a scalable, interpretable model that uses synthetic and real data to assess motor imitation without normalization or human annotations.
Findings
Strong correlation with human scores
Outperforms CAMI-2D in autism discrimination
Comparable to CAMI-3D with greater practicality
Abstract
Motor imitation impairments are commonly reported in individuals with autism spectrum conditions (ASCs), suggesting that motor imitation could be used as a phenotype for addressing autism heterogeneity. Traditional methods for assessing motor imitation are subjective, labor-intensive, and require extensive human training. Modern Computerized Assessment of Motor Imitation (CAMI) methods, such as CAMI-3D for motion capture data and CAMI-2D for video data, are less subjective. However, they rely on labor-intensive data normalization and cleaning techniques, and human annotations for algorithm training. To address these challenges, we propose CAMI-2DNet, a scalable and interpretable deep learning-based approach to motor imitation assessment in video data, which eliminates the need for data normalization, cleaning and annotation. CAMI-2DNet uses an encoder-decoder architecture to map a video…
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Taxonomy
TopicsAutism Spectrum Disorder Research
