4.7 Article

Computer Vision Analysis for Quantification of Autism Risk Behaviors

Journal

IEEE TRANSACTIONS ON AFFECTIVE COMPUTING
Volume 12, Issue 1, Pages 215-226

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TAFFC.2018.2868196

Keywords

Computer vision; autism; behavior elicitation; behavior coding; mobile-health

Funding

  1. Duke University
  2. Duke Endowment
  3. Coulter Foundation
  4. NSF
  5. Department of Defense
  6. Office of the Assistant Secretary of Defense for Research and Engineering
  7. NIH
  8. NGA [HM017713-1-0007, HM04761610001]
  9. NICHD [1P50HD093074-01]
  10. ONR [N000141210839]
  11. ARO [W911NF-16-1-0088]
  12. [NSF-CCF-13-18168]

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Observational behavior analysis is crucial for discovering and evaluating risk markers for neurodevelopmental disorders. Current methods heavily rely on clinical practitioners and specialists, making them expensive and time-consuming, and not easily scalable. A new mobile application and computer vision algorithms have been developed for automated behavioral analysis in children with and without ASD.
Observational behavior analysis plays a key role for the discovery and evaluation of risk markers for many neurodevelopmental disorders. Research on autism spectrum disorder (ASD) suggests that behavioral risk markers can be observed at 12 months of age or earlier, with diagnosis possible at 18 months. To date, these studies and evaluations involving observational analysis tend to rely heavily on clinical practitioners and specialists who have undergone intensive training to be able to reliably administer carefully designed behavioral-eliciting tasks, code the resulting behaviors, and interpret such behaviors. These methods are therefore extremely expensive, time-intensive, and are not easily scalable for large population or longitudinal observational analysis. We developed a self-contained, closed-loop, mobile application with movie stimuli designed to engage the child's attention and elicit specific behavioral and social responses, which are recorded with a mobile device camera and then analyzed via computer vision algorithms. Here, in addition to presenting this paradigm, we validate the system to measure engagement, name-call responses, and emotional responses of toddlers with and without ASD who were presented with the application. Additionally, we show examples of how the proposed framework can further risk marker research with fine-grained quantification of behaviors. The results suggest these objective and automatic methods can be considered to aid behavioral analysis, and can be suited for objective automatic analysis for future studies.

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