Video‐based real‐time assessment and diagnosis of autism spectrum disorder using deep neural networks

Author:

Prakash Varun Ganjigunte1ORCID,Kohli Manu1ORCID,Prathosh Aragulla Prasad2ORCID,Juneja Monica3,Gupta Manushree4,Sairam Smitha5,Sitaraman Sadasivan6,Bangalore Anjali Sanjeev7,Kommu John Vijay Sagar8,Saini Lokesh9,Utage Prashant Ramesh10,Goyal Nishant11

Affiliation:

1. CogniAble Gurgaon India

2. Department of Electrical Communication Engineering, Signal Processing Building West Indian Institute of Science Bengaluru India

3. Department of Pediatrics Maulana Azad Medical College and Associated Lok Nayak Hospital New Delhi India

4. Department of Psychiatry, OPD Building VMMC & Safdarjung Hospital New Delhi India

5. Department of Pediatrics, Centre of Excellence‐Early Intervention Centre Lok Nayak Hospital New Delhi India

6. Neurodevelopment Division Sir. Padampat Mother and Child Health Institute, S.M.S. Medical College Jaipur India

7. ICON Centre for Child Development & Assisted Learning Aurangabad India

8. Department of Child and Adolescent Psychiatry, 2nd Floor Adolescent Psychiatry Centre NIMHANS Bengaluru India

9. Department of Pediatrics All India Institute of Medical Sciences Jodhpur India

10. Utage Child Development Center Hyderabad India

11. Central Institute of Psychiatry Ranchi India

Abstract

AbstractHuman action recognition (HAR) in untrimmed videos can make insightful predictions of human behaviour. Previous work on HAR‐included models trained on spatial and temporal annotations and could classify limited actions from trimmed videos. These methods reported limitations such as (1) performance degradation due to the lack of precision temporal regions proposal and (2) poor adaptability of the models in the clinical domain because of unrelated actions of interest. We propose an innovative method that could analyse untrimmed behavioural videos to recommend actions of interest leading to diagnostic and functional assessments for children with Autism Spectrum Disorder (ASD). Our method entails end‐to‐end behaviour action recognition (BAR) pipeline, including child detection, temporal action localization, and actions of interest identification and classification. The model trained on the data of 400 ASD children and 125 with other developmental delays (ODD) accurately identified ASD, ODD, and Neurotypical children with 79.7%, 77.2%, and 80.8% accuracy, respectively. The model's performance on an independent benchmark Self‐Stimulatory Behaviour Dataset (SSBD) reported top‐1 accuracy of 78.57% for combined localization with action recognition, significantly higher than the earlier reported outcomes.

Funder

Biotechnology Industry Research Assistance Council

Publisher

Wiley

Subject

Artificial Intelligence,Computational Theory and Mathematics,Theoretical Computer Science,Control and Systems Engineering

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