Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children

Abstract Clinical research in autism has recently witnessed promising digital phenotyping results, mainly focused on single feature extraction, such as gaze, head turn on name-calling or visual tracking of the moving object. The main drawback of these studies is the focus on relatively isolated beha...

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Main Authors: Nada Kojovic, Shreyasvi Natraj, Sharada Prasanna Mohanty, Thomas Maillart, Marie Schaer
Format: Article
Language:English
Published: Nature Publishing Group 2021-07-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-94378-z
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spelling doaj-f0ec9e65eaf94a928d1f9dddd7e118e92021-07-25T11:25:40ZengNature Publishing GroupScientific Reports2045-23222021-07-0111111010.1038/s41598-021-94378-zUsing 2D video-based pose estimation for automated prediction of autism spectrum disorders in young childrenNada Kojovic0Shreyasvi Natraj1Sharada Prasanna Mohanty2Thomas Maillart3Marie Schaer4Psychiatry Department, Faculty of Medicine, University of GenevaPsychiatry Department, Faculty of Medicine, University of GenevaAIcrowd Research, AIcrowdGeneva School of Economics and Management, University of GenevaPsychiatry Department, Faculty of Medicine, University of GenevaAbstract Clinical research in autism has recently witnessed promising digital phenotyping results, mainly focused on single feature extraction, such as gaze, head turn on name-calling or visual tracking of the moving object. The main drawback of these studies is the focus on relatively isolated behaviors elicited by largely controlled prompts. We recognize that while the diagnosis process understands the indexing of the specific behaviors, ASD also comes with broad impairments that often transcend single behavioral acts. For instance, the atypical nonverbal behaviors manifest through global patterns of atypical postures and movements, fewer gestures used and often decoupled from visual contact, facial affect, speech. Here, we tested the hypothesis that a deep neural network trained on the non-verbal aspects of social interaction can effectively differentiate between children with ASD and their typically developing peers. Our model achieves an accuracy of 80.9% (F1 score: 0.818; precision: 0.784; recall: 0.854) with the prediction probability positively correlated to the overall level of symptoms of autism in social affect and repetitive and restricted behaviors domain. Provided the non-invasive and affordable nature of computer vision, our approach carries reasonable promises that a reliable machine-learning-based ASD screening may become a reality not too far in the future.https://doi.org/10.1038/s41598-021-94378-z
collection DOAJ
language English
format Article
sources DOAJ
author Nada Kojovic
Shreyasvi Natraj
Sharada Prasanna Mohanty
Thomas Maillart
Marie Schaer
spellingShingle Nada Kojovic
Shreyasvi Natraj
Sharada Prasanna Mohanty
Thomas Maillart
Marie Schaer
Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children
Scientific Reports
author_facet Nada Kojovic
Shreyasvi Natraj
Sharada Prasanna Mohanty
Thomas Maillart
Marie Schaer
author_sort Nada Kojovic
title Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children
title_short Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children
title_full Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children
title_fullStr Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children
title_full_unstemmed Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children
title_sort using 2d video-based pose estimation for automated prediction of autism spectrum disorders in young children
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-07-01
description Abstract Clinical research in autism has recently witnessed promising digital phenotyping results, mainly focused on single feature extraction, such as gaze, head turn on name-calling or visual tracking of the moving object. The main drawback of these studies is the focus on relatively isolated behaviors elicited by largely controlled prompts. We recognize that while the diagnosis process understands the indexing of the specific behaviors, ASD also comes with broad impairments that often transcend single behavioral acts. For instance, the atypical nonverbal behaviors manifest through global patterns of atypical postures and movements, fewer gestures used and often decoupled from visual contact, facial affect, speech. Here, we tested the hypothesis that a deep neural network trained on the non-verbal aspects of social interaction can effectively differentiate between children with ASD and their typically developing peers. Our model achieves an accuracy of 80.9% (F1 score: 0.818; precision: 0.784; recall: 0.854) with the prediction probability positively correlated to the overall level of symptoms of autism in social affect and repetitive and restricted behaviors domain. Provided the non-invasive and affordable nature of computer vision, our approach carries reasonable promises that a reliable machine-learning-based ASD screening may become a reality not too far in the future.
url https://doi.org/10.1038/s41598-021-94378-z
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