Video Analysis Tool Allows for Early Autism Diagnosis
Video Analysis Tool Allows for Early Autism Diagnosis
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Individuals affected by autism spectrum disorder often present communication issues and difficulties in social interactions. Although very frequent, this disorder is challenging to diagnose before the age of five. However, early care can compensate for these difficulties by providing specific behavioural intervention focused on the development of skills affected by autism. This is why an interdisciplinary team at the University of Geneva (UNIGE), Switzerland, has developed an artificial intelligence (AI) algorithm based on the automated analysis of videos, making it possible to study children’s non-verbal communication in an anonymous and standardised manner. Easy to use, this technology correctly classified 80% of cases from short videos showing a child with or without autism under 5 playing with an adult. These results, to be discovered in the journal Scientific Reports, pave the way for a tool for the early detection of autistic disorder.
Autism Spectrum Disorder affects one in 54 children and is characterised by difficulties in social interactions, altered communication skills, and by the presence of repetitive behaviours and restricted interests. Consequently, children with autism often have difficulty following a standard school curriculum. “However, if the diagnosis is made before the age of 3, it is often possible to make up for these developmental delays. Specific behavioural interventions may indeed completely change their skills acquisition trajectories and allow them to integrate a mainstream school”, notes Marie Schaer, professor in the Department of Psychiatry at UNIGE Faculty of Medicine and senior author of the study. The challenge therefore resides in the early diagnosis, as autism remains too often diagnosed too late, after the age of 3.
Using automated video analysis
Autism is characterised by a non-verbal communication that differs from that of a typically- developing child. “It differs on several points, such as the difficulty in establishing eye-contact, smiling, pointing to objects or the way they are interested in what surrounds them”, explains Nada Kojovic, a researcher in Marie Schaer’s team and first author of the study. “This is why we designed an algorithm using artificial intelligence that analyses the children’s movements on video and identifies whether or not they are characteristic of autism spectrum disorder.”
Over a period of three years, the scientists, supported by the Swiss National Centre of Comptence in Research (NCCR) Synapsy and the Fondation Pole Autisme, developed this algorithm, which aims to classify videos based solely on the child’s movements when interacting with another person. To do this, they first used a technology named OpenPose, developed at Carnegie Mellon University. This computer vision technology extracts the skeletons of moving people as captured in a video and allows the analysis of gestures by removing all characteristics that could be discriminating (age, sex, setting, etc.), keeping only the relationships of skeletons in space and time. The UNIGE research team then developed their AI algorithm tailored for detecting autism and tested it on 68 typically developing children and 68 children with autism, all under 5 years. “We divided each group into two: the first 34 in each group ‘trained’ our AI to differentiate the non-verbal behaviour of children with and without autism. The others then helped us test its accuracy. We also carried out an assessment on 101 other children”, explains Thomas Maillart, a researcher at the Institute of Information Sciences and a faculty member at the Geneva School Economics and Management (GSEM) and of the University Centre for Informatics (CUI) at UNIGE.
A convincing result in 10 minutes
The AI sifted through videos of children playing freely with an adult. “There is no pre-established scenario. It is a matter of analysing the children’s non-verbal behaviour freely, while providing them with various objects that will make it possible to determine the presence or absence of an autistic disorder”, notes Nada Kojovic. The results show that the AI makes accurate autism classification in more than 80% of cases. “This is an excellent result, enthuses Marie Schaer. In 10 minutes, we can indeed obtain a first screening accessible to anyone, wherever they live. This would allow parents worried about their young children to obtain an initial automated assessment of the symptoms of autism. It is of course not perfect, but could constitute a first step to be confirmed by a consultation with a specialist.” Studies show that it often takes more than a year between the parents’ first concerns and their referral to a specialised consultation.
In addition, this automated video analysis offers complete anonymity. “This is precious, not only for the exchange of videos between specialists to refine a diagnosis, but also for training students”, continues the Geneva researcher.
It should be noted that this technology does not require any direct intervention on the child. “The installation of movement sensors is time-consuming and sensitive; it can also disturb the children and influence the results. Here, the computer vision-based analysis is non-invasive”, emphasises Nada Kojovic. Moreover, as it does not require any specific setup, the algorithm can be used to analyse videos recorded in the past, a clear advantage for research purposes.
The aim of the multidisciplinary team is now to make this AI available to everyone. “We now wish to develop an application that would allow such as analysis with only a 10 minutes video filmed with a smartphone”, concludes Thomas Maillart.
Kojovic N, Natraj S, Mohanty SP, Maillart T, Schaer M. Using 2D video-based pose estimation for automated prediction of autism spectrum disorders in young children. Sci Rep. 2021;11(1):15069. doi:10.1038/s41598-021-94378-z
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