The potential of accelerating early detection of autism through content analysis of YouTube videos

Autism is on the rise, with 1 in 88 children receiving a diagnosis in the United States, yet the process for diagnosis remains cumbersome and time consuming. Research has shown that home videos of children can help increase the accuracy of diagnosis. However the use of videos in the diagnostic proce...

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Published in:PloS one Vol. 9; no. 4; p. e93533
Main Authors: Fusaro, Vincent A, Daniels, Jena, Duda, Marlena, DeLuca, Todd F, D'Angelo, Olivia, Tamburello, Jenna, Maniscalco, James, Wall, Dennis P
Format: Journal Article
Language:English
Published: United States Public Library of Science 01-04-2014
Public Library of Science (PLoS)
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Summary:Autism is on the rise, with 1 in 88 children receiving a diagnosis in the United States, yet the process for diagnosis remains cumbersome and time consuming. Research has shown that home videos of children can help increase the accuracy of diagnosis. However the use of videos in the diagnostic process is uncommon. In the present study, we assessed the feasibility of applying a gold-standard diagnostic instrument to brief and unstructured home videos and tested whether video analysis can enable more rapid detection of the core features of autism outside of clinical environments. We collected 100 public videos from YouTube of children ages 1-15 with either a self-reported diagnosis of an ASD (N = 45) or not (N = 55). Four non-clinical raters independently scored all videos using one of the most widely adopted tools for behavioral diagnosis of autism, the Autism Diagnostic Observation Schedule-Generic (ADOS). The classification accuracy was 96.8%, with 94.1% sensitivity and 100% specificity, the inter-rater correlation for the behavioral domains on the ADOS was 0.88, and the diagnoses matched a trained clinician in all but 3 of 22 randomly selected video cases. Despite the diversity of videos and non-clinical raters, our results indicate that it is possible to achieve high classification accuracy, sensitivity, and specificity as well as clinically acceptable inter-rater reliability with nonclinical personnel. Our results also demonstrate the potential for video-based detection of autism in short, unstructured home videos and further suggests that at least a percentage of the effort associated with detection and monitoring of autism may be mobilized and moved outside of traditional clinical environments.
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Competing Interests: The authors have declared that no competing interests exist.
Conceived and designed the experiments: DPW. Performed the experiments: DPW. Analyzed the data: DPW VAF JD MD TFD OD JT JM. Wrote the paper: DPW VAF. Participated in experiment design: VAF.
ISSN:1932-6203
1932-6203
DOI:10.1371/journal.pone.0093533