%0 Journal Article %@ 1438-8871 %I JMIR Publications %V 20 %N 4 %P e134 %T Risk Assessment for Parents Who Suspect Their Child Has Autism Spectrum Disorder: Machine Learning Approach %A Ben-Sasson,Ayelet %A Robins,Diana L %A Yom-Tov,Elad %+ Department of Occupational Therapy, Faculty of Social Welfare and Health Sciences, University of Haifa, Aba Khoushy Ave 199, Haifa, 3498838, Israel, 972 4828388, asasson@univ.haifa.ac.il %K autistic disorder %K early diagnosis %K screening %K parents %K child %K expression of concern %K technology %K machine learning %D 2018 %7 24.04.2018 %9 Original Paper %J J Med Internet Res %G English %X Background: Parents are likely to seek Web-based communities to verify their suspicions of autism spectrum disorder markers in their child. Automated tools support human decisions in many domains and could therefore potentially support concerned parents. Objective: The objective of this study was to test the feasibility of assessing autism spectrum disorder risk in parental concerns from Web-based sources, using automated text analysis tools and minimal standard questioning. Methods: Participants were 115 parents with concerns regarding their child’s social-communication development. Children were 16- to 30-months old, and 57.4% (66/115) had a family history of autism spectrum disorder. Parents reported their concerns online, and completed an autism spectrum disorder-specific screener, the Modified Checklist for Autism in Toddlers-Revised, with Follow-up (M-CHAT-R/F), and a broad developmental screener, the Ages and Stages Questionnaire (ASQ). An algorithm predicted autism spectrum disorder risk using a combination of the parent's text and a single screening question, selected by the algorithm to enhance prediction accuracy. Results: Screening measures identified 58% (67/115) to 88% (101/115) of children at risk for autism spectrum disorder. Children with a family history of autism spectrum disorder were 3 times more likely to show autism spectrum disorder risk on screening measures. The prediction of a child’s risk on the ASQ or M-CHAT-R was significantly more accurate when predicted from text combined with an M-CHAT-R question selected (automatically) than from the text alone. The frequently automatically selected M-CHAT-R questions that predicted risk were: following a point, make-believe play, and concern about deafness. Conclusions: The internet can be harnessed to prescreen for autism spectrum disorder using parental concerns by administering a few standardized screening questions to augment this process. %M 29691210 %R 10.2196/jmir.9496 %U http://www.jmir.org/2018/4/e134/ %U https://doi.org/10.2196/jmir.9496 %U http://www.ncbi.nlm.nih.gov/pubmed/29691210