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Title

Using Machine Learning Methods to Predict Autism Syndrome

Author

Hosam Alhakami, Fatimah Alajlani, Alshymaa Alghamdi, Abdullah Baz, Tahani Alsubait

Citation

Vol. 20  No. 4  pp. 221-228

Abstract

Autism Spectrum Disorder (ASD) is the most common developmental disability affecting people globally. Around 100,000 people had been affected globally from the 1980s to 2016. ASDs are characterized by poor social skills, poor intelligence, poor verbal and nonverbal communication skills. In some situations, these effects can be far-reaching making parents overly stressed. The financial risks brought by ASDs are a major source of stress for parents. Also, parents get stress resulting from stigmatization from people in society who has little or no information about ASDs. This results in psychological stress among parents who persistently do not look for other support. It becomes worse if parents lack any support systems to give them encouragement. However, parents can get support from focus groups and homebased psychological help with their mental health practitioners. This study has shown the far-reaching consequences of parental stress as it inflicts relationships and child and family care. Moreover, it suggested an adaptive learning system to help parents choose the best learning environment for their autistic children and multiple algorithms were chosen from machine learning to compare between them, and the best algorithm that can predict autism was identified.

Keywords

Data Analytics, Autism Spectrum Disorder, Machine Learning

URL

http://paper.ijcsns.org/07_book/202004/20200427.pdf