Applications of Supervised Machine Learning in Autism Spectrum Disorder Research: a Review

被引:0
|
作者
Kayleigh K. Hyde
Marlena N. Novack
Nicholas LaHaye
Chelsea Parlett-Pelleriti
Raymond Anden
Dennis R. Dixon
Erik Linstead
机构
[1] Chapman University,Machine Learning and Assistive Technology Lab, Schmid College of Science and Technology
[2] Center for Autism and Related Disorders,undefined
关键词
Autism spectrum disorder; Supervised machine learning; Data mining;
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学科分类号
摘要
Autism spectrum disorder (ASD) research has yet to leverage “big data” on the same scale as other fields; however, advancements in easy, affordable data collection and analysis may soon make this a reality. Indeed, there has been a notable increase in research literature evaluating the effectiveness of machine learning for diagnosing ASD, exploring its genetic underpinnings, and designing effective interventions. This paper provides a comprehensive review of 45 papers utilizing supervised machine learning in ASD, including algorithms for classification and text analysis. The goal of the paper is to identify and describe supervised machine learning trends in ASD literature as well as inform and guide researchers interested in expanding the body of clinically, computationally, and statistically sound approaches for mining ASD data.
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页码:128 / 146
页数:18
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