Applying Machine Learning to Facilitate Autism Diagnostics: Pitfalls and Promises

被引:0
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作者
Daniel Bone
Matthew S. Goodwin
Matthew P. Black
Chi-Chun Lee
Kartik Audhkhasi
Shrikanth Narayanan
机构
[1] University of Southern California,Signal Analysis & Interpretation Laboratory (SAIL)
[2] Northeastern University,Department of Health Sciences
[3] University of Southern California,Information Sciences Institute
[4] National Tsing Hua University,Department of Electrical Engineering
关键词
Autism diagnostic observation schedule; Autism diagnostic interview; Machine learning; Signal processing; Autism; Diagnosis;
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摘要
Machine learning has immense potential to enhance diagnostic and intervention research in the behavioral sciences, and may be especially useful in investigations involving the highly prevalent and heterogeneous syndrome of autism spectrum disorder. However, use of machine learning in the absence of clinical domain expertise can be tenuous and lead to misinformed conclusions. To illustrate this concern, the current paper critically evaluates and attempts to reproduce results from two studies (Wall et al. in Transl Psychiatry 2(4):e100, 2012a; PloS One 7(8), 2012b) that claim to drastically reduce time to diagnose autism using machine learning. Our failure to generate comparable findings to those reported by Wall and colleagues using larger and more balanced data underscores several conceptual and methodological problems associated with these studies. We conclude with proposed best-practices when using machine learning in autism research, and highlight some especially promising areas for collaborative work at the intersection of computational and behavioral science.
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页码:1121 / 1136
页数:15
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