NCLGMLMar 2, 2020

Explainable and Scalable Machine-Learning Algorithms for Detection of Autism Spectrum Disorder using fMRI Data

arXiv:2003.01541v126 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of objective ASD diagnosis for clinicians and neuroscientists by providing an interpretable and scalable method, though it appears incremental as it combines existing techniques.

The paper tackles the challenge of diagnosing Autism Spectrum Disorder (ASD) by developing a deep-learning model called ASD-DiagNet that classifies ASD brain scans from neurotypical scans with consistently high accuracy, using an integrated approach of traditional machine-learning and deep-learning techniques to isolate ASD biomarkers from fMRI data.

Diagnosing Autism Spectrum Disorder (ASD) is a challenging problem, and is based purely on behavioral descriptions of symptomology (DSM-5/ICD-10), and requires informants to observe children with disorder across different settings (e.g. home, school). Numerous limitations (e.g., informant discrepancies, lack of adherence to assessment guidelines, informant biases) to current diagnostic practices have the potential to result in over-, under-, or misdiagnosis of the disorder. Advances in neuroimaging technologies are providing a critical step towards a more objective assessment of the disorder. Prior research provides strong evidence that structural and functional magnetic resonance imaging (MRI) data collected from individuals with ASD exhibit distinguishing characteristics that differ in local and global spatial, and temporal neural-patterns of the brain. Our proposed deep-learning model ASD-DiagNet exhibits consistently high accuracy for classification of ASD brain scans from neurotypical scans. We have for the first time integrated traditional machine-learning and deep-learning techniques that allows us to isolate ASD biomarkers from MRI data sets. Our method, called Auto-ASD-Network, uses a combination of deep-learning and Support Vector Machines (SVM) to classify ASD scans from neurotypical scans. Such interpretable models would help explain the decisions made by deep-learning techniques leading to knowledge discovery for neuroscientists, and transparent analysis for clinicians.

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