Abstract

Event-related potentials (ERPs) activated by faces and gaze processing are found in individuals with autism spectrum disorder (ASD) in the early stages of their development and may serve as a putative biomarker to supplement behavioral diagnosis. We present a novel approach to the classification of visual ERPs collected from 6-month-old infants using intrinsic mode functions (IMFs) derived from empirical mode decomposition (EMD). Selected features were used as inputs to two machine learning methods (support vector machines and k-nearest neighbors (k-NN)) using nested cross validation. Different runs were executed for the modelling and classification of the participants in the control and high-risk (HR) groups and the classification of diagnosis outcome within the high-risk group: HR-ASD and HR-noASD. The highest accuracy in the classification of familial risk was 88.44%, achieved using a support vector machine (SVM). A maximum accuracy of 74.00% for classifying infants at risk who go on to develop ASD vs. those who do not was achieved through k-NN. IMF-based extracted features were highly effective in classifying infants by risk status, but less effective by diagnostic outcome. Advanced signal analysis of ERPs integrated with machine learning may be considered a first step toward the development of an early biomarker for ASD.

Highlights

  • Thirty-four EEG recordings were included in each iteration, 17 HR-Autism spectrum disorder (ASD)

  • Our findings suggest that empirical mode decomposition (EMD) derived from Event-related potentials (ERPs), coupled with machine learning techniques, could contribute to the development of identifying early brain indicators of ASD and typical development

  • Our approach differs from previous methods as it is based on features extracted from the EMD domain to decompose ERP

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Autism spectrum disorder (ASD) is a complex and heterogeneous condition that affects communication, social interaction, and behavior. Organization, approximately 1 in 160 children has a diagnosis of ASD. There appear to be genetic and familial risk factors that increase the likelihood of ASD, given that nearly

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