Identification of autism spectrum disorder using electroencephalography and machine learning: a review.

Anamika Ranaut, Padmavati Khandnor, Trilok Chand
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Abstract

Autism Spectrum Disorder (ASD) is a neurodevelopmental condition characterized by communication barriers, societal disengagement, and monotonous actions. Traditional diagnostic methods for ASD rely on clinical observations and behavioural assessments, which are time -consuming. In recent years, researchers have focused mainly on the early diagnosis of ASD due to the unavailability of recognised causes and the lack of permanent curative solutions. Electroencephalography (EEG) research in ASD offers insight into the neural dynamics of affected individuals. This comprehensive review examines the unique integration of EEG, machine learning, and statistical analysis for ASD identification, highlighting the promise of an interdisciplinary approach for enhancing diagnostic precision. The comparative analysis of publicly available EEG datasets for ASD, along with local data acquisition methods and their technicalities, is presented in this paper. This study also compares preprocessing techniques, and feature extraction methods, followed by classification models and statistical analysis which are discussed in detail. In addition, it briefly touches upon comparisons with other modalities to contextualize the extensiveness of ASD research. Moreover, by outlining research gaps and future directions, this work aims to catalyse further exploration in the field, with the main goal of facilitating more efficient and effective early identification methods that may be helpful to the lives of ASD individuals. .

利用脑电图和机器学习识别自闭症谱系障碍:综述。
自闭症谱系障碍(ASD)是一种以沟通障碍、脱离社会和行为单调为特征的神经发育疾病。自闭症的传统诊断方法依赖于临床观察和行为评估,耗费大量时间。近年来,由于缺乏公认的病因和一劳永逸的治疗方案,研究人员主要关注 ASD 的早期诊断。对 ASD 的脑电图(EEG)研究有助于深入了解患者的神经动态。这篇综合综述探讨了脑电图、机器学习和统计分析在 ASD 鉴定中的独特整合,强调了跨学科方法在提高诊断精确度方面的前景。本文对公开可用的 ASD 脑电图数据集、本地数据采集方法及其技术性进行了比较分析。本研究还比较了预处理技术和特征提取方法,随后详细讨论了分类模型和统计分析。此外,本文还简要介绍了与其他模式的比较,以说明 ASD 研究的广泛性。此外,通过概述研究差距和未来方向,这项工作旨在促进该领域的进一步探索,其主要目标是促进更高效、更有效的早期识别方法,从而对 ASD 患者的生活有所帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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