Systematic bibliometric and visualized analysis of research hotspots and trends in artificial intelligence in autism spectrum disorder

Artificial intelligence (AI) has been the subject of studies in autism spectrum disorder (ASD) and may affect its identification, diagnosis, intervention, and other medical practices in the future. Although previous studies have used bibliometric techniques to analyze and investigate AI, there has b...

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Published inFrontiers in neuroinformatics Vol. 17; p. 1310400
Main Authors Jia, Qianfang, Wang, Xiaofang, Zhou, Rongyi, Ma, Bingxiang, Fei, Fangqin, Han, Hui
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Research Foundation 06.12.2023
Frontiers Media S.A
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ISSN1662-5196
1662-5196
DOI10.3389/fninf.2023.1310400

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Summary:Artificial intelligence (AI) has been the subject of studies in autism spectrum disorder (ASD) and may affect its identification, diagnosis, intervention, and other medical practices in the future. Although previous studies have used bibliometric techniques to analyze and investigate AI, there has been little research on the adoption of AI in ASD. This study aimed to explore the broad applications and research frontiers of AI used in ASD. Citation data were retrieved from the Web of Science Core Collection (WoSCC) database to assess the extent to which AI is used in ASD. CiteSpace.5.8. R3 and VOSviewer, two online tools for literature metrology analysis, were used to analyze the data. A total of 776 publications from 291 countries and regions were analyzed; of these, 256 publications were from the United States and 173 publications were from China, and England had the largest centrality of 0.33; Stanford University had the highest H-index of 17; and the largest cluster label of co-cited references was machine learning. In addition, keywords with a high number of occurrences in this field were autism spectrum disorder (295), children (255), classification (156) and diagnosis (77). The burst keywords from 2021 to 2023 were infants and feature selection, and from 2022 to 2023, the burst keyword was corpus callosum. This research provides a systematic analysis of the literature concerning AI used in ASD, presenting an overall demonstration in this field. In this area, the United States and China have the largest number of publications, England has the greatest influence, and Stanford University is the most influential. In addition, the research on AI used in ASD mostly focuses on classification and diagnosis, and "infants, feature selection, and corpus callosum are at the forefront, providing directions for future research. However, the use of AI technologies to identify ASD will require further research.
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Reviewed by: Dulani Meedeniya, University of Moratuwa, Sri Lanka; Xiaojin Li, University of Texas Health Science Center at Houston, United States; Xinghe Zhang, Yunnan University of Traditional Chinese Medicine, China
These authors have contributed equally to this work and share first authorship
Edited by: Mahmoud Elbattah, University of the West of England, United Kingdom
ISSN:1662-5196
1662-5196
DOI:10.3389/fninf.2023.1310400