15. Ứng dụng trí tuệ nhân tạo trong sàng lọc sớm tự kỷ - tiến bộ và thách thức
DOI:
https://doi.org/10.61591/jslhu.21.451Keywords:
Sàng lọc trẻ tự kỷ, Sàng lọc dùng học máy, Sàng lọc dùng hình ảnh, Autism Screening, Screening Autism using imageAbstract
Early screening of autism spectrum disorder (ASD) remains a formidable challenge not only in Vietnam but also in many countries globally, particularly in nations lacking a robust healthcare infrastructure. In recent years, with the rapid advancement of information technology, numerous studies have emerged worldwide exploring the application of artificial intelligence (AI) to aid early screening processes. This report provides an overview of globally published research findings on the utilization of AI in early autism spectrum disorder screening. It offers a comparative perspective with the current screening methods employed in Vietnam, aiming to identify necessary steps for the future development of early screening capabilities utilizing technology in Vietnam.
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