The use of Artificial Intelligence for Intervention and Assessment in Individuals with ASD
Journal:
arXiv
Published Date:
May 5, 2025
Abstract
This paper explores the use of Artificial Intelligence (AI) as a tool for
diagnosis, assessment, and intervention for individuals with Autism Spectrum
Disorder (ASD). It focuses particularly on AI's role in early diagnosis,
utilizing advanced machine learning techniques and data analysis. Recent
studies demonstrate that deep learning algorithms can identify behavioral
patterns through biometric data analysis, video-based interaction assessments,
and linguistic feature extraction, providing a more accurate and timely
diagnosis compared to traditional methods. Additionally, AI automates
diagnostic tools, reducing subjective biases and enabling the development of
personalized assessment protocols for ASD monitoring. At the same time, the
paper examines AI-powered intervention technologies, emphasizing educational
robots and adaptive communication tools. Social robotic assistants, such as NAO
and Kaspar, have been shown to enhance social skills in children by offering
structured, repetitive interactions that reinforce learning. Furthermore,
AI-driven Augmentative and Alternative Communication (AAC) systems allow
children with ASD to express themselves more effectively, while
machine-learning chatbots provide language development support through
personalized responses. The study presents research findings supporting the
effectiveness of these AI applications while addressing challenges such as
long-term evaluation and customization to individual needs. In conclusion, the
paper highlights the significance of AI as an innovative tool in ASD diagnosis
and intervention, advocating for further research to assess its long-term
impact.