Shahini et al., 2025 - Google Patents
A systematic review for artificial intelligence-driven assistive technologies to support children with neurodevelopmental disordersShahini et al., 2025
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- 9080280803080690418
- Author
- Shahini A
- Kamath A
- Sharma E
- Salvi M
- Tan R
- Siuly S
- Seoni S
- Ganguly R
- Devi A
- Deo R
- Barua P
- Acharya U
- Publication year
- Publication venue
- Information Fusion
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This systematic review examines AI-powered assistive technologies for children with neurodevelopmental disorders, with a focus on dyslexia (DYS), attention-deficit hyperactivity disorder (ADHD), and autism spectrum disorder (ASD). Our analysis of 84 studies from 2018 …
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