Breaking Barriers—The Intersection of AI and Assistive Technology in Autism Care: A Narrative Review
Abstract
:1. Introduction
1.1. Autism Diagnosis and Therapy
1.2. Beyond Communication: The Versatility of Assistive Technology in Autism Care
1.3. AI’s Potential in Autism Assistive Technologies
1.4. Potential Emerging Questions
- How can AI precisely assess individual needs for individuals with autism?
- In what ways can AI enable the real-time adaptation of assistive technologies?
- How does machine learning enhance the adaptability of assistive technologies over time?
- To what extent can AI customize interfaces for user preferences in assistive technologies?
- How can AI create personalized learning and communication programs for individuals with autism? What evidence exists regarding the impact of AI-driven personalization on the quality of life for individuals with autism?
- What ethical considerations are crucial when implementing AI in assistive technologies for individuals with autism?
- How can AI contribute to a more user-centered design approach in developing assistive technologies?
1.5. Purpose of the Study
2. Methods
Algorithm Used in the Literature Overview
- Set the search query to “defined search query”.
- Conduct a targeted search on PubMed and Scopus using the search query from step 1.
- Select studies published in peer-reviewed journals that focus on the field.
- For each study, evaluate the following parameters:
- N1: Is the rationale for the study in the introduction clear?
- N2: Is the design of the work appropriate?
- N3: Are the methods described clearly?
- N4: Are the results presented clearly?
- N5: Are the conclusions based on and justified by the results?
- N6: Did the authors disclose all the conflicts of interest?
- Assign a graded score to parameters N1–N5, ranging from 1 (minimum) to 5 (maximum).
- For parameter N6, assign a binary assessment of “Yes” or “No” to indicate if the authors disclosed all the conflicts of interest.
- Preselect studies that meet the following criteria:
- Parameter N6 must be “Yes”.
- Parameters N1–N5 must have a score greater than 3.
- Include the preselected studies in the overview.
3. Results
3.1. In-Depth Analysis of the Detected Reviews: A Comprehensive Overview
3.1.1. Analysis in Details
3.1.2. Key Findings
3.2. In-Depth Analysis of the Detected Articles: A Comprehensive Overview
3.2.1. Analysis in Details
3.2.2. Key Findings
4. Discussion
4.1. Numerical Trends in Assistive Technologies for Autism
4.2. Interpretation of Results: Findings, Problems
- If we focus on the autism diagnosis we can affirm that among the important activities in diagnosis we find [49,50]: -Observation and Interviews: -Physical Exam and Medical History: -Developmental Assessment and Screening: -Psychological and Psychomotor Evaluation: -Assessment of Social Behavior and Social Interactions: -Language and Communication Assessment: -Sensory Assessment-Functional Behavior Assessment. -Genetic, metabolic, biochemical, immunological, neurobiologal assessments-Environmental factors. -Medical Imaging assessment. There are various therapies and interventions used in the treatment of ASD. These therapies aim to address the unique challenges and needs of individuals with autism. Therapies may include medications.
- If we focus on the autism therapy we can affirm that some of the most commonly used non medication therapies include [51]: -Behavioral Therapies: -Communication and Speech Therapies. -Speech-Language Therapy-Occupational Therapy. -Social Skills Training-Sensory Integration Therapy. -Educational Interventions-Medication. -Alternative and Complementary Therapies. It’s important to note that the choice of therapy or intervention depends on the individual’s specific needs, strengths, and challenges [52,53]. A comprehensive and individualized treatment plan is often the most effective approach, and it should be developed in consultation with healthcare professionals, including speech therapists, occupational therapists, and behavioral specialists, to provide the best possible support for individuals with autism. There are also available programs that provide training and support for parents and caregivers to help them better understand and manage the challenges associated with autism.
4.3. Contextualizing Our Study: A Comparative Analysis with Diverse AI Applications in Autism Interventions
4.4. Reflections on the Limitations
4.5. Reflection on the Broader Implications
5. Brief Summary and Conclusions
5.1. Brief Summary
5.2. Conclusions
Author Contributions
Funding
Conflicts of Interest
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Review Study | Key Points on the Intersection of AI and ATs in Autism |
---|---|
Muthu et al. [26] | Integration of AI in ATs for enhanced rehabilitation and independence. |
Muthu et al. [26] | AI-driven solutions addressing physical impairments, mobility, education, and more. |
Muthu et al. [26] | Insights into AI’s role in expanding research areas related to assistive technology. |
Datta Barua et al. [27] | AI-assisted tools for improving learning and social interaction in neurodevelopmental disorders. |
Datta Barua et al. [27] | Evidence supporting the effectiveness of AI tools in providing personalized education. |
Alabdulkareem et al. [28] | Utilization of interactive robots with AI for autism therapy. |
Alabdulkareem et al. [28] | Growth in research due to advancements in AI techniques and machine learning. |
Ur Rehman et al. [29] | Identification of highly-rated mobile apps for individuals with ASD utilizing AI technologies. |
Ur Rehman et al. [29] | Recommendations for enhancing existing applications with AI for personalized support. |
Di Pietro et al. [30] | Exploration of AI-driven computer-assisted and robot-assisted therapies for children with autism. |
Di Pietro et al. [30] | Focus on identifying AI platforms, professions involved, and outcomes in social skills teaching. |
Den Brok et al. [31] | AI-powered self-controlled technologies aiding individuals with autism and intellectual disability. |
Den Brok et al. [31] | Use of AI to facilitate the learning of daily living skills and cognitive concepts. |
Billard et al. [32] | Application of AI in humanoid robots for assisting low-functioning children with autism. |
Billard et al. [32] | AI’s role in assessing imitation ability and teaching coordinated behaviors. |
Article Study | Key Points on the Intersection of AI and ATs in Autism |
---|---|
Silvera Tawill et al. [33] | AI-driven socially-assistive robots for teaching support |
Deng et al. [34] | AI-powered sensory management recommendation system for children with ASD. |
Wan et al. [35] | AI-based system for improving emotion recognition in children with ASD. |
Kumar et al. [36] | Automation of ASD diagnosis using machine learning techniques. |
Jain et al. [37] | AI-driven models for recognizing and responding to user engagement in robot interventions. |
Keshav et al. [38] | AI-driven models for recognizing and responding to user engagement in robot interventions. |
Vahabzadeh et al. [39] | AI-driven smartglasses intervention for improving socio-emotional behaviors in students with ASD. |
Cooper et al. [40] | AAC software program with an embedded artificial conversational agent for children with autism. |
Huijnen et al. [41] | Roles, strengths, and challenges of AI-equipped robots in interventions for children with ASD. |
Keshav et al. [42] | Tolerability and usability of AI-driven smartglasses for individuals with ASD. |
Linstead et al. [43] | Usefulness in perspective of AI in the treatment dosage and in providing insights into its varied effects across different domains. |
Desideri et al. [44] | Exploration of humanoid robots’ potential to enhance educational interventions for children with ASD. |
Huijnen et al. [45] | Practical implementation of robots (implementing AI based algorithms), particularly robot KASPAR, in education and therapy interventions for children with ASD. |
Bekele et al. [46] | Pilot study on an AI-driven robot-mediated system administering joint attention prompts to children with ASD with a demonstration of AI’s potential to enhance engagement and learning in educational activities for children with ASD. |
Williams et al. [47] | Highlighting AI-like systems’ (with speech synthesizer) role in improving speech recognition and training for individuals with ASD. |
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Iannone, A.; Giansanti, D. Breaking Barriers—The Intersection of AI and Assistive Technology in Autism Care: A Narrative Review. J. Pers. Med. 2024, 14, 41. https://doi.org/10.3390/jpm14010041
Iannone A, Giansanti D. Breaking Barriers—The Intersection of AI and Assistive Technology in Autism Care: A Narrative Review. Journal of Personalized Medicine. 2024; 14(1):41. https://doi.org/10.3390/jpm14010041
Chicago/Turabian StyleIannone, Antonio, and Daniele Giansanti. 2024. "Breaking Barriers—The Intersection of AI and Assistive Technology in Autism Care: A Narrative Review" Journal of Personalized Medicine 14, no. 1: 41. https://doi.org/10.3390/jpm14010041