Volume 12, Issue 3 (2024)                   Health Educ Health Promot 2024, 12(3): 513-520 | Back to browse issues page


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Mousavi Baigi S, Dahmardeh Kemmak F, Sarbaz M, Norouzi Aval R, Kimiafar K. Application of Artificial Intelligence in Occupational Therapy. Health Educ Health Promot 2024; 12 (3) :513-520
URL: http://hehp.modares.ac.ir/article-5-76014-en.html
1- “Student Research Committee” and “Department of Health Information Technology, School of Paramedical and Rehabilitation Sciences”, Mashhad University of Medical Sciences, Mashhad, Iran
2- Department of Health Information Technology, School of Paramedical and Rehabilitation Sciences, Mashhad University of Medical Sciences, Mashhad, Iran
Abstract:   (1816 Views)
Aims: New developments in artificial intelligence offer promising prospects for transforming therapeutic approaches and enhancing outcomes for individuals with a range of abilities. Therefore, the aim of this systematic review was to investigate the applications of artificial intelligence in occupational therapy.
Information & Methods: In this systematic review, adhering to the PRISMA guidelines, we searched English-language studies regarding the use of artificial intelligence in occupational therapy, on February 18, 2024, using the databases PubMed, Embase, Scopus, and Web of Science.
Findings: Six eligible studies were included in this review. The artificial intelligence approaches used in these studies included artificial neural networks, multi-core learning models, deep learning models, machine learning models, and classification and regression trees. All the studies reported promising results regarding the use of artificial intelligence in evaluating and predicting return to work, alleviating symptoms, recovering social function, reducing disease recurrence, improving re-employment rates, and enhancing the overall health level of patients.
Conclusion: One of the most common issues with artificial intelligence models is their low accuracy and the potential for errors.
Full-Text [PDF 630 kb]   (3651 Downloads) |   |   Full-Text (HTML)  (998 Views)  
Article Type: Systematic Review | Subject: Technology of Health Education
Received: 2024/07/9 | Accepted: 2024/10/20 | Published: 2024/10/30
* Corresponding Author Address: Department of Health Information Technology, School of Paramedical and Rehabilitation Sciences, Mashhad University of Medical Sciences (MUMS), Pardis Daneshgah, Azadi Square, Mashhad, Iran. Postal Code: 9177948964 (kimiafarkh@mums.ac.ir)

References
1. Song C, Sha GE, Yao W, Yang L. The influence of occupational therapy on college students' home physical exercise behavior and mental health status under the artificial intelligence technology. Occup Ther Int. 2022;2022:8074658. [Link] [DOI:10.1155/2022/8074658]
2. Lytras MD, Ruan D, Tennyson RD, De Pablos PO, Peñalvo FJG, Rusu L, editors. Information systems, E-learning, and knowledge management research. Proceedings of the 4th World Summit on the Knowledge Society. Mykonos: Springer; 2013. [Link] [DOI:10.1007/978-3-642-35879-1]
3. Sumner J, Lim HW, Chong LS, Bundele A, Mukhopadhyay A, Kayambu G. Artificial intelligence in physical rehabilitation: A systematic review. Artif Intell Med. 2023;146:102693. [Link] [DOI:10.1016/j.artmed.2023.102693]
4. Mousavi Baigi SF, Raei Mehneh M, Sarbaz M, Norouzi Aval R, Kimiafar K. Telerehabilitation in response to critical coronavirus: A systematic review based on current evidence. J Isfahan Med Sch. 2022;40(678):498-508. [Persian] [Link]
5. Tanaka S, Kuge RI, Nakano M, Inukai S, Hamamoto M, Terasawa M, et al. Outcomes of an interdisciplinary return to work intervention including occupational therapy for mood and adjustment disorders: A single-arm clinical trial. Work. 2023;74(2):515-30. [Link] [DOI:10.3233/WOR-211144]
6. Chong JC, Tan CHN, Chen DZ. Teleophthalmology and its evolving role in a COVID-19 pandemic: A scoping. Ann Acad Med Singap. 2021;50(1):61-76. [Link] [DOI:10.47102/annals-acadmedsg.2020459]
7. Baigi SFM, Mousavi AS, Kimiafar K, Sarbaz M. Evaluating the cost effectiveness of tele-rehabilitation: A systematic review of randomized clinical trials. Front Health Inform. 2022;11(1):118. [Link] [DOI:10.30699/fhi.v11i1.368]
8. Liu L. Occupational therapy in the fourth industrial revolution. Can J Occup Ther. 2018;85(4):272-83. [Link] [DOI:10.1177/0008417418815179]
9. Sardari S, Sharifzadeh S, Daneshkhah A, Nakisa B, Loke SW, Palade V, et al. Artificial intelligence for skeleton-based physical rehabilitation action evaluation: A systematic review. Comput Biol Med. 2023;158:106835. [Link] [DOI:10.1016/j.compbiomed.2023.106835]
10. Han ER, Yeo S, Kim MJ, Lee YH, Park KH, Roh H. Medical education trends for future physicians in the era of advanced technology and artificial intelligence: An integrative review. BMC Med Educ. 2019;19(1):460. [Link] [DOI:10.1186/s12909-019-1891-5]
11. Pozzi C, Cavalli S, Leorin C, Cauli O, Morandi A. The present and the future of occupational therapy. In: Occupational therapy for older people. Cham: Springer; 2020. p. 145-67. [Link] [DOI:10.1007/978-3-030-35731-3_8]
12. Seo W, Jun J, Chun M, Jeong H, Na S, Cho W, et al. Toward an AI-assisted assessment tool to support online art therapy practices: A pilot study. Proceedings of the 20th European Conference on Computer-Supported Cooperative Work. Coimbra: European Society for Socially Embedded Technologies (EUSSET); 2022. [Link]
13. Villamil V, Deloria R, Wolbring G. Artificial intelligence and machine learning: What is the role of social workers, occupational therapists, audiologists, nurses and speech language pathologists according to academic literature and Canadian newspaper coverage?. Proceedings of the 5th Workshop on ICTs for Improving Patients Rehabilitation Research Techniques. Popayan: REHAB'19; 2019. [Link] [DOI:10.1145/3364138.3364158]
14. Aulisio MC, Han DY, Glueck AC. Virtual reality gaming as a neurorehabilitation tool for brain injuries in adults: A systematic review. Brain Inj. 2020;34(10):1322-30. [Link] [DOI:10.1080/02699052.2020.1802779]
15. Ghaddaripouri K, Baigi SFM, Noori N, Habibi MRM. Investigating the effect of virtual reality on reducing the anxiety in children: A systematic review. Front Health Inform. 2022;11(1):114. [Link] [DOI:10.30699/fhi.v11i1.373]
16. Liu L, Mihailidis A. The changing landscape of occupational therapy intervention and research in an age of ubiquitous technologies. OTJR. 2019;39(2):79-80. [Link] [DOI:10.1177/1539449219835370]
17. Liu C, Lu J, Yang H, Guo K. Current state of robotics in hand rehabilitation after stroke: A systematic review. Appl Sci. 2022;12(9):4540. [Link] [DOI:10.3390/app12094540]
18. Baigi SFM, Sarbaz M, Sobhani-Rad D, Mousavi AS, Kimiafar K. Rehabilitation registration systems: Current recommendations and challenges. Front Health Inform. 2022;11(1):124. [Link] [DOI:10.30699/fhi.v11i1.388]
19. Sarbaz M, Monazah FM, Eslami S, Kimiafar K, Baigi SFM. Effect of mobile health interventions for side effects management in patients undergoing chemotherapy: A systematic review. Health Policy Technol. 2022;11(4):100680. [Link] [DOI:10.1016/j.hlpt.2022.100680]
20. Mousavi Baigi SF, Sarbaz M, Ghaddaripouri K, Ghaddaripouri M, Mousavi AS, Kimiafar K. Attitudes, knowledge, and skills towards artificial intelligence among healthcare students: A systematic review. Health Sci Rep. 2023;6(3):e1138. [Link] [DOI:10.1002/hsr2.1138]
21. Kimiafar K, Sarbaz M, Tabatabaei SM, Ghaddaripouri K, Mousavi AS, Mehneh MR, et al. Artificial intelligence literacy among healthcare professionals and students: A systematic review. Front Health Inform. 2023;12:168. [Link] [DOI:10.30699/fhi.v12i0.524]
22. Ghaddaripouri K, Ghaddaripouri M, Mousavi AS, Mousavi Baigi SF, Rezaei Sarsari M, Dahmardeh Kemmak F, et al. The effect of machine learning algorithms in the prediction, and diagnosis of meningitis: A systematic review. Health Sci Rep. 2024;7(2):e1893. [Link] [DOI:10.1002/hsr2.1893]
23. Liberati A, Altman DG, Tetzlaff J, Mulrow C, Gøtzsche PC, Ioannidis JP, et al. The PRISMA statement for reporting systematic reviews and meta-analyses of studies that evaluate health care interventions: Explanation and elaboration. BMJ. 2009;339:b2700. [Link] [DOI:10.1136/bmj.b2700]
24. Jin H, Pang Y, Du X, Shi L. Artificial intelligence-based prediction of individual differences in psychological occupational therapy intervention guided by the realization of occupational values. Occup Ther Int. 2022;20222:735824. [Link] [DOI:10.1155/2022/2735824]
25. Yan Y, Fan H, Li Y, Hoeglinger E, Wiesinger A, Barr A, et al. Applying wearable technology and a deep learning model to predict occupational physical activities. Appl Sci. 2021;11(20):9636. [Link] [DOI:10.3390/app11209636]
26. Jia Yuan C, Varathan KD, Suhaimi A, Wan Ling L. Predicting return to work after cardiac rehabilitation using machine learning models. J Rehabil Med. 2023;55:jrm00348. [Link] [DOI:10.2340/jrm.v54.2432]
27. Iosa M, Capodaglio E, Pelà S, Persechino B, Morone G, Antonucci G, et al. Artificial neural network analyzing wearable device gait data for identifying patients with stroke unable to return to work. Front Neurol. 2021;12:650542. [Link] [DOI:10.3389/fneur.2021.650542]
28. Yeh YL, Hou TH, Chang WY. An intelligent model for the classification of children's occupational therapy problems. Expert Syst Appl. 2012;39(5):5233-42. [Link] [DOI:10.1016/j.eswa.2011.11.016]
29. CAOT ACE. Occupational therapy, artificial intelligence and technology. Ottawa: Canadian Association of Occupational Therapists; 2024. [Link]
30. Medenica V, Ivanović L, Ristić I, Čolić G. Artificial intelligence in occupational therapy and special education and rehabilitation. Proceedings of the Scientific Conference SANUS2023. Prijedor: BiH; 2023. [Link]
31. Crabtree JL, Royeen CB, Mu K. The effects of learning through discussion in a course in occupational therapy: A search for deep learning. J Allied Health. 2001;30(4):243-7. [Link]
32. Huang CY, Yu YT, Chen KL, Lin GH, Hsieh CL. Using artificial intelligence to identify the associations of children's performance of coloring, origami, and copying activities with visual-motor integration. Am J Occup Ther. 2023;77(5):7705205080. [Link] [DOI:10.5014/ajot.2023.050210]
33. Tagliaferri SD, Angelova M, Zhao X, Owen PJ, Miller CT, Wilkin T, et al. Artificial intelligence to improve back pain outcomes and lessons learnt from clinical classification approaches: Three systematic reviews. NPJ Digit Med. 2020;3(1):93. [Link] [DOI:10.1038/s41746-020-0303-x]
34. Bushehri SF, Zarchi MS. An expert model for self-care problems classification using probabilistic neural network and feature selection approach. Appl Soft Comput. 2019;82:105545. [Link] [DOI:10.1016/j.asoc.2019.105545]
35. Jalali S, Bahador F, Ameri F, Dastani M, Hajipourtalebi A, Sabahi A. A systematic review on the use of E-health for COVID-19 pandemic management. Health Educ Health Promot. 2023;11(2):245-53. [Link]
36. Karami H, Soltanali S, Tayyebi S. Applying artificial neural network in prediction behavior of alkylation of m-cresol with isopropanol process and yield optimization by bee colony algorithm. J Appl Res Chem Polym Eng. 2021;5(4):69-78. [Persian] [Link]

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