Facilitators and Barriers of Artificial Intelligence Applications in Rehabilitation: A Mixed-Method Approach
Abstract
:1. Introduction
2. Materials and Methods
2.1. Participants
2.2. Materials
2.2.1. Validation of the Questionnaire
2.2.2. Questionnaire Form
- -
- In your opinion, which patients would benefit more from AI applications and why (musculoskeletal, geriatrics, neurologically impaired, etc.)? Please explain your response.
- -
- In your opinion, what are the major challenges or barriers that may limit AI applications?
2.3. Study Design
2.4. Procedure
2.5. Statistical Analysis
3. Results
3.1. Descriptive Statistics
3.2. Factors Associated with AI Knowledge
3.2.1. Simple Binary Logistic Regression
3.2.2. Multivariate Logistic Regression Model
3.3. Factors Associated with AI Advantages
3.3.1. Reduce Professional Workload
3.3.2. Ease of Care
3.3.3. Diseases Prevention
3.4. Factors Associated with AI Uses
3.4.1. Predicting Diseases
3.4.2. Goal Setting
3.4.3. Assistive Technologies
3.4.4. Diagnostic Tool
3.5. Factors Associated with AI Impacts
3.5.1. Reducing Human Resource
3.5.2. Increase Productivity
3.5.3. Improve Patient Quality of Life
3.6. Qualitative Data Analysis
3.6.1. The First Qualitative Question Analysis
- Theme 1. All patients based on the impairments.
“Geriatric, neurologically impaired because it can assist these kinds of cases in their daily activities and predict their response.”—Participant 163.
“Musculoskeletal, as it will be easier for the patient to understand and apply.”—Participant 179.
- Theme 2. Selected patients based on AI advantages.
“I think musculoskeletal and neuro patients would benefit more from AI compared to other areas because, by the application of AI, rehabilitation can be performed more precisely and accurately with a constant rhythm throughout the session when compared to manual techniques.”—Participant 126.
“Geriatrics and neurological impaired because they will be guided by AI to do things correctly even in the absence of a Physiotherapist.”—Participant 14.
- Theme 3. Selected patients based on AI uses.
“Neurological impairments as most therapies targeting neurological disorders are feedback based… so the more accurate feedback the more accurate outcome.”—Participant 30.
“Definitely it will support clinicians’ effort to treat a neurologically impaired patient like visual or audible feedback is necessary to retrain the least amount of response from the patient.”—Participant 192.
- Theme 4. Selected patients based on AI impacts.
“Mostly all of the above mentioned will be benefited as would help them to work more efficiently, effectively and consistent way.”—Participant 189.
“It can help to those staying in remote areas where availability of medical facilities is less. As well it can help even a Physiotherapist to track record and keep data for analysis of progress.”
- Theme 5. Selected patients based on AI ethical and trust issues.
“As I haven’t experienced the applications of AI in all sectors, I am not sure. Still, I think musculoskeletal patients may be benefitted as in Neurological cases are more complicated the judgement of therapist matters more.”—Participant 96.
3.6.2. The Second Qualitative Question Analysis
- Theme 1. Inability of AI to manage all patients’ health conditions or impairments.
- Theme 2. Cost and available resources of AI in clinical settings.
- Theme 3. Compliance and adoption of AI among patients and therapists.
- Theme 4. Lack of knowledge and proficiency.
“Cost will obviously go towards higher side. And other limitation will be from developer side as they need to have the knowledge about medical profession, so in turn they will require to couple up with the medical professionals as whole team and need to careful design the script for its successful functionality and will need to set a perfect paradigm for its use.”—Participant 54.
- Theme 5. Technology trust in clinical settings.
- Theme 6. Ethical implications of AI applications.
- Theme 7. Patients’ perception and understanding of AI.
4. Discussion
Study Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Questions of the Survey Questionnaire with the Option Types
Questionnaire Questions | Option Types |
---|---|
1-What is your age? | Short answer (numerical) |
2-What is your gender? | Multiple choice |
3-Are you a physical therapy professional? | Multiple choice |
4-In which country do you work? | Multiple choice |
5-What is your employment sector? | Multiple choice |
6-What is your subspecialty? | Multiple choice |
7-How many years of experience do you have in the Physical Therapy field? | Multiple choice |
8-What is your highest educational qualification? | Multiple choice |
Knowledge | |
9-Have you ever heard about Artificial Intelligence (AI)? | Multiple choice |
10-Have you ever heard about any AI technologies used in healthcare? | Multiple choice |
11-Have you ever heard about any AI technologies used in rehabilitation? | Multiple choice |
12-If you have prior information about AI, can you specify from where you have received it? Select all that apply. | Multiple choice |
13-If you came across any AI applications at work, how many were they? | Multiple choice |
Advantages | |
14-The following questions are asking about your opinion regarding the ADVANTAGES of Artificial Intelligence (AI) in rehabilitation: | 5-point Likert scale |
| |
Uses | |
15-Please indicate your level of agreement or disagreement regarding each of the following USES of AI in rehabilitation: | 5-point Likert scale |
| |
Impact | |
16-The following questions are asking about your opinion regarding the IMPACTS of Artificial Intelligence (AI) on the FUTURE of rehabilitation: | 5-point Likert scale |
| |
17-Which of the following would be your primary concern regarding the implementation of AI in healthcare? | |
18-If Clinician’s judgment and AI’s judgment clashed, which opinion should be trusted? | |
19-Do you think AI applications should be taught in rehabilitation curriculums? | Multiple choice |
20-In your opinion, which patients would benefit more from AI applications and why? (musculoskeletal, geriatrics, neurologically impaired etc.) Please explain your response | Open-ended |
21-In your opinion, what are the major challenges or barriers that may limit AI application in rehabilitation and why? (cost, patient’s perceptions etc.) Please explain your response | Open-ended |
22-Would you be willing to receive more information on AI? | Multiple choice |
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Variable | ± SD | (min–max) | |
---|---|---|---|
Age (Years) | 35.20 ± 6.97 | 35.50 (22–56) | |
Frequency (n) | Percentage (%) | ||
Gender | Male | 143 | (59.6) |
Female | 93 | (38.8) | |
Work setting | Academic | 88 | (36.7) |
Non-academic | 148 | (61.7) | |
Educational qualification | Undergraduate | 69 | (28.7) |
Postgraduate | 167 | (69.6) | |
Subspecialty | Cardiopulmonary | 18 | (7.5) |
General | 43 | (17.9) | |
Geriatrics | 2 | (0.8) | |
Musculoskeletal | 67 | (27.9) | |
Neurorehabilitation | 89 | (37.1) | |
Pediatrics rehabilitation | 12 | (5.0) | |
Workplace AI applications | 0 | 152 | (63.3) |
1 | 35 | (14.6) | |
2 to 4 | 37 | (15.4) | |
More than 4 | 12 | (5.0) | |
AI ethical implications | Technology trust | 92 | (40.1) |
Empathy | 83 | (35.2) | |
Users’ proficiency | 61 | (25.8) | |
AI curriculum implementation | Yes | 186 | (78.8) |
No | 50 | (21.2) | |
AI knowledge | General | 211 | (89.4) |
Healthcare | 150 | (75.4) | |
Rehabilitation | 178 | (63.6) |
Variable | B | 95% CI for B | SE B | β | p Value | ||
---|---|---|---|---|---|---|---|
LL | UL | ||||||
Knowledge about AI in rehabilitation | |||||||
Gender | Constant | 0.50 | 0.21 | ||||
Male | 0.08 | 0.63 | 1.87 | 0.28 | 1.09 | 0.76 | |
Female | Reference | ||||||
Employment Sector | Constant | 0.36 | 0.17 | ||||
Non academic | 0.57 | 1.01 | 3.12 | 0.29 | 1.77 | 0.04 | |
Academic | Reference | ||||||
Experience | Constant | 0.16 | 0.18 | ||||
>10 years | 0.89 | 1.40 | 4.22 | 0.28 | 2.44 | 0.002 | |
<10 years | Reference | ||||||
Qualification | Constant | 0.09 | 0.24 | ||||
Postgraduate | 0.68 | 1.11 | 3.50 | 0.29 | 1.97 | 0.02 | |
Undergraduate | Reference | ||||||
AI in work place | Constant | 0.13 | 0.16 | ||||
1 or more AI in workplace | 1.39 | 2.12 | 7.67 | 0.33 | 4.03 | ≤0.0001 | |
No AI in workplace | Reference | ||||||
Specialty | Constant | 1.11 | 0.25 | ||||
Musculoskeletal | −0.66 | 0.26 | 1.03 | 0.35 | 0.52. | 0.06 | |
General | −1.01 | 0.19 | 0.70 | 0.33 | 0.36 | 0.002 | |
Neurorehabilitation | Reference |
Variable | B | 95%CI for B | SE B | β | % Predictability | |
---|---|---|---|---|---|---|
LL | UL | |||||
Step 1 | 63.6 | |||||
Constant | 0.13 | 0.16 | ||||
AI in workplace | ||||||
1 or more AI in workplace | 1.39 | 2.12 | 7.67 | 0.33 | 4.03 *** | |
No AI in workplace | Reference | |||||
Step 2 | 67.4 | |||||
Constant | −0.23 | 0.21 | ||||
AI in workplace | ||||||
1 or more AI in workplace | 1.36 | 2.04 | 7.51 | 0.33 | 3.91 *** | |
No AI in workplace | Reference | |||||
Years of experience | ||||||
<10 years | 0.85 | 1.32 | 4.14 | 0.29 | 2.34 ** | |
>10 Years | Reference | |||||
Step 3 | 72.0 | |||||
Constant | −0.44 | 0.32 | ||||
AI in workplace | ||||||
1 or more AI in workplace | 1.34 | 1.95 | 7.44 | 0.34 | 3.81 *** | |
No AI in workplace | Reference | |||||
Years of experience | ||||||
<10 years | 0.97 | 1.46 | 4.79 | 0.30 | 2.64 *** | |
>10 Years | Reference | |||||
Specialty | ||||||
General | −0.28 | 0.37 | 1.54 | 0.36 | 0.76 | |
Neurorehabilitation | 0.77 | 1.03 | 4.45 | 0.38 | 2.16 * | |
Musculoskeletal | Reference |
Strongly Agree | Agree | Neutral | Disagree | Strongly Disagree | Total | ||
---|---|---|---|---|---|---|---|
Reducing therapist workload | |||||||
Gender | Male | 38 (16.1) | 71 (30.1) | 31 (13.1) | 2 (0.8) | 1 (0.4) | 143 (60.6) |
Female | 29 (12.3) | 42 (17.8) | 21 (8.9) | 1 (0.4) | 0 (0) | 93 (39.4) | |
Employment sector | Academic | 25 (10.6) | 46 (19.5) | 17 (7.2) | 0 (0) | 0 (0) | 88 (37.3) |
Non academic | 42 (17.8) | 67 (28.4) | 35 (14.8) | 3 (1.3) | 1 (0.4) | 148 (62.7) | |
Experience | >10 years | 26 (11.0) | 60 (25.4) | 25 (10.6) | 1 (0.4) | 0 (0) | 112 (47.5) |
<10 years | 41 (17.4) | 53 (22.5) | 27 (11.4) | 2 (0.8) | 1 (0.4) | 124 (52.5) | |
Qualification | Postgraduate | 50 (21.2) | 80 (33.9) | 35 (14.8) | 1 (0.4) | 1 (0.4) | 167 (70.8) |
Undergraduate | 17 (7.2) | 33 (14.0) | 17 (7.2) | 2 (0.8) | 0 (0) | 96 (29.2) | |
Easing the patient care | |||||||
Gender | Male | 41 (17.4) | 72 (30.5) | 25 (10.6) | 4 (1.7) | 1 (0.4) | 143 (60.6) |
Female | 25 (10.6) | 53 (22.5) | 14 (5.9) | 0 (0) | 1 (0.4) | 93 (39.4) | |
Employment sector | Academic | 23 (9.7) | 50 (21.2) | 15 (6.4) | 0 (0) | 0 (0) | 88 (37.3) |
Non academic | 43 (18.2) | 75 (31.8) | 24 (10.2) | 4 (1.7) | 2 (0.8) | 148 (62.7) | |
Experience | >10 years | 29 (12.3) | 66 (28.0) | 13 (5.5) | 3 (1.3) | 1 (0.4) | 112 (47.5) |
<10 years | 37 (15.7) | 59 (25.0) | 26 (11.0) | 1 (0.4) | 1 (0.4) | 124 (52.5) | |
Qualification | Postgraduate | 47 (19.9) | 91 (38.6) | 25 (10.6) | 3 (1.3) | 1 (0.4) | 167 (70.8) |
Undergraduate | 19 (8.1) | 34 (14.4) | 14 (5.9) | 1 (0.4) | 1 (0.4) | 69 (29.2) | |
Prevention of diseases | |||||||
Gender | Male | 29 (12.3) | 34 (14.4) | 51 (21.6) | 24 (10.2) | 5 (2.1) | 143 (60.6) |
Female | 14 (5.9) | 30 (12.7) | 32 (13.6) | 16 (6.8) | 1 (0.4) | 93 (39.4) | |
Employment sector | Academic | 13 (5.5) | 26 (11.0) | 39 (16.5) | 10 (4.2) | 0 (0) | 88 (37.3) |
Non academic | 30 (12.7) | 38 (16.1) | 44 (18.6) | 30 (12.7) | 6 (2.5) | 148 (62.7) | |
Experience | >10 years | 16 (6.8) | 36 (15.3) | 42 (17.8) | 16 (6.8) | 2 (0.8) | 112 (47.5) |
<10 years | 27 (11.4) | 28 (11.9) | 41 (17.4) | 24 (10.2) | 4 (1.7) | 124 (52.5) | |
Qualification | Postgraduate | 26 (11.0) | 50 (21.2) | 63 (26.7) | 24 (10.2) | 4 (1.7) | 167 (70.8) |
Undergraduate | 17 (7.2) | 14 (5.9) | 20 (8.5) | 16 (6.8) | 2 (0.8) | 69 (29.2) |
Strongly Agree | Agree | Neutral | Disagree | Strongly Disagree | Total | ||
---|---|---|---|---|---|---|---|
Disease prediction | |||||||
Gender | Male | 26 (11.0) | 59 (25.0) | 47 (19.9) | 10 (4.2) | 1 (0.4) | 143 (60.6) |
Female | 14 (5.9) | 45 (19.1) | 25 (10.6) | 8 (3.4) | 1 (0.4) | 93 (39.4) | |
Employment sector | Academic | 18 (7.6) | 37 (15.7) | 26 (11.0) | 6 (2.5) | 1 (0.4) | 88 (37.3) |
Non academic | 22 (9.3) | 67 (28.4) | 46 (19.5) | 12 (5.1) | 1 (0.4) | 148 (62.7) | |
Experience | >10 years | 20 (8.5) | 57 (24.2) | 25 (10.6) | 10 (4.2) | 0 (0) | 112 (47.5) |
<10 years | 20 (8.5) | 47 (19.9) | 47 (19.9) | 8 (3.4) | 2 (0.8) | 124 (52.5) | |
Qualification | Postgraduate | 28 (11.9) | 73 (30.9) | 50 (21.2) | 15 (6.4) | 1 (0.4) | 167 (70.8) |
Undergraduate | 12 (5.1) | 31 (13.1) | 22 (9.3) | 3 (1.3) | 1 (0.4) | 69 (29.2) | |
Goal setting | |||||||
Gender | Male | 40 (16.9) | 66 (28.0) | 29 (12.3) | 5 (2.1) | 3 (1.3) | 143 (60.6) |
Female | 20 (8.5) | 50 (21.2) | 17 (7.2) | 6 (2.5) | 0 (0) | 93 (39.4) | |
Employment sector | Academic | 18 (7.6) | 42 (17.8) | 26 (11.0) | 2 (0.8) | 0 (0) | 88 (37.3) |
Non academic | 42 (17.8) | 74 (31.4) | 20 (8.5) | 9 (3.8) | 3 (1.3) | 148 (62.7) | |
Experience | >10 years | 27 (11.4) | 62 (26.3) | 22 (9.3) | 1 (0.4) | 0 (0) | 112 (47.5) |
<10 years | 33 (14.0) | 54 (22.9) | 24 (10.2) | 10 (4.2) | 3 (1.3) | 124 (52.5) | |
Qualification | Postgraduate | 40 (16.9) | 79 (33.5) | 38 (16.1) | 8 (3.4) | 2 (0.8) | 167 (70.8) |
Undergraduate | 20 (8.5) | 37 (15.7) | 8 (3.4) | 3 (1.3) | 1 (0.4) | 69 (29.2) | |
Assistive technologies | |||||||
Gender | Male | 50 (21.2) | 76 (32.2) | 15 (6.4) | 2 (0.8) | 0 (0) | 143 (60.6) |
Female | 38 (16.1) | 44 (18.6) | 11 (4.7) | 0 (0) | 0 (0) | 93 (39.4) | |
Employment sector | Academic | 30 (12.7) | 49 (20.8) | 9 (3.8) | 0 (0) | 0 (0) | 88 (37.3) |
Non academic | 58 (24.6) | 71 (30.1) | 17 (7.2) | 2 (0.8) | 0 (0) | 148 (62.7) | |
Experience | >10 years | 44 (18.6) | 62 (26.3) | 6 (2.5) | 0 (0) | 0 (0) | 112 (47.5) |
<10 years | 4 (18.6) | 58 (24.6) | 20 (8.5) | 2 (0.8) | 0 (0) | 124 (52.5) | |
Qualification | Postgraduate | 70 (29.7) | 83 (35.2) | 13 (5.5) | 1 (0.4) | 0 (0) | 167 (70.8) |
Undergraduate | 18 (7.7) | 37 (15.7) | 13 (5.5) | 1 (0.4) | 0 (0) | 69 (29.2) | |
Diagnostic tool | |||||||
Gender | Male | 43 (18.2) | 56 (23.7) | 36 (15.3) | 4 (1.7) | 4 (1.7) | 143 (60.6) |
Female | 26 (11.0) | 42 (18.2) | 20 (8.5) | 4 (1.7) | 0 (0) | 93 (39.4) | |
Employment sector | Academic | 24 (10.2) | 37 (15.7) | 23 (9.7) | 4 (1.7) | 0 (0) | 88 (37.3) |
Non academic | 45 (19.1) | 62 (26.3) | 33 (14.0) | 4 (1.7) | 4 (1.7) | 148 (62.7) | |
Experience | >10 years | 39 (16.5) | 46 (19.7) | 25 (10.6) | 2 (0.8) | 0 (0) | 112 (47.5) |
<10 years | 30 (12.7) | 53 (22.5) | 31 (13.1) | 6 (2.5) | 4 (1.7) | 124 (52.5) | |
Qualification | Postgraduate | 49 (20.8) | 73 (30.9) | 37(15.7) | 6 (2.5) | 2 (0.8) | 167 (70.8) |
Undergraduate | 20 (8.5) | 26 (11.0) | 19 (8.1) | 2 (0.8) | 2 (0.8) | 69 (29.2) | |
Education enhancement | |||||||
Gender | Male | 52 (22.0) | 63 (26.7) | 23 (9.7) | 1 (1.3) | 2 (0.8) | 143 (60.6) |
Female | 29 (12.3) | 51 (21.6) | 10 (4.2) | 3 (1.3) | 0 (0) | 93 (39.4) | |
Employment sector | Academic | 27 (11.4) | 48 (20.3) | 9 (3.8) | 4 (1.7) | 0 (0) | 88 (37.3) |
Non academic | 54 (22.9) | 66 (28.0) | 24 (10.2) | 2 (0.8) | 2 (0.8) | 148 (62.7) | |
Experience | >10 years | 37 (15.7) | 58 (24.6) | 16 (6.8) | 1 (0.4) | 0 (0) | 112 (47.5) |
<10 years | 44 (18.6) | 56 (23.7) | 17 (7.2) | 5 (2.1) | 2 (0.8) | 124 (52.5) | |
Qualification | Postgraduate | 57 (24.2) | 78 (33.1) | 26 (11.0) | 6 (2.5) | 0 (0) | 167 (70.8) |
Undergraduate | 24 (10.2) | 36 (15.3) | 7 (3.0) | 0 (0) | 2 (0.8) | 69 (29.2) |
Strongly Agree | Agree | Neutral | Disagree | Strongly Disagree | Total | ||
---|---|---|---|---|---|---|---|
Reducing human resource | |||||||
Gender | Male | 26 (11.0) | 64 (27.1) | 37 (15.7) | 12 (5.1) | 4 (1.7) | 143 (60.6) |
Female | 33 (14.0) | 48 (20.3) | 8 (3.4) | 3 (1.3) | 1 (0.4) | 93 (39.4) | |
Employment sector | Academic | 27 (11.4) | 44 (18.6) | 13 (5.5) | 4 (1.7) | 0 (0) | 88 (37.7) |
Non academic | 32 (13.6) | 68 (28.8) | 32 (13.6) | 11 (4.7) | 5 (2.1) | 148 (62.7) | |
Experience | >10 years | 22 (9.3) | 59 (25.0) | 22 (9.3) | 7 (3.0) | 2 (0.8) | 112 (47.5) |
<10 years | 37 (15.7) | 53 (22.5) | 23 (9.7) | 8 (3.4) | 3 (1.3) | 124 (52.5) | |
Qualification | Postgraduate | 45 (19.1) | 80 (33.9) | 29 (12.3) | 10 (4.9) | 3 (1.3) | 167 (70.8) |
Undergraduate | 14 (5.9) | 32 (13.6) | 16 (6.8) | 5 (2.1) | 2 (0.8) | 69 (29.2) | |
Increase productivity | |||||||
Gender | Male | 49 (20.8) | 60 (25.4) | 29 (12.3) | 4 (1.7) | 1 (0.4) | 143 (60.6) |
Female | 25 (10.6) | 55 (23.3) | 12 (5.1) | 1 (0.6) | 0 (0) | 93 (39.4) | |
Employment sector | Academic | 26 (11.0) | 48 (20.3) | 14 (5.9) | 0 (0) | 0 (0) | 88 (37.3) |
Non academic | 48 (20.3) | 67 (28.4) | 27 (11.4) | 5 (2.1) | 1 (0.4) | 148 (62.7) | |
Experience | >10 years | 35 (14.8) | 64 (27.1) | 12 (5.1) | 1 (0.4) | 0 (0) | 112 (47.5) |
<10 years | 39 (16.5) | 51 (21.6) | 29 (12.3) | 4 (1.7) | 1 (0.4) | 124 (52.5) | |
Qualification | Postgraduate | 54 (22.9) | 83 (35.2) | 28 (11.9) | 2 (0.8) | 0 (0) | 167 (70.8) |
Undergraduate | 20 (8.5) | 32 (13.6) | 13 (5.5) | 3 (1.3) | 1 (0.4) | 69 (29.2) | |
Improve patient quality of life | |||||||
Gender | Male | 55 (23.3) | 50 (21.2) | 29 (12.3) | 7 (3.0) | 2 (0.8) | 143 (60.6) |
Female | 29 (12.3) | 40 (16.9) | 22 (9.3) | 2 (0.8) | 0 (0) | 93 (39.4) | |
Employment sector | Academic | 23 (9.7) | 37 (15.7) | 26 (11.0) | 2 (0.8) | 0 (0) | 88 (37.3) |
Non academic | 61 (25.8) | 53 (22.5) | 25 (10.6) | 7 (3.0) | 2 (0.8) | 148 (62.7) | |
Experience | >10 years | 35 (14.8) | 50 (21.2) | 24 (10.2) | 3 (1.3) | 0 (0) | 112 (47.5) |
<10 years | 49 (20.8) | 40 (16.9) | 27 (11.4) | 6 (2.5) | 2 (0.8) | 124 (52.5) | |
Qualification | Postgraduate | 59 (25.0) | 67 (28.4) | 36 (15.3) | 4 (1.7) | 1 (0.4) | 167 (70.8) |
Undergraduate | 25 (10.6) | 23 (9.7) | 15 (6.4) | 5 (2.1) | 1 (0.4) | 69 (29.2) |
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Alsobhi, M.; Sachdev, H.S.; Chevidikunnan, M.F.; Basuodan, R.; K U, D.K.; Khan, F. Facilitators and Barriers of Artificial Intelligence Applications in Rehabilitation: A Mixed-Method Approach. Int. J. Environ. Res. Public Health 2022, 19, 15919. https://doi.org/10.3390/ijerph192315919
Alsobhi M, Sachdev HS, Chevidikunnan MF, Basuodan R, K U DK, Khan F. Facilitators and Barriers of Artificial Intelligence Applications in Rehabilitation: A Mixed-Method Approach. International Journal of Environmental Research and Public Health. 2022; 19(23):15919. https://doi.org/10.3390/ijerph192315919
Chicago/Turabian StyleAlsobhi, Mashael, Harpreet Singh Sachdev, Mohamed Faisal Chevidikunnan, Reem Basuodan, Dhanesh Kumar K U, and Fayaz Khan. 2022. "Facilitators and Barriers of Artificial Intelligence Applications in Rehabilitation: A Mixed-Method Approach" International Journal of Environmental Research and Public Health 19, no. 23: 15919. https://doi.org/10.3390/ijerph192315919
APA StyleAlsobhi, M., Sachdev, H. S., Chevidikunnan, M. F., Basuodan, R., K U, D. K., & Khan, F. (2022). Facilitators and Barriers of Artificial Intelligence Applications in Rehabilitation: A Mixed-Method Approach. International Journal of Environmental Research and Public Health, 19(23), 15919. https://doi.org/10.3390/ijerph192315919