Submitted:
17 February 2026
Posted:
18 February 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
3. Results
3.1. Attitude to AI Usefulness in Patient Care And Management
3.2. Training and Adoption of AI
3.3. AI Use in Patient Care and Management
3.4. Challenges and Barriers to AI Adoption and Use
3.5. Core Benefits of and Ethical Issues to AI in Healthcare
3.6. Impact of AI Adoption Integration on Clinicians’ Workload
| Description | Professional Role | Gender | Age | Qualification | ||||
| Chi-Square (χ2) | P-Value (df) | Chi-Square (χ2) | P-Value (df) | Chi-Square (χ2) | P-Value (df) | Chi-Square (χ2) | P-Value (df) | |
| Artificial Intelligence (AI) has a role or usefulness in patient care and management | 9.3 | 0.32 (8) | 29.2 | < 0.001 (4) | 7.7 | 0.46 (8) | 3.5 | 0.97 (10) |
| AI usefulness in the future in patient care and practice | 14.1 | 0.59 (16) | 7.1 | 0.31 (6) | 12.7 | 0.39 (12) | 11.6 | 0.71 (15) |
| Have had formal exposure or training in AI | 1.2 | 0.99 (8) | 0.3 | 0.99 (4) | 7.8 | 0.45 (8) | 8.7 | 0.57 (10) |
| The organization has adopted/begun the process of adopting AI | 18.8 | 0.28 (16) | 6.0 | 0.64 (8) | 23.3 | 0.06 (16) | 31.6 | 0.047 (20) |
| The organization has trained someone in AI use. | 7.2 | 0.51 (8) | 0.9 | 0.92 (4) | 14.8 | 0.06 (8) | 6.3 | 0.79 (10) |
| Where AI is most useful in the healthcare industry | 32.5 | 0.90 (44) | 22.7 | 0.42 (22) | 28.5 | 0.97 (44) | 101.1 | < 0.001 (55) |
| Where AI is least useful in the healthcare industry | 42.5 | 0.54 (44) | 12.9 | 0.94 (22) | 41.4 | 0.58 (44) | 56.3 | 0.43 (55) |
| The most important barrier to AI adoption and implementation in patient care | 36.4 | 0.45 (36) | 8.6 | 0.48 (9) | 37.2 | 0.41 (36) | 29.6 | 0.96 (45) |
| Will support AI adoption and embedding in the organization | 8.2 | 0.42 (8) | 6.2 | 0.18 (4) | 18.0 | 0.02 (8) | 11.4 | 0.33 (10) |
4. Discussion
5. Limitations
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AI | Artificial Intelligence |
| AMA | American Medical Association |
| EHR | Electronic Health Records |
| GenAI | Generative Artificial Intelligence |
| SPSS | Statistical Package for Social Sciences |
References
- Najjar R. Redefining radiology: a review of artificial intelligence integration in medical imaging. Diagnostics. 2023 Aug 25;13(17):2760.
- Kawamura M, Kamomae T, Yanagawa M, Kamagata K, Fujita S, Ueda D, Matsui Y, Fushimi Y, Fujioka T, Nozaki T, Yamada A. Revolutionizing radiation therapy: the role of AI in clinical practice. Journal of radiation research. 2024 Jan;65(1):1-9.
- Miranda I, Luz JM, Pereira AR, Augusto JB. Artificial intelligence in cardiovascular imaging algorithms – what is used in clinical routine? [Internet]. European Society of Cardiology; 2024 Apr 02 [cited 2025-02-25]. Available from: https://www.escardio.org/Councils/Council-for-Cardiology-Practice-(CCP)/Cardiopractice/artificial-intelligence-in-cardiovascular-imaging-algorithms-what-is-used-in-c.
- Goldenberg SL, Nir G, Salcudean SE. A new era: artificial intelligence and machine learning in prostate cancer. Nature Reviews Urology. 2019 Jul;16(7):391-403.
- Riaz IB, Harmon S, Chen Z, Naqvi SA, Cheng L. Applications of artificial intelligence in prostate cancer care: a path to enhanced efficiency and outcomes. American Society of Clinical Oncology Educational Book. 2024 Jun;44(3):e438516.
- Tătaru OS, Vartolomei MD, Rassweiler JJ, Virgil O, Lucarelli G, Porpiglia F, Amparore D, Manfredi M, Carrieri G, Falagario U, Terracciano D. Artificial intelligence and machine learning in prostate cancer patient management—current trends and future perspectives. Diagnostics. 2021 Feb 20;11(2):354.
- McKinney SM, Sieniek M, Godbole V, Godwin J, Antropova N, Ashrafian H, Back T, Chesus M, Corrado GS, Darzi A, Etemadi M. International evaluation of an AI system for breast cancer screening. Nature. 2020 Jan 2;577(7788):89-94.
- Esteva A, Kuprel B, Novoa RA, Ko J, Swetter SM, Blau HM, Thrun S. Dermatologist-level classification of skin cancer with deep neural networks. nature. 2017 Feb 2;542(7639):115-8.
- Attia ZI, Noseworthy PA, Lopez-Jimenez F, Asirvatham SJ, Deshmukh AJ, Gersh BJ, Carter RE, Yao X, Rabinstein AA, Erickson BJ, Kapa S. An artificial intelligence-enabled ECG algorithm for the identification of patients with atrial fibrillation during sinus rhythm: a retrospective analysis of outcome prediction. The Lancet. 2019 Sep 7;394(10201):861-7.
- Rajpurkar P, Irvin J, Ball RL, Zhu K, Yang B, Mehta H, Duan T, Ding D, Bagul A, Langlotz CP, Patel BN. Deep learning for chest radiograph diagnosis: A retrospective comparison of the CheXNeXt algorithm to practicing radiologists. PLoS medicine. 2018 Nov 20;15(11):e1002686.
- American Medical Association. AMA Augmented Intelligence Research. Physician sentiments around the use of AI in heath care: motivations, opportunities, risks, and use cases. Shifts from 2023 to 2024. Published February 2025.
- Oleribe OO, Taylor-Robinson AW, Agala VR, Sobande OO, Izurieta R & Taylor-Robinson SD. Global Adoption, Promotion, Impact, and Deployment of AI in Patient Care, Health Care Delivery, Management, and Health Care Systems Leadership: Cross-Sectional Survey. J Med Internet Res 2025;27:e70805). https://doi.org/10.2196/7080. https://www.jmir.org/2025/1/e70805b.
- Eysenbach, G. (2004) Improving the Quality of Web Surveys: The Checklist for Reporting Results of Internet E-Surveys (CHERRIES). J Med Internet Res, 6(3) p. e34.
- Dave, D. The Statistical Landscape of AI Adoption in Healthcare. Radix: Software Development Updated Aug 1, 2024. https://radixweb.com/blog/ai-in-healthcare-statistics Last accessed on 11/10/2024.
- Sample Size Calculators for designing clinical research. https://sample-size.net/sample-size-conf-interval-proportion/ Last accessed 11/10/2024.
- OECD Publishing. Artificial Intelligence and the Health Workforce Perspectives From Medical Associations on AI in Health. OECD Artificial Intelligence Papers November 2024 No. 28. Retrieved from https://www.oecd.org/content/dam/oecd/en/publications/reports/2024/11/artificial-intelligence-and-the-health-workforce_c8e4433d/9a31d8af-en.pdf on October 27, 205.
- Waheed MA, Liu L. Perceptions of family physicians about applying AI in primary health care: case study from a premier health care organization. JMIR AI. 2024 Apr 17;3:e40781.
- Dongre AS, More SD, Wilson V, Singh RJ. Medical doctor’s perception of artificial intelligence during the COVID-19 era: a mixed methods study. Journal of Family Medicine and Primary Care. 2024 May 1;13(5):1931-6.
- AlQudah AA, Al-Emran M, Shaalan K. Technology acceptance in healthcare: a systematic review. Applied Sciences. 2021 Nov 9;11(22):10537.
- Hassan M, Kushniruk A, Borycki E. Barriers to and facilitators of artificial intelligence adoption in health care: scoping review. JMIR Human Factors. 2024 Aug 29;11:e48633.
- Rosenbacke R, Melhus Å, McKee M, Stuckler D. How explainable artificial intelligence can increase or decrease clinicians’ trust in AI applications in health care: systematic review. JMIR AI. 2024 Oct 30;3:e53207.
- Scipion CE, Manchester MA, Federman A, Wang Y, Arias JJ. Barriers to and facilitators of clinician acceptance and use of artificial intelligence in healthcare settings: a scoping review. BMJ Open. 2025 Apr 1;15(4):e092624.
- Finkelstein J, Gabriel A, Schmer S, Truong TT, Dunn A. Identifying facilitators and barriers to implementation of AI-assisted clinical decision support in an electronic health record system. Journal of Medical Systems. 2024 Sep 18;48(1):89.
- Tucci V, Saary J, Doyle TE. Factors influencing trust in medical artificial intelligence for healthcare professionals: a narrative review. Journal of Medical Artificial Intelligence. 2022 Mar 30;5.4.
- Roppelt JS, Kanbach DK, Kraus S. Artificial intelligence in healthcare institutions: A systematic literature review on influencing factors. Technology in Society. 2024 Mar 1;76:102443.
- Hou T, Li M, Tan Y, Zhao H. Physician adoption of AI assistant. Manufacturing & Service Operations Management. 2024 Sep;26(5):1639-55.
- Bettelheim A. Majority of doctors worry about AI driving clinical decisions, survey shows. Axios. Published on Oct 31, 2023. Retrieved from Majority of doctors worry about AI driving clinical decisions, survey shows on October 27, 2025.
- Sahni N, Stein G, McKinsey O, Zemmel R, Cutler DM. The potential impact of artificial intelligence on healthcare spending. Cambridge, MA, USA: National Bureau of Economic Research; 2023 Jan 23.
- Lambert SI, Madi M, Sopka S, Lenes A, Stange H, Buszello CP, Stephan A. An integrative review on the acceptance of artificial intelligence among healthcare professionals in hospitals. NPJ Digital Medicine. 2023 Jun 10;6(1):111.
- Witkowski K, Dougherty RB, Neely SR. Public perceptions of artificial intelligence in healthcare: ethical concerns and opportunities for patient-centered care. BMC Medical Ethics. 2024 Jun 22;25(1):74.
- Dankwa-Mullan I. Health equity and ethical considerations in using artificial intelligence in public health and medicine. Preventing Chronic Disease. 2024 Aug 22;21:E64.
- Sagona M, Dai T, Macis M, Darden M. Trust in AI-assisted health systems and AI’s trust in humans. NPJ Health Systems. 2025 Mar 28;2(1):10.
- Lainjo B. Integrating artificial intelligence into healthcare systems: opportunities and challenges. Academia Medicine. 2024 Oct 30;(1).1-13 https://doi.org/10.20935/AcadMed7382.
- Lekadir K, Frangi AF, Porras AR, Glocker B, Cintas C, Langlotz CP, Weicken E, Asselbergs FW, Prior F, Collins GS, Kaissis G. FUTURE-AI: International consensus guideline for trustworthy and deployable artificial intelligence in healthcare. BMJ. 2025 Feb 5;388:1-22.
- Ng JY, Maduranayagam SG, Suthakar N, Li A, Lokker C, Iorio A, Haynes RB, Moher D. Attitudes and perceptions of medical researchers towards the use of artificial intelligence chatbots in the scientific process: an international cross-sectional survey. The Lancet Digital Health. 2025 Jan 1;7(1):e94-102.
- Han R, Acosta JN, Shakeri Z, Ioannidis JP, Topol EJ, Rajpurkar P. Randomised controlled trials evaluating artificial intelligence in clinical practice: a scoping review. The Lancet Digital Health. 2024 May 1;6(5):e367-73.
- Oleribe, O. O, Taylor-Robinson SD. Leveraging Artificial Intelligence Tools and Resources in Leadership Decisions. American Journal of Health Care Strategy Vol 1, Issue 3, Aug 21, 2025:107-123. https://doi.org/10.61449/ajhcs.2025.16. https://ajhcs.org/article/leveraging-artificial-intelligence-in-leadership.
- Oleribe O. O. Leveraging and Harnessing Generative Artificial Intelligence to Mitigate the Burden of Neurodevelopmental Disorders (NDDs) in Children. Healthcare, 13(15), 1898(1-13); https://doi.org/10.3390/healthcare13151898.
- National Academy of Medicine. 2025. Generative Artificial Intelligence in Health and Medicine: Opportunities and Responsibilities for Transformative Innovation. Washington, DC: The National Academies Press. https://doi.org/10.17226/28907.
- Oleribe, O. O. Leading the next pandemics. Public Health in Practice, 2025 June. 9, 100605. https://doi.org/10.1016/j.puhip.2025.100605.

| Description | Frequency | Percentage |
| Role in Healthcare (n = 109) | ||
| Physician | 42 | 38.50% |
| Nurse | 18 | 16.50% |
| Allied healthcare professional | 14 | 12.80% |
| Hospital administrator | 3 | 2.80% |
| Other providers | 32 | 29.40% |
| Gender at Birth (n = 72) | ||
| Prefer not to say | 2 | 2.80% |
| Female | 39 | 54.20% |
| Male | 31 | 43.10% |
| Age of Respondents (n = 71) | ||
| 60 years and above | 19 | 26.80% |
| 50 - 59 years | 27 | 38.00% |
| 40 - 49 years | 9 | 12.70% |
| 30 - 39 years | 14 | 19.70% |
| 20 - 29 years | 2 | 2.80% |
| Highest Education (n = 71) | ||
| Doctorate | 39 | 54.90% |
| Masters | 17 | 23.90% |
| Bachelors | 11 | 15.50% |
| High School Diploma/GED | 2 | 2.80% |
| Others | 2 | 2.80% |
| Length in Health Industry (n = 71) | ||
| 25 or more years | 33 | 46.50% |
| 20 - 24 years | 12 | 16.90% |
| 15 - 19 years | 4 | 5.60% |
| 10 - 14 years | 9 | 12.70% |
| 5 - 9 years | 10 | 14.10% |
| Less than 5 years | 3 | 4.20% |
| Current Work location (n = 71) | ||
| Private | 17 | 23.90% |
| Nonprofit/Public Charity | 12 | 16.90% |
| College/University | 14 | 19.70% |
| County/Local | 7 | 9.90% |
| Federal or State | 10 | 14.10% |
| Others | 11 | 15.50% |
| Current work Section (n = 72) | ||
| Public Health and Preventive Medicine | 17 | 23.60% |
| Internal Medicine | 10 | 13.90% |
| Family Medicine | 8 | 11.10% |
| Pediatrics | 7 | 9.70% |
| Pathology | 3 | 4.20% |
| Psychiatry | 3 | 4.20% |
| Geriatrics | 2 | 2.80% |
| Ophthalmology | 2 | 2.80% |
| Obstetrics and Gynecology | 2 | 2.80% |
| Surgery | 1 | 1.40% |
| Race or Ethnicity (n = 71) | ||
| Black/African American | 27 | 38.00% |
| White/Caucasian | 24 | 33.80% |
| Hispanic/Latino/Latinx | 7 | 9.90% |
| Native American/Alaska Native | 1 | 1.40% |
| Pacific Island/Hawaii | 0 | 0.00% |
| East Asian | 5 | 7.00% |
| South Asian | 4 | 5.60% |
| Arab/Middle Eastern | 2 | 2.80% |
| Mixed | 0 | 0.00% |
| I prefer not to say | 7 | 9.90% |
| Description | Freq | Percentage |
| AI is useful in-patient care and management (n = 107) | ||
| Yes | 93 | 86.90% |
| Neither true nor false | 9 | 8.40% |
| No | 5 | 4.70% |
| How useful AI is in patient care and practice (n = 93) | ||
| Extremely useful | 20 | 21.50% |
| Very useful | 32 | 34.40% |
| Moderately useful | 31 | 33.30% |
| Slightly useful | 9 | 9.70% |
| Not at all useful | 1 | 1.10% |
| AI usefulness in patient care and practice in the future (n = 99) | ||
| Extremely useful | 32 | 32.30% |
| Very useful | 38 | 38.40% |
| Moderately useful | 17 | 17.20% |
| Slightly useful | 10 | 10.10% |
| Not at all useful | 2 | 2.00% |
| Formal exposure or training in AI (n = 99) | ||
| Not Sure | 5 | 5.10% |
| No | 52 | 52.50% |
| Yes | 42 | 42.40% |
| Training individuals were exposed to (n = 42) | ||
| Basic Orientation to AI | 35 | 83.30% |
| Training on AI use in patient care (diagnosis, treatment, etc.) | 13 | 31.00% |
| Training in AI use in management and leadership | 11 | 26.20% |
| Training in technical aspects of AI | 14 | 33.30% |
| Other forms of AI training | 11 | 26.20% |
| Organization has adopted/begun the process of AI adoption (n = 99) | ||
| I do not know | 11 | 11.10% |
| No, we have not started adopting AI | 37 | 37.40% |
| Yes, we are beginning to think about adopting AI | 24 | 24.20% |
| Yes, we will adopt AI | 4 | 4.00% |
| Yes, we have adopted AI | 23 | 23.20% |
| Leaders of AI adoption in Organizations (n = 61) | ||
| Others (Please specify) | 4 | 6.60% |
| I do not know | 15 | 24.60% |
| Outsourced | 5 | 8.20% |
| IT Staff | 8 | 13.10% |
| Administration Staff | 5 | 8.20% |
| Middle Level/Management Staff | 4 | 6.60% |
| Top-level/Executive Leadership | 20 | 32.80% |
| Organizational training AI use (n = 99) | ||
| I do not know/I am not sure | 38 | 38.40% |
| No | 36 | 38.40% |
| Yes | 25 | 38.40% |
| Description | Freq | Percentage |
| Where AI is commonly used (n = 65) | ||
| Report Writing | 28 | 43.10% |
| Research | 18 | 27.70% |
| Patient care (e.g., treatment, continuity of care, referral, etc.) | 17 | 26.20% |
| Diagnosis (e.g., radiology, pathology, endoscopy, etc.) | 16 | 24.60% |
| Leadership and management | 14 | 21.50% |
| Strategic management | 12 | 18.50% |
| Staff and personnel management | 9 | 13.80% |
| Resource management | 8 | 12.30% |
| Precision Medicine (e.g., gene therapy, cancer management, etc.) | 6 | 9.20% |
| I do not want to specify | 6 | 9.20% |
| Others | 14 | 21.50% |
| Aspects of patient care where AI is most useful (n = 73) | ||
| Time management | 25 | 34.20% |
| Documentation activities | 25 | 34.20% |
| Improved patient registration processes | 15 | 20.50% |
| Research | 15 | 20.50% |
| Diagnosis | 13 | 17.80% |
| Team management | 11 | 15.10% |
| Patient management and care | 10 | 13.70% |
| Errors and mistakes | 10 | 13.70% |
| Continuity of care and follow up processes | 10 | 13.70% |
| Patient clerking and history taking | 9 | 12.30% |
| Provider’s personal job satisfaction | 9 | 12.30% |
| Laboratory processes | 8 | 11.00% |
| Prescription practices | 7 | 9.60% |
| Provider burnout of providers | 5 | 6.80% |
| Work Life Balance | 5 | 6.80% |
| Provider health and wellbeing | 4 | 5.50% |
| Patient satisfaction | 3 | 4.10% |
| Others | 19 | 26.00% |
| Healthcare activity where AI is very useful (n = 77) | ||
| Report writing | 19 | 24.70% |
| Diagnosis (e.g., Radiology, Pathology, Endoscopy, etc.) | 18 | 23.40% |
| Strategy development | 7 | 9.10% |
| Patient care (e.g., Treatment, Continuity of Care, Referral, etc.) | 7 | 9.10% |
| None of the above | 6 | 7.80% |
| Leadership and management | 5 | 6.50% |
| Precision medicine (e.g., cancer management) | 4 | 5.20% |
| Resource management | 3 | 3.90% |
| I do not want to specify | 2 | 2.60% |
| Financial management | 2 | 2.60% |
| Staff management | 1 | 1.30% |
| Others | 3 | 3.90% |
| Descriptions | Freq | Percentage |
| Most important barrier to AI adoption and implementation in patient care (n = 77) | ||
| Knowledge of AI | 19 | 24.70% |
| Fear of job loss | 13 | 16.90% |
| Cost of acquisition | 8 | 10.40% |
| Staff skills and capacities | 7 | 9.10% |
| Organization-wide adoption of AI | 6 | 7.80% |
| Staff resistance to change | 5 | 6.50% |
| Leadership and management | 4 | 5.20% |
| Technology and equipment | 4 | 5.20% |
| Interest and attitude of staff | 1 | 1.30% |
| Others | 8 | 10.40% |
| Willingness to support AI adoption and embedding (N = 79) | ||
| Not sure | 17 | 22.50% |
| No | 5 | 6.30% |
| Yes | 57 | 72.20% |
| Patient care practice challenges (n = 79) | ||
| Lack of Human Oversight | 46 | 58.20% |
| Bias in AI Algorithms | 43 | 54.40% |
| Overdependence on AI | 43 | 54.40% |
| Unintended Consequences | 38 | 48.10% |
| Ethical and Legal Challenges | 37 | 46.80% |
| Data Privacy and Security Concerns | 33 | 41.80% |
| Algorithmic Opacity (Black Box problems) | 31 | 39.20% |
| Job Displacement | 26 | 32.90% |
| Reduced Patient-Provider Interaction | 25 | 31.60% |
| More workload | 19 | 24.10% |
| High Cost and Accessibility Issues | 17 | 21.50% |
| Strategies to mitigate the challenges of AI in healthcare (N = 79) | ||
| Human Oversight | 53 | 67.10% |
| Staff Training | 48 | 60.80% |
| Provider involvement in design and development | 45 | 57.00% |
| Data protection | 39 | 49.40% |
| Enhanced Transparency | 34 | 43.00% |
| Improved accessibility | 25 | 31.60% |
| Early adoption and integration | 23 | 29.10% |
| Description | Freq | Percentage |
| Core benefits of AI in clinical practice (n = 79) | ||
| Facilitates patients’ documentation and clerking | 45 | 57.00% |
| Minimize errors and mistakes | 39 | 49.40% |
| Open up time for better provider-patient communication | 34 | 43.00% |
| Shortens turnaround time for requests | 34 | 43.00% |
| Improve provider-patient relationship | 13 | 16.50% |
| Encourages provider-patient relationship | 12 | 15.20% |
| Others | 9 | 11.40% |
| Ethical issues associated with AI use in healthcare (n = 79) | ||
| Privacy and Surveillance | 50 | 63.30% |
| Security Risks | 44 | 55.70% |
| Misinformation and Deepfakes | 40 | 50.60% |
| Lack of regulations and polices | 40 | 50.60% |
| Bias and Fairness | 37 | 46.80% |
| Autonomy and Decision Making | 32 | 40.50% |
| Ethical use in Education and Patient care | 30 | 38.00% |
| Ownership and Intellectual Property | 30 | 38.00% |
| Job Displacement and Economic Impact | 27 | 34.20% |
| Transparency and Accountability | 22 | 27.80% |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).