EPIDEMIOLOGY AND HEALTH DATA INSIGHTS
Review Article

Behavioral Impacts of AI Reliance in Diagnostics: Balancing Automation with Skill Retention

Epidemiology and Health Data Insights, 1(3), 2025, ehdi011, https://doi.org/10.63946/ehdi/16894
Publication date: Sep 08, 2025
Full Text (PDF)

ABSTRACT

The rapid application of artificial intelligence (AI) in diagnostic disciplines such as radiology, pathology, microbiology, and genomics has revolutionized the way in which doctors and laboratory workers provide patient care. AI has enhanced the efficacy, accuracy, and cost-effectiveness of laboratory operations, clinical decision support systems, and image interpretation. However, these advantages are accompanied by a severe behavioral issue: an excessive reliance on automation could result in a generation of professionals who lack the reasoning abilities necessary to independently assess or contextualize machine outputs. The dual effects of AI integration are the focus of this paper, which highlights its beneficial aspects—including decreased cognitive load, increased confidence, and educational reinforcement—as well as its adverse effects, which include skill degradation, diagnostic deskilling among trainees, complacency, and reduced situational awareness. The research emphasizes the potential for unregulated dependence on AI to progressively alter professional conduct and expertise by utilizing case examples from radiology, pathology, laboratory medicine, and clinical decision support, as well as parallels from automation in aviation. In order to address these concerns, a conceptual framework is proposed that integrates AI into a "human-in-the-loop" approach, thereby preserving the significance of human judgment while leveraging machine accuracy. In order to achieve equilibrium, strategies include curriculum reform to integrate AI with hands-on experience, regular retraining, the implementation of explainable AI to promote active thinking, and institutional measures similar to recurrent training in high-stakes sectors. Ultimately, AI should complement the existing infrastructure rather than supplant it. In order to guarantee this, we must establish strategic educational, organizational, and regulatory safeguards to preserve diagnostic expertise, ensure accountability, and maintain the resilience of healthcare systems as they become increasingly dependent on intelligent technologies.

KEYWORDS

Artificial Intelligence (AI) in Diagnostics Human-in-the-Loop Skill Retention Clinical Decision Support Diagnostic Automation

CITATION (Vancouver)

Sunday O. Behavioral Impacts of AI Reliance in Diagnostics: Balancing Automation with Skill Retention. Epidemiology and Health Data Insights. 2025;1(3):ehdi011. https://doi.org/10.63946/ehdi/16894
APA
Sunday, O. (2025). Behavioral Impacts of AI Reliance in Diagnostics: Balancing Automation with Skill Retention. Epidemiology and Health Data Insights, 1(3), ehdi011. https://doi.org/10.63946/ehdi/16894
Harvard
Sunday, O. (2025). Behavioral Impacts of AI Reliance in Diagnostics: Balancing Automation with Skill Retention. Epidemiology and Health Data Insights, 1(3), ehdi011. https://doi.org/10.63946/ehdi/16894
AMA
Sunday O. Behavioral Impacts of AI Reliance in Diagnostics: Balancing Automation with Skill Retention. Epidemiology and Health Data Insights. 2025;1(3), ehdi011. https://doi.org/10.63946/ehdi/16894
Chicago
Sunday, Omolayo. "Behavioral Impacts of AI Reliance in Diagnostics: Balancing Automation with Skill Retention". Epidemiology and Health Data Insights 2025 1 no. 3 (2025): ehdi011. https://doi.org/10.63946/ehdi/16894
MLA
Sunday, Omolayo "Behavioral Impacts of AI Reliance in Diagnostics: Balancing Automation with Skill Retention". Epidemiology and Health Data Insights, vol. 1, no. 3, 2025, ehdi011. https://doi.org/10.63946/ehdi/16894

REFERENCES

  1. Alsulimani A, Akhter N, Jameela F, Ashgar RI, Jawed A, Hassani MA, et al. The Impact of Artificial Intelligence on Microbial Diagnosis. Microorganisms. 2024 May 23;12(6):1051. doi: 10.3390/microorganisms12061051.
  2. Krishnan G, Singh S, Pathania M, Gosavi S, Abhishek S, Parchani A, et al. Artificial intelligence in clinical medicine: catalyzing a sustainable global healthcare paradigm. Front Artif Intell. 2023 Aug 29;6:1227091. doi: 10.3389/frai.2023.1227091.
  3. Bajwa J, Munir U, Nori A, Williams B. Artificial intelligence in healthcare: transforming the practice of medicine. Future Healthc J. 2021 Jul;8(2):e188–94. doi: 10.7861/fhj.2021-0095.
  4. Gerlich M. AI Tools in Society: Impacts on Cognitive Offloading and the Future of Critical Thinking. Societies. 2025 Jan;15(1):6. doi: 10.3390/soc15010006.
  5. Junaid SB, Imam AA, Balogun AO, De Silva LC, Surakat YA, Kumar G, et al. Recent Advancements in Emerging Technologies for Healthcare Management Systems: A Survey. Healthcare (Basel). 2022 Oct 3;10(10):1940. doi: 10.3390/healthcare10101940.
  6. Al Kuwaiti A, Nazer K, Al-Reedy A, Al-Shehri S, Al-Muhanna A, Subbarayalu AV, et al. A Review of the Role of Artificial Intelligence in Healthcare. J Pers Med. 2023 Jun 5;13(6):951. doi: 10.3390/jpm13060951.
  7. Li F, Wang S, Gao Z, Qing M, Pan S, Liu Y, et al. Harnessing artificial intelligence in sepsis care: advances in early detection, personalized treatment, and real-time monitoring. Frontiers in Medicine. 2025 Jan 6;11:1510792. doi: 10.3389/fmed.2024.1510792.
  8. Kücking F, Hübner U, Przysucha M, Hannemann N, Kutza JO, Moelleken M, et al. Automation Bias in AI-Decision Support: Results from an Empirical Study. Stud Health Technol Inform. 2024 Aug 30;317:298–304. doi: 10.3233/SHTI240700.
  9. Rashid AB, Kausik MAK. AI revolutionizing industries worldwide: A comprehensive overview of its diverse applications. Hybrid Advances. 2024 Dec 1;7:100277. doi: 10.1016/j.hybadv.2024.100277.
  10. Pelaccia T, Tardif J, Triby E, Charlin B. An analysis of clinical reasoning through a recent and comprehensive approach: the dual-process theory. Med Educ Online. 2011 Mar 14;16:10.3402/meo.v16i0.5890. doi: 10.3402/meo.v16i0.5890.
  11. Karim MM, Khan S, Van DH, Liu X, Wang C, Qu Q. Transforming Data Annotation with AI Agents: A Review of Architectures, Reasoning, Applications, and Impact. Future Internet. 2025 Aug;17(8):353. doi: 10.3390/fi17080353.
  12. Chustecki M. Benefits and Risks of AI in Health Care: Narrative Review. Interact J Med Res. 2024 Nov 18;13:e53616. doi: 10.2196/53616.
  13. Ahuja AS. The impact of artificial intelligence in medicine on the future role of the physician. PeerJ. 2019 Oct 4;7:e7702. doi: 10.7717/peerj.7702.
  14. Jeong J, Kim S, Pan L, Hwang D, Kim D, Choi J, et al. Reducing the workload of medical diagnosis through artificial intelligence: A narrative review. Medicine (Baltimore). 2025 Feb 7;104(6):e41470. doi: 10.1097/MD.0000000000051470.
  15. Feigerlova E, Hani H, Hothersall-Davies E. A systematic review of the impact of artificial intelligence on educational outcomes in health professions education. BMC Med Educ. 2025 Jan 27;25:129. doi: 10.1186/s12909-025-06221-w.
  16. Liu Y, Fu Z. Hybrid Intelligence: Design for Sustainable Multiverse via Integrative Cognitive Creation Model through Human–Computer Collaboration. Applied Sciences. 2024 Jan;14(11):4662. doi: 10.3390/app14114662.
  17. Gaffney H, Mirza KM. Pathology in the artificial intelligence era: Guiding innovation and implementation to preserve human insight. Acad Pathol. 2025 Feb 28;12(1):100166. doi: 10.1016/j.acpath.2024.100166.
  18. Vieriu AM, Petrea G. The Impact of Artificial Intelligence (AI) on Students’ Academic Development. Education Sciences. 2025 Mar;15(3):343. doi: 10.3390/educsci15030343.
  19. Feller S, Feller L, Bhayat A, Feller G, Khammissa RAG, Vally ZI. Situational Awareness in the Context of Clinical Practice. Healthcare (Basel). 2023 Dec 4;11(23):3098. doi: 10.3390/healthcare11233098.
  20. Nazer LH, Zatarah R, Waldrip S, Ke JXC, Moukheiber M, Khanna AK, et al. Bias in artificial intelligence algorithms and recommendations for mitigation. PLOS Digit Health. 2023 Jun 22;2(6):e0000278. doi: 10.1371/journal.pdig.0000278.
  21. Ahmad SF, Han H, Alam MM, Rehmat MohdK, Irshad M, Arraño-Muñoz M, et al. Impact of artificial intelligence on human loss in decision making, laziness and safety in education. Humanit Soc Sci Commun. 2023;10(1):311. doi: 10.1057/s41599-023-01816-6.
  22. Williamson SM, Prybutok V. Balancing Privacy and Progress: A Review of Privacy Challenges, Systemic Oversight, and Patient Perceptions in AI-Driven Healthcare. Applied Sciences. 2024 Jan;14(2):675. doi: 10.3390/app14020675.
  23. Kumar Y, Koul A, Singla R, Ijaz MF. Artificial intelligence in disease diagnosis: a systematic literature review, synthesizing framework and future research agenda. J Ambient Intell Humaniz Comput. 2023;14(7):8459–86. doi: 10.1007/s12652-021-03612-z.
  24. Obuchowicz R, Lasek J, Wodziński M, Piórkowski A, Strzelecki M, Nurzynska K. Artificial Intelligence-Empowered Radiology—Current Status and Critical Review. Diagnostics (Basel). 2025 Jan 24;15(3):282. doi: 10.3390/diagnostics15030282.
  25. Cellina M, Cacioppa LM, Cè M, Chiarpenello V, Costa M, Vincenzo Z, et al. Artificial Intelligence in Lung Cancer Screening: The Future Is Now. Cancers (Basel). 2023 Aug 30;15(17):4344. doi: 10.3390/cancers15174344.
  26. Pierre K, Haneberg AG, Kwak S, Peters KR, Hochhegger B, Sananmuang T, et al. Applications of Artificial Intelligence in the Radiology Roundtrip: Process Streamlining, Workflow Optimization, and Beyond. Seminars in Roentgenology. 2023 Apr 1;58(2):158–69. doi: 10.1067/j.ro.2023.03.002.
  27. Go H. Digital Pathology and Artificial Intelligence Applications in Pathology. Brain Tumor Res Treat. 2022 Apr;10(2):76–82. doi: 10.14791/btrt.2022.10.e18.
  28. Ahuja S, Zaheer S. Advancements in pathology: Digital transformation, precision medicine, and beyond. J Pathol Inform. 2024 Nov 19;16:100408. doi: 10.1016/j.jpi.2024.100408.
  29. Baxi V, Edwards R, Montalto M, Saha S. Digital pathology and artificial intelligence in translational medicine and clinical practice. Mod Pathol. 2022;35(1):23–32. doi: 10.1038/s41379-021-00919-2.
  30. Ross C. Google’s AI improves accuracy of lung cancer diagnosis, study shows [Internet]. STAT. 2019 [cited 2025 Sep 1]. Available from: https://www.statnews.com/2019/05/20/googles-ai-improves-accuracy-of-lung-cancer-diagnosis-study-shows/
  31. Thong LT, Chou HS, Chew HSJ, Lau Y. Diagnostic test accuracy of artificial intelligence-based imaging for lung cancer screening: A systematic review and meta-analysis. Lung Cancer. 2023 Feb 1;176:4–13. doi: 10.1016/j.lungcan.2022.11.017.
  32. Cui M, Zhang DY. Artificial intelligence and computational pathology. Laboratory Investigation. 2021 Apr 1;101(4):412–22. doi: 10.1038/s41374-020-00514-0.
  33. Shahmoradi L, Safdari R, Ahmadi H, Zahmatkeshan M. Clinical decision support systems-based interventions to improve medication outcomes: A systematic literature review on features and effects. Med J Islam Repub Iran. 2021 Feb 22;35:27. doi: 10.47176/mjiri.35.27.
  34. Fontana C, Favaro M, Pelliccioni M, Minelli S, Bossa MC, Altieri A, et al. Laboratory Automation in Microbiology: Impact on Turnaround Time of Microbiological Samples in COVID Time. Diagnostics (Basel). 2023 Jul 1;13(13):2243. doi: 10.3390/diagnostics13132243.
  35. Shelke YP, Badge AK, Bankar NJ. Applications of Artificial Intelligence in Microbial Diagnosis. Cureus. 15(11):e49366. doi: 10.7759/cureus.49366.
  36. Chalasani SH, Syed J, Ramesh M, Patil V, Pramod Kumar TM. Artificial intelligence in the field of pharmacy practice: A literature review. Explor Res Clin Soc Pharm. 2023 Oct 21;12:100346. doi: 10.1016/j.rcsop.2023.100346.
  37. Khosravi M, Zare Z, Mojtabaeian SM, Izadi R. Artificial Intelligence and Decision-Making in Healthcare: A Thematic Analysis of a Systematic Review of Reviews. Health Serv Res Manag Epidemiol. 2024 Mar 5;11:23333928241234863. doi: 10.1177/23333928241234863.
  38. Taylor RA, Sangal RB, Smith ME, Haimovich AD, Rodman A, Iscoe MS, et al. Leveraging artificial intelligence to reduce diagnostic errors in emergency medicine: Challenges, opportunities, and future directions. Acad Emerg Med. 2025 Mar;32(3):327–39. doi: 10.1111/acem.15011.
  39. Bekbolatova M, Mayer J, Ong CW, Toma M. Transformative Potential of AI in Healthcare: Definitions, Applications, and Navigating the Ethical Landscape and Public Perspectives. Healthcare (Basel). 2024 Jan 5;12(2):125. doi: 10.3390/healthcare12020125.
  40. Chen X, Wang X, Qu Y. Constructing Ethical AI Based on the “Human-in-the-Loop” System. Systems. 2023 Nov;11(11):548. doi: 10.3390/systems11110548.
  41. Hamida SU, Chowdhury MJM, Chakraborty NR, Biswas K, Sami SK. Exploring the Landscape of Explainable Artificial Intelligence (XAI): A Systematic Review of Techniques and Applications. Big Data and Cognitive Computing. 2024 Nov;8(11):149. doi: 10.3390/bdcc8110149.
  42. Slavinska A, Palkova K, Grigoroviča E, Edelmers E, Pētersons A. Narrative Review of Legal Aspects in the Integration of Simulation-Based Education into Medical and Healthcare Curricula. Laws. 2024 Apr;13(2):15. doi: 10.3390/laws13020015.
  43. Perifanis NA, Kitsios F. Investigating the Influence of Artificial Intelligence on Business Value in the Digital Era of Strategy: A Literature Review. Information. 2023 Feb;14(2):85. doi: 10.3390/info14020085.
  44. Kahraman F, Aktas A, Bayrakceken S, Çakar T, Tarcan HS, Bayram B, et al. Physicians’ ethical concerns about artificial intelligence in medicine: a qualitative study: “The final decision should rest with a human.” Front Public Health. 2024 Nov 27;12:1428396. doi: 10.3389/fpubh.2024.1428396.
  45. Cestonaro C, Delicati A, Marcante B, Caenazzo L, Tozzo P. Defining medical liability when artificial intelligence is applied on diagnostic algorithms: a systematic review. Front Med (Lausanne). 2023 Nov 27;10:1305756. doi: 10.3389/fmed.2023.1305756.
  46. Mennella C, Maniscalco U, Pietro GD, Esposito M. Ethical and regulatory challenges of AI technologies in healthcare: A narrative review. Heliyon. 2024 Feb 15;10(4):e26297. doi: 10.1016/j.heliyon.2024.e26297.
  47. Wong LPW. Artificial Intelligence and Job Automation: Challenges for Secondary Students’ Career Development and Life Planning. Merits. 2024 Dec;4(4):370–99. doi: 10.3390/merits4040025.
  48. Khakpaki A. Advancements in artificial intelligence transforming medical education: a comprehensive overview. Med Educ Online. 0(1):2542807. doi: 10.1080/10872981.2024.2542807.
  49. Lawal O, Elechi K, Adekunle F, Farinde O, Kolapo T, Igbokwe C, et al. A Review on Artificial Intelligence and Point-of-Care Diagnostics to Combat Antimicrobial Resistance in Resource-Limited Healthcare Settings like Nigeria: Review Article. Journal of Pharma Insights and Research. 2025 Apr 5;3(2):166–75. doi: 10.69626/jpir.2025.03.019.
  50. Ni Y, Jia F. A Scoping Review of AI-Driven Digital Interventions in Mental Health Care: Mapping Applications Across Screening, Support, Monitoring, Prevention, and Clinical Education. Healthcare. 2025 Jan;13(10):1205. doi: 10.3390/healthcare13101205.
  51. Faiyazuddin Md, Rahman SJQ, Anand G, Siddiqui RK, Mehta R, Khatib MN, et al. The Impact of Artificial Intelligence on Healthcare: A Comprehensive Review of Advancements in Diagnostics, Treatment, and Operational Efficiency. Health Sci Rep. 2025 Jan 5;8(1):e70312. doi: 10.1002/hsr2.70312

LICENSE

Creative Commons License
This is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.