Adversarial Machine Learning in Healthcare: Risks to AI-Driven Diagnostics and Treatment Plans

Authors

  • Kristne T. Soberano State University of Northern Negros, Philippines
  • Kristine A. Condes State University of Northern Negros, Philippines

DOI:

https://doi.org/10.6000/1929-6029.2025.14.71

Keywords:

Adversarial Machine Learning, Medical AI Security, Deep Learning Vulnerabilities, Healthcare AI, Adversarial Defense Mechanisms, AI-driven Diagnostics

Abstract

The rapid integration of artificial intelligence (AI) in healthcare has enhanced diagnostics, predictive analytics, and clinical decision-making. However, AI-driven models, particularly deep learning architectures, remain highly vulnerable to adversarial machine learning (AML) attacks, which can result in misdiagnoses, unsafe treatment recommendations, and compromised patient safety. This study systematically evaluates adversarial risks in medical AI, quantifies their impact on model performance, and assesses the efficacy of defense mechanisms. We analyzed CNNs (medical imaging), RNNs (ECG analysis), and Transformer models (clinical NLP) under FGSM, PGD, and JSMA attacks. Results show that the CNN accuracy of 92% was reduced to 40% under JSMA, ECG-based AI performance dropped by 42% under PGD, and Transformer-based NLP models experienced a 30% decline under FGSM. Defense mechanisms such as randomized smoothing and adversarial training improved accuracy by 15% and 14%, respectively, though at high computational costs (1.8× and 1.5× training overhead). Across five independent trials, all degradations were statistically significant (p< 0.01), and ANOVA with Tukey’s HSD confirmed that randomized smoothing and adversarial training significantly outperformed gradient masking (p< 0.01). These findings demonstrate that medical AI systems are highly susceptible to adversarial manipulation and underscore the necessity of robust, efficient, and regulatory-compliant defenses. Strengthening adversarial resilience is critical to ensuring safe, reliable, and ethically responsible deployment of AI in healthcare.

References

Eskandar K. Artificial intelligence in healthcare: Explore the applications of AI in various medical domains, such as medical imaging, diagnosis, drug discovery, and patient care. Series Med Sci 2023; 4: 37-53.

Salammagari RR, Srivastava G. Artificial intelligence in healthcare: Revolutionizing disease diagnosis and treatment planning. Int J Res Comput Appl Inf Technol 2024; 7: 41-53.

Thompson S. AI in Healthcare: How Machine Learning is Revolutionizing Treatment and Diagnosis. EPH-International Journal of Science and Engineering 2023; 9(2): 28-46. DOI: https://doi.org/10.53555/ephijse.v9i2.255

Adenekan TK. AI-Driven Diagnostic Models for Cardiovascular Health: Exploring Security and Business Analytics in Aortic Stenosis Detection 2024.

Javanmard S. Revolutionizing medical practice: The impact of artificial intelligence (AI) on healthcare. OA J Applied Sci Technol 2024; 2(1): 01-16. DOI: https://doi.org/10.33140/OAJAST.02.01.07

Olawade DB, David-Olawade AC, Wada OZ, Asaolu AJ, Adereni T, Ling J. Artificial intelligence in healthcare delivery: Prospects and pitfalls. Journal of Medicine, Surgery, and Public Health 2024; 100108. DOI: https://doi.org/10.1016/j.glmedi.2024.100108

Love H, James C. AI-Driven Optimization in Healthcare: Enhancing Predictive Diagnostics and Personalized Treatment Strategies 2024.

Oyeniyi J, Oluwaseyi P. Emerging trends in AI-powered medical imaging: Enhancing diagnostic accuracy and treatment decisions. Int J Enhanced Res Sci Technol Eng 2024; 13.

Vallverdú J. Challenges and controversies of generative AI in medical diagnosis. Euphyía 2023; 17(32): 88-121. DOI: https://doi.org/10.33064/32euph4957

Finlayson SG, Bowers JD, Ito J, Zittrain JL, Beam AL, Kohane IS. Adversarial attacks on medical machine learning. Science 2019; 363(6433): 1287-1289. DOI: https://doi.org/10.1126/science.aaw4399

Muoka GW, Yi D, Ukwuoma CC, Mutale A, Ejiyi CJ, Mzee AK, et al. A comprehensive review and analysis of deep learning-based medical image adversarial attack and defense. Mathematics 2023; 11(20): 4272. DOI: https://doi.org/10.3390/math11204272

Bonagiri K, VS NM, Gopalsamy M, Iyswariya A, Sultanuddin SJ. AI-Driven Healthcare Cyber-Security: Protecting Patient Data and Medical Devices. 2024 Second International Conference on Intelligent Cyber-Physical Systems and Internet of Things (ICoICI) 2024; 107-112. DOI: https://doi.org/10.1109/ICoICI62503.2024.10696183

Mulukuntla S. Generative AI, Benefits, limitations, potential risks, and challenges in the healthcare industry. EPH-International Journal of Medical and Health Science 2022; 8(4): 1-9.

Dani L, Wajid Q. Mitigating Security Risks in Healthcare Applications through AI and Machine Learning 2024.

Alkayyali ZK, Taha AM, Zarandah QM, Abunasser BS, Barhoom AM, Abu-Naser SS. Advancements in AI for Medical Imaging: Transforming Diagnosis and Treatment 2024.

ALRuwaili HQ, Alharbi OE, Alshammari YM, Alrewaili FS, Alyamani IM, Alqurashi SM. Impact of Health Information Technology on Workflow Efficiency and Patient Safety in Pharmacy Practices: A Critical Review. International Journal of Biological & Pharmaceutical Science 2018; 4(1): 30-35.

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Published

2025-12-08

How to Cite

Soberano, K. T. ., & Condes, K. A. . (2025). Adversarial Machine Learning in Healthcare: Risks to AI-Driven Diagnostics and Treatment Plans. International Journal of Statistics in Medical Research, 14, 785–794. https://doi.org/10.6000/1929-6029.2025.14.71

Issue

Section

Specia Issue: New Advances in Multiple Statistical Comparison and Its Applications in Medicine