Metaheuristic Optimization Review
MOR
3066-280X
10.54216/MOR
https://www.americaspg.com/journals/show/3854
2024
2024
Ethical Challenges and Regulatory Compliance in AI-Driven Neurological Diagnostics: A Review of Standards and Practices
Computer Science and Intelligent Systems Research Center, Blacksburg 24060, Virginia, USA
Mahmoud
Mahmoud
Department of Chemistry and Biochemistry, University of Arkansas, Fayetteville, AR 72701, USA
Ehsaneh
khodadadi
We should subject artificial intelligence (AI) to neurological diagnostics for detailed ethical consideration and examination of compliance questions. When applied to neuroimaging, these AI technologies improve diagnostic performance and treatment planning; however, they give rise to issues such as algorithmic bias, data privacy, and the intelligibility of resulting AI-generated insights. The issue of bias is related to the necessity of obtaining informed consent because of using patient data for training models of AI, which in turn will create more problems since the machine learning process will be based on data that is itself bigoted. In addition, the self-governing characteristic of AI systems creates additional concerns regarding responsibility for misuse; it is still unclear who is to blame when an AI system commits an obvious mistake, like misdiagnosis or incorrect treatment. Governance structures must adapt to these questions to guarantee that healthcare AI is ethically upraised, transparent, and fair. This review underscores the importance of interprofessional relationships between researchers and scholars, clinicians and practitioners, and ethicists when dealing with these issues. As social safeguards, demographic benchmarks and best practices have to be set, it enables the medical field to benefit from the opportunities provided by AI in neurological diagnostics and uphold the patient's respect for their rights while pushing for equal access to equal quality health care. Lastly, it becomes imperative to counter these ethical questions, which is imperative for the effectiveness of AI technologies and for building public acceptance of this technology in clinical practice.
2025
2025
24
32
10.54216/MOR.040203
https://www.americaspg.com/articleinfo/41/show/3854