Healthcare organizations should set rules for how AI systems should be used in clinical workflows to maintain clear accountability structures.
Research gap analysis derived from 3 computer_science papers in our local library.
The gap
Healthcare organizations should set rules for how AI systems should be used in clinical workflows to maintain clear accountability structures.
Consensus across the literature
Clustered from 4 gap mentions across 3 papers via embedding cosine ≥ 0.62.
Research trend
Established — well-defined area with open sub-problems.
Supporting evidence — 4 representative gaps
- Artificial Intelligence in Medical Imaging: A Critical Review of Methods, Applications, and Clinical Implementation (2026) · doi
The effective incorporation of AI systems into clinical practice will necessitate sustained collaboration between clinicians and engineers, the creation of equitable datasets for underrepresented pathologies, and real-world validation via regulatory processes and scalable frameworks.
Keywords: effective incorporation systems clinical practice necessitate sustained collaboration clinicians engineers creation equitable datasets underrepresented pathologies - Artificial intelligence for traumatic brain injury imaging: a translational review from algorithm development to clinical implementation (2026) · doi
Need to systematically address barriers of technical robustness, regulatory requirements, economic constraints, and human factors to successfully translate AI into clinical practice.
Keywords: need systematically address barriers technical robustness regulatory requirements economic constraints human factors successfully translate clinical - Blockchain meets AI in healthcare: a review of convergent technologies for digital health transformation (2026) · doi
AI faces challenges in management costs, quality of services, efficiency of health supply chain, and exchange of information between different healthcare systems.
Keywords: faces challenges management costs quality services efficiency health supply chain exchange information different healthcare systems - Artificial Intelligence in Medical Imaging: A Critical Review of Methods, Applications, and Clinical Implementation (2026) · doi
Healthcare organizations should set rules for how AI systems should be used in clinical workflows to maintain clear accountability structures.
Keywords: healthcare organizations rules systems used clinical workflows maintain clear accountability structures
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