A systematic literature review on transparency and interpretability of AI models in healthcare: taxonomies, tools, techniques, datasets, open research challenges, and future trends | Synapse
March 3, 2026
A systematic literature review on transparency and interpretability of AI models in healthcare: taxonomies, tools, techniques, datasets, open research challenges, and future trends
Key Points
Findings reveal that transparency in AI models is crucial for reliable healthcare outcomes, enhancing trust among stakeholders.
Key evidence indicates that interpretability tools are varied, but only a small percentage meet the needs of healthcare applications.
Systematic literature review analyzes datasets and techniques across multiple studies, pointing to the importance of shared benchmarks.
This assessment highlights the need for improved frameworks to address open research challenges in AI transparency and interpretability.