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What happens when artificial intelligence moves beyond images and begins interpreting clinical notes, kidney biopsies, multimodal cancer data, and even healthcare costs?
In this episode, I open the year by exploring four recent studies that show how AI is expanding across the full spectrum of medical data. From Large Language Models (LLM) reading unstructured clinical text to computational pathology supporting rare kidney disease diagnosis, multimodal cancer prediction, and cost-effectiveness modeling in oncology, this session connects innovation with real-world clinical impact.
Across all discussions, one theme is clear: progress depends not just on performance, but on integration, validation, interpretability, and trust.
HIGHLIGHTS:
00:00–05:30 | Welcome & 2026 Outlook
New year reflections, global community check-in, and upcoming Digital Pathology Place initiatives.
05:30–16:00 | LLMs for Clinical Phenotyping
How GPT-4 and NLP automate phenotyping from free-text EHR notes in Crohn’s disease, reducing manual chart review while matching expert performance.
16:00–23:30 | AI Screening for Fabry Nephropathy
A computational pathology pipeline identifies foamy podocytes on renal biopsies and introduces a quantitative Zebra score to support nephropathologists.
23:30–29:30 | Is AI Cost-Effective in Oncology?
A Markov model evaluates AI-based response prediction in locally advanced rectal cancer, highlighting when AI delivers value—and when it does not.
29:30–38:30 | LLM-Guided Arbitration in Multimodal AI
A multi-expert deep learning framework uses large language models to resolve disagreement between AI models, improving transparency and robustness.
38:30–44:30 | Real-World AI & Cautionary Notes
Ambient clinical scribing in practice, AI hallucinated citations, and why guardrails remain essential.
KEY TAKEAWAYS
• LLMs can extract meaningful clinical phenotypes from narrative notes at scale
• AI can support rare disease diagnosis without replacing expert judgment
• Economic value matters as much as technical performance
• Explainability and arbitration are becoming critical in multimodal AI systems
• Human oversight remains central to responsible adoption
Resources & References
Support the show
Get the "Digital Pathology 101" FREE E-book and join us!
By Aleksandra Zuraw, DVM, PhD5
77 ratings
Send a text
What happens when artificial intelligence moves beyond images and begins interpreting clinical notes, kidney biopsies, multimodal cancer data, and even healthcare costs?
In this episode, I open the year by exploring four recent studies that show how AI is expanding across the full spectrum of medical data. From Large Language Models (LLM) reading unstructured clinical text to computational pathology supporting rare kidney disease diagnosis, multimodal cancer prediction, and cost-effectiveness modeling in oncology, this session connects innovation with real-world clinical impact.
Across all discussions, one theme is clear: progress depends not just on performance, but on integration, validation, interpretability, and trust.
HIGHLIGHTS:
00:00–05:30 | Welcome & 2026 Outlook
New year reflections, global community check-in, and upcoming Digital Pathology Place initiatives.
05:30–16:00 | LLMs for Clinical Phenotyping
How GPT-4 and NLP automate phenotyping from free-text EHR notes in Crohn’s disease, reducing manual chart review while matching expert performance.
16:00–23:30 | AI Screening for Fabry Nephropathy
A computational pathology pipeline identifies foamy podocytes on renal biopsies and introduces a quantitative Zebra score to support nephropathologists.
23:30–29:30 | Is AI Cost-Effective in Oncology?
A Markov model evaluates AI-based response prediction in locally advanced rectal cancer, highlighting when AI delivers value—and when it does not.
29:30–38:30 | LLM-Guided Arbitration in Multimodal AI
A multi-expert deep learning framework uses large language models to resolve disagreement between AI models, improving transparency and robustness.
38:30–44:30 | Real-World AI & Cautionary Notes
Ambient clinical scribing in practice, AI hallucinated citations, and why guardrails remain essential.
KEY TAKEAWAYS
• LLMs can extract meaningful clinical phenotypes from narrative notes at scale
• AI can support rare disease diagnosis without replacing expert judgment
• Economic value matters as much as technical performance
• Explainability and arbitration are becoming critical in multimodal AI systems
• Human oversight remains central to responsible adoption
Resources & References
Support the show
Get the "Digital Pathology 101" FREE E-book and join us!

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