Trials / Completed
CompletedNCT07004660
Performances of Large Language Models in Kidney Allograft Diagnostics
- Status
- Completed
- Phase
- —
- Study type
- Observational
- Enrollment
- 240 (actual)
- Sponsor
- Paris Translational Research Center for Organ Transplantation · Academic / Other
- Sex
- All
- Age
- 0 Years – 100 Years
- Healthy volunteers
- Not accepted
Summary
Kidney allograft rejection diagnosis relies on the complex Banff classification, but its application is limited by variability and workload. Our group previously built a scripted automation system, though it required major expert input. This study assesses whether modern LLMs can achieve similar diagnostic performance using Banff-based prompts, without extensive manual engineering.
Detailed description
Kidney allograft rejection remains a leading cause of allograft failure. Histological diagnosis relies on the Banff classification, a complex and evolving rule based framework. While successive Banff working groups refined the guidelines over time, daily interpretation is still hampered by inter and intra pathologist variability and growing demands on renal pathologists. This is why our group previously built a fully scripted Banff automation system. However, this system demanded years of expert curation and bespoke code before reaching acceptable accuracy. Whether modern LLMs, which show high capabilities to generate consistent and transparent reasoning at scale, can match expert pathologists without such resource intensive engineering remains unknown. The present study was therefore designed to benchmark state of the art LLMs against consensus diagnoses from senior renal pathologists on a representative series of kidney allograft biopsies, and to explore whether properly engineered prompts can translate Banff rules into reliable, reproducible diagnostic output.
Conditions
Timeline
- Start date
- 2004-03-01
- Primary completion
- 2023-12-31
- Completion
- 2023-12-31
- First posted
- 2025-06-04
- Last updated
- 2025-06-04
Source: ClinicalTrials.gov record NCT07004660. Inclusion in this directory is not an endorsement.