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Leveraging Large Language Models to Extract Prognostic Pathology Features in Ewing Sarcoma
0
Zitationen
16
Autoren
2026
Jahr
Abstract
This study demonstrates that LLMs can reliably unlock "dark data" from historical clinical trials, rendering vast archives of unstructured medical documents accessible for retrospective analysis. The identification of NSE and S100 as robust prognostic biomarkers suggests that these widely available immunohistochemical stains provide valuable information beyond standard diagnostic information. These findings support the integration of automated data extraction tools in research workflows and suggest that NSE and S100 status should be considered in the design of future risk-stratified clinical trials for Ewing sarcoma.
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Autoren
Institutionen
- Southwestern Medical Center(US)
- The University of Texas Southwestern Medical Center(US)
- Children's Medical Center(US)
- Children's Hospital Colorado(US)
- University of Colorado Denver(US)
- Riley Hospital for Children(US)
- Dana-Farber/Boston Children's Cancer and Blood Disorders Center(US)
- C. S. Mott Children's Hospital(US)