Large Language Models-Enabled Digital Twins for Precision Medicine in Rare Gynecological Tumors
Rare gynecological tumors (RGTs) present major clinical challenges due to their low incidence and heterogeneity. The lack of clear guidelines leads to suboptimal management and poor prognosis. Molecular tumor boards accelerate access to effective therapies by tailoring treatment based on biomarkers,...
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Zusammenfassung: | Rare gynecological tumors (RGTs) present major clinical challenges due to
their low incidence and heterogeneity. The lack of clear guidelines leads to
suboptimal management and poor prognosis. Molecular tumor boards accelerate
access to effective therapies by tailoring treatment based on biomarkers,
beyond cancer type. Unstructured data that requires manual curation hinders
efficient use of biomarker profiling for therapy matching. This study explores
the use of large language models (LLMs) to construct digital twins for
precision medicine in RGTs.
Our proof-of-concept digital twin system integrates clinical and biomarker
data from institutional and published cases (n=21) and literature-derived data
(n=655 publications with n=404,265 patients) to create tailored treatment plans
for metastatic uterine carcinosarcoma, identifying options potentially missed
by traditional, single-source analysis. LLM-enabled digital twins efficiently
model individual patient trajectories. Shifting to a biology-based rather than
organ-based tumor definition enables personalized care that could advance RGT
management and thus enhance patient outcomes. |
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DOI: | 10.48550/arxiv.2409.00544 |