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424eP A novel multi-agent framework for patient eligibility assessment in oncological clinical trials
0
Zitationen
4
Autoren
2025
Jahr
Abstract
Patient eligibility assessment for oncology clinical trials demands comprehensive evaluation of multifaceted clinical data including demographic characteristics, lab tests, radiological findings, histopathological results, molecular profiles, and previous treatments. With increasing trial complexity and patient enrolment, traditional manual reviewing process is time-consuming and susceptible to personal variability, while large language models offer automation potential but it remains challenging in the maintenance of consistent judgments and transparent rationale when interpreting complex criteria in study protocols.
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