Enhancing Clinical Trial Patient Matching through Knowledge Augmentation and Reasoning with Multi-Agent
About
Matching patients effectively and efficiently for clinical trials is a significant challenge due to the complexity and variability of patient profiles and trial criteria. This paper introduces \textbf{Multi-Agent for Knowledge Augmentation and Reasoning (MAKAR)}, a novel multi-agent system that enhances patient-trial matching by integrating criterion augmentation with structured reasoning. MAKAR consistently improves performance by an average of 7\% across different datasets. Furthermore, it enables privacy-preserving deployment and maintains competitive performance when using smaller open-source models. Overall, MAKAR can contributes to more transparent, accurate, and privacy-conscious AI-driven patient matching.
Hanwen Shi, Jin Zhang, Kunpeng Zhang• 2024
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Patient eligibility classification | ClinicalTrial Dataset | Accuracy98.7 | 6 | |
| Patient eligibility classification | N2C2 Track 1 2018 | Accuracy92.2 | 4 |
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