Rx Strategist: Prescription Verification using LLM Agents System
- URL: http://arxiv.org/abs/2409.03440v1
- Date: Thu, 5 Sep 2024 11:42:26 GMT
- Title: Rx Strategist: Prescription Verification using LLM Agents System
- Authors: Phuc Phan Van, Dat Nguyen Minh, An Dinh Ngoc, Huy Phan Thanh,
- Abstract summary: Rx Strategist uses knowledge graphs and different search strategies to enhance the power of Large Language Models (LLMs) inside an agentic framework.
This multifaceted technique allows for a multi-stage LLM pipeline and reliable information retrieval from a custom-built active ingredient database.
Our findings demonstrate that Rx Strategist surpasses many current LLMs, achieving performance comparable to that of a highly experienced clinical pharmacist.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: To protect patient safety, modern pharmaceutical complexity demands strict prescription verification. We offer a new approach - Rx Strategist - that makes use of knowledge graphs and different search strategies to enhance the power of Large Language Models (LLMs) inside an agentic framework. This multifaceted technique allows for a multi-stage LLM pipeline and reliable information retrieval from a custom-built active ingredient database. Different facets of prescription verification, such as indication, dose, and possible drug interactions, are covered in each stage of the pipeline. We alleviate the drawbacks of monolithic LLM techniques by spreading reasoning over these stages, improving correctness and reliability while reducing memory demands. Our findings demonstrate that Rx Strategist surpasses many current LLMs, achieving performance comparable to that of a highly experienced clinical pharmacist. In the complicated world of modern medications, this combination of LLMs with organized knowledge and sophisticated search methods presents a viable avenue for reducing prescription errors and enhancing patient outcomes.
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