DrugReX:一个可解释的药物再利用系统,由大型语言模型和基于文献的知识图驱动。

Liang-Chin Huang, Hunki Paek, Kyeryoung Lee, Ediz Calay, Deepak Pillai, Nneka Ofoegbu, Bin Lin, Hua Xu, Xiaoyan Wang
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引用次数: 0

摘要

药物再利用通过寻找现有药物的新用途,为治疗开发提供了一种既省时又经济的方法。此外,由于决策过程缺乏透明度,实现药物再利用的可解释性仍然是一个挑战,阻碍了研究人员对产生的见解的理解和信任。为了解决这些问题,我们提出了DrugReX,一个集成了基于文献的知识图、嵌入、评分系统和使用大型语言模型(llm)的解释模块的系统。我们在15个已确定的药物再利用案例中验证了DrugReX,获得了显著的高分。作为一个现实世界的用例,我们应用了DrugReX来识别阿尔茨海默病和相关痴呆(ADRD)的候选药物,并彻底评估了该管道。该系统确定了25个有希望的候选药物,其中9个与fda批准的ADRD药物有关,10个与正在进行的临床试验有关。对于可解释性,我们使用法学硕士来生成由基于文献的知识图谱证据支持的解释。领域专家评估显示,与单独使用LLM相比,drugrex生成的解释在质量和清晰度方面都优于LLM,增强了重新利用预测的可解释性。这项研究首次整合了llm,为药物再利用提供了可解释的见解,将计算精度与可解释性联系起来,从而最终在治疗开发中实现更透明、更可靠的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DrugReX: an explainable drug repurposing system powered by large language models and literature-based knowledge graph.

Drug repurposing offers a time-efficient and cost-effective approach for therapeutic development by finding new uses for existing drugs. Additionally, achieving explainability in drug repurposing remains a challenge due to the lack of transparency in decision-making processes, hindering researchers' understanding and trust in the generated insights. To address these issues, we present DrugReX, a system integrating a literature-based knowledge graph, embedding, scoring system, and explanation modules using large language models (LLMs). We validated DrugReX on 15 established drug repurposing cases, achieving significantly high scores. As a real-world use case, we applied DrugReX to identify candidate drugs for Alzheimer's disease and related dementias (ADRD) and thoroughly evaluated the pipeline. The system identified 25 promising candidates, with nine clustering with FDA-approved ADRD drugs and 10 linked to ongoing clinical trials. For explainability, an LLM was employed to generate explanations supported by evidence from the literature-based knowledge graph. Domain expert evaluation revealed that DrugReX-produced explanations were superior in quality and clarity than using an LLM alone, enhancing the explainability of repurposing predictions. This study represents the first integration of LLMs to provide explainable insights into drug repurposing, bridging computation precision with explainability, and thus, ultimately enabling more transparent and reliable decision-making in therapeutic development.

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