LLMs and AI Life Models for Traditional Chinese Medicine-derived Geroprotector Formulation.

IF 7 2区 医学 Q1 GERIATRICS & GERONTOLOGY
Fedor Galkin, Feng Ren, Alex Zhavoronkov
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引用次数: 0

Abstract

Traditional Chinese Medicine (TCM) represents a vast repository of therapeutic knowledge, but its integration with modern drug discovery remains challenging due to fundamental differences in theoretical frameworks. We developed an AI agent-driven framework combining Precious3GPT (P3GPT), a multi-omics transformer model, with the BATMAN-TCM2 database of TCM compound-target interactions to bridge this gap. As a proof-of-concept, we used P3GPT-generated cross-species and cross-tissue signatures to screen TCM compounds, herbs, and formulas to identify novel natural geroprotectors. The cross-species analysis identified 13 conserved aging-associated genes, leading to the identification of 34 TCM compounds with significant target overlap and enabling identification of HUA SHAN WU ZI DAN and other TCM formulations as a promising historical formula. Our work demonstrates the feasibility of using AI to systematically bridge TCM and modern pharmacology, enabling rational design of multi-component formulations targeting age-related processes across multiple tissues and species. This approach provides a framework for modernizing traditional medicine while maintaining its holistic therapeutic principles. To help other teams integrate AI experimentation in their research process, we publicly release all materials and codebase used in this work, including the multi-agent system, cross-species and cross-tissue signatures of aging, as well as TCM databases formatted for AI interactions.

中医药衍生Geroprotector配方的llm和AI生命模型。
传统中医(TCM)代表着一个巨大的治疗知识宝库,但由于理论框架的根本差异,它与现代药物发现的整合仍然具有挑战性。我们开发了一个人工智能代理驱动的框架,将多组学转换模型Precious3GPT (P3GPT)与中药化合物-靶点相互作用的BATMAN-TCM2数据库结合起来,以弥补这一空白。作为概念验证,我们使用p3gpt生成的跨物种和跨组织特征来筛选中药化合物、草药和配方,以识别新的天然老年保护剂。通过跨物种分析,鉴定出13个保守的衰老相关基因,鉴定出34个具有显著靶点重叠的中药化合物,从而使花山五子丹等中药复方成为具有发展前景的历史复方。我们的工作证明了利用人工智能系统地连接中医和现代药理学的可行性,从而能够合理设计针对多组织和物种的年龄相关过程的多成分配方。这种方法为传统医学现代化提供了一个框架,同时保持其整体治疗原则。为了帮助其他团队将人工智能实验整合到他们的研究过程中,我们公开发布了这项工作中使用的所有材料和代码库,包括多智能体系统、跨物种和跨组织的衰老特征,以及用于人工智能交互的中医数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Aging and Disease
Aging and Disease GERIATRICS & GERONTOLOGY-
CiteScore
14.60
自引率
2.70%
发文量
138
审稿时长
10 weeks
期刊介绍: Aging & Disease (A&D) is an open-access online journal dedicated to publishing groundbreaking research on the biology of aging, the pathophysiology of age-related diseases, and innovative therapies for conditions affecting the elderly. The scope encompasses various diseases such as Stroke, Alzheimer's disease, Parkinson’s disease, Epilepsy, Dementia, Depression, Cardiovascular Disease, Cancer, Arthritis, Cataract, Osteoporosis, Diabetes, and Hypertension. The journal welcomes studies involving animal models as well as human tissues or cells.
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