人类生物学建模的多层框架:从基本的AI代理到全身AI代理。

ArXiv Pub Date : 2025-08-27
Aoqi Wang, Jiajia Liu, Jianguo Wen, Yangyang Luo, Zhiwei Fan, Liren Yang, Xi Hu, Ruihan Luo, Yankai Yu, Sophia Li, Weiling Zhao, Xiaobo Zhou
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引用次数: 0

摘要

我们设想,全身人工智能代理是一个全面的人工智能系统,旨在模拟、分析和优化人体在多个生物水平上的动态过程。通过集成计算模型、机器学习工具和实验平台,该系统旨在复制和预测从分子和细胞到组织、器官和整个身体系统的生理和病理过程。全身人工智能代理的核心是强调这些生物水平之间的整合和协调,从而分析分子变化如何影响细胞行为、组织反应、器官功能和系统结果。该系统以生物功能为重点,旨在促进对疾病机制的理解,支持治疗干预措施的发展,并增强个性化医疗。我们提出了两个专门的实现来证明该框架的实用性:(1)转移AI Agent,一个多尺度转移评分系统,通过整合分子、细胞和系统信号来表征肿瘤在起始、传播和定植阶段的进展;(2)药物AI Agent,这是一种系统级药物开发范式,其中药物AI Agent通过提供全身生理约束来动态指导临床前评估,包括类器官和基于芯片的模型。这种方法使长期疗效和毒性的预测建模超越了局部模型所能实现的。这两个代理说明了全身AI代理通过多层次集成和跨尺度推理来解决复杂生物医学挑战的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Layered Framework for Modeling Human Biology: From Basic AI Agents to a Full-Body AI Agent.

We envision the Full-Body AI Agent as a comprehensive AI system designed to simulate, analyze, and optimize the dynamic processes of the human body across multiple biological levels. By integrating computational models, machine learning tools, and experimental platforms, this system aims to replicate and predict both physiological and pathological processes, ranging from molecules and cells to tissues, organs, and entire body systems. Central to the Full-Body AI Agent is its emphasis on integration and coordination across these biological levels, enabling analysis of how molecular changes influence cellular behaviors, tissue responses, organ function, and systemic outcomes. With a focus on biological functionality, the system is designed to advance the understanding of disease mechanisms, support the development of therapeutic interventions, and enhance personalized medicine. We propose two specialized implementations to demonstrate the utility of this framework: (1) the metastasis AI Agent, a multi-scale metastasis scoring system that characterizes tumor progression across the initiation, dissemination, and colonization phases by integrating molecular, cellular, and systemic signals; and (2) the drug AI Agent, a system-level drug development paradigm in which a drug AI-Agent dynamically guides preclinical evaluations, including organoids and chip-based models, by providing full-body physiological constraints. This approach enables the predictive modeling of long-term efficacy and toxicity beyond what localized models alone can achieve. These two agents illustrate the potential of Full-Body AI Agent to address complex biomedical challenges through multi-level integration and cross-scale reasoning.

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