When OpenClaw Meets Hospital: Toward an Agentic Operating System for Dynamic Clinical Workflows
AI 摘要
针对医院环境,提出基于LLM Agent的Agentic操作系统架构,保障安全和可审计性。
主要贡献
- 提出了面向医院环境的Agentic操作系统架构
- 设计了受限执行环境和文档中心交互模式
- 构建了页索引内存架构和医学技能库
方法论
通过改进OpenClaw框架,引入技能接口和资源隔离等基础设施级约束,构建安全可控的Agent系统。
原文摘要
Large language model (LLM) agents extend conventional generative models by integrating reasoning, tool invocation, and persistent memory. Recent studies suggest that such agents may significantly improve clinical workflows by automating documentation, coordinating care processes, and assisting medical decision making. However, despite rapid progress, deploying autonomous agents in healthcare environments remains difficult due to reliability limitations, security risks, and insufficient long-term memory mechanisms. This work proposes an architecture that adapts LLM agents for hospital environments. The design introduces four core components: a restricted execution environment inspired by Linux multi-user systems, a document-centric interaction paradigm connecting patient and clinician agents, a page-indexed memory architecture designed for long-term clinical context management, and a curated medical skills library enabling ad-hoc composition of clinical task sequences. Rather than granting agents unrestricted system access, the architecture constrains actions through predefined skill interfaces and resource isolation. We argue that such a system forms the basis of an Agentic Operating System for Hospital, a computing layer capable of coordinating clinical workflows while maintaining safety, transparency, and auditability. This work grounds the design in OpenClaw, an open-source autonomous agent framework that structures agent capabilities as a curated library of discrete skills, and extends it with the infrastructure-level constraints required for safe clinical deployment.