category
bioRxiv
date
Mar 14, 2026
slug
status
Published
summary
创新点包括:1) 通过AI智能协调38个专业工具的统一生态系统,实现端到端自动化;2) 提出Model-Context-Protocol (MCP)协议实现软件兼容性转换;3) 将复杂蛋白质设计流程缩短至11分钟;4) 成功自主设计高亲和力结合蛋白和治疗性纳米抗体。
tags
合成生物学
抗体核酸偶联
蛋白质组学
type
Post

📄 原文题目

ProteinMCP: An Agentic AI Framework for Autonomous Protein Engineering

🔗 原文链接

💡 AI 核心解读

创新点包括:1) 通过AI智能协调38个专业工具的统一生态系统,实现端到端自动化;2) 提出Model-Context-Protocol (MCP)协议实现软件兼容性转换;3) 将复杂蛋白质设计流程缩短至11分钟;4) 成功自主设计高亲和力结合蛋白和治疗性纳米抗体。

📝 英文原版摘要

Computational protein design is often constrained by slow, complex, inaccessible, and highly sophiscated and expert-dependent workflows that hinder its transferrability and generalization power for broader applications. We present ProteinMCP, an agentic AI framework designed to accelerate and democratize protein engineering. ProteinMCP automates end-to-end scientific tasks, delivering dramatic gains in efficiency; for instance, a comprehensive protein fitness modeling workflow was completed in just 11 minutes. This performance is achieved by an AI agent that intelligently orchestrates a unified ecosystem of 38 specialized tools, made accessible through a Model-Context-Protocol (MCP). A cornerstone of the framework is an automated pipeline that converts existing software into MCP-compliant servers, ensuring the platform is both powerful and perpetually extensible. We further demonstrate its capabilities through the successful autonomous design and selection of high-affinity de novo binders and therapeutic nanobodies. By removing technical barriers, ProteinMCP has the potential to shorten the design-build-test cycle and make advanced computational protein design accessible to the broader scientific community.
全面的长读长转录组分析揭示卵巢癌进展中的替代RNA加工特征和异构体多样性用于从宏核糖体分析(metaRibo-Seq)数据中提取分类和功能信息的多组学处理流程(MOPP)
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