cs.AI updates on arXiv.org 07月22日 12:44
WSI-Agents: A Collaborative Multi-Agent System for Multi-Modal Whole Slide Image Analysis
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本文提出一种名为WSI-Agents的新型协作多智能体系统,用于多模态病理图像分析,通过任务分配、验证机制和总结模块提升准确性与 versatility。

arXiv:2507.14680v1 Announce Type: cross Abstract: Whole slide images (WSIs) are vital in digital pathology, enabling gigapixel tissue analysis across various pathological tasks. While recent advancements in multi-modal large language models (MLLMs) allow multi-task WSI analysis through natural language, they often underperform compared to task-specific models. Collaborative multi-agent systems have emerged as a promising solution to balance versatility and accuracy in healthcare, yet their potential remains underexplored in pathology-specific domains. To address these issues, we propose WSI-Agents, a novel collaborative multi-agent system for multi-modal WSI analysis. WSI-Agents integrates specialized functional agents with robust task allocation and verification mechanisms to enhance both task-specific accuracy and multi-task versatility through three components: (1) a task allocation module assigning tasks to expert agents using a model zoo of patch and WSI level MLLMs, (2) a verification mechanism ensuring accuracy through internal consistency checks and external validation using pathology knowledge bases and domain-specific models, and (3) a summary module synthesizing the final summary with visual interpretation maps. Extensive experiments on multi-modal WSI benchmarks show WSI-Agents's superiority to current WSI MLLMs and medical agent frameworks across diverse tasks.

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病理图像分析 多智能体系统 模型集成 医疗AI
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