+
Skip to content

Metadata correction for 2025.findings-acl.1298 #6173

@yczhou001

Description

@yczhou001

JSON data block

{
  "anthology_id": "2025.findings-acl.1298",
  "abstract": "Recent advancements in medical Large Language Models (LLMs) have showcased their powerful reasoning and diagnostic capabilities. Despite their success, current unified multimodal medical LLMs face limitations in knowledge update costs, comprehensiveness, and flexibility. To address these challenges, we introduce the Modular Multi-Agent Framework for Multi-Modal Medical Diagnosis (MAM). Inspired by our empirical findings highlighting the benefits of role assignment and diagnostic discernment in LLMs, MAM decomposes the medical diagnostic process into specialized roles: a General Practitioner, Specialist Team, Radiologist, Medical Assistant, and Director, each embodied by an LLM-based agent. This modular and collaborative framework enables efficient knowledge updates and leverages existing medical LLMs and knowledge bases. Extensive experimental evaluations conducted on a wide range of publicly accessible multimodal medical datasets, incorporating text, image, audio, and video modalities, demonstrate that MAM consistently surpasses the performance of modality-specific LLMs. Notably, MAM achieves significant performance improvements ranging from 18% to 365% compared to baseline models. Our code, data, and prompts are released at <url>https://github.com/yczhou001/MAM</url>."
}

Metadata

Metadata

Labels

approvedUsed to note team approval of metadata requestscorrectionfor corrections submitted to the anthologymetadataCorrection to metadata

Type

No type

Projects

No projects

Milestone

No milestone

Relationships

None yet

Development

No branches or pull requests

Issue actions

    点击 这是indexloc提供的php浏览器服务,不要输入任何密码和下载