MarkTechPost@AI 2024年11月04日
MDAgents: A Dynamic Multi-Agent Framework for Enhanced Medical Decision-Making with Large Language Models
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MDAgents是一个新颖的动态多智能体框架,旨在通过根据任务复杂度调整大型语言模型(LLM)的协作方式,提升医疗决策的准确性。该框架模拟真实世界的医疗决策过程,根据任务复杂性动态地选择单一或团队协作模式。研究表明,MDAgents在10个医疗基准测试中的7个中表现优异,准确率最高提升了4.2%。此外,通过整合主持人审查和外部医学知识,团队协作模式的准确率平均提高了11.8%,展现出MDAgents在临床诊断中的巨大潜力。

🤔MDAgents框架模拟临床咨询动态,根据医疗任务的复杂程度(低、中、高)动态分配大型语言模型(LLM)的角色,可以是单一专家或多学科团队。

🤝基于任务复杂度,MDAgents采用不同的分析方法,从个体评估到协作讨论,最终综合所有见解形成最终决策。

📊在10个医疗基准测试中,MDAgents在7个测试中表现优异,准确率最高提升了4.2%,并通过消融实验验证了主持人审查和外部医学知识在提高团队协作准确性方面的作用。

📈通过整合主持人审查和外部医学知识,团队协作模式的准确率平均提高了11.8%,证明了MDAgents在临床诊断中具有显著的应用潜力。

🔄MDAgents框架在参数变化(如温度调整)方面表现出良好的鲁棒性和适应性,强调了其在复杂医疗决策任务中的适用性。

Foundation models hold promise in medicine, especially in assisting complex tasks like Medical Decision-Making (MDM). MDM is a nuanced process requiring clinicians to analyze diverse data sources—like imaging, electronic health records, and genetic information—while adapting to new medical research. LLMs could support MDM by synthesizing clinical data and enabling probabilistic and causal reasoning. However, applying LLMs in healthcare remains challenging due to the need for adaptable, multi-tiered approaches. Although multi-agent LLMs show potential in other fields, their current design lacks integration with the collaborative, tiered decision-making essential for effective clinical use.

LLMs are increasingly applied to medical tasks, such as answering medical exam questions, predicting clinical risks, diagnosing, generating reports, and creating psychiatric evaluations. Improvements in medical LLMs primarily stem from training with specialized data or using inference-time methods like prompt engineering and Retrieval Augmented Generation (RAG). General-purpose models, like GPT-4, perform well on medical benchmarks through advanced prompts. Multi-agent frameworks enhance accuracy, with agents collaborating or debating to solve complex tasks. However, existing static frameworks can limit performance across diverse tasks, so a dynamic, multi-agent approach may better support complex medical decision-making.

MIT, Google Research, and Seoul National University Hospital developed Medical Decision-making Agents (MDAgents), a multi-agent framework designed to dynamically assign collaboration among LLMs based on medical task complexity, mimicking real-world medical decision-making. MDAgents adaptively choose solo or team-based collaboration tailored to specific tasks, performing well across various medical benchmarks. It surpassed prior methods in 7 out of 10 benchmarks, achieving up to a 4.2% improvement in accuracy. Key steps include assessing task complexity, selecting appropriate agents, and synthesizing responses, with group reviews improving accuracy by 11.8%. MDAgents also balance performance with efficiency by adjusting agent usage.

The MDAgents framework is structured around four key stages in medical decision-making. It begins by assessing the complexity of a medical query—classifying it as low, moderate, or high. Based on this assessment, appropriate experts are recruited: a single clinician for simpler cases or a multi-disciplinary team for more complex ones. The analysis stage then uses different approaches based on case complexity, ranging from individual evaluations to collaborative discussions. Finally, the system synthesizes all insights to form a conclusive decision, with accurate results indicating MDAgents’ effectiveness compared to single-agent and other multi-agent setups across various medical benchmarks.

The study assesses the framework and baseline models across various medical benchmarks under Solo, Group, and Adaptive conditions, showing notable robustness and efficiency. The Adaptive method, MDAgents, effectively adjusts inference based on task complexity and consistently outperforms other setups in seven of ten benchmarks. Researchers who test datasets like MedQA and Path-VQA find that adaptive complexity selection enhances decision accuracy. By incorporating MedRAG and a moderator’s review, accuracy improves by up to 11.8%. Additionally, the framework’s resilience across parameter changes, including temperature adjustments, highlights its adaptability for complex medical decision-making tasks.

In conclusion, the study introduces MDAgents, a framework enhancing the role of LLMs in medical decision-making by structuring their collaboration based on task complexity. Inspired by clinical consultation dynamics, MDAgents assign LLMs to either solo or group roles as needed, aiming to improve diagnostic accuracy. Testing across ten medical benchmarks shows that MDAgents outperform other methods on seven tasks, with up to a 4.2% accuracy gain (p < 0.05). Ablation studies reveal that combining moderator reviews and external medical knowledge in group settings boosts accuracy by an average of 11.8%, underscoring MDAgents’ potential in clinical diagnosis.


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相关标签

MDAgents 大型语言模型 医疗决策 多智能体 AI医疗
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