Agentic Systems in Radiology: Design, Applications, Evaluation, and Challenges
By: Christian Bluethgen , Dave Van Veen , Daniel Truhn and more
Potential Business Impact:
Helps doctors use AI to understand X-rays better.
Building agents, systems that perceive and act upon their environment with a degree of autonomy, has long been a focus of AI research. This pursuit has recently become vastly more practical with the emergence of large language models (LLMs) capable of using natural language to integrate information, follow instructions, and perform forms of "reasoning" and planning across a wide range of tasks. With its multimodal data streams and orchestrated workflows spanning multiple systems, radiology is uniquely suited to benefit from agents that can adapt to context and automate repetitive yet complex tasks. In radiology, LLMs and their multimodal variants have already demonstrated promising performance for individual tasks such as information extraction and report summarization. However, using LLMs in isolation underutilizes their potential to support complex, multi-step workflows where decisions depend on evolving context from multiple information sources. Equipping LLMs with external tools and feedback mechanisms enables them to drive systems that exhibit a spectrum of autonomy, ranging from semi-automated workflows to more adaptive agents capable of managing complex processes. This review examines the design of such LLM-driven agentic systems, highlights key applications, discusses evaluation methods for planning and tool use, and outlines challenges such as error cascades, tool-use efficiency, and health IT integration.
Similar Papers
Agentic large language models improve retrieval-based radiology question answering
Computation and Language
Boosts AI accuracy in radiology diagnoses
Agentic large language models improve retrieval-based radiology question answering
Computation and Language
Boosts AI accuracy on radiology questions
Medical AI Consensus: A Multi-Agent Framework for Radiology Report Generation and Evaluation
Artificial Intelligence
Helps doctors write patient reports faster.