CXRAgent: Director-Orchestrated Multi-Stage Reasoning for Chest X-Ray Interpretation
Jinhui Lou, Yan Yang, Zhou Yu, Zhenqi Fu, Weidong Han, Qingming Huang, Jun Yu

TL;DR
CXRAgent introduces a director-orchestrated multi-stage reasoning framework for chest X-ray interpretation, enhancing adaptability, reliability, and collaborative diagnosis through tool coordination, evidence validation, and expert team assembly.
Contribution
It presents a novel multi-stage agent architecture with a central director that coordinates tools, validates evidence, and manages collaborative reasoning for improved CXR analysis.
Findings
Outperforms existing models on various CXR tasks
Provides visual evidence supporting diagnosis
Generalizes well to complex clinical scenarios
Abstract
Chest X-ray (CXR) plays a pivotal role in clinical diagnosis, and a variety of task-specific and foundation models have been developed for automatic CXR interpretation. However, these models often struggle to adapt to new diagnostic tasks and complex reasoning scenarios. Recently, LLM-based agent models have emerged as a promising paradigm for CXR analysis, enhancing model's capability through tool coordination, multi-step reasoning, and team collaboration, etc. However, existing agents often rely on a single diagnostic pipeline and lack mechanisms for assessing tools' reliability, limiting their adaptability and credibility. To this end, we propose CXRAgent, a director-orchestrated, multi-stage agent for CXR interpretation, where a central director coordinates the following stages: (1) Tool Invocation: The agent strategically orchestrates a set of CXR-analysis tools, with outputs…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Explainable Artificial Intelligence (XAI) · Machine Learning in Healthcare
