The Impact of Auxiliary Patient Data on Automated Chest X-Ray Report Generation and How to Incorporate It (2406.13181v2)
Abstract: This study investigates the integration of diverse patient data sources into multimodal LLMs for automated chest X-ray (CXR) report generation. Traditionally, CXR report generation relies solely on CXR images and limited radiology data, overlooking valuable information from patient health records, particularly from emergency departments. Utilising the MIMIC-CXR and MIMIC-IV-ED datasets, we incorporate detailed patient information such as vital signs, medicines, and clinical history to enhance diagnostic accuracy. We introduce a novel approach to transform these heterogeneous data sources into embeddings that prompt a multimodal LLM; this significantly enhances the diagnostic accuracy of generated radiology reports. Our comprehensive evaluation demonstrates the benefits of using a broader set of patient data, underscoring the potential for enhanced diagnostic capabilities and better patient outcomes through the integration of multimodal data in CXR report generation.
- Aaron Nicolson (13 papers)
- Shengyao Zhuang (42 papers)
- Jason Dowling (9 papers)
- Bevan Koopman (37 papers)