Semantically Informed Salient Regions Guided Radiology Report Generation
By: Zeyi Hou , Zeqiang Wei , Ruixin Yan and more
Potential Business Impact:
Makes X-ray reports more accurate for doctors.
Recent advances in automated radiology report generation from chest X-rays using deep learning algorithms have the potential to significantly reduce the arduous workload of radiologists. However, due to the inherent massive data bias in radiology images, where abnormalities are typically subtle and sparsely distributed, existing methods often produce fluent yet medically inaccurate reports, limiting their applicability in clinical practice. To address this issue effectively, we propose a Semantically Informed Salient Regions-guided (SISRNet) report generation method. Specifically, our approach explicitly identifies salient regions with medically critical characteristics using fine-grained cross-modal semantics. Then, SISRNet systematically focuses on these high-information regions during both image modeling and report generation, effectively capturing subtle abnormal findings, mitigating the negative impact of data bias, and ultimately generating clinically accurate reports. Compared to its peers, SISRNet demonstrates superior performance on widely used IU-Xray and MIMIC-CXR datasets.
Similar Papers
Automated Structured Radiology Report Generation
Computation and Language
Helps doctors write X-ray reports faster.
Radiology Report Generation with Layer-Wise Anatomical Attention
CV and Pattern Recognition
Helps doctors write X-ray reports faster.
VICCA: Visual Interpretation and Comprehension of Chest X-ray Anomalies in Generated Report Without Human Feedback
CV and Pattern Recognition
Helps AI explain X-ray pictures better.