Cross-Modal Clinical Knowledge Integration for Mammography Report Generation 文章

ArXiv CS.CV2026-06-01NEWSen作者: Jiayi Zhu, Fuxiang Huang, Yu Xie, Xi Wang, Zhixuan Chen, Yuan Guo, Qingcong Kong, Zhenhui Li, Qiong Luo, Hao Chen

摘要

arXiv:2605.31093v1 Announce Type: new Abstract: Breast cancer is a major global health concern, and mammography screening plays a central role in early detection. The large volume of screening examinations creates a substantial workload for radiologists, making accurate and consistent report generation a critical clinical challenge. Existing automated mammography report generation methods primarily focus on direct visual-to-text mapping, while overlooking the structured clinical reasoning process followed by radiologists in real-world practice. To address this limitation, we propose MammoRG, a mammography report generation framework that explicitly simulates the clinical reporting workflow by following the BI-RADS guideline and incorporating prior clinical knowledge to produce diagnostic reports. Specifically, MammoRG adopts a two-stage training framework.

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