Kavli Affiliate: Feng Yuan
| First 5 Authors: Yifan Gao, Yaoxian Dong, Wenbin Wu, Chaoyang Ge, Feng Yuan
| Summary:
Accurate lymph node metastasis (LNM) assessment in rectal cancer is essential
for treatment planning, yet current MRI-based evaluation shows unsatisfactory
accuracy, leading to suboptimal clinical decisions. Developing automated
systems also faces significant obstacles, primarily the lack of node-level
annotations. Previous methods treat lymph nodes as isolated entities rather
than as an interconnected system, overlooking valuable spatial and contextual
information. To solve this problem, we present WeGA, a novel weakly-supervised
global-local affinity learning framework that addresses these challenges
through three key innovations: 1) a dual-branch architecture with DINOv2
backbone for global context and residual encoder for local node details; 2) a
global-local affinity extractor that aligns features across scales through
cross-attention fusion; and 3) a regional affinity loss that enforces
structural coherence between classification maps and anatomical regions.
Experiments across one internal and two external test centers demonstrate that
WeGA outperforms existing methods, achieving AUCs of 0.750, 0.822, and 0.802
respectively. By effectively modeling the relationships between individual
lymph nodes and their collective context, WeGA provides a more accurate and
generalizable approach for lymph node metastasis prediction, potentially
enhancing diagnostic precision and treatment selection for rectal cancer
patients.
| Search Query: ArXiv Query: search_query=au:”Feng Yuan”&id_list=&start=0&max_results=3