|国家预印本平台
首页|HER2 Expression Prediction with Flexible Multi-Modal Inputs via Dynamic Bidirectional Reconstruction

HER2 Expression Prediction with Flexible Multi-Modal Inputs via Dynamic Bidirectional Reconstruction

HER2 Expression Prediction with Flexible Multi-Modal Inputs via Dynamic Bidirectional Reconstruction

来源:Arxiv_logoArxiv
英文摘要

In breast cancer HER2 assessment, clinical evaluation relies on combined H&E and IHC images, yet acquiring both modalities is often hindered by clinical constraints and cost. We propose an adaptive bimodal prediction framework that flexibly supports single- or dual-modality inputs through two core innovations: a dynamic branch selector activating modality completion or joint inference based on input availability, and a cross-modal GAN (CM-GAN) enabling feature-space reconstruction of missing modalities. This design dramatically improves H&E-only accuracy from 71.44% to 94.25%, achieves 95.09% with full dual-modality inputs, and maintains 90.28% reliability under single-modality conditions. The "dual-modality preferred, single-modality compatible" architecture delivers near-dual-modality accuracy without mandatory synchronized acquisition, offering a cost-effective solution for resource-limited regions and significantly improving HER2 assessment accessibility.

Wei Yang、Yan Su、Yiran Zhu、Weizhen Li、Yunyue Pan、Chengchang Pan、Honggang Qi、Jie Qin

肿瘤学医学研究方法

Wei Yang,Yan Su,Yiran Zhu,Weizhen Li,Yunyue Pan,Chengchang Pan,Honggang Qi,Jie Qin.HER2 Expression Prediction with Flexible Multi-Modal Inputs via Dynamic Bidirectional Reconstruction[EB/OL].(2025-07-31)[2025-08-07].https://arxiv.org/abs/2506.10006.点此复制

评论