计算机科学
人工智能
多路复用
污渍
免疫组织化学
仿形(计算机编程)
特征(语言学)
水准点(测量)
语义特征
染色
表达式(计算机科学)
模式识别(心理学)
机器学习
自然语言处理
病态的
计算机视觉
语义学(计算机科学)
语义分析(机器学习)
分子病理学
作者
Fuqiang Chen,Haoran Zhang,Wanming Hu,Deboch Eyob Abera,Yue Peng,Boyun Zheng,Yiwen Sun,Jing Cai,Wenjian Qin
标识
DOI:10.1109/tmi.2026.3663755
摘要
Immunohistochemical (IHC) staining enables precise molecular profiling of protein expression, with over 200 clinically available antibody-based tests in modern pathology. However, comprehensive IHC analysis is frequently limited by insufficient tissue quantities in small biopsies. Therefore, virtual multiplex staining emerges as an innovative solution to digitally transform H&E images into multiple IHC representations, yet current methods still face three critical challenges: (1) inadequate semantic guidance for multi-staining, (2) inconsistent distribution of immunochemistry staining, and (3) spatial misalignment across different stain modalities. To overcome these limitations, we present a prompt-guided framework for virtual multiplex IHC staining using only uniplex training data (PGVMS). Our framework introduces three key innovations corresponding to each challenge: First, an adaptive prompt guidance mechanism employing a pathological visual language model dynamically adjusts staining prompts to resolve semantic guidance limitations (Challenge 1). Second, our protein-aware learning strategy (PALS) maintains precise protein expression patterns by direct quantification and constraint of protein distributions (Challenge 2). Third, the prototype-consistent learning strategy (PCLS) establishes cross-image semantic interaction to correct spatial misalignments (Challenge 3). Evaluated on two benchmark datasets, PGVMS demonstrates superior performance in pathological consistency. In general, PGVMS represents a paradigm shift from dedicated single-task models toward unified virtual staining systems.
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