Introducing structured pathology knowledge can significantly enhance visual-language representation learning for computational pathology tasks.
The core message of this paper is that incorporating an online instance feature re-embedding module, such as the proposed Re-embedded Regional Transformer (R2T), can significantly improve the performance of multiple instance learning (MIL) models in computational pathology tasks by enabling supervised fine-tuning of the instance features.
A framework that can generate realistic colorectal tissue images along with corresponding glandular masks, controlled by the input gland layout.
Generierung von in-silico IHC-Bildern zur Nukleussegmentierung durch ReStainGAN.
In-silico 데이터 생성을 위한 IHC에서 IF 염색 도메인 활용
MambaMIL incorporates Sequence Reordering Mamba to enhance long sequence modeling in computational pathology.
Die Arbeit präsentiert das FiVE-Framework für die Klassifizierung von Whole Slide Images, das robuste Generalisierbarkeit und starke Übertragbarkeit zeigt.
Efficiently adapting generalist foundation models to specialized pathological tasks through multi-modal prompt tuning is crucial for superior performance in computational pathology.
Proposing the Wsi rEgion sElection aPproach (WEEP) for spatial interpretation of weakly supervised CNN models in computational pathology.
Duplex to monoplex IHC image translation is improved through the use of auxiliary CycleGAN guidance, addressing the ambiguous mapping challenge.