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Attention-Enhanced Unpaired xAI-GANs for Transformation of Histological Stain Images.
Sloboda, Tibor; Hudec, Lukás; Halinkovic, Matej; Benesova, Wanda.
Affiliation
  • Sloboda T; Faculty of Informatics and Information Technology, Slovak Technical University, Ilkovicova 2, 842 16 Bratislava, Slovakia.
  • Hudec L; Faculty of Informatics and Information Technology, Slovak Technical University, Ilkovicova 2, 842 16 Bratislava, Slovakia.
  • Halinkovic M; Faculty of Informatics and Information Technology, Slovak Technical University, Ilkovicova 2, 842 16 Bratislava, Slovakia.
  • Benesova W; Faculty of Informatics and Information Technology, Slovak Technical University, Ilkovicova 2, 842 16 Bratislava, Slovakia.
J Imaging ; 10(2)2024 Jan 25.
Article in En | MEDLINE | ID: mdl-38392081
ABSTRACT
Histological staining is the primary method for confirming cancer diagnoses, but certain types, such as p63 staining, can be expensive and potentially damaging to tissues. In our research, we innovate by generating p63-stained images from H&E-stained slides for metaplastic breast cancer. This is a crucial development, considering the high costs and tissue risks associated with direct p63 staining. Our approach employs an advanced CycleGAN architecture, xAI-CycleGAN, enhanced with context-based loss to maintain structural integrity. The inclusion of convolutional attention in our model distinguishes between structural and color details more effectively, thus significantly enhancing the visual quality of the results. This approach shows a marked improvement over the base xAI-CycleGAN and standard CycleGAN models, offering the benefits of a more compact network and faster training even with the inclusion of attention.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Imaging Year: 2024 Document type: Article Affiliation country: Slovakia Country of publication: Switzerland

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Imaging Year: 2024 Document type: Article Affiliation country: Slovakia Country of publication: Switzerland