Scalable, Trustworthy Generative Model for Virtual Multi-Staining from H&E Whole Slide Images
Mehdi Ounissi, Ilias Sarbout, Jean-Pierre Hugot, Christine, Martinez-Vinson, Dominique Berrebi, Daniel Racoceanu

TL;DR
This paper presents a scalable, trustworthy generative AI model for virtual multi-staining of H&E whole slide images, improving diagnostic efficiency and confidence in computational pathology.
Contribution
It introduces a multi-stain generative model with real-time trust mechanisms and an open-source platform, advancing virtual staining technology in pathology.
Findings
Generated 8 different stains from a single H&E slide
Achieved high accuracy with artifact minimization techniques
Enabled real-time, browser-based virtual staining
Abstract
Chemical staining methods are dependable but require extensive time, expensive chemicals, and raise environmental concerns. These challenges highlight the need for alternative solutions like virtual staining, which accelerates the diagnostic process and enhances stain application flexibility. Generative AI technologies are pivotal in addressing these issues. However, the high-stakes nature of healthcare decisions, especially in computational pathology, complicates the adoption of these tools due to their opaque processes. Our work introduces the use of generative AI for virtual staining, aiming to enhance performance, trustworthiness, scalability, and adaptability in computational pathology. The methodology centers on a singular H&E encoder supporting multiple stain decoders. This design focuses on critical regions in the latent space of H&E, enabling precise synthetic stain generation.…
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Taxonomy
TopicsImage Processing Techniques and Applications · Medical Image Segmentation Techniques · Image and Object Detection Techniques
