Mask-guided cross-image attention for zero-shot in-silico histopathologic image generation with a diffusion model
- URL: http://arxiv.org/abs/2407.11664v3
- Date: Wed, 15 Jan 2025 11:51:19 GMT
- Title: Mask-guided cross-image attention for zero-shot in-silico histopathologic image generation with a diffusion model
- Authors: Dominik Winter, Nicolas Triltsch, Marco Rosati, Anatoliy Shumilov, Ziya Kokaragac, Yuri Popov, Thomas Padel, Laura Sebastian Monasor, Ross Hill, Markus Schick, Nicolas Brieu,
- Abstract summary: Diffusion models are the state-of-the-art solution for generating in-silico images.<n>Appearance transfer diffusion models are designed for natural images.<n>In computational pathology, specifically in oncology, it is not straightforward to define which objects in an image should be classified as foreground and background.<n>We contribute to the applicability of appearance transfer models to diffusion-stained images by modifying the appearance transfer guidance to alternate between class-specific AdaIN feature statistics matchings.
- Score: 0.10910416614141322
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Creating in-silico data with generative AI promises a cost-effective alternative to staining, imaging, and annotating whole slide images in computational pathology. Diffusion models are the state-of-the-art solution for generating in-silico images, offering unparalleled fidelity and realism. Using appearance transfer diffusion models allows for zero-shot image generation, facilitating fast application and making model training unnecessary. However current appearance transfer diffusion models are designed for natural images, where the main task is to transfer the foreground object from an origin to a target domain, while the background is of insignificant importance. In computational pathology, specifically in oncology, it is however not straightforward to define which objects in an image should be classified as foreground and background, as all objects in an image may be of critical importance for the detailed understanding the tumor micro-environment. We contribute to the applicability of appearance transfer diffusion models to immunohistochemistry-stained images by modifying the appearance transfer guidance to alternate between class-specific AdaIN feature statistics matchings using existing segmentation masks. The performance of the proposed method is demonstrated on the downstream task of supervised epithelium segmentation, showing that the number of manual annotations required for model training can be reduced by 75%, outperforming the baseline approach. Additionally, we consulted with a certified pathologist to investigate future improvements. We anticipate this work to inspire the application of zero-shot diffusion models in computational pathology, providing an efficient method to generate in-silico images with unmatched fidelity and realism, which prove meaningful for downstream tasks, such as training existing deep learning models or finetuning foundation models.
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