ContriMix: Scalable stain color augmentation for domain generalization without domain labels in digital pathology
Tan H. Nguyen, Dinkar Juyal, Jin Li, Aaditya Prakash, Shima Nofallah,, Chintan Shah, Sai Chowdary Gullapally, Limin Yu, Michael Griffin, Anand, Sampat, John Abel, Justin Lee, Amaro Taylor-Weiner

TL;DR
ContriMix is a novel stain color augmentation technique that enhances domain generalization in digital pathology without relying on domain labels, using style transfer and sample variation to generate synthetic images.
Contribution
It introduces a domain label free augmentation method based on DRIT++, enabling scalable and robust stain variation modeling for pathology images.
Findings
Outperforms existing methods on Camelyon17-WILDS dataset
Consistent performance across different test slides
Robust to rare substance color variations
Abstract
Differences in staining and imaging procedures can cause significant color variations in histopathology images, leading to poor generalization when deploying deep-learning models trained from a different data source. Various color augmentation methods have been proposed to generate synthetic images during training to make models more robust, eliminating the need for stain normalization during test time. Many color augmentation methods leverage domain labels to generate synthetic images. This approach causes three significant challenges to scaling such a model. Firstly, incorporating data from a new domain into deep-learning models trained on existing domain labels is not straightforward. Secondly, dependency on domain labels prevents the use of pathology images without domain labels to improve model performance. Finally, implementation of these methods becomes complicated when multiple…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Image Processing Techniques and Applications
