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Unlocking the Potential of Digital Pathology: Novel Baselines for Compression

Authors :
Fischer, Maximilian
Neher, Peter
Schüffler, Peter
Ziegler, Sebastian
Xiao, Shuhan
Peretzke, Robin
Clunie, David
Ulrich, Constantin
Baumgartner, Michael
Muckenhuber, Alexander
Almeida, Silvia Dias
Götz, Michael
Kleesiek, Jens
Nolden, Marco
Braren, Rickmer
Maier-Hein, Klaus
Publication Year :
2024

Abstract

Digital pathology offers a groundbreaking opportunity to transform clinical practice in histopathological image analysis, yet faces a significant hurdle: the substantial file sizes of pathological Whole Slide Images (WSI). While current digital pathology solutions rely on lossy JPEG compression to address this issue, lossy compression can introduce color and texture disparities, potentially impacting clinical decision-making. While prior research addresses perceptual image quality and downstream performance independently of each other, we jointly evaluate compression schemes for perceptual and downstream task quality on four different datasets. In addition, we collect an initially uncompressed dataset for an unbiased perceptual evaluation of compression schemes. Our results show that deep learning models fine-tuned for perceptual quality outperform conventional compression schemes like JPEG-XL or WebP for further compression of WSI. However, they exhibit a significant bias towards the compression artifacts present in the training data and struggle to generalize across various compression schemes. We introduce a novel evaluation metric based on feature similarity between original files and compressed files that aligns very well with the actual downstream performance on the compressed WSI. Our metric allows for a general and standardized evaluation of lossy compression schemes and mitigates the requirement to independently assess different downstream tasks. Our study provides novel insights for the assessment of lossy compression schemes for WSI and encourages a unified evaluation of lossy compression schemes to accelerate the clinical uptake of digital pathology.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.13137
Document Type :
Working Paper