An automatic framework for fusing information from differently stained consecutive digital whole slide images: A case study in renal histology
Odyssee Merveille, Thomas Lampert, Jessica Schmitz, Germain Forestier,, Friedrich Feuerhake, C\'edric Wemmert

TL;DR
This paper introduces an automated framework that fuses information from differently stained consecutive whole slide images to analyze the micro-environment of glomeruli in renal histology, aiding understanding of post-transplant tissue changes.
Contribution
The study presents a novel, generic, four-step image processing framework for registering, segmenting, fusing, and extracting features from multi-stained WSIs, validated with pathologists' input.
Findings
Framework effectively integrates multi-stain data.
Validated with quantitative and qualitative assessments.
Enables detailed analysis of renal micro-environment.
Abstract
Objective: This article presents an automatic image processing framework to extract quantitative high-level information describing the micro-environment of glomeruli in consecutive whole slide images (WSIs) processed with different staining modalities of patients with chronic kidney rejection after kidney transplantation. Methods: This four-step framework consists of: 1) approximate rigid registration, 2) cell and anatomical structure segmentation 3) fusion of information from different stainings using a newly developed registration algorithm 4) feature extraction. Results: Each step of the framework is validated independently both quantitatively and qualitatively by pathologists. An illustration of the different types of features that can be extracted is presented. Conclusion: The proposed generic framework allows for the analysis of the micro-environment surrounding large structures…
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