Increasing the usefulness of already existing annotations through WSI registration
Philippe Weitz, Viktoria Sartor, Balazs Acs, Stephanie Robertson,, Daniel Budelmann, Johan Hartman, Mattias Rantalainen

TL;DR
This study demonstrates that registering annotations from H&E stained WSIs to IHC WSIs enables effective cancer detection model training, reducing the need for costly IHC-specific annotations and enhancing annotation utility.
Contribution
The paper introduces a method to register annotations from H&E WSIs to IHC WSIs, showing comparable performance to direct annotations in cancer detection models.
Findings
Registered annotations yield similar AUROC to direct annotations
WSI registration can reduce the need for IHC-specific annotations
Potential to leverage existing annotations for improved pathology analysis
Abstract
Computational pathology methods have the potential to improve access to precision medicine, as well as the reproducibility and accuracy of pathological diagnoses. Particularly the analysis of whole-slide-images (WSIs) of immunohistochemically (IHC) stained tissue sections could benefit from computational pathology methods. However, scoring biomarkers such as KI67 in IHC WSIs often necessitates the detection of areas of invasive cancer. Training cancer detection models often requires annotations, which is time-consuming and therefore costly. Currently, cancer regions are typically annotated in WSIs of haematoxylin and eosin (H&E) stained tissue sections. In this study, we investigate the possibility to register annotations that were made in H&E WSIs to their IHC counterparts. Two pathologists annotated regions of invasive cancer in WSIs of 272 breast cancer cases. For each case, a…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Cell Image Analysis Techniques
MethodsTest
