Search Results for author: Friedrich Feuerhake

Found 8 papers, 1 papers with code

Applications of artificial intelligence in the analysis of histopathology images of gliomas: a review

no code implementations26 Jan 2024 Jan-Philipp Redlich, Friedrich Feuerhake, Joachim Weis, Nadine S. Schaadt, Sarah Teuber-Hanselmann, Christoph Buck, Sabine Luttmann, Andrea Eberle, Stefan Nikolin, Arno Appenzeller, Andreas Portmann, André Homeyer

To give an overview of the current state of research, this review examines 70 publicly available research studies that have proposed AI-based methods for whole-slide histopathology images of human gliomas, covering the diagnostic tasks of subtyping (16/70), grading (23/70), molecular marker prediction (13/70), and survival prediction (27/70).

Survival Prediction

HistoStarGAN: A Unified Approach to Stain Normalisation, Stain Transfer and Stain Invariant Segmentation in Renal Histopathology

no code implementations18 Oct 2022 Jelica Vasiljević, Friedrich Feuerhake, Cédric Wemmert, Thomas Lampert

Virtual stain transfer is a promising area of research in Computational Pathology, which has a great potential to alleviate important limitations when applying deeplearningbased solutions such as lack of annotations and sensitivity to a domain shift.

Self adversarial attack as an augmentation method for immunohistochemical stainings

no code implementations21 Mar 2021 Jelica Vasiljević, Friedrich Feuerhake, Cédric Wemmert, Thomas Lampert

It has been shown that unpaired image-to-image translation methods constrained by cycle-consistency hide the information necessary for accurate input reconstruction as imperceptible noise.

Adversarial Attack Image-to-Image Translation +1

An automatic framework for fusing information from differently stained consecutive digital whole slide images: A case study in renal histology

no code implementations29 Aug 2020 Odyssee Merveille, Thomas Lampert, Jessica Schmitz, Germain Forestier, Friedrich Feuerhake, Cédric Wemmert

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.

whole slide images

Strategies for Training Stain Invariant CNNs

no code implementations17 Oct 2018 Thomas Lampert, Odyssée Merveille, Jessica Schmitz, Germain Forestier, Friedrich Feuerhake, Cédric Wemmert

By training the network on one commonly used staining modality and applying it to images that include corresponding but differently stained tissue structures, the presented unsupervised strategies demonstrate significant improvements over standard training strategies.

whole slide images

Context-based Normalization of Histological Stains using Deep Convolutional Features

1 code implementation14 Aug 2017 Daniel Bug, Steffen Schneider, Anne Grote, Eva Oswald, Friedrich Feuerhake, Julia Schüler, Dorit Merhof

While human observers are able to cope with variations in color and appearance of histological stains, digital pathology algorithms commonly require a well-normalized setting to achieve peak performance, especially when a limited amount of labeled data is available.

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