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Main Authors: Hörst, Fabian, Rempe, Moritz, Becker, Helmut, Heine, Lukas, Keyl, Julius, Kleesiek, Jens
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.05269
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author Hörst, Fabian
Rempe, Moritz
Becker, Helmut
Heine, Lukas
Keyl, Julius
Kleesiek, Jens
author_facet Hörst, Fabian
Rempe, Moritz
Becker, Helmut
Heine, Lukas
Keyl, Julius
Kleesiek, Jens
contents Digital Pathology is a cornerstone in the diagnosis and treatment of diseases. A key task in this field is the identification and segmentation of cells in hematoxylin and eosin-stained images. Existing methods for cell segmentation often require extensive annotated datasets for training and are limited to a predefined cell classification scheme. To overcome these limitations, we propose $\text{CellViT}^{\scriptscriptstyle ++}$, a framework for generalized cell segmentation in digital pathology. $\text{CellViT}^{\scriptscriptstyle ++}$ utilizes Vision Transformers with foundation models as encoders to compute deep cell features and segmentation masks simultaneously. To adapt to unseen cell types, we rely on a computationally efficient approach. It requires minimal data for training and leads to a drastically reduced carbon footprint. We demonstrate excellent performance on seven different datasets, covering a broad spectrum of cell types, organs, and clinical settings. The framework achieves remarkable zero-shot segmentation and data-efficient cell-type classification. Furthermore, we show that $\text{CellViT}^{\scriptscriptstyle ++}$ can leverage immunofluorescence stainings to generate training datasets without the need for pathologist annotations. The automated dataset generation approach surpasses the performance of networks trained on manually labeled data, demonstrating its effectiveness in creating high-quality training datasets without expert annotations. To advance digital pathology, $\text{CellViT}^{\scriptscriptstyle ++}$ is available as an open-source framework featuring a user-friendly, web-based interface for visualization and annotation. The code is available under https://github.com/TIO-IKIM/CellViT-plus-plus.
format Preprint
id arxiv_https___arxiv_org_abs_2501_05269
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CellViT++: Energy-Efficient and Adaptive Cell Segmentation and Classification Using Foundation Models
Hörst, Fabian
Rempe, Moritz
Becker, Helmut
Heine, Lukas
Keyl, Julius
Kleesiek, Jens
Computer Vision and Pattern Recognition
Machine Learning
Digital Pathology is a cornerstone in the diagnosis and treatment of diseases. A key task in this field is the identification and segmentation of cells in hematoxylin and eosin-stained images. Existing methods for cell segmentation often require extensive annotated datasets for training and are limited to a predefined cell classification scheme. To overcome these limitations, we propose $\text{CellViT}^{\scriptscriptstyle ++}$, a framework for generalized cell segmentation in digital pathology. $\text{CellViT}^{\scriptscriptstyle ++}$ utilizes Vision Transformers with foundation models as encoders to compute deep cell features and segmentation masks simultaneously. To adapt to unseen cell types, we rely on a computationally efficient approach. It requires minimal data for training and leads to a drastically reduced carbon footprint. We demonstrate excellent performance on seven different datasets, covering a broad spectrum of cell types, organs, and clinical settings. The framework achieves remarkable zero-shot segmentation and data-efficient cell-type classification. Furthermore, we show that $\text{CellViT}^{\scriptscriptstyle ++}$ can leverage immunofluorescence stainings to generate training datasets without the need for pathologist annotations. The automated dataset generation approach surpasses the performance of networks trained on manually labeled data, demonstrating its effectiveness in creating high-quality training datasets without expert annotations. To advance digital pathology, $\text{CellViT}^{\scriptscriptstyle ++}$ is available as an open-source framework featuring a user-friendly, web-based interface for visualization and annotation. The code is available under https://github.com/TIO-IKIM/CellViT-plus-plus.
title CellViT++: Energy-Efficient and Adaptive Cell Segmentation and Classification Using Foundation Models
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2501.05269