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Main Authors: Ray, Srijan, Nirala, Bikesh K., Yustein, Jason T., Ram, Sundaresh
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.15054
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author Ray, Srijan
Nirala, Bikesh K.
Yustein, Jason T.
Ram, Sundaresh
author_facet Ray, Srijan
Nirala, Bikesh K.
Yustein, Jason T.
Ram, Sundaresh
contents Accurate nuclei segmentation in microscopy whole slide images (WSIs) remains challenging due to variability in staining, imaging conditions, and tissue morphology. We propose CellGenNet, a knowledge distillation framework for robust cross-tissue cell segmentation under limited supervision. CellGenNet adopts a student-teacher architecture, where a capacity teacher is trained on sparse annotations and generates soft pseudo-labels for unlabeled regions. The student is optimized using a joint objective that integrates ground-truth labels, teacher-derived probabilistic targets, and a hybrid loss function combining binary cross-entropy and Tversky loss, enabling asymmetric penalties to mitigate class imbalance and better preserve minority nuclear structures. Consistency regularization and layerwise dropout further stabilize feature representations and promote reliable feature transfer. Experiments across diverse cancer tissue WSIs show that CellGenNet improves segmentation accuracy and generalization over supervised and semi-supervised baselines, supporting scalable and reproducible histopathology analysis.
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publishDate 2025
record_format arxiv
spellingShingle CellGenNet: A Knowledge-Distilled Framework for Robust Cell Segmentation in Cancer Tissues
Ray, Srijan
Nirala, Bikesh K.
Yustein, Jason T.
Ram, Sundaresh
Computer Vision and Pattern Recognition
Accurate nuclei segmentation in microscopy whole slide images (WSIs) remains challenging due to variability in staining, imaging conditions, and tissue morphology. We propose CellGenNet, a knowledge distillation framework for robust cross-tissue cell segmentation under limited supervision. CellGenNet adopts a student-teacher architecture, where a capacity teacher is trained on sparse annotations and generates soft pseudo-labels for unlabeled regions. The student is optimized using a joint objective that integrates ground-truth labels, teacher-derived probabilistic targets, and a hybrid loss function combining binary cross-entropy and Tversky loss, enabling asymmetric penalties to mitigate class imbalance and better preserve minority nuclear structures. Consistency regularization and layerwise dropout further stabilize feature representations and promote reliable feature transfer. Experiments across diverse cancer tissue WSIs show that CellGenNet improves segmentation accuracy and generalization over supervised and semi-supervised baselines, supporting scalable and reproducible histopathology analysis.
title CellGenNet: A Knowledge-Distilled Framework for Robust Cell Segmentation in Cancer Tissues
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.15054