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Main Authors: Malashin, Roman, Pashkevich, Svetlana, Ilyukhin, Daniil, Volkov, Arseniy, Yachnaya, Valeria, Denisov, Andrey, Mikhalkova, Maria
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.07286
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author Malashin, Roman
Pashkevich, Svetlana
Ilyukhin, Daniil
Volkov, Arseniy
Yachnaya, Valeria
Denisov, Andrey
Mikhalkova, Maria
author_facet Malashin, Roman
Pashkevich, Svetlana
Ilyukhin, Daniil
Volkov, Arseniy
Yachnaya, Valeria
Denisov, Andrey
Mikhalkova, Maria
contents We present Glioma C6, a new open dataset for instance segmentation of glioma C6 cells, designed as both a benchmark and a training resource for deep learning models. The dataset comprises 75 high-resolution phase-contrast microscopy images with over 12,000 annotated cells, providing a realistic testbed for biomedical image analysis. It includes soma annotations and morphological cell categorization provided by biologists. Additional categorization of cells, based on morphology, aims to enhance the utilization of image data for cancer cell research. Glioma C6 consists of two parts: the first is curated with controlled parameters for benchmarking, while the second supports generalization testing under varying conditions. We evaluate the performance of several generalist segmentation models, highlighting their limitations on our dataset. Our experiments demonstrate that training on Glioma C6 significantly enhances segmentation performance, reinforcing its value for developing robust and generalizable models. The dataset is publicly available for researchers.
format Preprint
id arxiv_https___arxiv_org_abs_2511_07286
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Glioma C6: A Novel Dataset for Training and Benchmarking Cell Segmentation
Malashin, Roman
Pashkevich, Svetlana
Ilyukhin, Daniil
Volkov, Arseniy
Yachnaya, Valeria
Denisov, Andrey
Mikhalkova, Maria
Computer Vision and Pattern Recognition
Artificial Intelligence
We present Glioma C6, a new open dataset for instance segmentation of glioma C6 cells, designed as both a benchmark and a training resource for deep learning models. The dataset comprises 75 high-resolution phase-contrast microscopy images with over 12,000 annotated cells, providing a realistic testbed for biomedical image analysis. It includes soma annotations and morphological cell categorization provided by biologists. Additional categorization of cells, based on morphology, aims to enhance the utilization of image data for cancer cell research. Glioma C6 consists of two parts: the first is curated with controlled parameters for benchmarking, while the second supports generalization testing under varying conditions. We evaluate the performance of several generalist segmentation models, highlighting their limitations on our dataset. Our experiments demonstrate that training on Glioma C6 significantly enhances segmentation performance, reinforcing its value for developing robust and generalizable models. The dataset is publicly available for researchers.
title Glioma C6: A Novel Dataset for Training and Benchmarking Cell Segmentation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2511.07286