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A generalist deep-learning volume segmentation tool for volume electron microscopy of biological samples

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posted on 2025-06-30, 01:19 authored by Yuyao Huang, Nickhil Jadav, Georgia Rutter, Lech Szymanski, Mihnea Bostina, Duane HarlandDuane Harland

We present the Volume Segmentation Tool (VST), a deep learning software tool that implements volumetric image segmentation in volume electron microscopy image stack data from a wide range of biological sample types. VST automates the handling of data preprocessing, data augmentation, and network building, as well as the configuration for model training, while adapting to the specific dataset. We have tried to make VST more accessible by designing it to operate entirely on local hardware and have provided a browser-based interface with additional features for visualizations of the networks and augmented datasets. VST can utilise contour map prediction to support instance segmentation on top of semantic segmentation. Through examples from various resin-embedded sample derived transmission electron microscopy and scanning electron microscopy datasets, we demonstrate that VST achieves state of the art performance compared to existing approaches.

Funding

MBIE Strategic Science Investment Fund

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Rights statement

© 2025 The Author(s). Published by Elsevier Inc. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

Publication date

2025-05-29

Project number

  • PRJ0756090

Language

  • English

Does this contain Māori information or data?

  • No

Publisher

Elsevier

Journal title

Journal of Structural Biology

ISSN

1047-8477

Volume/issue number

217(3)

Page numbers

108214

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