ColabSeg: An interactive tool for editing, processing, and visualizing membrane segmentations from cryo-ET data

[Display omitted] •ColabSeg enables semi-automated segmentation of membranes with a graphical interface.•ColabSeg makes point-cloud algorithms for processing segmentations easily available.•Colabseg helps to prepare training data for machine learning-based segmentation tools. Cellular cryo-electron...

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Veröffentlicht in:Journal of structural biology 2024-06, Vol.216 (2), p.108067-108067, Article 108067
Hauptverfasser: Siggel, Marc, Jensen, Rasmus K., Maurer, Valentin J., Mahamid, Julia, Kosinski, Jan
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Sprache:eng
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Zusammenfassung:[Display omitted] •ColabSeg enables semi-automated segmentation of membranes with a graphical interface.•ColabSeg makes point-cloud algorithms for processing segmentations easily available.•Colabseg helps to prepare training data for machine learning-based segmentation tools. Cellular cryo-electron tomography (cryo-ET) has emerged as a key method to unravel the spatial and structural complexity of cells in their near-native state at unprecedented molecular resolution. To enable quantitative analysis of the complex shapes and morphologies of lipid membranes, the noisy three-dimensional (3D) volumes must be segmented. Despite recent advances, this task often requires considerable user intervention to curate the resulting segmentations. Here, we present ColabSeg, a Python-based tool for processing, visualizing, editing, and fitting membrane segmentations from cryo-ET data for downstream analysis. ColabSeg makes many well-established algorithms for point-cloud processing easily available to the broad community of structural biologists for applications in cryo-ET through its graphical user interface (GUI). We demonstrate the usefulness of the tool with a range of use cases and biological examples. Finally, for a large Mycoplasma pneumoniae dataset of 50 tomograms, we show how ColabSeg enables high-throughput membrane segmentation, which can be used as valuable training data for fully automated convolutional neural network (CNN)-based segmentation.
ISSN:1047-8477
1095-8657
DOI:10.1016/j.jsb.2024.108067