Summary of ssbd-repos-000443

Name
URL
DOI

Title
Deep Learning Pipeline for Segmentation and Quantification of Overlapping Membranes in 2D Image
Description

Quantitative morphological analysis is crucial for understanding cellular processes. While 3D Z-stack imaging offers high-resolution data, the complexity of 3D structures makes direct interpretation and manual annotation challenging and time-consuming, especially for large datasets. Maximum Intensity Projection (MIP) is a common strategy to create more interpretable 2D representations, but this inevitably leads to artificial overlaps between structures, significantly hindering accurate automated segmentation of individual instances by conventional methods or standard deep learning tools. To address this critical challenge in 2D projection analysis, we developed DeMemSeg, a deep learning pipeline based on Mask R-CNN, specifically designed to segment overlapping membrane structures, called prospore membranes (PSMs) during yeast sporulation. DeMemSeg was trained on a custom-annotated dataset, leveraging a systematic image processing workflow. Our optimized model accurately identifies and delineates individual, overlapping PSMs, achieving segmentation performance and derived morphological measurements that are statistically indistinguishable from expert manual annotation. Notably, DeMemSeg successfully generalized to segment PSMs from unseen data acquired from gip1∆ mutant cells, capturing the distinct morphological defects in PSMs. DeMemSeg thus provides a robust, automated solution for objective quantitative analysis of complex, overlapping membrane morphologies directly from widely used 2D MIP images, offering a practical tool and adaptable workflow to advance cell biology research.
GitHub repository: https://github.com/MolCellBiol-tsukuba/DeMemSeg

Submited Date
2025-06-11
Release Date
2025-09-22
Updated Date
-
License
Funding information
-
File formats
tif, png
Data size
10.5 GB

Organism
Saccharomyces cerevisiae
Strain
SK1
Cell Line
-
Genes
-
Proteins
pRS306-mCherry-SPO2051-91

GO Molecular Function (MF)
phosphatidylinositol-4,5-bisphosphate binding
GO Biological Process (BP)
ascospore-type prospore membrane formation
GO Cellular Component (CC)
prospore membrane
Study Type
Gametogenesis
Imaging Methods
fluorescence microscopy, time lapse microscopy,

Method Summary

See details in Taguchi, et. al. (2025) bioRxiv.

Related paper(s)

Taguchi,Shodai, Chagi,Keita, Kawai,Hiroki, Irie,Kenji, Suda,Yasuyuki (2025) Deep Learning-Based Segmentation of 2D Projection-Derived Overlapping Prospore Membrane in Yeast, Cell Structure and Function, Volume advpub, Number , -

Published in 2025

(Abstract) None
Related paper(s)

Taguchi, Shodai, Chagi, Keita, Kawai, Hiroki, Irie, Kenji, Suda, Yasuyuki (2025/01/01), Deep Learning Pipeline for Segmentation and Quantification of Overlapping Membranes in 2D Image, bioRxiv, 2025.06.01.656963

Published in 2025/01/01

(Abstract) None

Contact(s)
Shodai Taguchi, Yasuyuki Suda
Organization(s)
University of Tsukuba , Ph.D. Program in Humanics, School of Integrative and Global Majors, Institute of Medicine , Laboratory of Molecular Cell Biology
Image Data Contributors
Quantitative Data Contributors

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