MemBrain v2: an end-to-end tool for the analysis of membranes in cryo-electron tomography

Lorenz Lamm(University of Basel), Simon Zufferey(University of Basel), Hanyi Zhang(University of Basel), Ricardo D. Righetto(University of Basel), Florent Waltz(SIB Swiss Institute of Bioinformatics), Wojciech Wietrzyñski(MRC Laboratory of Molecular Biology), Kevin A. Yamauchi(SIB Swiss Institute of Bioinformatics), Alister Burt(MRC Laboratory of Molecular Biology), Ye Liu(Helmholtz Zentrum München), Antonio Martínez-Sánchez(German Cancer Research Center), Sebastian Ziegler(German Cancer Research Center), Fabian Isensee(German Cancer Research Center), Julia A. Schnabel(King's College London), Benjamin D. Engel(University of Basel), Tingying Peng(Helmholtz Zentrum München)
bioRxiv (Cold Spring Harbor Laboratory)
January 5, 2024
Cited by 156Open Access
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Abstract

Abstract Cryo-electron tomography (cryo-ET) provides unique insights into macromolecular complexes in their native environments, yet membrane analysis remains a major bottleneck due to low signal-to-noise ratios, missing wedge artifacts, and the complexity of membrane-associated proteins. Existing tools often require extensive manual annotation, struggle with generalization across datasets, and lack integrated solutions for segmentation, protein localization, and quantitative analysis. We introduce MemBrain v2, a deep learning-enabled framework that unifies these tasks into a streamlined pipeline. MemBrain-seg leverages a diverse, collaboratively generated training dataset and specialized model training strategies to achieve generalizable membrane segmentation across variable tomographic conditions. MemBrain-pick enables data-efficient localization of membrane-bound proteins by integrating geometric constraints with deep learning, reducing the need for extensive manual annotation. MemBrain-stats provides quantitative insights into protein distributions, computing spatial metrics to analyze intra-membrane particle organization. MemBrain v2 integrates seamlessly into cryo-ET workflows, providing an accessible and structured approach to membrane analysis. The full package is available at https://github.com/CellArchLab/MemBrain-v2 .


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