3D surface reconstruction of cellular cryo-soft X-ray microscopy tomograms using semisupervised deep learning

Author:

Dyhr Michael C. A.1ORCID,Sadeghi Mohsen2ORCID,Moynova Ralitsa1ORCID,Knappe Carolin1ORCID,Kepsutlu Çakmak Burcu1,Werner Stephan3ORCID,Schneider Gerd34,McNally James3,Noé Frank2,Ewers Helge1ORCID

Affiliation:

1. Institute of Chemistry and Biochemistry, Department of Biology, Chemistry and Pharmacy, Free University of Berlin, 14195 Berlin, Germany

2. Artificial Intelligence of the Sciences Group, Department of Mathematics and Informatics, Free University of Berlin, 14195 Berlin, Germany

3. Helmholtz Zentrum Berlin für Materialien und Energie GmbH, 12489 Berlin, Germany

4. Institute of Physics, Humboldt Universität zu Berlin, 12489 Berlin, Germany

Abstract

Cryo-soft X-ray tomography (cryo-SXT) is a powerful method to investigate the ultrastructure of cells, offering resolution in the tens of nanometer range and strong contrast for membranous structures without requiring labeling or chemical fixation. The short acquisition time and the relatively large field of view leads to fast acquisition of large amounts of tomographic image data. Segmentation of these data into accessible features is a necessary step in gaining biologically relevant information from cryo-soft X-ray tomograms. However, manual image segmentation still requires several orders of magnitude more time than data acquisition. To address this challenge, we have here developed an end-to-end automated 3D segmentation pipeline based on semisupervised deep learning. Our approach is suitable for high-throughput analysis of large amounts of tomographic data, while being robust when faced with limited manual annotations and variations in the tomographic conditions. We validate our approach by extracting three-dimensional information on cellular ultrastructure and by quantifying nanoscopic morphological parameters of filopodia in mammalian cells.

Funder

Deutsche Forschungsgesellschaft

European Research Commission

Bundesministerium für Bildung und Forschung

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

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