Publication | Open Access
Deep reconstructing generative networks for visualizing dynamic biomolecules inside cells
16
Citations
47
References
2023
Year
Unknown Venue
EngineeringStructural BioinformaticsMolecular BiologyCytoskeletonBiological ComputingMolecular GraphicCryo-electron TomographyProtein FoldingBiological NetworkDynamic BiomoleculesBiological Network VisualizationBiophysicsRna Structure PredictionMacromolecular MachineProtein ModelingStructural BiologySitu Translation DynamicsComputational BiologyCryo-et SubtomogramsSystems BiologyMedicineComputational Biophysics
ABSTRACT Advances in cryo-electron tomography (cryo-ET) have produced new opportunities to visualize the structures of dynamic macromolecular machinery in native cellular environments. Here, we describe a machine learning approach that can reconstruct the structural landscape and dynamics of biomolecular complexes present in cryo-ET subtomograms. This method, cryoDRGN-ET, learns a deep generative model of 3D density maps directly from subtomogram tilt series images and can capture states diverse in both composition and conformation. We use this approach to reconstruct the in situ translation dynamics of prokaryotic ribosomes, and we reveal the distribution of functional states during translation elongation populated by S. cerevisiae ribosomes inside cells.
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