Deep manifold learning reveals hidden dynamics of proteasome autoregulation

12/23/2020
by   Zhaolong Wu, et al.
13

The 2.5-MDa 26S proteasome maintains proteostasis and regulates myriad cellular processes. How polyubiquitylated substrate interactions regulate proteasome activity is not understood. Here we introduce a deep manifold learning framework, named AlphaCryo4D, which enables atomic-level cryogenic electron microscopy (cryo-EM) reconstructions of nonequilibrium conformational continuum and reconstitutes hidden dynamics of proteasome autoregulation in the act of substrate degradation. AlphaCryo4D integrates 3D deep residual learning with manifold embedding of free-energy landscapes, which directs 3D clustering via an energy-based particle-voting algorithm. In blind assessments using simulated heterogeneous cryo-EM datasets, AlphaCryo4D achieved 3D classification accuracy three times that of conventional method and reconstructed continuous conformational changes of a 130-kDa protein at sub-3-angstrom resolution. By using AlphaCryo4D to analyze a single experimental cryo-EM dataset, we identified 64 conformers of the substrate-bound human 26S proteasome, revealing conformational entanglement of two regulatory particles in the doubly capped holoenzymes and their energetic differences with singly capped ones. Novel ubiquitin-binding sites are discovered on the RPN2, RPN10 and Alpha5 subunits to remodel polyubiquitin chains for deubiquitylation and recycle. Importantly, AlphaCryo4D choreographs single-nucleotide-exchange dynamics of proteasomal AAA-ATPase motor during translocation initiation, which upregulates proteolytic activity by allosterically promoting nucleophilic attack. Our systemic analysis illuminates a grand hierarchical allostery for proteasome autoregulation.

READ FULL TEXT

page 5

page 6

page 7

page 9

page 11

page 13

page 33

page 37

research
04/15/2016

Unsupervised single-particle deep clustering via statistical manifold learning

Motivation: Structural heterogeneity in single-particle cryo-electron mi...
research
06/26/2021

Inferring a Continuous Distribution of Atom Coordinates from Cryo-EM Images using VAEs

Cryo-electron microscopy (cryo-EM) has revolutionized experimental prote...
research
09/12/2022

Spectral decomposition of atomic structures in heterogeneous cryo-EM

We consider the problem of recovering the three-dimensional atomic struc...
research
05/06/2014

Understanding Protein Dynamics with L1-Regularized Reversible Hidden Markov Models

We present a machine learning framework for modeling protein dynamics. O...
research
07/14/2020

Sequence-guided protein structure determination using graph convolutional and recurrent networks

Single particle, cryogenic electron microscopy (cryo-EM) experiments now...
research
01/10/2021

Learning Rotation Invariant Features for Cryogenic Electron Microscopy Image Reconstruction

Cryo-Electron Microscopy (Cryo-EM) is a Nobel prize-winning technology f...
research
01/07/2014

Key point selection and clustering of swimmer coordination through Sparse Fisher-EM

To answer the existence of optimal swimmer learning/teaching strategies,...

Please sign up or login with your details

Forgot password? Click here to reset