Published April 24, 2023 | Version v1
Journal article Open

Autocorrelation analysis for cryo-EM with sparsity constraints: Improved sample complexity and projection-based algorithms

  • 1. Tel Aviv University
  • 2. University of Chicago
  • 3. University of Texas at Austin
  • 4. Princeton University

Description

The number of noisy images required for molecular reconstruction in single-particle cryoelectron microscopy (cryo-EM) is governed by the autocorrelations of the observed, randomly oriented, noisy projection images. In this work, we consider the effect of imposing sparsity priors on the molecule. We use techniques from signal processing, optimization, and applied algebraic geometry to obtain theoretical and computational contributions for this challenging nonlinear inverse problem with sparsity constraints. We prove that molecular structures modeled as sums of Gaussians are uniquely determined by the second-order autocorrelation of their projection images, implying that the sample complexity is proportional to the square of the variance of the noise. This theory improves upon the nonsparse case, where the third-order autocorrelation is required for uniformly oriented particle images and the sample complexity scales with the cube of the noise variance. Furthermore, we build a computational framework to reconstruct molecular structures which are sparse in the wavelet basis. This method combines the sparse representation for the molecule with projection-based techniques used for phase retrieval in X-ray crystallography.

Data availability

Code implementing the proposed algorithm is available at https://github.com/ComputationalCryoEM/ASPIRE-Python/tree/sparse-Kam.

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Autocorrelation-analysis-for-cryo-EM-with-sparsity-constraints.pdf

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Additional details

Identifiers

DOI
10.1073/pnas.2216507120
Other
oai:uchicago.tind.io:5794

Funding

ISF
1924/21
BSF
2020159
NSF-BSF
2019752
University of Texas at Austin
AFOSR
FA9550-20-1-0266
Simons Foundation
Math+X Investigator Award
National Science Foundation
BIGDATA
National Science Foundation
DMS-2009753
NIGMS
1R01GM136780-01

UChicago Information

Division(s)
Physical Sciences Division
Department(s)
Statistics