Ab-initio Contrast Estimation and Denoising of Cryo-EM Images

02/15/2022
by   Yunpeng Shi, et al.
9

Background and Objective: The contrast of cryo-EM images vary from one to another, primarily due to the uneven thickness of ice layers. The variation of contrast can affect the quality of 2-D class averaging, 3-D ab-initio modeling, and 3-D heterogeneity analysis. Contrast estimation is currently performed during 3-D iterative refinement. As a result, the estimates are not available for class averaging and ab-initio modeling. However, these methods require good initial estimates of 3-D volumes and 3-D rotations of molecules. This paper aims to solve the contrast estimation problem in the ab-initio stage, without estimating the 3-D volume. Methods: The key observation underlying our analysis is that the 2-D covariance matrix of the raw images is related to the covariance of the underlying clean images, the noise variance, and the contrast variability between images. We show that the contrast variability can be derived from the 2-D covariance matrix and use the existing Covariance Wiener Filtering (CWF) framework to estimate it. We also demonstrate a modification of CWF to estimate the contrast of individual images. Results: Our method improves the contrast estimation by a large margin, compared to the previous CWF method. Its estimation accuracy is often comparable to that of an oracle that knows the ground truth covariance of the clean images. The more accurate contrast estimation also improves the quality of image denoising as demonstrated in both synthetic and experimental datasets. Conclusions: This paper proposes an effective method for contrast estimation directly from noisy images without using any 3-D volume information. It enables contrast correction in the earlier stage of single particle analysis, and may improve the accuracy of downstream processing.

READ FULL TEXT

page 15

page 19

page 21

page 23

page 25

research
02/22/2016

Denoising and Covariance Estimation of Single Particle Cryo-EM Images

The problem of image restoration in cryo-EM entails correcting for the e...
research
12/02/2014

Covariance estimation using conjugate gradient for 3D classification in Cryo-EM

Classifying structural variability in noisy projections of biological ma...
research
03/01/2018

Poisson Image Denoising Using Best Linear Prediction: A Post-processing Framework

In this paper, we address the problem of denoising images degraded by Po...
research
09/19/2022

Deep Variation Prior: Joint Image Denoising and Noise Variance Estimation without Clean Data

With recent deep learning based approaches showing promising results in ...
research
10/23/2017

3D ab initio modeling in cryo-EM by autocorrelation analysis

Single-Particle Reconstruction (SPR) in Cryo-Electron Microscopy (cryo-E...
research
10/23/2017

Structural Variability from Noisy Tomographic Projections

In cryo-electron microscopy, the 3D electric potentials of an ensemble o...
research
11/09/2022

Side-Informed Steganography for JPEG Images by Modeling Decompressed Images

Side-informed steganography has always been among the most secure approa...

Please sign up or login with your details

Forgot password? Click here to reset