Structural Variability from Noisy Tomographic Projections
Joakim And\'en, Amit Singer

TL;DR
This paper introduces an efficient computational method to estimate the 3D covariance matrix of molecular structures from noisy cryo-EM images, enabling better analysis of structural variability.
Contribution
It formulates covariance estimation as a linear inverse problem and proposes a scalable algorithm using conjugate gradient methods with a novel deconvolution approach.
Findings
First efficient algorithm for 3D covariance estimation from noisy projections
Achieves comparable classification accuracy with reduced runtime
Effectively clusters molecular structures based on estimated covariance
Abstract
In cryo-electron microscopy, the 3D electric potentials of an ensemble of molecules are projected along arbitrary viewing directions to yield noisy 2D images. The volume maps representing these potentials typically exhibit a great deal of structural variability, which is described by their 3D covariance matrix. Typically, this covariance matrix is approximately low-rank and can be used to cluster the volumes or estimate the intrinsic geometry of the conformation space. We formulate the estimation of this covariance matrix as a linear inverse problem, yielding a consistent least-squares estimator. For images of size -by- pixels, we propose an algorithm for calculating this covariance estimator with computational complexity , where the condition number is empirically in the range --. Its efficiency relies on the…
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