3D ab initio modeling in cryo-EM by autocorrelation analysis
Eitan Levin, Tamir Bendory, Nicolas Boumal, Joe Kileel, Amit Singer

TL;DR
This paper introduces a novel method for directly obtaining low-resolution 3D models of asymmetric molecules from cryo-EM data using autocorrelation analysis, reducing reliance on initial references and enabling validation.
Contribution
It demonstrates that two clean projections suffice to uniquely solve Kam's autocorrelation system, enabling ab initio 3D modeling without prior models or class averaging.
Findings
Successfully reconstructed asymmetric molecules from raw data.
Achieved ab initio models without initial references.
Validated method on synthetic and experimental data.
Abstract
Single-Particle Reconstruction (SPR) in Cryo-Electron Microscopy (cryo-EM) is the task of estimating the 3D structure of a molecule from a set of noisy 2D projections, taken from unknown viewing directions. Many algorithms for SPR start from an initial reference molecule, and alternate between refining the estimated viewing angles given the molecule, and refining the molecule given the viewing angles. This scheme is called iterative refinement. Reliance on an initial, user-chosen reference introduces model bias, and poor initialization can lead to slow convergence. Furthermore, since no ground truth is available for an unsolved molecule, it is difficult to validate the obtained results. This creates the need for high quality ab initio models that can be quickly obtained from experimental data with minimal priors, and which can also be used for validation. We propose a procedure to…
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