SparseAlign: A Grid-Free Algorithm for Automatic Marker Localization and Deformation Estimation in Cryo-Electron Tomography
TL;DR: In this paper , an alternative mathematical approach for simultaneous marker localization and deformation estimation was proposed by extending a grid-free algorithm first proposed in the context of super-resolution single-molecule localization microscopy.
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Abstract: Tilt-series alignment is crucial to obtaining high-resolution reconstructions in cryo-electron tomography. Beam-induced local deformation of the sample is hard to estimate from the low-contrast sample alone, and often requires fiducial gold bead markers. The state-of-the-art approach for deformation estimation uses (semi-)manually labelled marker locations in projection data to fit the parameters of a polynomial deformation model. Manually-labelled marker locations are difficult to obtain when data are noisy or markers overlap in projection data. We propose an alternative mathematical approach for simultaneous marker localization and deformation estimation by extending a grid-free algorithm first proposed in the context of super-resolution single-molecule localization microscopy. Our approach does not require labelled marker locations; instead, we use an image-based loss where we compare the forward projection of markers with the observed data. We equip this marker localization scheme with an additional deformation estimation component and solve for a reduced number of deformation parameters. Using extensive numerical studies on marker-only samples, we show that our approach automatically finds markers and reliably estimates sample deformation without labelled marker data. We further demonstrate the applicability of our approach for a broad range of model mismatch scenarios, including experimental electron tomography data of gold markers on ice.
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Citations
Computational methods for in situ structural studies with cryogenic electron tomography
Cuicui Zhao,Da Lu,Qian Zhao,Chongjiao Ren,Huangtao Zhang,Jiaqi Zhai,Jiaxin Gou,Shilin Zhu,Yaqi Zhang,Xinqi Gong +9 more
TL;DR: This review summarizes classical mathematical models and deep learning methods among general reconstruction steps in cryo-ET and discusses current limitations and prospects.
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MotionCor2: Anisotropic Correction of Beam-Induced Motion for Improved Cryo-Electron Microscopy
Shawn Q. Zheng,Eugene Palovcak,Jean Paul Armache,Kliment A. Verba,Yifan Cheng,David A. Agard +5 more
TL;DR: MotionCor2 software corrects for beam-induced sample motion, improving the resolution of cryo-EM reconstructions.
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TL;DR: This work develops a novel framework to discover governing equations underlying a dynamical system simply from data measurements, leveraging advances in sparsity techniques and machine learning and using sparse regression to determine the fewest terms in the dynamic governing equations required to accurately represent the data.
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