2011
DOI: 10.1137/090778390
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Viewing Angle Classification of Cryo-Electron Microscopy Images Using Eigenvectors

Abstract: The cryo-electron microscopy (cryo-EM) reconstruction problem is to find the three-dimensional structure of a macromolecule given noisy versions of its two-dimensional projection images at unknown random directions. We introduce a new algorithm for identifying noisy cryo-EM images of nearby viewing angles. This identification is an important first step in three-dimensional structure determination of macromolecules from cryo-EM, because once identified, these images can be rotationally aligned and averaged to p… Show more

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Cited by 73 publications
(101 citation statements)
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References 26 publications
(39 reference statements)
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“…The improvement of SNR usually has been done either by class averaging, that is, averaging many different images in a class corresponding to similar orientations (van Heel and Frank, 1981;van Heel, 1984;Schatz and Van Heel, 1990;Penczek et al, 1992;Penczek, 2002;Scheres et al, 2005;Park et al, 2011;Singer et al, 2011;Shkolnisky and Singer, 2012;Park and Chirikjian, 2014;Zhao and Singer, 2014), or by applying denoising techniques, such as bilateral filtering ( Jiang et al, 2003) sinograms (Mielikäinen and Ravantti, 2005) and covariance Wiener filtering (Bhamre et al, 2016) to EM images. Note that the method we propose in this work is to remove the noise on a single image rather than over a class, which makes our work very different from others.…”
Section: Removing the Noise In Em Planar Correlations Without Class Amentioning
confidence: 99%
“…The improvement of SNR usually has been done either by class averaging, that is, averaging many different images in a class corresponding to similar orientations (van Heel and Frank, 1981;van Heel, 1984;Schatz and Van Heel, 1990;Penczek et al, 1992;Penczek, 2002;Scheres et al, 2005;Park et al, 2011;Singer et al, 2011;Shkolnisky and Singer, 2012;Park and Chirikjian, 2014;Zhao and Singer, 2014), or by applying denoising techniques, such as bilateral filtering ( Jiang et al, 2003) sinograms (Mielikäinen and Ravantti, 2005) and covariance Wiener filtering (Bhamre et al, 2016) to EM images. Note that the method we propose in this work is to remove the noise on a single image rather than over a class, which makes our work very different from others.…”
Section: Removing the Noise In Em Planar Correlations Without Class Amentioning
confidence: 99%
“…As in 2D, the angular difference in 3D can also be calculated by means of the projection direction estimation. In particular, the method proposed in [23] gives good estimation results at very low SNR (smaller than −10 dB) and clearly outperforms the results of MADE. Nevertheless, the advantage of our method is that it can be used with a small number of projections, whereas the method in [23] needs a sufficiently large number of projections (≥ 10000) in order to obtain a good result.…”
Section: Noisy Casementioning
confidence: 90%
“…In particular, the method proposed in [23] gives good estimation results at very low SNR (smaller than −10 dB) and clearly outperforms the results of MADE. Nevertheless, the advantage of our method is that it can be used with a small number of projections, whereas the method in [23] needs a sufficiently large number of projections (≥ 10000) in order to obtain a good result. Another family of direction estimation methods uses the common line technique [8,15,17,27].…”
Section: Noisy Casementioning
confidence: 90%
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“…Some early usage of connection graphs can be traced back to work in graph gauge theory for computing the vibrational spectra of molecules and examining spins associated with vibrations [9]. There have been more recent developments of related research in principal component analysis [13], cryo-electron microscopy [11,15], angular synchronization of eigenvectors [10,14], and vector diffusion maps [16]. In computer vision, there has been a great deal of work dealing with the many photos that are available on the web, in which information networks of photos can be built.…”
Section: Introductionmentioning
confidence: 99%