2018Ouyang Denoising

From 3DEM-Methods
Revision as of 07:35, 17 January 2019 by WikiSysop (talk | contribs) (Created page with "== Citation == Ouyang, J.; Liang, Z.; Chen, C.; Fu, Z.; Zhang, Y. and Liu, H. Cryo-electron microscope image denoising based on the geodesic distance. BMC structural biology,...")
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to navigation Jump to search

Citation

Ouyang, J.; Liang, Z.; Chen, C.; Fu, Z.; Zhang, Y. and Liu, H. Cryo-electron microscope image denoising based on the geodesic distance. BMC structural biology, 2018, 18, 18

Abstract

To perform a three-dimensional (3-D) reconstruction of electron cryomicroscopy (cryo-EM) images of viruses, it is necessary to determine the similarity of image blocks of the two-dimensional (2-D) projections of the virus. The projections containing high resolution information are typically very noisy. Instead of the traditional Euler metric, this paper proposes a new method, based on the geodesic metric, to measure the similarity of blocks. Our method is a 2-D image denoising approach. A data set of 2243 cytoplasmic polyhedrosis virus (CPV) capsid particle images in different orientations was used to test the proposed method. Relative to Block-matching and three-dimensional filtering (BM3D), Stein's unbiased risk estimator (SURE), Bayes shrink and K-means singular value decomposition (K-SVD), the experimental results show that the proposed method can achieve a peak signal-to-noise ratio (PSNR) of 45.65. The method can remove the noise from the cryo-EM image and improve the accuracy of particle picking. The main contribution of the proposed model is to apply the geodesic distance to measure the similarity of image blocks. We conclude that manifold learning methods can effectively eliminate the noise of the cryo-EM image and improve the accuracy of particle picking.

Keywords

Links

https://bmcstructbiol.biomedcentral.com/track/pdf/10.1186/s12900-018-0094-3

Related software

Related methods

Comments