NCEM: Network structural similarity metric-based clustering for noisy cryo-EM single particle images

Author(s):  
Yin Shuo ◽  
Biao Zhang ◽  
Hong-Bin Shen ◽  
Yang Yang
Author(s):  
Ruijie Yao ◽  
Jiaqiang Qian ◽  
Qiang Huang

Abstract Motivation Single-particle cryo-electron microscopy (cryo-EM) has become a powerful technique for determining 3D structures of biological macromolecules at near-atomic resolution. However, this approach requires picking huge numbers of macromolecular particle images from thousands of low-contrast, high-noisy electron micrographs. Although machine-learning methods were developed to get rid of this bottleneck, it still lacks universal methods that could automatically picking the noisy cryo-EM particles of various macromolecules. Results Here, we present a deep-learning segmentation model that employs fully convolutional networks trained with synthetic data of known 3D structures, called PARSED (PARticle SEgmentation Detector). Without using any experimental information, PARSED could automatically segment the cryo-EM particles in a whole micrograph at a time, enabling faster particle picking than previous template/feature-matching and particle-classification methods. Applications to six large public cryo-EM datasets clearly validated its universal ability to pick macromolecular particles of various sizes. Thus, our deep-learning method could break the particle-picking bottleneck in the single-particle analysis, and thereby accelerates the high-resolution structure determination by cryo-EM. Availability and implementation The PARSED package and user manual for noncommercial use are available as Supplementary Material (in the compressed file: parsed_v1.zip). Supplementary information Supplementary data are available at Bioinformatics online.


2001 ◽  
Vol 133 (2-3) ◽  
pp. 233-245 ◽  
Author(s):  
A Pascual-Montano ◽  
L.E Donate ◽  
M Valle ◽  
M Bárcena ◽  
R.D Pascual-Marqui ◽  
...  

Author(s):  
Yingjing Lu

The Mean Square Error (MSE) has shown its strength when applied in deep generative models such as Auto-Encoders to model reconstruction loss. However, in image domain especially, the limitation of MSE is obvious: it assumes pixel independence and ignores spatial relationships of samples. This contradicts most architectures of Auto-Encoders which use convolutional layers to extract spatial dependent features. We base on the structural similarity metric (SSIM) and propose a novel level weighted structural similarity (LWSSIM) loss for convolutional Auto-Encoders. Experiments on common datasets on various Auto-Encoder variants show that our loss is able to outperform the MSE loss and the Vanilla SSIM loss. We also provide reasons why our model is able to succeed in cases where the standard SSIM loss fails.


Author(s):  
С.А. Бобков ◽  
S.A. Bobkov

About 1% of diffraction images produced in coherent X-ray diffraction imaging experiments originate from a single particle of interest and only those images are suitable for structure reconstruction. Other images contain contributions from multiple particles, water or some contaminant. Selection of single particle images is required. A new classification method that is based on cross-correlation analysis were developed. The method was successfully applied to the experimental data, that contain diffraction images of the PBCV-1 virus and T4 bacteriophage. In this article we present classification results for diffraction images of seven biological particles with different symmetry. The results confirm the applicability of the proposed method for correct classification of diffraction images corresponding to different molecules. We also studied influence of particle symmetry type and volume of learning dataset to classification quality.


2005 ◽  
Vol 152 (2) ◽  
pp. 104-112 ◽  
Author(s):  
Yao Cong ◽  
Wen Jiang ◽  
Stefan Birmanns ◽  
Z. Hong Zhou ◽  
Wah Chiu ◽  
...  

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