Literature DB >> 15065680

Image segmentation for automatic particle identification in electron micrographs based on hidden Markov random field models and expectation maximization.

Vivek Singh1, Dan C Marinescu, Timothy S Baker.   

Abstract

Three-dimensional reconstruction of large macromolecules like viruses at resolutions below 10 A requires a large set of projection images. Several automatic and semi-automatic particle detection algorithms have been developed along the years. Here we present a general technique designed to automatically identify the projection images of particles. The method is based on Markov random field modelling of the projected images and involves a pre-processing of electron micrographs followed by image segmentation and post-processing. The image is modelled as a coupling of two fields--a Markovian and a non-Markovian. The Markovian field represents the segmented image. The micrograph is the non-Markovian field. The image segmentation step involves an estimation of coupling parameters and the maximum á posteriori estimate of the realization of the Markovian field i.e, segmented image. Unlike most current methods, no bootstrapping with an initial selection of particles is required.

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Year:  2004        PMID: 15065680      PMCID: PMC4167639          DOI: 10.1016/j.jsb.2003.11.028

Source DB:  PubMed          Journal:  J Struct Biol        ISSN: 1047-8477            Impact factor:   2.867


  14 in total

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Review 3.  Reconstruction principles of icosahedral virus structure determination using electron cryomicroscopy.

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Review 4.  Review: automatic particle detection in electron microscopy.

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Review 5.  Big data in cryoEM: automated collection, processing and accessibility of EM data.

Authors:  Philip R Baldwin; Yong Zi Tan; Edward T Eng; William J Rice; Alex J Noble; Carl J Negro; Michael A Cianfrocco; Clinton S Potter; Bridget Carragher
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6.  Automatic segmentation of myocardium from black-blood MR images using entropy and local neighborhood information.

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