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Bayesian parallel imaging with edge-preserving priors.

Bayesian parallel imaging with edge-preserving priors. Research Abstract Details 

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  • Bayesian parallel imaging with edge-preserving priors. Abstract Text:

    ashish rajAshish Raj,gurmeet singhGurmeet Singh,ramin zabihRamin Zabih,bryan kresslerBryan Kressler,yi wangYi Wang,norbert schuffNorbert Schuff,michael weinerMichael Weiner,

    Existing parallel MRI methods are limited by a fundamental trade-off in that suppressing noise introduces aliasing artifacts. Bayesian methods with an appropriately chosen image prior offer a promising alternative; however, previous methods with spatial priors assume that intensities vary smoothly over the entire image, resulting in blurred edges. Here we introduce an edge-preserving prior (EPP) that instead assumes that intensities are piecewise smooth, and propose a new approach to efficiently compute its Bayesian estimate. The estimation task is formulated as an optimization problem that requires a nonconvex objective function to be minimized in a space with thousands of dimensions. As a result, traditional continuous minimization methods cannot be applied. This optimization task is closely related to some problems in the field of computer vision for which discrete optimization methods have been developed in the last few years. We adapt these algorithms, which are based on graph cuts, to address our optimization problem. The results of several parallel imaging experiments on brain and torso regions performed under challenging conditions with high acceleration factors are shown and compared with the results of conventional sensitivity encoding (SENSE) methods. An empirical analysis indicates that the proposed method visually improves overall quality compared to conventional methods.

    Bayesian parallel imaging with edge-preserving priors. Publishing Authors By Initials

    a rajA Raj,g singhG Singh,r zabihR Zabih,b kresslerB Kressler,y wangY Wang,n schuffN Schuff,m weinerM Weiner,

    For similar information science: computing methodologies: signal processing, computer-assisted research abstracts see: information science: computing methodologies: signal processing, computer-assisted research

    PUBMED ID PMID:

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    Bayesian parallel imaging with edge-preserving priors. Journal Published:

    PUBLICATION TYPE: Journal Article

    Journal: Magnetic resonance in medicine : official journal

    VOLUME: 57

    Page Numbers: 8-21

    Journal Abbreviation:

    ISSN: 0740-3194

    DAY: 3

    MONTH: Jan

    YEAR: 2007

    Bayesian parallel imaging with edge-preserving priors. Information

    Number of References:

    LANGUAGE: eng

    NlmUniqueID: 8505245

    Bayesian parallel imaging with edge-preserving priors. Keywords Mesh Terms:

    KEYWORDS: Signal Processing, Computer-Assisted

    MESH TERMS: methods

    Chemical & Substance for Abstract: Bayesian parallel imaging with edge-preserving priors. Information

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    Grant and Affiliation Information for Bayesian parallel imaging with edge-preserving priors.

    AFFILIATION: Department of Radiology, University of California-San Francisco, San Francisco, California, USA. ashish.raj@ucsf.edu

    Country: United States

    United States Research PublicationUnited States Research Publication

    AGENCY: United States NIA

    GRANT: R01 AG010897-21

    ACRONYM: AG

    MEDLINETA: Magn Reson Med

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