Magnetic resonance data modeling: The Bayesian analysis toolbox

IF 0.4 4区 化学 Q4 CHEMISTRY, PHYSICAL Concepts in Magnetic Resonance Part A Pub Date : 2019-04-26 DOI:10.1002/cmr.a.21467
James D. Quirk, G. Larry Bretthorst, Joel R. Garbow, Joseph J. H. Ackerman
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引用次数: 10

Abstract

Bayesian probability theory provides optimal parameter estimates and robust model selection from a family of competing data models. However, widespread adoption of the Bayesian approach to the analysis of magnetic resonance and other data types has been hindered by its perceived complexity and heavy computational burden. This manuscript describes the Bayesian Analysis Toolbox, a computationally efficient, robust, and highly optimized suite of data modeling software packages based upon the precepts of Bayesian probability theory. The Toolbox is downloadable at no cost for noncommercial applications from http://bayesiananalysis.wustl.edu. The Toolbox extends Bayesian-based data analysis to a variety of real-world data analysis problems commonly encountered in spectroscopy and imaging, with a focus on magnetic resonance-derived data, making the power of this approach available to the non-expert user.

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磁共振数据建模:贝叶斯分析工具箱
贝叶斯概率论提供了最优的参数估计和鲁棒的模型选择从一个家族的竞争数据模型。然而,贝叶斯方法在磁共振和其他数据类型分析中的广泛采用受到其复杂性和沉重计算负担的阻碍。这篇手稿描述了贝叶斯分析工具箱,一个计算效率高,鲁棒,高度优化的数据建模软件包套件,基于贝叶斯概率论的戒律。非商业应用程序可以从http://bayesiananalysis.wustl.edu免费下载工具箱。工具箱将基于贝叶斯的数据分析扩展到光谱学和成像中常见的各种现实世界的数据分析问题,重点是磁共振衍生数据,使这种方法的强大功能可供非专业用户使用。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
12
审稿时长
>12 weeks
期刊介绍: Concepts in Magnetic Resonance Part A brings together clinicians, chemists, and physicists involved in the application of magnetic resonance techniques. The journal welcomes contributions predominantly from the fields of magnetic resonance imaging (MRI), nuclear magnetic resonance (NMR), and electron paramagnetic resonance (EPR), but also encourages submissions relating to less common magnetic resonance imaging and analytical methods. Contributors come from academic, governmental, and clinical communities, to disseminate the latest important experimental results from medical, non-medical, and analytical magnetic resonance methods, as well as related computational and theoretical advances. Subject areas include (but are by no means limited to): -Fundamental advances in the understanding of magnetic resonance -Experimental results from magnetic resonance imaging (including MRI and its specialized applications) -Experimental results from magnetic resonance spectroscopy (including NMR, EPR, and their specialized applications) -Computational and theoretical support and prediction for experimental results -Focused reviews providing commentary and discussion on recent results and developments in topical areas of investigation -Reviews of magnetic resonance approaches with a tutorial or educational approach
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