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A novel approach for automatic quantitation of phosphorus-31 magnetic resonance spectroscopy data.

机译:一种自动定量磷31磁共振波谱数据的新颖方法。

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摘要

The rapid development of magnetic resonance spectroscopy (MRS) greatly facilitates non-invasive measurement of brain metabolites, which makes it a versatile diagnostic procedure for biomedical research. The validity and dependability of MRS data relies on the accuracy and efficiency of data post-processing and quantification analysis. Throughout the years, various quantification methods have been proposed and implemented in both 31P and 1H spectrum analysis. The frequency variation of certain chemical compounds of interest and serious baseline distortions remain the primary challenges for post-processing in large volume in vivo 31P MRS. This work aims to undertake these problems by developing a Hankel Singular Value Decomposition (HSVD) based adaptive prior knowledge algorithm that can intelligently guide itself to an optimal result. This algorithm uses so called interference signals to optimize prior knowledge iteratively for parameter optimization. The purpose of this approach is to improve the quantification quality of MRS signals from different brain locations as well as from different experimental environments. To achieve this goal, we developed an algorithm termed Iterative Reduction of Interference Signal - HSVD (IRIS-HSVD). The Monte Carlo evaluations of the algorithm were conducted with simulated data using relevant in vivo parameters. The performance of this algorithm was compared to those of other automatic methods including HSVD and HTLS-PK. Examples of in vivo 31P data obtained from brains of healthy subjects on a 4T MRI scanner were also presented, which demonstrated the superiority of the new method as compared to AMARES, a widely used program in the NMR community.
机译:磁共振波谱(MRS)的迅速发展极大地促进了脑代谢产物的非侵入性测量,这使其成为生物医学研究的通用诊断程序。 MRS数据的有效性和可靠性取决于数据后处理和定量分析的准确性和效率。多年来,在31P和1H频谱分析中已经提出并实施了各种量化方法。某些目标化合物的频率变化和严重的基线失真仍然是体内31P MRS大量后期处理的主要挑战。这项工作旨在通过开发基于汉高奇异值分解(HSVD)的自适应先验知识算法来解决这些问题,该算法可以智能地将自身引导至最佳结果。该算法使用所谓的干扰信号来迭代优化先验知识,以进行参数优化。这种方法的目的是提高来自不同大脑位置以及来自不同实验环境的MRS信号的量化质量。为了实现此目标,我们开发了一种称为迭代减少干扰信号的算法-HSVD(IRIS-HSVD)。使用相关的体内参数,利用模拟数据对算法进行了蒙特卡洛评估。将该算法的性能与其他自动方法(包括HSVD和HTLS-PK)的性能进行了比较。还介绍了在4T MRI扫描仪上从健康受试者的大脑获得的体内31P数据的示例,这些数据证明了新方法与AMARES(在NMR社区中广泛使用的程序)相比的优越性。

著录项

  • 作者

    Wang, Xin.;

  • 作者单位

    University of Cincinnati.;

  • 授予单位 University of Cincinnati.;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 176 p.
  • 总页数 176
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程 ;
  • 关键词

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