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生物参数映射:一种用于多模态脑图像分析的统计工具箱。

Biological parametric mapping: A statistical toolbox for multimodality brain image analysis.

作者信息

Casanova Ramon, Srikanth Ryali, Baer Aaron, Laurienti Paul J, Burdette Jonathan H, Hayasaka Satoru, Flowers Lynn, Wood Frank, Maldjian Joseph A

机构信息

Advanced Neuroscience Imaging Research (ANSIR) Laboratory, Department of Radiology, Wake Forest University School of Medicine, USA.

出版信息

Neuroimage. 2007 Jan 1;34(1):137-43. doi: 10.1016/j.neuroimage.2006.09.011. Epub 2006 Oct 27.

Abstract

In recent years, multiple brain MR imaging modalities have emerged; however, analysis methodologies have mainly remained modality-specific. In addition, when comparing across imaging modalities, most researchers have been forced to rely on simple region-of-interest type analyses, which do not allow the voxel-by-voxel comparisons necessary to answer more sophisticated neuroscience questions. To overcome these limitations, we developed a toolbox for multimodal image analysis called biological parametric mapping (BPM), based on a voxel-wise use of the general linear model. The BPM toolbox incorporates information obtained from other modalities as regressors in a voxel-wise analysis, thereby permitting investigation of more sophisticated hypotheses. The BPM toolbox has been developed in Matlab with a user-friendly interface for performing analyses, including voxel-wise multimodal correlation, ANCOVA, and multiple regression. It has a high degree of integration with the SPM (statistical parametric mapping) software relying on it for visualization and statistical inference. Furthermore, statistical inference for a correlation field, rather than a widely used T-field, has been implemented in the correlation analysis for more accurate results. An example with in vivo data is presented, demonstrating the potential of the BPM methodology as a tool for multimodal image analysis.

摘要

近年来,多种脑磁共振成像模式相继出现;然而,分析方法主要仍局限于特定模式。此外,在跨成像模式比较时,大多数研究人员不得不依赖简单的感兴趣区域类型分析,这种分析无法进行逐体素比较,而这对于回答更复杂的神经科学问题是必要的。为克服这些局限性,我们基于体素水平使用通用线性模型开发了一个用于多模态图像分析的工具箱,称为生物参数映射(BPM)。BPM工具箱在体素水平分析中将从其他模式获得的信息作为回归变量纳入,从而能够研究更复杂的假设。BPM工具箱是在Matlab中开发的,具有用户友好的界面用于执行分析,包括体素水平的多模态相关性分析、协方差分析和多元回归。它与SPM(统计参数映射)软件高度集成,依靠该软件进行可视化和统计推断。此外,在相关性分析中实现了针对相关场而非广泛使用的T场的统计推断,以获得更准确的结果。本文给出了一个体内数据示例,展示了BPM方法作为多模态图像分析工具的潜力。

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