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Anatomically informed basis functions in multisubject studies.

机译:多主体研究中的解剖学基础功能。

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摘要

We describe the use of anatomically informed basis functions (AIBF) in the analysis of multisubject functional imaging studies. AIBF are used to specify an anatomically informed spatial model that embodies anatomical knowledge for the statistical analysis of neuroimaging data. In a previous communication, we showed how AIBF can be used to incorporate prior anatomical constraints in single subject functional magnetic resonance image (fMRI) analyses to augment their anatomical precision. In this paper, we extend AIBF such that it can be applied to multisubject studies using fMRI or PET. The key concept is that, after spatial normalization, a canonical cortical surface can be used to generate a forward model of signal sources for all subjects. By estimating the hemodynamic signal in this canonical AIBF-space and then projecting it back into the voxel-space, one effectively extracts functional activity that is smooth, within and only within, the cortical sheet while attenuating other components unrelated to the physiological process of interest. The ensuing procedure can be considered as a highly non-stationary, anisotropic anatomically informed [de]convolution or smoothing. It is shown that this procedure offers various advantages compared to existing conventional methods for the analysis of multisubject studies, in particular it is more sensitive to underlying activations.
机译:我们描述了在多主体功能成像研究的分析中使用解剖基础信息(AIBF)。 AIBF用于指定体现解剖学知识的空间模型,该模型体现了对神经影像数据进行统计分析的解剖学知识。在以前的交流中,我们展示了如何使用AIBF将先前的解剖学约束纳入单个受试者的功能磁共振图像(fMRI)分析中,以提高其解剖学精度。在本文中,我们扩展了AIBF,以便可以将其应用于使用fMRI或PET的多主题研究。关键概念是,在空间归一化之后,可以使用规范皮质表面为所有对象生成信号源的正向模型。通过估算该典型AIBF空间中的血液动力学信号,然后将其投射回体素空间,可以有效地提取出功能正常的功能层,该功能层在皮层片之内和之中均是光滑的,同时减弱了与所关注的生理过程无关的其他成分。随后的过程可以被认为是高度非平稳的,各向异性的解剖学上已知的[去卷积]或平滑。结果表明,与现有的用于多主体研究的常规分析方法相比,该方法具有多种优势,特别是它对潜在的激活更为敏感。

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