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Dense feature deformation morphometry: Incorporating DTI data into conventional MRI morphometry

机译:密集特征变形形态学:将DTI数据纳入常规MRI形态学

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摘要

Registration based mapping of geometric differences in MRI anatomy allows the detection of subtle and complex changes in brain anatomy over time that provides an important quantitative window on the process of both brain development and degeneration. However, methods developed for this have so far been aimed at using conventional structural MRI data (T1W imaging) and the resulting maps are limited in their ability to localize patterns of change within sub-regions of uniform tissue. Alternative MRI contrast mechanisms, in particular Diffusion Tensor Imaging (DTI) data are now more commonly being used in serial studies and provide valuable complementary microstructural information within white matter. This paper describes a new approach which incorporates information from DTI data into deformation tensor morphometry of conventional MRI. The key problem of using the additional information provided by DTI data is addressed by proposing a novel mutual information (MI) derived criterion termed diffusion paired MI. This combines conventional and diffusion data in a single registration measure. We compare different formulations of this measure when used in a diffeomorphic fluid registration scheme to map local volume changes. Results on synthetic data and example images from clinical studies of neurodegenerative conditions illustrate the improved localization of tissue volume changes provided by the incorporation of DTI data into the morphometric registration.
机译:基于配准的MRI解剖学几何差异映射可以检测随时间变化的大脑解剖结构的细微和复杂变化,这为大脑发育和变性的过程提供了重要的定量窗口。然而,迄今为止,为此目的开发的方法已针对使用常规结构MRI数据(T1W成像),并且所得到的图在统一组织的子区域内定位变化模式的能力受到限制。替代性MRI对比机制,尤其是弥散张量成像(DTI)数据,现在更常用于系列研究中,并在白质内提供有价值的互补性微结构信息。本文介绍了一种新方法,该方法将DTI数据中的信息合并到常规MRI的变形张量形态中。通过提出一种被称为扩散对MI的新颖互信息(MI)派生标准,解决了使用DTI数据提供的附加信息的关键问题。这将常规数据和扩散数据合并在一个配准度量中。当用于微晶流体配准方案以绘制局部体积变化时,我们比较了该度量的不同公式。来自神经退行性疾病临床研究的合成数据和示例图像的结果表明,通过将DTI数据合并到形态计量配准中,可以改善组织体积变化的定位。

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