Spatial Registration of Neuroimaging Data: Analysis of the Convenience of Performing Non-Affine Transformations

F. Bayo, D. Castillo-Barnes, D. Salas-González, C. Jiménez-Mesa, J. Górriz, J. Ramírez, F. Segovia
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Abstract

Computer-based analysis of neuroimaging data in multisubject studies requires a previous spatial registration procedure, which ensures that the same voxel across different images refers to the same anatomical position. Several algorithms have been proposed to this end and most of them perform the spatial registration in two steps, an affine transformation followed by a non-linear registration. While the former applies only translations, rotations, zoom and shears to the neuroimages, the non-linear registration step can deform them to adjust the size and shape of individual regions. Although the scientific community generally accepts that these transformations are necessary, even though they may introduce certain distortions (noise), some recent works indicate that it is preferable to perform the spatial registration as an affine transformation only, in order to prevent the non-linear registration from removing information that could be relevant in the further analysis. In this work we evaluated the influence of applying nonlinear transformations during the special registration of molecular neuroimages that will be used in computer systems intended to assist the diagnosis of neurodegenerative disorders. Specifically, we compared the performance of a Support Vector Machine classifier that used data spatially registered using only affine transformations and other one that used data that have been registered using the classical procedure, which includes non-linear transformations. Two datasets were considered, one intended to assist the diagnosis of Alzheimer's disease and other one intended to assist the diagnosis of Parkinsonism. The results suggest that non-linear transformations facilitate the subsequent classification and provide slightly higher accuracy rates. The different is more important with data in which the intensity is concentrated in a small target region such as DatSCAN neuroimages, used to assist the diagnosis of Parkinsonism.
神经影像数据的空间配准:执行非仿射变换的便利性分析
在多学科研究中,基于计算机的神经成像数据分析需要先前的空间配准程序,以确保不同图像中的相同体素指的是相同的解剖位置。为此提出了几种算法,大多数算法分两步进行空间配准,即仿射变换和非线性配准。前者只对神经图像进行平移、旋转、缩放和剪切,而非线性配准步骤可以对神经图像进行变形,以调整单个区域的大小和形状。尽管科学界普遍认为这些变换是必要的,尽管它们可能会引入某些失真(噪声),但最近的一些研究表明,为了防止非线性配准去除可能在进一步分析中相关的信息,最好只将空间配准作为仿射变换进行。在这项工作中,我们评估了在分子神经图像的特殊注册过程中应用非线性变换的影响,这些图像将用于计算机系统,旨在协助诊断神经退行性疾病。具体来说,我们比较了仅使用仿射变换在空间上注册数据的支持向量机分类器和使用经典过程(包括非线性变换)注册数据的支持向量机分类器的性能。考虑了两个数据集,一个旨在协助阿尔茨海默病的诊断,另一个旨在协助帕金森病的诊断。结果表明,非线性变换有利于后续分类,并提供略高的准确率。这种差异在数据中更为重要,这些数据的强度集中在一个小的目标区域,比如用于辅助帕金森病诊断的DatSCAN神经图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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