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A New Method for Improving Functional-to-Structural MRI Alignment using Local Pearson Correlation

机译:利用局部Pearson相关性改善功能性至结构MRI对准的新方法

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摘要

Accurate registration of Functional Magnetic Resonance Imaging (FMRI) T2*-weighted volumes to same-subject high-resolution T1-weighted structural volumes is important for Blood Oxygenation Level Dependent (BOLD) FMRI and crucial for applications such as cortical surface-based analyses and pre-surgical planning. Such registration is generally implemented by minimizing a cost functional, which measures the mismatch between two image volumes over the group of proper affine transformations. Widely used cost functionals, such as mutual information (MI) and correlation ratio (CR), appear to yield decent alignments when visually judged by matching outer brain contours. However, close inspection reveals that internal brain structures are often significantly misaligned. Poor registration is most evident in the ventricles and sulcal folds, where CSF is concentrated. This observation motivated our development of an improved modality-specific cost functional which uses a weighted local Pearson coefficient (LPC) to align T2*- and T1-weighted images. In the absence of an alignment gold standard, we used three human observers blinded to registration method to provide an independent assessment of the quality of the registration for each cost functional. We found that LPC performed significantly better (p < 0.001) than generic cost functionals including MI and CR. Generic cost functionals were very often not minimal near the best alignment, thereby suggesting that optimization is not the cause of their failure. Lastly, we emphasize the importance of precise visual inspection of alignment quality and present an automated method for generating composite images that help capture errors of misalignment.
机译:将功能性磁共振成像(FMRI)T2 *加权的体积准确地注册到同一对象的高分辨率T1加权的结构体积对于血氧水平依赖性(BOLD)FMRI非常重要,并且对于诸如基于皮质表面分析的应用至关重要术前计划。通常通过最小化成本函数来实现这种配准,该成本函数测量了一组适当仿射变换上的两个图像体积之间的失配。当通过匹配外部大脑轮廓进行视觉判断时,广泛使用的成本函数(例如互信息(MI)和相关比率(CR))似乎产生了良好的对齐方式。但是,仔细检查后发现,内部大脑结构经常严重错位。在脑脊液集中的心室和沟褶处,注册不佳最为明显。这项观察促使我们开发了一种改进的特定于模态的成本函数,该函数使用加权的局部Pearson系数(LPC)来对齐T2 *和T1加权图像。在没有统一的金标准的情况下,我们使用了三位不了解注册方法的人类观察员来对每种成本功能的注册质量进行独立评估。我们发现,LPC的性能明显好于(p <0.001)包括MI和CR的通用成本功能。通用成本函数通常在最佳对齐方式附近并非最小,因此表明优化并不是其失败的原因。最后,我们强调精确视觉检查对准质量的重要性,并提出了一种自动方法来生成有助于捕获未对准误差的合成图像。

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