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Quantitative Evaluation of Intensity Inhomogeneity Correction Methods for Structural MR Brain Images

机译:结构性MR脑图像强度不均匀校正方法的定量评估

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摘要

The correction of intensity non-uniformity (INU) in magnetic resonance (MR) images is extremely important to ensure both within-subject and across-subject reliability. Here we tackled the problem of objectively comparing INU correction techniques for T1-weighted images, which are the most commonly used in structural brain imaging. We focused our investigations on the methods integrated in widely used software packages for MR data analysis: FreeSurfer, BrainVoyager, SPM and FSL. We used simulated data to assess the INU fields reconstructed by those methods for controlled inhomogeneity magnitudes and noise levels. For each method, we evaluated a wide range of input parameters and defined an enhanced configuration associated with best reconstruction performance. By comparing enhanced and default configurations, we found that the former often provide much more accurate results. Accordingly, we used enhanced configurations for a more objective comparison between methods. For different levels of INU magnitude and noise, SPM and FSL, which integrate INU correction with brain segmentation, generally outperformed FreeSurfer and BrainVoyager, whose methods are exclusively dedicated to INU correction. Nonetheless, accurate INU field reconstructions can be obtained with FreeSurfer on images with low noise and with BrainVoyager for slow and smooth inhomogeneity profiles. Our study may prove helpful for an accurate selection of the INU correction method to be used based on the characteristics of actual MR data.Electronic supplementary materialThe online version of this article (doi:10.1007/s12021-015-9277-2) contains supplementary material, which is available to authorized users.
机译:磁共振(MR)图像中强度不均匀性(INU)的校正对于确保对象内部和对象间的可靠性都非常重要。在这里,我们解决了客观比较T1加权图像的INU校正技术的问题,T1加权图像是结构脑成像中最常用的技术。我们的研究集中在广泛用于MR数据分析的软件包中集成的方法:FreeSurfer,BrainVoyager,SPM和FSL。我们使用模拟数据来评估通过这些方法重建的INU场,以控制非均匀性幅度和噪声水平。对于每种方法,我们评估了广泛的输入参数,并定义了与最佳重建性能相关的增强配置。通过比较增强配置和默认配置,我们发现前者通常可以提供更为准确的结果。因此,我们使用增强的配置在方法之间进行更客观的比较。对于不同级别的INU幅度和噪声,将INU校正与脑部分割相结合的SPM和FSL通常优于FreeSurfer和BrainVoyager,后者的方法专用于INU校正。尽管如此,使用FreeSurfer可以在低噪点图像上以及使用BrainVoyager获得缓慢而平滑的不均匀分布的准确的INU场重建。我们的研究可能证明有助于根据实际MR数据的特征准确选择要使用的INU校正方法。电子补充材料本文的在线版本(doi:10.1007 / s12021-015-9277-2)包含补充材料,可供授权用户使用。

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