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Evaluation of automated brain MR image segmentation and volumetry methods

机译:评估自动脑MR图像分割和容量法

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摘要

We compare three widely used brain volumetry methods available in the software packages FSL, SPM5, and FreeSurfer and evaluate their performance using simulated and real MR brain data sets. We analyze the accuracy of gray and white matter volume measurements and their robustness against changes of image quality using the BrainWeb MRI database. These images are based on “gold‐standard” reference brain templates. This allows us to assess between‐ (same data set, different method) and also within‐segmenter (same method, variation of image quality) comparability, for both of which we find pronounced variations in segmentation results for gray and white matter volumes. The calculated volumes deviate up to >10% from the reference values for gray and white matter depending on method and image quality. Sensitivity is best for SPM5, volumetric accuracy for gray and white matter was similar in SPM5 and FSL and better than in FreeSurfer. FSL showed the highest stability for white (<5%), FreeSurfer (6.2%) for gray matter for constant image quality BrainWeb data. Between‐segmenter comparisons show discrepancies of up to >20% for the simulated data and 24% on average for the real data sets, whereas within‐method performance analysis uncovered volume differences of up to >15%. Since the discrepancies between results reach the same order of magnitude as volume changes observed in disease, these effects limit the usability of the segmentation methods for following volume changes in individual patients over time and should be taken into account during the planning and analysis of brain volume studies. Hum Brain Mapp, 2009. © 2008 Wiley‐Liss, Inc.
机译:我们比较了软件包FSL,SPM5和FreeSurfer中可用的三种广泛使用的大脑容量法,并使用模拟和真实MR大脑数据集评估了它们的性能。我们使用BrainWeb MRI数据库分析了灰白物质体积测量的准确性及其对图像质量变化的鲁棒性。这些图像基于“黄金标准”参考大脑模板。这使我们能够评估(相同数据集,不同方法)之间以及分段内(相同方法,图像质量的变化)之间的可比性,对于这两者,我们发现灰度和白色物质体积的分割结果存在明显差异。根据方法和图像质量,所计算的体积与灰色和白色物质的参考值的相差最多> 10%。灵敏度对SPM5最好,SPM5和FSL中灰和白质的体积精度相似,并且比FreeSurfer更好。对于恒定的图像质量BrainWeb数据,FSL对白色(<5%)显示最高的稳定性,对灰色物质显示FreeSurfer(6.2%)。细分市场之间的比较显示,模拟数据差异高达> 20%,真实数据集平均差异为24%,而方法内性能分析发现的差异高达15%。由于结果之间的差异与疾病中观察到的体积变化达到相同的数量级,因此这些效果限制了分割方法用于随时间推移跟踪各个患者体积变化的可用性,因此应在计划和分析脑体积时予以考虑学习。嗡嗡的脑图,2009年。©2008 Wiley-Liss,Inc.

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