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New tissue priors for improved automated classification of subcortical brain structures on MRI

机译:新的组织先验可改善MRI皮质下大脑结构的自动分类

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Despite the constant improvement of algorithms for automated brain tissue classification, the accurate delineation of subcortical structures using magnetic resonance images (MRI) data remains challenging. The main difficulties arise from the low gray-white matter contrast of iron rich areas in T1-weighted (T1w) MRI data and from the lack of adequate priors for basal ganglia and thalamus. The most recent attempts to obtain such priors were based on cohorts with limited size that included subjects in a narrow age range, failing to account for age-related gray-white matter contrast changes. Aiming to improve the anatomical plausibility of automated brain tissue classification from T1w data, we have created new tissue probability maps for subcortical gray matter regions. Supported by atlas-derived spatial information, raters manually labeled subcortical structures in a cohort of healthy subjects using magnetization transfer saturation and R2* MRI maps, which feature optimal gray-white matter contrast in these areas. After assessment of inter-rater variability, the new tissue priors were tested on T1w data within the framework of voxel-based morphometry. The automated detection of gray matter in subcortical areas with our new probability maps was more anatomically plausible compared to the one derived with currently available priors. Weprovide evidence that the improved delineation compensates age-related bias in the segmentation of iron rich subcortical regions. The new tissue priors, allowing robust detection of basal ganglia and thalamus, have the potential to enhance the sensitivity of voxel-based morphometry in both healthy and diseased brains. (C) 2016 The Authors. Published by Elsevier Inc.
机译:尽管用于自动脑组织分类的算法不断改进,但使用磁共振图像(MRI)数据准确描绘皮层下结构仍然具有挑战性。主要困难是由于T1加权(T1w)MRI数据中铁富集区域的灰白物质对比度低,以及缺乏基底神经节和丘脑的先验条件。获得此类先验的最新尝试是基于规模有限的队列,其中包括年龄范围狭窄的受试者,未能说明与年龄相关的灰白色物质对比度变化。为了从T1w数据改善自动脑组织分类的解剖学合理性,我们为皮层下灰质区域创建了新的组织概率图。在地图集衍生的空间信息的支持下,评分者使用磁化传递饱和度和R2 * MRI映射在健康人群中手动标记皮质下的结构,这些区域在这些区域具有最佳的灰白色对比度。在评估评分者之间的变异性之后,在基于体素的形态计量学框架内,根据T1w数据测试了新的先验组织。与我们现有的先验方法相比,利用我们的新概率图自动检测皮层下区域的灰质在解剖学上似乎更合理。我们提供的证据表明,改进的轮廓可以弥补铁含量丰富的皮层下区域分割中与年龄有关的偏差。新的组织先验技术能够可靠地检测基底神经节和丘脑,有可能增强健康和患病大脑中基于体素的形态测量的敏感性。 (C)2016作者。由Elsevier Inc.发布

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