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首页> 外文期刊>NeuroImage >A multi-atlas based method for automated anatomical Macaca fascicularis brain MRI segmentation and PET kinetic extraction
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A multi-atlas based method for automated anatomical Macaca fascicularis brain MRI segmentation and PET kinetic extraction

机译:一种基于多图谱的自动化解剖学猕猴脑MRI分割和PET动力学提取的方法

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摘要

MRI templates and digital atlases are needed for automated and reproducible quantitative analysis of non-human primate PET studies. Segmenting brain images via multiple atlases outperforms single-atlas labelling in humans. We present a set of atlases manually delineated on brain MRI scans of the monkey Macaca fascicularis. We use this multi-atlas dataset to evaluate two automated methods in terms of accuracy, robustness and reliability in segmenting brain structures on MRI and extracting regional PET measures. Methods: Twelve individual Macaca fascicularis high-resolution 3DT1 MR images were acquired. Four individual atlases were created by manually drawing 42 anatomical structures, including cortical and sub-cortical structures, white matter regions, and ventricles. To create the MRI template, we first chose one MRI to define a reference space, and then performed a two-step iterative procedure: affine registration of individual MRIs to the reference MRI, followed by averaging of the twelve resampled MRIs. Automated segmentation in native space was obtained in two ways: 1) Maximum probability atlases were created by decision fusion of two to four individual atlases in the reference space, and transformation back into the individual native space (MAXPROB). 2) One to four individual atlases were registered directly to the individual native space, and combined by decision fusion (PROPAG). Accuracy was evaluated by computing the Dice similarity index and the volume difference. The robustness and reproducibility of PET regional measurements obtained via automated segmentation was evaluated on four co-registered MRI/PET datasets, which included test-retest data. Results: Dice indices were always over 0.7 and reached maximal values of 0.9 for PROPAG with all four individual atlases. There was no significant mean volume bias. The standard deviation of the bias decreased significantly when increasing the number of individual atlases. MAXPROB performed better when increasing the number of atlases used. When all four atlases were used for the MAXPROB creation, the accuracy of morphometric segmentation approached that of the PROPAG method. PET measures extracted either via automatic methods or via the manually defined regions were strongly correlated, with no significant regional differences between methods. Intra-class correlation coefficients for test-retest data were over 0.87. Conclusions: Compared to single atlas extractions, multi-atlas methods improve the accuracy of region definition. They also perform comparably to manually defined regions for PET quantification. Multiple atlases of Macaca fascicularis brains are now available and allow reproducible and simplified analyses.
机译:MRI模板和数字地图集是非人类灵长类动物PET研究的自动化且可重复的定量分析所必需的。通过多个地图集对大脑图像进行分割的效果优于人类中的单图谱标记。我们介绍了一组手动绘制的猴猕猴fascicularis的脑MRI扫描图集。我们使用此多图集数据集在准确性,鲁棒性和可靠性方面评估两种自动方法,这些方法在MRI上分割脑部结构并提取区域PET测量值。方法:采集十二张猕猴高分辨率的3DT1 MR图像。通过手动绘制42个解剖结构(包括皮质和皮质下结构,白质区域和心室)来创建四个单独的图集。要创建MRI模板,我们首先选择一个MRI来定义参考空间,然后执行两步迭代过程:将单个MRI仿射配准到参考MRI,然后平均十二次重新采样的MRI。通过两种方式获得本机空间中的自动分割:1)通过在参考空间中将两到四个单独的图集进行决策融合来创建最大概率图集,然后转换回单独的本机空间(MAXPROB)。 2)将一到四个单独的地图集直接注册到单独的本机空间,并通过决策融合(PROPAG)进行合并。通过计算骰子相似性指数和体积差异来评估准确性。在四个共同注册的MRI / PET数据集上评估了通过自动分割获得的PET区域测量的鲁棒性和可重复性,其中包括重测数据。结果:对于所有四个单独的图集,PROPAG的骰子指数始终高于0.7并达到0.9的最大值。没有明显的平均音量偏差。当增加单个地图集的数量时,偏差的标准偏差会大大降低。当增加使用的图集数量时,MAXPROB表现更好。当所有四个地图集都用于MAXPROB创建时,形态分割的准确性接近PROPAG方法的准确性。通过自动方法或通过手动定义的区域提取的PET测量值之间存在高度相关性,方法之间没有明显的区域差异。重测数据的类内相关系数超过0.87。结论:与单图集提取相比,多图集方法提高了区域定义的准确性。它们的性能与手动定义的PET定量区域相当。猕猴大脑的多个地图集现已上市,可以进行可重复且简化的分析。

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