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BrainK for Structural Image Processing: Creating Electrical Models of the Human Head

机译:用于结构图像处理的脑袋:创造人头的电模型

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摘要

BrainK is a set of automated procedures for characterizing the tissues of the human head from MRI, CT, and photogrammetry images. The tissue segmentation and cortical surface extraction support the primary goal of modeling the propagation of electrical currents through head tissues with a finite difference model (FDM) or finite element model (FEM) created from the BrainK geometries. The electrical head model is necessary for accurate source localization of dense array electroencephalographic (dEEG) measures from head surface electrodes. It is also necessary for accurate targeting of cerebral structures with transcranial current injection from those surface electrodes. BrainK must achieve five major tasks: image segmentation, registration of the MRI, CT, and sensor photogrammetry images, cortical surface reconstruction, dipole tessellation of the cortical surface, and Talairach transformation. We describe the approach to each task, and we compare the accuracies for the key tasks of tissue segmentation and cortical surface extraction in relation to existing research tools (FreeSurfer, FSL, SPM, and BrainVisa). BrainK achieves good accuracy with minimal or no user intervention, it deals well with poor quality MR images and tissue abnormalities, and it provides improved computational efficiency over existing research packages.
机译:Braink是一组自动化程序,用于从MRI,CT和摄影测量图像中表征人头的组织。组织分割和皮质表面提取支持通过具有有限差异模型(FDM)或从脑格几何形状产生的有限差异模型(FDM)或有限元模型(FEM)来模拟电流传播的主要目标。电动头模型是来自头表面电极的致密阵列脑电图(DEEG)测量的精确源定位所必需的。还需要精确靶向脑结构,从这些表面电极注入经颅电流。 Braink必须达到五个主要任务:图像分割,MRI,CT和传感器摄影测量图像,皮质表面重建,皮质表面的偶极曲面,以及TALAIRACH转换。我们描述了对每个任务的方法,并比较了与现有的研究工具(FreeSurfer,FSL,SPM和Brainvisa)相关的组织分割和皮质表面提取的关键任务的准确性。 Braink通过最小或没有用户干预实现了良好的准确性,它可以很好地达到质量差的MR图像和组织异常,并且在现有的研究包中提供了改进的计算效率。

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