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A mean three-dimensional atlas of the human thalamus: Generation from multiple histological data

机译:人类丘脑的平均三维图集:从多种组织学数据生成

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摘要

Functional neurosurgery relies on robust localization of the subcortical target structures, which cannot be visualized directly with current clinically available in-vivo imaging techniques. Therefore, one has still to rely on an indirect approach, by transferring detailed histological maps onto the patient's individual brain images. In contrast to macroscopic MRI atlases, which often represent the average of a population, each stack of sections, which a stereotactic atlas provides, is based on a single specimen. In addition to this bias, the anatomy is displayed with a highly anisotropic resolution, leading to topological ambiguities and limiting the accuracy of geometric reconstruction. In this work we construct an unbiased, high-resolution three-dimensional atlas of the thalamic structures, representing the average of several stereotactically oriented histological maps. We resolve the topological ambiguity by combining the information provided by histological data from different stereotactic directions. Since the stacks differ not only in geometrical detail provided, but also due to inter-individual variability, we adopt an iterative approach for reconstructing the mean model. Starting with a reconstruction from a single stack of sections, we iteratively register the current reference model onto the available data and reconstruct a refined mean three-dimensional model. The results show that integration of multiple stereotactic anatomical data to produce an unbiased, mean model of the thalamic nuclei and their subdivisions is feasible and that the integration reduces problems of atlas reconstruction inherent to histological stacks to a large extent.
机译:功能性神经手术依赖于皮质下靶结构的稳固定位,而当前临床上可用的体内成像技术无法直接对其进行可视化。因此,通过将详细的组织学图谱转移到患者的个人大脑图像上,仍然必须依靠间接方法。与通常代表总体平均值的宏观MRI图谱相反,立体定位图谱提供的每部分切片都是基于单个标本。除此偏见外,还以高度各向异性的分辨率显示解剖结构,从而导致拓扑模糊并限制了几何重建的准确性。在这项工作中,我们构建了丘脑结构的无偏差,高分辨率三维地图集,代表了几个立体定向组织学图的平均值。我们通过组合来自不同立体定向方向的组织学数据提供的信息来解决拓扑歧义。由于堆栈不仅在提供的几何细节上有所不同,而且由于个体间的可变性,所以我们采用迭代方法来重建均值模型。从单个部分堆栈的重建开始,我们将当前参考模型迭代注册到可用数据上,并重建精炼的均值三维模型。结果表明,整合多个立体定向解剖数据以产生无偏差的丘脑核及其细分平均模型是可行的,并且该整合在很大程度上减少了组织学堆叠固有的图集重建问题。

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