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Effects of deformable registration algorithms on the creation of statistical maps for preoperative targeting in deep brain stimulation procedures

机译:变形配准算法对深部脑刺激手术前靶向统计图创建的影响

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Deep brain stimulation, which is used to treat various neurological disorders, involves implanting a permanent electrode into precise targets deep in the brain. Accurate pre-operative localization of the targets on pre-operative MRI sequence is challenging as these are typically located in homogenous regions with poor contrast. Population-based statistical atlases can assist with this process. Such atlases are created by acquiring the location of efficacious regions from numerous subjects and projecting them onto a common reference image volume using some normalization method. In previous work, we presented results concluding that non-rigid registration provided the best result for such normalization. However, this process could be biased by the choice of the reference image and/or registration approach. In this paper, we have qualitatively and quantitatively compared the performance of six recognized deformable registration methods at normalizing such data in poor contrasted regions onto three different reference volumes using a unique set of data from 100 patients. We study various metrics designed to measure the centroid, spread, and shape of the normalized data. This study leads to a total of 1800 deformable registrations and results show that statistical atlases constructed using different deformable registration methods share comparable centroids and spreads with marginal differences in their shape. Among the six methods being studied, Diffeomorphic Demons produces the largest spreads and centroids that are the furthest apart from the others in general. Among the three atlases, one atlas consistently outperforms the other two with smaller spreads for each algorithm. However, none of the differences in the spreads were found to be statistically significant, across different algorithms or across different atlases.
机译:深度大脑刺激用于治疗各种神经系统疾病,涉及将永久性电极植入大脑深处的精确目标中。术前MRI序列上靶标的准确术前定位具有挑战性,因为这些靶标通常位于对比度较差的同质区域中。基于人口的统计图集可以帮助完成此过程。通过从众多对象中获取有效区域的位置,然后使用某种归一化方法将它们投影到共同的参考图像体积上,来创建此类地图集。在先前的工作中,我们提出了结论,即非刚性注册为此类标准化提供了最佳结果。但是,此过程可能会因参考图像和/或配准方法的选择而产生偏差。在本文中,我们使用来自100个患者的唯一数据集,定性和定量地比较了六种公认的可变形配准方法在将对比度较差的区域中的此类数据归一化为三个不同参考体积时的性能。我们研究了旨在测量归一化数据的质心,散布和形状的各种度量。这项研究导致总共1800个可变形配准,结果表明,使用不同的可变形配准方法构建的统计图集共享可比的质心,并且扩散时其形状略有差异。在正在研究的六种方法中,“异形魔鬼”产生的点差和质心最大,与其他方法相比,相距最远。在这三个地图集中,每种地图的一个地图集始终以较小的扩展率始终胜过其他两个地图集。但是,在不同的算法或不同的图集之间,跨度的差异均未发现具有统计学显着性。

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