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Automatic segmentation of the facial nerve and chorda tympani in pediatric CT scans

机译:儿科CT扫描中的面神经和鼓膜鼓膜自动分割

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摘要

>Purpose: Cochlear implant surgery is used to implant an electrode array in the cochlea to treat hearing loss. The authors recently introduced a minimally invasive image-guided technique termed percutaneous cochlear implantation. This approach achieves access to the cochlea by drilling a single linear channel from the outer skull into the cochlea via the facial recess, a region bounded by the facial nerve and chorda tympani. To exploit existing methods for computing automatically safe drilling trajectories, the facial nerve and chorda tympani need to be segmented. The goal of this work is to automatically segment the facial nerve and chorda tympani in pediatric CT scans.>Methods: The authors have proposed an automatic technique to achieve the segmentation task in adult patients that relies on statistical models of the structures. These models contain intensity and shape information along the central axes of both structures. In this work, the authors attempted to use the same method to segment the structures in pediatric scans. However, the authors learned that substantial differences exist between the anatomy of children and that of adults, which led to poor segmentation results when an adult model is used to segment a pediatric volume. Therefore, the authors built a new model for pediatric cases and used it to segment pediatric scans. Once this new model was built, the authors employed the same segmentation method used for adults with algorithm parameters that were optimized for pediatric anatomy.>Results: A validation experiment was conducted on 10 CT scans in which manually segmented structures were compared to automatically segmented structures. The mean, standard deviation, median, and maximum segmentation errors were 0.23, 0.17, 0.18, and 1.27 mm, respectively.>Conclusions: The results indicate that accurate segmentation of the facial nerve and chorda tympani in pediatric scans is achievable, thus suggesting that safe drilling trajectories can also be computed automatically.
机译:>目的:人工耳蜗植入手术用于在耳蜗中植入电极阵列以治疗听力损失。作者最近介绍了一种称为经皮人工耳蜗植入的微创图像引导技术。该方法通过从外部颅骨通过面部凹部(由面神经和鼓膜鼓膜界定的区域)钻入耳蜗中的单个线性通道来实现对耳蜗的接近。为了利用现有的方法来自动计算安全的钻孔轨迹,需要对面神经和鼓膜鼓膜进行分割。这项工作的目的是在儿科CT扫描中自动分割面神经和鼓膜鼓动。>方法:作者提出了一种自动技术,该技术可依靠成人的统计模型来完成成人患者的分割任务。结构。这些模型包含沿两个结构的中心轴的强度和形状信息。在这项工作中,作者试图使用相同的方法对儿科扫描中的结构进行分割。然而,作者了解到,儿童和成人的解剖结构之间存在实质性差异,当使用成人模型分割儿科体积时,这导致分割效果不佳。因此,作者建立了一个针对儿科病例的新模型,并将其用于分割儿科扫描。一旦建立了这个新模型,作者就采用了与成人相同的分割方法,并针对小儿解剖学优化了算法参数。>结果:对10个CT扫描进行了验证实验,其中手动分割了结构与自动分段的结构进行了比较。平均,标准偏差,中位数和最大分割误差分别为0.23、0.17、0.18和1.27 mm。>结论:结果表明,儿科扫描中面神经和鼓膜鼓膜的准确分割这是可以实现的,因此表明安全钻孔轨迹也可以自动计算。

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