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Automatic localization of the internal auditory canal for patient-specific cochlear implant modeling

机译:患者特定耳蜗植入物建模的内耳内耳自动定位

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Cochlear implants (CIs) use a surgically implanted electrode array to treat severe-to-profound sensorineural hearing loss. Audiologists program CIs by selecting a number of stimulation parameters for the CI processor to optimize hearing performance. It has been shown in previous research that audiologists arrive at CI settings that lead to a better hearing outcome when they are provided an estimate of which regions of the auditory nerve are being activated by each electrode for a patient. If the neural fibers could be localized, neural fiber models could be used to estimate activa tion in response to electrode activation for individual patients. However, the neural fibers are so small they are not visible in clinical images. In this project, our aim is to develop an active-shape model based solution to automatically localize the Internal Auditory Canal (IAC), which houses the auditory nerves and has borders that are visible in CT scans, to serve as a landmark for localizing the nerve fibers. Seven manually segmented IAC volumes were used to create and validate our method using a leave-one-out approach. We found that the mean surface errors of the dataset ranged from ~0.4 to ~1.2 CT voxels (0.13 mm to 0.37 mm). These results suggest that our IAC segmentation is highly accurate and could provide an excellent landmark for estimating fiber position.
机译:耳蜗植入物(顺式)使用手术植入电极阵列来治疗严重的致力于深入的感觉损失。 Audiologists通过为CI处理器选择许多刺激参数来优化听力性能来编程CI。在以前的研究中已经显示,听众学家到达CI设置,当提供了一个估计患者的每个电极被激活了听觉神经的区域的估计时导致更好的听力结果。如果神经纤维可以是本地化的,则神经纤维模型可用于响应各个患者的电极活化来估计活性。然而,神经纤维是如此小,在临床图像中不可见。在这个项目中,我们的目的是开发基于主动形式的模型,以自动本地化内部听觉管道(IAC),该管道(IAC)容纳听觉神经,并具有在CT扫描中可见的边界,以作为本地化的标志性神经纤维。使用休假方法使用七种手动分段的IAC卷来创建和验证我们的方法。我们发现数据集的平均表面误差范围为〜0.4至〜1.2 CT体素(0.13mm至0.37 mm)。这些结果表明,我们的IAC细分是高度准确的,可提供估算光纤位置的优秀地标。

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