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Random walks with statistical shape prior for cochlea and inner ear segmentation in micro-CT images

机译:在微CT图像中的耳蜗和内耳分割之前随机散步,在耳蜗和内耳分段

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摘要

A cochlear implant is an electronic device which can restore sound to completely or partially deaf patients. For surgical planning, a patient-specific model of the inner ear must be built using high-resolution images accurately segmented. We propose a new framework for segmentation of micro-CT cochlear images using random walks, where a region term estimated by a Gaussian mixture model is combined with a shape prior initially obtained by a statistical shape model (SSM). The region term can then take advantage of the high contrast between the background and foreground, while the shape prior guides the segmentation to the exterior of the cochlea and to less contrasted regions inside the cochlea. The prior is obtained via a non-rigid registration regularized by a statistical shape model. The SSM constrains the inner parts of the cochlea and ensures valid output shapes of the inner ear.
机译:耳蜗植入物是一种能够恢复完全或部分聋患者的声音的电子设备。对于外科手术规划,必须使用高分辨率图像精确分割内耳的患者特定模型。我们提出了一种新的框架,用于使用随机行走的微型CT耳蜗图像的分割框架,其中通过高斯混合模型估计的区域术语与最初通过统计形状模型(SSM)获得的形状组合。然后,该区域术语可以利用背景和前景之间的高对比度,而形状先前引导到耳蜗外部的分段以及耳蜗内部的较小较差的区域。通过通过统计形状模型规则化的非刚性配准获得。 SSM限制了耳蜗的内部,并确保了内耳的有效输出形状。

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