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Cochlea Segmentation using Iterated Random Walks with Shape Prior

机译:使用形状先验的迭代随机游动进行耳蜗分割

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Cochlear implants can restore hearing to deaf or partially deaf patients. In order to plan the intervention, a model from high resolution μCT images is to be built from accurate cochlea segmentations and then, adapted to a patient-specific model. Thus, a precise segmentation is required to build such a model. We propose a new framework for segmentation of μCT cochlear images using random walks where a region term is combined with a distance shape prior weighted by a confidence map to adjust its influence according to the strength of the image contour. Then, the region term can take advantage of the high contrast between the background and foreground and the distance prior guides the segmentation to the exterior of the cochlea as well as to less contrasted regions inside the cochlea. Finally, a refinement is performed preserving the topology using a topological method and an error control map to prevent boundary leakage. We tested the proposed approach with 10 datasets and compared it with the latest techniques with random walks and priors. The experiments suggest that this method gives promising results for cochlea segmentation.
机译:耳蜗植入物可以使耳聋或部分耳聋的患者恢复听力。为了计划干预,将根据准确的耳蜗分割建立高分辨率μCT图像的模型,然后将其适应于患者特定的模型。因此,需要精确的分割来建立这样的模型。我们提出了一种使用随机游走对μCT耳蜗图像进行分割的新框架,其中将区域项与由置信度图加权的先验距离形状相结合,以根据图像轮廓的强度调整其影响。然后,区域项可以利用背景和前景之间的高对比度,并且距离先验将分割引导至耳蜗的外部以及耳蜗内部对比度较低的区域。最后,使用拓扑方法和错误控制图来进行优化以保留拓扑,以防止边界泄漏。我们用10个数据集测试了提出的方法,并将其与具有随机游走和先验先验的最新技术进行了比较。实验表明,该方法为耳蜗分割提供了有希望的结果。

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