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Facilitating Manual Segmentation of 3D Datasets Using Contour And Intensity Guided Interpolation

机译:使用轮廓和强度引导插值法促进3D数据集的手动分割

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Manual segmentation of anatomical structures in 3D imaging datasets is a highly time-consuming process. This process can be sped up using interslice interpolation techniques, which require only a small subset of slices to be manually segmented. In this paper, we propose a two-step interpolation approach that utilizes a “binary weighted averaging” algorithm to interpolate contour information, and the random forest framework to perform intensity-based label classification. We present the results of experiments performed in the context of hippocampal segmentations in ex vivo MRI scans. Compared to the random walker algorithm and morphology-based interpolation, the proposed method produces more accurate segmentations and smoother 3D reconstructions.
机译:在3D影像数据集中手动分割解剖结构是一个非常耗时的过程。可以使用切片间插值技术加快此过程,该技术仅需要手动分割一小部分切片。在本文中,我们提出了一种两步插值方法,该方法利用“二进制加权平均”算法对轮廓信息进行插值,并利用随机森林框架执行基于强度的标签分类。我们介绍了在离体MRI扫描中在海马区分开的背景下进行的实验结果。与随机沃克算法和基于形态学的插值相比,该方法可产生更准确的分割和更平滑的3D重建。

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