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Automated 3D renal segmentation based on image partitioning

机译:基于图像分割的自动3D肾脏分割

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Despite several decades of research into segmentation techniques, automated medical image segmentation is barely usable in a clinical context, and still at vast user time expense. This paper illustrates unsupervised organ segmentation through the use of a novel automated labelling approximation algorithm followed by a hypersurface front propagation method. The approximation stage relies on a pre-computed image partition forest obtained directly from CT scan data. We have implemented all procedures to operate directly on 3D volumes, rather than slice-by-slice, because our algorithms are dimensionality-independent. The results picture segmentations which identify kidneys, but can easily be extrapolated to other body parts. Quantitative analysis of our automated segmentation compared against hand-segmented gold standards indicates an average Dice similarity coefficient of 90%. Results were obtained over volumes of CT data with 9 kidneys, computing both volume-based similarity measures (such as the Dice and Jaccard coefficients, true positive volume fraction) and size-based measures (such as the relative volume difference). The analysis considered both healthy and diseased kidneys, although extreme pathological cases were excluded from the overall count. Such cases are difficult to segment both manually and automatically due to the large amplitude of Hounsfield unit distribution in the scan, and the wide spread of the tumorous tissue inside the abdomen. In the case of kidneys that have maintained their shape, the similarity range lies around the values obtained for inter-operator variability. Whilst the procedure is fully automated, our tools also provide a light level of manual editing.
机译:尽管对分割技术进行了数十年的研究,但是自动医学图像分割在临床环境中几乎不可用,并且仍然花费大量的用户时间。本文通过使用新颖的自动标记近似算法以及超曲面前传播方法,说明了无监督的器官分割。近似阶段依赖于直接从CT扫描数据获得的预先计算的图像分区森林。由于我们的算法与维度无关,因此我们已实现所有过程以直接在3D体积上进行操作,而不是逐片进行操作。结果图片分割可以识别肾脏,但可以轻松推断到其他身体部位。与手动分段的金标准相比,对我们的自动细分进行的定量分析表明,平均Dice相似系数为90%。通过使用9个肾脏的CT数据量获得结果,计算基于体积的相似性度量(例如Dice和Jaccard系数,真实的正体积分数)和基于大小的度量(例如相对体积差异)。该分析同时考虑了健康肾脏和患病肾脏,尽管从总计数中排除了极端病理病例。由于扫描过程中Hounsfield单位分布的幅度较大以及腹部内肿瘤组织的广泛分布,因此很难手动或自动分割此类病例。在肾脏保持其形状的情况下,相似范围围绕操作者间变异性获得的值。虽然该过程是完全自动化的,但我们的工具还提供了轻量级的手动编辑。

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