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Segmentation of kidneys using a new active shape model generation technique based on non-rigid image registration.

机译:基于非刚性图像配准的新型活性形状模型生成技术分割肾脏分割。

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摘要

Active shape models (ASMs) are widely used for applications in the field of image segmentation. Building an ASM requires to determine point correspondences for input training data, which usually results in a set of landmarks distributed according to the statistical variations. State-of-the-art methods solve this problem by minimizing the description length of all landmarks using a parametric mapping of the target shape (e.g. a sphere). In case of models composed of multiple sub-parts or highly non-convex shapes, these techniques feature substantial drawbacks. This article proposes a novel technique for solving the crucial correspondence problem using non-rigid image registration. Unlike existing approaches the new method yields more detailed ASMs and does not require explicit or parametric formulations of the problem. Compared to other methods, the already built ASM can be updated with additional prior knowledge in a very efficient manner. For this work, a training set of 3-D kidney pairs has been manually segmented from 41 CT images of different patients and forms the basis for a clinical evaluation. The novel registration based approach is compared to an already established algorithm that uses a minimum description length (MDL) formulation. The presented results indicate that the use of non-rigid image registration to solve the point correspondence problem leads to improved ASMs and more accurate segmentation results. The sensitivity could be increased by approximately 10%. Experiments to analyze the dependency on the user initialization also show a higher sensitivity of 5-15%. The mean squared error of the segmentation results and the ground truth manually classified data could also be reduced by 20-34% with respect to varying numbers of training samples.
机译:主动形状模型(ASM)广​​泛用于图像分割领域的应用。构建ASM需要确定输入训练数据的点对应关系,这通常会导致根据统计变异分布的一组地标。最先进的方法通过使用目标形状(例如球体)的参数映射最小化所有地标的描述长度来解决这个问题。在多个子部分或高度非凸形形状组成的模型的情况下,这些技术具有大量缺点。本文提出了一种使用非刚性图像配准解决重要对应问题的新技术。与现有方法不同,新方法产生更详细的ASM,并且不需要出现明确或参数化制剂。与其他方法相比,已经构建的ASM可以以非常有效的方式通过额外的先验知识进行更新。对于这项工作,从不同患者的41张CT图像手动逐次培训3-D肾小写,并形成临床评价的基础。将基于注册的基于注册的方法与已经建立的算法进行了比较,该算法使用最小描述长度(MDL)制剂。所提出的结果表明,使用非刚性图像配准来解决点对应问题导致改善的ASM和更准确的分割结果。灵敏度可以增加约10%。分析用户初始化依赖性的实验也显示出5-15%的更高灵敏度。相对于不同数量的训练样本,分段结果的平均平均误差和手动分类数据也可以减少20-34%。

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