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Synergistic hybrid image segmentation: Combining model and image-based strategies.

机译:协同混合图像分割:结合模型和基于图像的策略。

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摘要

The focus of this thesis is practical model-based image segmentation. The target application in mind is segmentation and separation of the individual bony components at a joint for studying joint motion. This thesis examines this problem in three successive stages: (1) how best to combine model and image based strategies for 2D segmentation; (2) extending these to 3D segmentation; (3) utilizing these to segment (track) the same object in images corresponding to different positions of the joint.; Stage (1): Active Shape Model (ASM) is a widely used statistical model-based method for detecting and delineating structures in medical images. It efficiently searches images with a flexible and compact model by using prior knowledge derived from a training set. However, it is limited by accuracy because the segmentation results are parametric descriptions of the identified shape and they do not often match the perceptually identified boundary in images optimally. These inaccuracies will pose problems, especially for the subsequent analysis of medical images. On the other hand; purely image-based optimal boundary detection segmentation methods, such as live wire, perform well in delineation of boundaries of objects in images, although they require boundary recognition help from the user. Therefore, in this thesis, two such strategies are proposed, live wire active shape models (LWASM) and oriented active shape models (OASM) to actively exploit the synergy between model-based and image-based methods during segmentation seems to be an effective strategy.; Stage (2): ASM has proven to be an effective segmentation approach for medical images, most successfully in 2D objects with fairly consistent shape. Several difficulties arise when extending 2D ASM to true 3D. In this thesis, we apply 2D OASM for 3D segmentation in medical images. In this pseudo-3D OASM method, a small number of 2D statistical models are utilized to capture the shape variation within slices and different individuals. Each model can be matched rapidly to new images using the OASM algorithm. We demonstrate its application in the 3D segmentation of different anatomical structures in MR and CT images.; Stage (3): There are several medical application areas that require the segmentation and separation of the component bones of joints in a sequence of images of the joint acquired under various loading conditions, our own target area being joint motion analysis. This is a challenging problem due to the proximity of bones at the joint, partial volume effects, and other imaging modality-specific factors that confound boundary contrast. In this thesis, a two-step model-based segmentation strategy is proposed that utilizes the unique context of the current application wherein the shape of each individual bone is preserved in all scans of a particular joint while the spatial arrangement of the bones alters significantly among bones and scans. In the first step, a rigid deterministic model of the bone is generated from a segmentation of the bone in the image corresponding to one position of the joint by using any of the above methods. Subsequently, in other images of the same joint, this model is used to search for the same bone by minimizing an energy function that utilizes both boundary- and region-based information. We demonstrate in both MRI and CT of the tarsal complex and the cervical spine, how this strategy can be used to segment and separate bony components of a complex joint.
机译:本文的重点是基于模型的实用图像分割。在脑海中的目标应用是对关节处各个骨成分进行分割和分离,以研究关节运动。本文通过三个连续的阶段来研究这个问题:(1)如何最好地结合基于模型和图像的二维分割策略; (2)将这些扩展到3D分割; (3)利用它们在对应于关节不同位置的图像中分割(跟踪)同一物体。阶段(1):主动形状模型(ASM)是一种广泛使用的基于统计模型的方法,用于检测和描绘医学图像中的结构。通过使用从训练集中获得的先验知识,它可以使用灵活紧凑的模型有效地搜索图像。但是,它受到精度的限制,因为分割结果是所识别形状的参数描述,并且它们通常不与图像中可感知识别的边界最佳匹配。这些不准确性将带来问题,特别是对于医学图像的后续分析。另一方面;纯粹基于图像的最佳边界检测分割方法(例如火线)在描绘图像中对象的边界时表现良好,尽管它们需要用户的边界识别帮助。因此,在本文中,提出了两种这样的策略,即活线活动形状模型(LWASM)和定向活动形状模型(OASM),以便在分割过程中积极利用基于模型的方法和基于图像的方法之间的协同作用,这似乎是一种有效的策略。 。;阶段(2):ASM已被证明是一种有效的医学图像分割方法,最成功的是在形状相当一致的2D对象中进行分割。将2D ASM扩展到真实3D时会遇到一些困难。在本文中,我们将2D OASM应用于医学图像中的3D分割。在此伪3D OASM方法中,利用少量的2D统计模型来捕获切片和不同个体内的形状变化。使用OASM算法,可以将每个模型快速匹配到新图像。我们展示了其在MR和CT图像中不同解剖结构的3D分割中的应用。阶段(3):在几个医学应用领域中,需要在各种载荷条件下获取的一系列关节图像中对关节的组成部分进行分割和分离,我们自己的目标区域是关节运动分析。这是一个具有挑战性的问题,因为骨头在关节处接近,局部体积效应以及其他混淆边界对比度的成像方式特定因素。本文提出了一种基于两步模型的分割策略,该策略利用了当前应用程序的独特上下文,其中在特定关节的所有扫描中保留了每个骨骼的形状,而骨骼之间的空间排列却发生了显着变化。骨头和扫描。第一步,使用上述任何一种方法,根据图像中与关节一个位置相对应的骨骼分割,生成骨骼的刚性确定性模型。随后,在同一关节的其他图像中,此模型用于通过最小化利用基于边界和基于区域的信息的能量函数来搜索相同的骨骼。我们在骨复合物和颈椎的MRI和CT中演示了如何使用此策略来分割和分离复杂关节的骨成分。

著录项

  • 作者

    Liu, Jiamin.;

  • 作者单位

    University of Pennsylvania.;

  • 授予单位 University of Pennsylvania.;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 116 p.
  • 总页数 116
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;
  • 关键词

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