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Oriented Active Shape Models for 3D Segmentation in Medical Images

机译:以医学图像为导向的3D分段的主动形状模型

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Active Shape Models (ASM) have been applied to various segmentation tasks in medical imaging, most successfully in 2D segmentation of objects that have a fairly consistent shape. However, several difficulties arise when extending 2D ASM to 3D: (1) difficulty in 3D labeling, (2) the requirement of a large number of training samples, (3) the challenging problem of landmark correspondence in 3D, (4) inefficient initialization and optimization in 3D. This paper addresses the 3D segmentation problem by using a small number of effective 2D statistical models called oriented ASM (OASM). We demonstrate that a small number of 2D OASM models, which are derived from a chunk of a contiguous set of slices, are sufficient to capture the shape variation between slices and individual objects. Each model can be matched rapidly to a new slice by using the OASM algorithm . Our experiments in segmenting breast and bone of the foot in MR images indicate the following: (1) The accuracy of segmentation via our method is much better than that of 2DASM-based segmentation methods. (2) Far fewer landmarks are required compared with thousands of landmarks needed in true 3D ASM. Therefore, far fewer training samples are required to capture details. (3) Our method is computationally slightly more expensive than the 2D method~2 owing to its 2 level dynamic programming (2LDP) algorithm.
机译:主动形状模型(ASM)已应用于医学成像中的各种分段任务,最成功的2D分段具有相当一致的形状。然而,在将2D ASM扩展到3D时出现了几个困难:(1)3D标签难度,(2)需要大量培训样本,(3)3D中的地标对应的具有挑战性问题,(4)初始化效率低下和3D优化。本文通过使用称为面向ASM(OASM)的少量有效的2D统计模型来解决3D分段问题。我们证明,少量的2D OASM模型,其源自连续一组切片的块,足以捕获切片和各个物体之间的形状变化。每个模型可以通过使用oasm算法将每个模型迅速匹配到新切片。我们在MR图像中分段乳房和骨骼分段的实验表明以下:(1)通过我们的方法的分割精度远远优于基于2个基于2dasm的分段方法的细分。 (2)与真正3D ASM所需的数千个地标相比,需要更少的地标。因此,需要较少的训练样本来捕获细节。 (3)由于其2级动态编程(2LDP)算法,我们的方法比2D方法〜2计算略贵。

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