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Unsupervised clustering method to convert high-resolution magnetic resonance volumes to three-dimensional acoustic models for full-wave ultrasound simulations

机译:无监督的聚类方法将高分辨率磁共振卷转换为全波超声模拟的三维声学模型

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摘要

Simulations of acoustic wave propagation, including both the forward and the backward propagations of the wave (also known as full-wave simulations), are increasingly utilized in ultrasound imaging due to their ability to more accurately model important acoustic phenomena. Realistic anatomic models, particularly those of the abdominal wall, are needed to take full advantage of the capabilities of these simulation tools. We describe a method for converting fat–water-separated magnetic resonance imaging (MRI) volumes to anatomical models for ultrasound simulations. These acoustic models are used to map acoustic imaging parameters, such as speed of sound and density, to grid points in an ultrasound simulation. The tissues of these models are segmented from the MRI volumes into five primary classes of tissue in the human abdominal wall (skin, fat, muscle, connective tissue, and nontissue). This segmentation is achieved using an unsupervised machine learning algorithm, fuzzy c-means clustering (FCM), on a multiscale feature representation of the MRI volumes. We describe an automated method for utilizing FCM weights to produce a model that achieves ∼90% agreement with manual segmentation. Two-dimensional (2-D) and three-dimensional (3-D) full-wave nonlinear ultrasound simulations are conducted, demonstrating the utility of realistic 3-D abdominal wall models over previously available 2-D abdominal wall models.
机译:声波传播的模拟,包括波的前向和向后传播(也称为全波模拟),由于它们更准确地模拟了重要的声学现象而越来越多地利用超声成像。需要最现实的解剖模型,特别是腹壁的模型,以充分利用这些模拟工具的能力。我们描述了一种将脂肪水分离的磁共振成像(MRI)体积转换为超声模拟的解剖模型的方法。这些声学模型用于将声学成像参数(例如声速和密度)映射到超声模拟中的网格点。这些模型的组织从MRI体积分段为人腹壁(皮肤,脂肪,肌肉,结缔组织和Nontissue)中的五类课堂组织。使用无监督的机器学习算法,模糊C-MERIAL聚类(FCM)在MRI卷的多尺度特征表示上实现该分割。我们描述了一种利用FCM权重的自动化方法,以产生与手动分割达到~90%协议的模型。进行二维(2-D)和三维(3-D)全波非线性超声模拟,展示了现实的3-D腹壁模型在以前可用的2-D腹壁模型上的效用。

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