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K-Means Clustering for High-Resolution, Realistic Acoustic Maps

机译:K-Means聚类用于高分辨率,逼真的声学贴图

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In this work, we describe a method for converting fat-water-separated magnetic resonance imaging (MRI) volumes to acoustic maps for ultrasound simulations. An acoustic map is a mapping of acoustic imaging parameters such as speed of sound and density to grid points in the ultrasound simulations. Tissues are segmented into five primary classes of tissue in the human abdominal wall (skin, fat, muscle, connective tissue, and non-tissue). This segmentation is achieved using an unsupervised machine learning algorithm, called soft k-means clustering, on a multi-scale feature representation of the MRI volumes. We describe an automated method for utilizing soft k-means weights to produce an acoustic map that achieves approximately 90% agreement with manual segmentation. Two-dimensional (2D) and three-dimensional (3D) nonlinear ultrasound simulations are conducted, demonstrating the utility of realistic 3D maps over previously-available 2D acoustic maps.
机译:在这项工作中,我们描述了一种将脂肪分离的磁共振成像(MRI)体积转换为声学图以进行超声模拟的方法。声图是超声成像中诸如声速和密度之类的声成像参数到网格点的映射。组织在人腹壁中分为五类主要组织(皮肤,脂肪,肌肉,结缔组织和非组织)。使用MRI卷的多尺度特征表示时,使用称为软k均值聚类的无监督机器学习算法可实现此分割。我们描述了一种利用软k均值权重来生成声学图的自动化方法,该图可以实现约90%的手动分割一致性。进行了二维(2D)和三维(3D)非线性超声仿真,从而证明了逼真的3D映射在先前可用的2D声学图上的实用性。

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