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Kidney Detection in 3-D Ultrasound Imagery via Shape-to-Volume Registration Based on Spatially Aligned Neural Network

机译:基于空间对齐神经网络的形状到体积配准的3D超声图像肾脏检测

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摘要

This paper introduces a computer-aided kidney shape detection method suitable for volumetric (3D) ultrasound images. Using shape and texture priors, the proposed method automates the process of kidney detection, which is a problem of great importance in computer-assisted trauma diagnosis. This paper introduces a new complex-valued implicit shape model, which represents the multiregional structure of the kidney shape. A spatially aligned neural network classifiers with complex-valued output is designed to classify voxels into background and multiregional structure of the kidney shape. The complex values of the shape model and classification outputs are selected and incorporated in a new similarity metric, such as the shape-to-volume registration process only fits the shape model on the actual kidney shape in input ultrasound volumes. The algorithm's accuracy and sensitivity are evaluated using both simulated and actual 3-D ultrasound images, and it is compared against the performance of the state of the art. The results support the claims about accuracy and robustness of the proposed kidney detection method, and statistical analysis validates its superiority over the state of the art.
机译:本文介绍了一种适用于体积(3D)超声图像的计算机辅助肾脏形状检测方法。利用形状和纹理先验,所提出的方法使肾脏检测过程自动化,这是在计算机辅助创伤诊断中非常重要的问题。本文介绍了一种新的复数值隐式形状模型,该模型表示肾脏形状的多区域结构。设计一个具有复数值输出的空间对齐的神经网络分类器,以将体素分类为肾脏形状的背景和多区域结构。选择形状模型和分类输出的复数值,并将其合并到新的相似性度量标准中,例如,形状到体积的配准过程仅将形状模型拟合到输入超声体积中的实际肾脏形状。使用模拟的和实际的3D超声图像评估算法的准确性和灵敏度,并将其与最新技术的性能进行比较。结果支持了关于所提出的肾脏检测方法的准确性和鲁棒性的主张,并且统计分析证实了其相对于现有技术的优越性。

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