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A fast model-based prostate boundary segmentation using normalized cross-correlation and representative patterns in ultrasound images

机译:在超声图像中使用归一化互相关和代表性模式的基于模型的快速前列腺边界分割

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Segmentation of prostate boundaries in transrectal ultrasound (TRUS) images plays a great role in early detection of prostate cancer. Due to the low signal to noise ratio and existence of the speckle noise in TRUS images, prostate image segmentation has proven to be an extremely difficult task. This paper introduces a new fully automatic model-based prostate boundary segmentation method based on normalized cross-correlation (NCC). Using lower and upper boundary representative patterns, a strip rotates around the center of the probe and emphasizes the prostate boundaries. Representative patterns are constructed from a dictionary learning method, referred to as iterative least squares dictionary learning algorithm (ILS-DLA). Affine transformation parameters transform the prostate model to a position that best fit on the emphasized boundaries. Dice similarity coefficient (DSC) is adopted to evaluate the accuracy of the automatic segmentation procedure. Successful experimental results and the average DSC value of 90.6% and computational time of 3.08 seconds validate the proposed method.
机译:经直肠超声(TRUS)图像中前列腺边界的分割在前列腺癌的早期检测中起着重要作用。由于信噪比低且TRUS图像中存在斑点噪声,因此前列腺图像分割已被证明是一项极为困难的任务。本文介绍了一种基于归一化互相关(NCC)的新型基于模型的全自动前列腺边界分割方法。使用上下边界代表图案,条带围绕探针中心旋转并强调前列腺边界。代表模式是根据字典学习方法(称为迭代最小二乘字典学习算法(ILS-DLA))构造的。仿射变换参数将前列腺模型变换为最适合强调边界的位置。采用骰子相似系数(DSC)评估自动分割程序的准确性。成功的实验结果和90.6%的平均DSC值和3.08秒的计算时间证明了该方法的有效性。

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