超声图像中前列腺边界的自顶向下分割方法

A. Jendoubi, J. Zeng, M. Chouikha
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引用次数: 16

摘要

近年来,超声在前列腺外科手术中的应用越来越广泛。从超声图像中分割前列腺边界在临床上非常有用,可以用于精确的体积测量和肿瘤边缘估计,也可以在活检和消融等过程中提供实时的靶向图像指导。然而,前列腺的自动分割是一项具有挑战性的任务,因为超声图像由于大量的随机散射而具有高水平的斑点噪声,因此它们具有非常低的信噪比。因此,为了计算前列腺体积信息,医生不得不使用手工绘制前列腺轮廓的方法,逐片绘制。这是一项繁琐的工作,显然它延误了整个临床程序。此外,由于不同医生之间或同一医生在不同时间的差异很大,因此无法保证分割前列腺边界的准确性。在本文中,我们提出了一种自上而下的方法来分割前列腺超声图像使用蛇模型,而不是大多数现有的自下而上的方法。对高散斑噪声和前列腺边界形状复杂的问题采取了特殊的处理措施。一般情况下,中值滤波对于去除散斑噪声是有效的。我们广泛地评估了大多数现有的边缘检测方法,发现拉普拉斯高斯算子(LoG)和索贝尔算子的逻辑组合在寻找有用的图像梯度方面提供了最好的性能。在蛇形模型的变形过程中,利用前列腺的形状信息作为强导向,对蛇形模型的参数进行动态优化。实验结果表明,该方法在不同噪声水平的前列腺超声图像中是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Top-down approach to segmentation of prostate boundaries in ultrasound images
Ultrasound has been increasingly used in surgical procedures of the prostate in recent years. Segmentation of prostate boundaries from ultrasound images is clinically useful in such situations as accurate volume measurement, and tumor margin estimation, and it can also provide real-time targeted image guidance during procedures such as biopsy and ablation. Automatic segmentation of the prostate, however, is a challenging task since the ultrasound images usually have high level of speckle noises due to large amount of random scatters and thus they have a very low signal-to-noise ratio. As a result, physicians have to use manual methods to draw contours of the prostate, slice by slice, in order to calculate prostate volume information. This is a tedious work and apparently it delays the whole clinical procedures. In addition, accuracy of the segmented prostate boundaries cannot be guaranteed due to significant variations among different physicians or with the same physician at different times. In this paper, we present a top-down approach to the segmentation of prostate ultrasound images using a snake model, as compared to most existing bottom-up methods. Special measures were taken to deal with the high speckle noises and complex shapes of prostate boundaries. In general, median filtering proved to be effective in removing speckle noises. We extensively evaluated most of the existing edge detection methods and found that the logic combination of Laplacian of Gaussian (LoG) and Sobel operator provided the best performance in finding the useful image gradients. Parameters of the snake were dynamically optimized, and the shape information of the prostate was used as a strong guidance during the deformation process of the snake model. Experimental results with several ultrasound prostate images with various levels of noises were presented to demonstrate the effectiveness of the proposed approach.
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