首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Prostate ultrasound image segmentation using level set-based region flow with shape guidance
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Prostate ultrasound image segmentation using level set-based region flow with shape guidance

机译:使用基于水平集的区域流和形状指导进行前列腺超声图像分割

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Prostate segmentation in ultrasound images is a clinically important and technically challenging task. Despite several research attempts, few effective methods are available. One problem is the limited algorithmic robustness to common artifacts in clinical data sets. To improve the robustness, we have developed a hybrid level set method, which incorporates shape constraints into a region-based curve evolution process. The online segmentation method alternates between two steps, namely, shape model estimation (ME) and curve evolution (CE). The prior shape information is encoded in an implicit parametric model derived offline from manually outlined training data. Utilizing this prior shape information, the ME step tries to compute the maximum a posteriori estimate of the model parameters. The estimated shape is then used to guide the CE step, which in turn provides a new model initialization for the ME step. The process stops automatically when the curve locks onto the specific prostate shape. The ME and the CE steps complement each other to capture both global and local shape details. With shape guidance, this algorithm is less sensitive to initial contour placement and more robust even in the presence of large boundary gaps and strong clutter. Promising results are demonstrated on both synthetic and real prostate ultrasound images.
机译:超声图像中的前列腺分割是一项临床上重要且技术上具有挑战性的任务。尽管进行了几次研究尝试,但几乎没有有效的方法。一个问题是对临床数据集中常见伪像的算法鲁棒性有限。为了提高鲁棒性,我们开发了一种混合水平集方法,该方法将形状约束合并到基于区域的曲线演化过程中。在线分割方法在两个步骤之间交替进行,即形状模型估计(ME)和曲线演变(CE)。先验形状信息被编码为从手动概述的训练数据脱机导出的隐式参数模型中。利用该先验形状信息,ME步骤尝试计算模型参数的最大后验估计。然后,将估计的形状用于指导CE步骤,进而为ME步骤提供新的模型初始化。当曲线锁定到特定的前列腺形状时,该过程将自动停止。 ME和CE步骤相互补充,以捕获整体和局部形状细节。在形状引导下,该算法对初始轮廓放置不太敏感,即使在存在较大边界间隙和强杂波的情况下也更鲁棒。在合成和真实的前列腺超声图像上都显示出令人鼓舞的结果。

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