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Semi-Automatic Medical Image Segmentation with Adaptive Local Statistics in Conditional Random Fields Framework

机译:条件随机场框架中具有自适应局部统计量的半自动医学图像分割

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摘要

Planning radiotherapy and surgical procedures usually require onerous manual segmentation of anatomical structures from medical images. In this paper we present a semi-automatic and accurate segmentation method to dramatically reduce the time and effort required of expert users. This is accomplished by giving a user an intuitive graphical interface to indicate samples of target and non-target tissue by loosely drawing a few brush strokes on the image. We use these brush strokes to provide the statistical input for a Conditional Random Field (CRF) based segmentation. Since we extract purely statistical information from the user input, we eliminate the need of assumptions on boundary contrast previously used by many other methods, A new feature of our method is that the statistics on one image can be reused on related images without registration. To demonstrate this, we show that boundary statistics provided on a few 2D slices of volumetric medical data, can be propagated through the entire 3D stack of images without using the geometric correspondence between images. In addition, the image segmentation from the CRF can be formulated as a minimum s–t graph cut problem which has a solution that is both globally optimal and fast. The combination of a fast segmentation and minimal user input that is reusable, make this a powerful technique for the segmentation of medical images.
机译:计划放射治疗和外科手术程序通常需要从医学图像中繁重地手动分割解剖结构。在本文中,我们提出了一种半自动和准确的分割方法,以大大减少专家用户所需的时间和精力。这是通过为用户提供直观的图形界面来实现的,该界面通过在图像上宽松地绘制一些笔触来指示目标组织和非目标组织的样本。我们使用这些笔触为基于条件随机场(CRF)的细分提供统计输入。由于我们是从用户输入中提取纯统计信息,因此消除了许多其他方法以前使用的边界对比度假设的需要。该方法的一个新功能是,无需注册,就可以在相关图像上重用一个图像的统计信息。为了证明这一点,我们表明,在不使用图像之间的几何对应关系的情况下,可以在整个3D图像堆栈中传播在一些2D体积医学数据切片上提供的边界统计信息。另外,来自CRF的图像分割可以表述为最小s–t图割问题,该问题具有全局最优和快速的解决方案。快速分割和可重复使用的最少用户输入的结合使该技术成为用于医学图像分割的强大技术。

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