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An active contour model for medical image segmentation with application to brain CT image

机译:用于医学图像分割的主动轮廓模型及其在脑部CT图像中的应用

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Purpose: Cerebrospinal fluid (CSF) segmentation in computed tomography (CT) is a key step in computer-aided detection (CAD) of acute ischemic stroke. Because of image noise, low contrast and intensity inhomogeneity, CSF segmentation has been a challenging task. A region-based active contour model, which is insensitive to contour initialization and robust to intensity inhomogeneity, was developed for segmenting CSF in brain CT images. Methods: The energy function of the region-based active contour model is composed of a range domain kernel function, a space domain kernel function, and an edge indicator function. By minimizing the energy function, the region of edge elements of the target could be automatically identified in images with less dependence on initial contours. The energy function was optimized by means of the deepest descent method with a level set framework. An overlap rate between segmentation results and the reference standard was used to assess the segmentation accuracy. The authors evaluated the performance of the proposed method on both synthetic data and real brain CT images. They also compared the performance level of our method to those of region-scalable fitting (RSF) and global convex segment (GCS) models. Results: For the experiment of CSF segmentation in 67 brain CT images, their method achieved an average overlap rate of 66% compared to the average overlap rates of 16% and 46% from the RSF model and the GCS model, respectively. Conclusions: Their region-based active contour model has the ability to achieve accurate segmentation results in images with high noise level and intensity inhomogeneity. Therefore, their method has great potential in the segmentation of medical images and would be useful for developing CAD schemes for acute ischemic stroke in brain CT images. ? 2013 American Association of Physicists in Medicine.
机译:目的:计算机断层扫描(CT)中的脑脊液(CSF)分割是急性缺血性卒中的计算机辅助检测(CAD)的关键步骤。由于图像噪声,低对比度和强度不均匀,CSF分割已成为一项艰巨的任务。开发了一种基于区域的主动轮廓模型,该模型对轮廓初始化不敏感并且对强度不均匀性具有鲁棒性,用于分割脑部CT图像中的CSF。方法:基于区域的主动轮廓模型的能量函数由范围域核函数,空间域核函数和边缘指示符函数组成。通过最小化能量函数,可以在图像中自动识别目标边缘元素的区域,而对初始轮廓的依赖性较小。通过具有水平集框架的最深下降方法优化了能量函数。分割结果和参考标准之间的重叠率用于评估分割精度。作者评估了该方法在合成数据和真实脑部CT图像上的性能。他们还将我们的方法的性能水平与区域可缩放拟合(RSF)和全局凸段(GCS)模型的性能水平进行了比较。结果:对于在67幅脑部CT图像中进行CSF分割的实验,他们的方法实现了66%的平均重叠率,而RSF模型和GCS模型的平均重叠率分别为16%和46%。结论:他们的基于区域的主动轮廓模型能够在具有高噪声水平和强度不均匀性的图像中获得准确的分割结果。因此,他们的方法在医学图像分割中具有很大的潜力,对于开发脑部CT图像中的急性缺血性中风的CAD方案很有用。 ? 2013年美国医学物理学会。

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