首页> 外文会议>MICCAI 2011;International conference on medical image computing and computer-assisted intervention >Adaptive Energy Selective Active Contour with Shape Priors for Nuclear Segmentation and Gleason Grading of Prostate Cancer
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Adaptive Energy Selective Active Contour with Shape Priors for Nuclear Segmentation and Gleason Grading of Prostate Cancer

机译:具有形状优先权的自适应能量选择性主动轮廓,用于前列腺癌的核分割和格里森分级。

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Shape based active contours have emerged as a natural solution to overlap resolution. However, most of these shape-based methods are computationally expensive. There are instances in an image where no overlapping objects are present and applying these schemes results in significant computational overhead without any accompanying, additional benefit. In this paper we present a novel adaptive active contour scheme (AdACM) that combines boundary and region based energy terms with a shape prior in a multi level set formulation. To reduce the computational overhead, the shape prior term in the variational formulation is only invoked for those instances in the image where overlaps between objects are identified; these overlaps being identified via a contour concavity detection scheme. By not having to invoke all 3 terms (shape, boundary, region) for segmenting every object in the scene, the computational expense of the integrated active contour model is dramatically reduced, a particularly relevant consideration when multiple objects have to be segmented on very large histopathological images. The AdACM was employed for the task of segmenting nuclei on 80 prostate cancer tissue microarray images. Morphological features extracted from these segmentations were found to able to discriminate different Gleason grade patterns with a classification accuracy of 84% via a Support Vector Machine classifier. On average the AdACM model provided 100% savings in computational times compared to a non-optimized hybrid AC model involving a shape prior.
机译:基于形状的活动轮廓已经成为重叠分辨率的自然解决方案。但是,大多数这些基于形状的方法在计算上都是昂贵的。图像中有一些实例,其中不存在重叠的对象,并且应用这些方案会导致大量的计算开销,而没有任何附带的额外好处。在本文中,我们提出了一种新颖的自适应主动轮廓方案(AdACM),该方案将基于边界和区域的能量项与多级集合公式中的先验形状相结合。为了减少计算开销,仅对图像中识别出对象之间重叠的那些实例调用变分公式中的形状先验项;这些重叠是通过轮廓凹度检测方案识别的。通过不必调用所有3个术语(形状,边界,区域)来分割场景中的每个对象,可以大大减少集成活动轮廓模型的计算开销,这在必须将多个对象分割成非常大的对象时尤为重要组织病理学图像。 AdACM用于在80个前列腺癌组织微阵列图像上分割核的任务。发现从这些分割中提取的形态学特征能够通过支持向量机分类器以84%的分类精度区分不同的Gleason等级模式。与涉及形状先验的非优化混合AC模型相比,平均而言,AdACM模型可节省100%的计算时间。

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