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Effective nuclei segmentation with sparse shape prior and dynamic occlusion constraint for glioblastoma pathology images

机译:胶质母细胞瘤病理图像的有效稀疏形状先验和动态遮挡约束

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摘要

We propose a segmentation method for nuclei in glioblastoma histopathologic images based on a sparse shape prior guided variational level set framework. By spectral clustering and sparse coding, a set of shape priors is exploited to accommodate complicated shape variations. We automate the object contour initialization by a seed detection algorithm and deform contours by minimizing an energy functional that incorporates a shape term in a sparse shape prior representation, an adaptive contour occlusion penalty term, and a boundary term encouraging contours to converge to strong edges. As a result, our approach is able to deal with mutual occlusions and detect contours of multiple intersected nuclei simultaneously. Our method is applied to several whole-slide histopathologic image datasets for nuclei segmentation. The proposed method is compared with other state-of-the-art methods and demonstrates good accuracy for nuclei detection and segmentation, suggesting its promise to support biomedical image-based investigations.
机译:我们提出了一种基于稀疏形状事先指导的变异水平集框架的胶质母细胞瘤组织病理学图像中的核分割方法。通过频谱聚类和稀疏编码,可以利用一组形状先验来适应复杂的形状变化。我们通过种子检测算法自动执行对象轮廓初始化,并通过最小化能量函数来使轮廓变形,该能量函数在稀疏形状先验表示中包含了形状项,自适应轮廓遮挡罚分项和鼓励轮廓收敛到强边缘的边界项。结果,我们的方法能够处理相互遮挡并同时检测多个相交核的轮廓。我们的方法被应用于几个全幻灯片组织病理图像数据集的核分割。所提出的方法与其他最新方法进行了比较,证明了核检测和分割的良好准确性,表明其有望支持基于生物医学图像的研究。

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