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Robust Segmentation of Overlapping Cells in Histopathology Specimens Using Parallel Seed Detection and Repulsive Level Set

机译:使用平行种子检测和排斥水平集对组织病理学标本中的重叠细胞进行稳健的分割

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摘要

Automated image analysis of histopathology specimens could potentially provide support for early detection and improved characterization of breast cancer. Automated segmentation of the cells comprising imaged tissue microarrays (TMAs) is a prerequisite for any subsequent quantitative analysis. Unfortunately, crowding and overlapping of cells present significant challenges for most traditional segmentation algorithms. In this paper, we propose a novel algorithm that can reliably separate touching cells in hematoxylin-stained breast TMA specimens that have been acquired using a standard RGB camera. The algorithm is composed of two steps. It begins with a fast, reliable object center localization approach that utilizes single-path voting followed by mean-shift clustering. Next, the contour of each cell is obtained using a level set algorithm based on an interactive model. We compared the experimental results with those reported in the most current literature. Finally, performance was evaluated by comparing the pixel-wise accuracy provided by human experts with that produced by the new automated segmentation algorithm. The method was systematically tested on $234$ image patches exhibiting dense overlap and containing more than $2200$ cells. It was also tested on whole slide images including blood smears and TMAs containing thousands of cells. Since the voting step of the seed detection algorithm is well suited for parallelization, a parallel version of the algorithm was implemented using graphic processing units (GPU) that resulted in significant speedup over the C/C++ implementation.
机译:组织病理学标本的自动图像分析可能为早期发现和改善乳腺癌特征提供支持。包含成像组织微阵列(TMA)的细胞的自动分割是任何后续定量分析的前提。不幸的是,对于大多数传统的分割算法,细胞的拥挤和重叠提出了重大挑战。在本文中,我们提出了一种新颖的算法,该算法可以可靠地分离苏木精染色的乳房TMA标本中的触摸细胞,该标本已使用标准RGB相机获取。该算法由两个步骤组成。它从快速,可靠的对象中心定位方法开始,该方法利用单路径投票,然后进行均值漂移聚类。接下来,使用基于交互模型的水平集算法获得每个像元的轮廓。我们将实验结果与最新文献中报道的结果进行了比较。最后,通过将人类专家提供的像素精度与新的自动分割算法产生的像素精度进行比较,来评估性能。该方法已在234个图像块上进行了系统测试,这些图像块显示出密集的重叠并包含2200多个细胞。还对整个幻灯片图像(包括血液涂片和包含数千个细胞的TMA)进行了测试。由于种子检测算法的投票步骤非常适合并行化,因此使用图形处理单元(GPU)实现了该算法的并行版本,从而大大加快了C / C ++实现的速度。

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