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Image Segmentation with Implicit Color Standardization Using Spatially Constrained Expectation Maximization: Detection of Nuclei

机译:使用空间受限期望最大化的隐式颜色标准化图像分割:核的检测

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Color nonstandardness - the propensity for similar objects to exhibit different color properties across images - poses a significant problem in the computerized analysis of histopathology. Though many papers propose means for improving color constancy, the vast majority assume image formation via reflective light instead of light transmission as in microscopy, and thus are inappropriate for histological analysis. Previously, we presented a novel Bayesian color segmentation algorithm for histological images that is highly robust to color nonstandardness; this algorithm employed the expectation maximization (EM) algorithm to dynamically estimate - for each individual image - the probability density functions that describe the colors of salient objects. However, our approach, like most EM-based algorithms, ignored important spatial constraints, such as those modeled by Markov random field (MRFs). Addressing this deficiency, we now present spatially-constrained EM (SCEM), a novel approach for incorporating Markov priors into the EM framework. With respect to our segmentation system, we replace EM with SCEM and then assess its improved ability to segment nuclei in H&E stained histopathology. Segmentation performance is evaluated over seven (nearly) identical sections of gastrointestinal tissue stained using different protocols (simulating severe color nonstandardness). Over this dataset, our system identifies nuclear regions with an area under the receiver operator characteristic curve (AUC) of 0.838. If we disregard spatial constraints, the AUC drops to 0.748.
机译:颜色非标准-相似对象倾向于在整个图像中表现出不同的颜色特性-在组织病理学的计算机分析中提出了一个重大问题。尽管许多论文提出了改善色彩恒定性的方法,但绝大多数论文都假设通过反射光而不是显微镜中的光透射来形成图像,因此不适用于组织学分析。以前,我们针对组织学图像提出了一种新颖的贝叶斯颜色分割算法,该算法对颜色非标准性具有很强的鲁棒性。该算法采用期望最大化(EM)算法为每个单独的图像动态估计描述显着物体颜色的概率密度函数。但是,我们的方法与大多数基于EM的算法一样,忽略了重要的空间约束,例如由马尔可夫随机场(MRF)建模的约束。为了解决这一缺陷,我们现在介绍空间受限的EM(SCEM),这是一种将Markov先验合并到EM框架中的新颖方法。关于我们的分割系统,我们将SCEM替换为EM,然后评估其在H&E染色的组织病理学中分割核的增强能力。在使用不同方案(模拟严重的颜色不标准)对七个(几乎)相同的胃肠道组织切片进行评估时,对分割性能进行了评估。在此数据集上,我们的系统识别出的核区域的接收器操作员特征曲线(AUC)为0.838。如果我们忽略空间限制,则AUC会降至0.748。

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