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Contour-Seed Pairs Learning-Based Framework for Simultaneously Detecting and Segmenting Various Overlapping Cells/Nuclei in Microscopy Images

机译:基于轮廓种子对学习的框架,用于同时检测和分割显微镜图像中的各种重叠细胞/核

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In this paper, we propose a novel contour-seed pairs learning-based framework for robust and automated cellucleus segmentation. Automated granular object segmentation in microscopy images has significant clinical importance for pathology grading of the cell carcinoma and gene expression. The focus of the past literature is dominated by either segmenting a certain type of cellsuclei or simply splitting the clustered objects without contours inference of them. Our method addresses these issues by formulating the detection and segmentation tasks in terms of a unified regression problem, where a cascade sparse regression chain model is trained and then applied to return object locations and entire boundaries of clustered objects. In particular, we first learn a set of online convolutional features in each layer. Then, in the proposed cascade sparse regression chain, with the input from the learned features, we iteratively update the locations and clustered object boundaries until convergence. In this way, the boundary evidences of each individual object can be easily delineated and be further fed to a complete contour inference procedure optimized by the minimum description length principle. For any probe image, our method enables to analyze free-lying and overlapping cells with complex shapes. Experimental results show that the proposed method is very generic and performs well on contour inferences of various cellucleus types. Compared with the current segmentation techniques, our approach achieves state-of-the-art performances on four challenging datasets, i.e., the kidney renal cell carcinoma histopathology dataset, Drosophila Kc167 cellular dataset, differential interference contrast red blood cell dataset, and cervical cytology dataset.
机译:在本文中,我们提出了一种新颖的基于轮廓-种子对学习的框架,用于健壮和自动的细胞/细胞核分割。显微镜图像中的自动颗粒物分割对于细胞癌的病理分级和基因表达具有重要的临床意义。过去文献的重点是通过分割某种类型的细胞/细胞核或简单地分裂聚类对象而没有它们的轮廓推断。我们的方法通过根据统一回归问题制定检测和分割任务来解决这些问题,其中训练级联稀疏回归链模型,然后将其应用于返回对象的位置和聚类对象的整个边界。特别是,我们首先学习每层中的一组在线卷积特征。然后,在提出的级联稀疏回归链中,利用学习到的特征的输入,我们迭代更新位置和聚类对象边界,直到收敛为止。这样,每个对象的边界证据都可以轻松地描绘出来,并进一步输入到通过最小描述长度原理优化的完整轮廓推断过程中。对于任何探针图像,我们的方法都可以分析形状复杂的自由和重叠细胞。实验结果表明,该方法具有很强的通用性,并且在各种细胞/细胞核类型的轮廓推断中表现良好。与当前的分割技术相比,我们的方法在四个具有挑战性的数据集上取得了最新的性能,这些数据集是肾,肾细胞癌组织病理学数据集,果蝇Kc167细胞数据集,差异干扰对比红细胞数据集和宫颈细胞学数据集。

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