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A framework for nucleus and overlapping cytoplasm segmentation in cervical cytology extended depth of field and volume images

机译:宫颈细胞学中核和重叠细胞质分段的框架延长景深和体积图像

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We propose a framework to detect and segment nuclei and segment overlapping cytoplasm in cervical cytology images. This is a challenging task due to folded cervical cells with spurious edges, poor contrast of cytoplasm and presence of neutrophils and artifacts. The algorithm segments nuclei and cell clumps in extended depth of field (EDF) images and uses volume images to segment overlapping cytoplasm. The boundaries are first approximated by a defined similarity metric and are refined in two steps by reducing concavity, iterative smoothing and outliers removal. We evaluated our framework on two public datasets provided in the first and second overlapping cervical cell segmentation challenges (ISBI 2014 and 2015). The results show that our method outperforms other state-of-the-art algorithms on both datasets. The results on the ISBI 2014 dataset show that our method missed less than 5% of cells when the pairwise cell overlapping degree was not higher than 0.3 and it missed only 7% of cells on average in a dataset of 810 synthetic images with 4860 (overlapping) cells. On the same dataset, it outperforms other state-of-the-art methods in nucleus detection with precision 0.961 and recall 0.933. The results on the ISBI 2015 dataset containing real cervical EDF images show that our method misses around 20% of cells in EDF images where a segmentation is considered a miss if it has dice similarity coefficient not greater than 0.7. The 20% miss rate is around half of the miss rate of two other recent methods. (C) 2017 Elsevier Ltd. All rights reserved.
机译:我们提出了一种框架来检测宫颈细胞学图像中的核和分段核和段重叠细胞质。这是一种具有挑战性的任务,由于具有杂散边缘的折叠宫颈细胞,细胞质对比度差和中性粒细胞和伪影的存在。算法区段核和细胞团在扩展景深(EDF)图像中,并使用体积图像与段重叠细胞质。边界首先由定义的相似性度量近似,并且通过减少凹面,迭代平滑和异常值来分两步中改进。我们在第一和第二重叠宫颈细胞分割挑战(ISBI 2014和2015)中提供的两个公共数据集上评估了我们的框架。结果表明,我们的方法在两个数据集中占此了现有最先进的算法。 ISBI 2014 DataSet上的结果显示,当成对单元重叠程度不高于0.3时,我们的方法错过了小于5%的细胞,并且在810个合成图像的数据集中仅在4860的数据集中错过了7%的单元(重叠) 细胞。在相同的数据集中,它以精度为0.961并召回0.933,优于核检测中的其他最先进的方法。 ISBI 2015数据集的结果包含真实颈部EDF图像,显示我们的方法在EDF图像中遗漏约20%的单元格,如果它具有不大于0.7的骰子相似度系数,则被认为是一个未命中的。 20%的错过率是另外两种方法错过率的一半。 (c)2017 Elsevier Ltd.保留所有权利。

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