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CNN based Segmentation of Nuclei in PAP-Smear Images with Selective Pre-processing

机译:基于CNN的PAP涂片图像中核的选择性预处理

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Cervical cancer is t,he second most common cause of deat.h among women worldwide, but it, can be treated if detected early. However, due to inter and intra observer variability in manual screening, automating the process is need of the hour. For classifying the cervical cells as normal vs abnormal, segmentation of nuclei as well as cytoplasm is a prerequisite. But the segmentation of nuclei is relatively more reliable and equally efficient for classification to that of cytoplasm. Hence, this paper proposes a new approach for segmentation of nuclei based on selective pre-processing and then passing the image patches to respective deep CNN (trained with/without pre-processed images) for pixel-wise 3 class labelling as nucleus, edge or background. We argue and demonstrate that a single pre-processing approach may not suit all images, as there are significant variations in nucleus sizes and chromatin patterns. The selective pre-processing is carried out to effectively address this issue. This also enables the deep CNNs to be better trained in spite of relatively less data, and thus better exploit the capability of CNN of good quality segmentation. The results show that the approach is effective for segmentation of nuclei in PAP-smears with an F-score of 0.90 on Herlev dataset as opposed to the without selective pre-processing F-scorcs of 0.78 (without pre-processing) and 0.82 (with pre-processing). The results also show the importance of considering 3 classes in CNX instead of 2 (nucleus and background) where the latter achieves an F-score as low as 0.C3.
机译:宫颈癌是T,他是全世界妇女中的第二个最常见的原因,但如果早期检测到,可以治疗。但是,由于手动筛选中的帧间和内观察者可变性,需要自动化该过程。为了将宫颈细胞分类为正常的VS异常,细胞核和细胞质的分割是先决条件。但是核的分割相对更可靠,并且对细胞质的分类同样有效。因此,本文提出了一种基于选择性预处理的核分割的新方法,然后将图像贴片传递到相应的深CNN(用/无预处理图像训练),用于像素-Wise 3类标记为核,边缘或背景。我们争辩并证明单个预处理方法可能不适合所有图像,因为核尺寸和染色质图案存在显着变化。进行选择性预处理以有效解决这个问题。这也使得尽管数据相对较少,但是,尽管数据相对较少,但是更好地利用了良好质量分割的CNN的能力。结果表明,该方法对于Pap-Seear中的核细胞核分割,在Herlev Dataset上的F分度为0.90,而不是无选择性预处理F-Scorc为0.78(无预处理)和0.82(与预处理)。结果还表明,在CNX中考虑3个类(核和背景)的重要性,后者达到了低至0.C3的F分数。

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