Selective Detection and Segmentation of Cervical Cells

Jing Ke, Zhaoming Jiang, Changchang Liu, T. Bednarz, A. Sowmya, Xiaoyao Liang
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引用次数: 7

Abstract

Accurate detection and segmentation of cervical cells is often considered as a critical prerequisite of the prediction of dysplasia or cancer either by a pap smear or the lately developed liquid-based cytology (LBC). The computer-aided detection in microscope images can relieve the pathologists from strenuous manual labors with higher accuracy and efficiency. In the segmentation tasks of real-life clinical data, one challenging issue is the mis-identification of other cells, such as inflammatory cells, with similar appearance of nuclei in shape, size and texture. With a large distribution in the whole slide, even overlap up to 50% to 75% percentage of normal or abnormal cells, these cells are usually detected and segmented as nuclei. In this paper, compared with the typical three-catalogue segmentation methods of nuclei, cytoplasm and background proposed in the literature, we provide a discrimination between inflammatory cells and nuclei by adding a new catalogue. We present two novel convolutional neural networks (CNN), a deeply fine-tuned model and a trained from scratch model. The models enable us to sensitively detect and remove background noises such as mucus or red blood cells. We also profile a detailed performance comparison between these two methods, with the advantages of either network presented. The experiments are based on the sufficient clinical dataset we collected, and the results show the effectiveness of proposed approaches in selective cell detection and segmentation.
宫颈细胞的选择性检测与分割
宫颈细胞的准确检测和分割通常被认为是通过巴氏涂片或最近发展的液体细胞学(LBC)预测不典型增生或癌症的关键先决条件。显微镜图像的计算机辅助检测可以使病理学家从繁重的体力劳动中解脱出来,具有更高的准确性和效率。在现实临床数据的分割任务中,一个具有挑战性的问题是对其他细胞的错误识别,例如炎症细胞,它们在形状、大小和质地上具有相似的细胞核外观。在整个玻片中分布较大,甚至与正常或异常细胞重叠达50% ~ 75%,这些细胞通常被检测到并分节为细胞核。与文献中提出的典型的细胞核、细胞质和背景三目录分割方法相比,本文通过增加新的目录来区分炎症细胞和细胞核。我们提出了两种新颖的卷积神经网络(CNN),一种是深度微调模型,另一种是从头训练模型。这些模型使我们能够灵敏地检测和去除粘液或红细胞等背景噪音。我们还详细介绍了这两种方法之间的性能比较,并介绍了每种网络的优点。实验基于我们收集的足够的临床数据集,结果表明了所提出的方法在选择性细胞检测和分割方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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