使用全局和局部图切的异常子宫颈细胞自动分割

Ling Zhang, Hui Kong, C. Chin, Shaoxiong Liu, Tianfu Wang, Siping Chen
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引用次数: 9

摘要

本文提出了一种基于图切割方法的全局和局部分割方案,用于健康细胞和异常细胞混合图像中的宫颈细胞分割。对于细胞质分割,在A*通道增强图像上,全局进行多路图切割,当图像直方图呈非双峰分布时,可以有效提取细胞质边界。对于核特别是异常核的分割,我们提出了自适应的局部图切方法,可以将强度、纹理、边界和区域信息结合在一起。结合两种基于凹形的方法来分离接触核。在21张成像条件和病理不理想的宫颈细胞图像中,我们的分割方法对细胞质的分割准确率为93%,对异常细胞核的分割准确率为88.4%,两者在准确率方面都优于目前的技术水平。
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Automated segmentation of abnormal cervical cells using global and local graph cuts
In this paper, a global and local scheme based on graph cuts approach is proposed to segment cervical cells in images with a mix of healthy and abnormal cells. For cytoplasm segmentation, on the A* channel enhanced image, the multi-way graph cut is performed globally, which can effectively extract cytoplasm boundaries when image histograms present non-bimodal distribution. For nucleus especially abnormal nucleus segmentation, we propose to use graph cut adaptively and locally, which allows the combination of intensity, texture, boundary and region information together. Two concave-based approaches are integrated to split the touching-nuclei. On 21 cervical cell images with non-ideal imaging condition and pathology, our segmentation method achieved a 93% accuracy for cytoplasm, and a 88.4% F-measure for abnormal nuclei, both outperformed state of the art works in terms of accuracy.
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