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首页> 外文期刊>Biomedical signal processing and control >Automatic image segmentation of nuclear stained breast tissue sections using color active contour model and an improved watershed method
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Automatic image segmentation of nuclear stained breast tissue sections using color active contour model and an improved watershed method

机译:使用彩色活动轮廓模型和改进的分水岭方法对核染色的乳腺组织切片进行自动图像分割

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摘要

Automatic image segmentation of immunohistologically stained breast tissue sections helps pathologists to discover the cancer disease earlier. The detection of the real number of cancer nuclei in the image is a very tedious and time consuming task. Segmentation of cancer nuclei, especially touching nuclei, presents many difficulties to separate them by traditional segmentation algorithms. This paper presents a new automatic scheme to perform both classification of breast stained nuclei and segmentation of touching nuclei in order to get the total number of cancer nuclei in each class. Firstly, a modified geometric active contour model is used for multiple contour detection of positive and negative nuclear staining in the microscopic image. Secondly, a touching nuclei method based on watershed algorithm and concave vertex graph is proposed to perform accurate quantification of the different stains. Finally, benign nuclei are identified by their morphological features and they are removed automatically from the segmented image for positive cancer nuclei assessment. The proposed classification and segmentation schemes are tested on two datasets of breast cancer cell images containing different level of malignancy. The experimental results show the superiority of the proposed methods when compared with other existing classification and segmentation methods. On the complete image database, the segmentation accuracy in term of cancer nuclei number is over than 97%, reaching an improvement of 3-4% over earlier methods.
机译:免疫组织学染色的乳腺组织切片的自动图像分割有助于病理学家及早发现癌症。图像中癌症核的真实数目的检测是非常繁琐且耗时的任务。癌症细胞核,特别是接触细胞核的分割,存在许多难以通过传统分割算法分离的困难。本文提出了一种新的自动方案,既可以对乳房染色核进行分类,也可以对接触核进行分割,从而获得每个类别中的癌核总数。首先,将改进的几何活动轮廓模型用于显微图像中正负核染色的多轮廓检测。其次,提出了一种基于分水岭算法和凹顶点图的接触核方法,可以对不同污点进行精确定量。最后,通过其形态特征识别良性细胞核,并从分割的图像中自动删除它们,以进行阳性癌症细胞核评估。在两个包含不同级别恶性肿瘤的乳腺癌细胞图像数据集上测试了建议的分类和分割方案。实验结果表明,与其他现有分类和分割方法相比,该方法具有优越性。在完整的图像数据库上,就癌核数目而言的分割精度超过97%,比早期方法提高了3-4%。

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