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Mitosis detection using convolutional neural network based features

机译:基于卷积神经网络的功能的丝分裂检测

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Breast cancer is the second leading cause of cancer death in women according to World Health Organization (WHO). Development of computer aided diagnostic (CAD) systems has great importance as a secondary reader systems for a correct diagnosis and treatment process. In this paper, a deep learning based feature extraction method by convolutional neural network (CNN) is proposed for automated mitosis detection for cancer diagnosis and grading by histopathological images. The proposed framework is tested on the MITOS data set provided for a contest on mitosis detection in breast cancer histological images released for research purposes in International Conference on Pattern Recognition (ICPR'2014). By using provided histopathological images, cellular structures are initially found by combined clustering based segmentation and blob analysis after preprocessing step. Then, obtained cellular image patches are cropped automatically from the histopathological images for feature extraction stage. CNN, which is a prominent deep learning method on image processing tasks, is utilized for extracting discriminative features. Due to the high dimensional output of the CNN, combination of PCA and LDA dimension reduction methods are performed respectively for regularization and dimension reduction process. Afterwards, a robust kernel based classifier, support vector machine (SVM), is used for final classification of mitotic and non-mitotic cells. The test results on MITOS data set prove that the proposed framework achieved promising results for mitosis detection on histopathological images.
机译:乳腺癌是女性根据世界卫生组织的癌症死亡的第二大原因(WHO)。计算机的发展计算机辅助诊断(CAD)系统具有作为第二读取器系统,用于正确的诊断和治疗过程非常重要的。在本文中,由卷积神经网络(CNN)深学习基于特征提取方法提出了一种用于自动的有丝分裂检测用于癌症诊断和通过组织病理学分级的图像。拟议的框架是在数据集提供了一个比赛的有丝分裂中发布了在模式识别国际会议研究目的(ICPR'2014)乳腺癌组织学图像检测MITOS测试。通过使用设置的组织病理学图像,细胞结构最初通过组合基于聚类细分和斑点分析预处理步骤之后发现。然后,得到的细胞图像块从用于特征提取阶段的组织病理学图像自动裁剪。 CNN,这是对图像处理任务的突出深度学习方法,被用于提取判别特征。由于CNN的维输出高,PCA和LDA降维的方法组合进行正规化和降维过程分别进行。然后,一个强大的基于内核的分类器,支持向量机(SVM),用于有丝分裂和非分裂细胞的最终分类。在MITOS数据集的测试结果表明,所提出的框架内取得有前途的有丝分裂组织病理学图像检测结果。

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