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Weakly supervised mitosis detection in breast histopathology images using concentric loss

机译:使用同心损失的乳腺组织病理学图像中的弱型丝分裂检测

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Developing new deep learning methods for medical image analysis is a prevalent research topic in machine learning. In this paper, we propose a deep learning scheme with a novel loss function for weakly supervised breast cancer diagnosis. According to the Nottingham Grading System, mitotic count plays an important role in breast cancer diagnosis and grading. To determine the cancer grade, pathologists usually need to manually count mitosis from a great deal of histopathology images, which is a very tedious and time-consuming task. This paper proposes an automatic method for detecting mitosis. We regard the mitosis detection task as a semantic segmentation problem and use a deep fully convolutional network to address it. Different from conventional training data used in semantic segmentation system, the training label of mitosis data is usually in the format of centroid pixel, rather than all the pixels belonging to a mitosis. The centroid label is a kind of weak label, which is much easier to annotate and can save the effort of pathologists a lot. However, technically this weak label is not sufficient for training a mitosis segmentation model. To tackle this problem, we expand the single-pixel label to a novel label with concentric circles, where the inside circle is a mitotic region and the ring around the inside circle is a "middle ground". During the training stage, we do not compute the loss of the ring region because it may have the presence of both mitotic and non-mitotic pixels. This new loss termed as "concentric loss" is able to make the semantic segmentation network be trained with the weakly annotated mitosis data. On the generated segmentation map from the segmentation model, we filter out low confidence and obtain mitotic cells. On the challenging ICPR 2014 MITOSIS dataset and AMIDAI3 dataset, we achieve a 0.562 F-score and 0.673 F-score respectively, outperforming all previous approaches significantly. On the latest TUPAC16 dataset, we obtain a F-score of 0.669, which is also the state-of-the-art result. The excellent results quantitatively demonstrate the effectiveness of the proposed mitosis segmentation network with the concentric loss. All of our code has been made publicly available at https://github.comiChaoll977/SegMitos_mitosis_detection. (C) 2019 Elsevier B.V. All rights reserved.
机译:开发用于医学图像分析的新深度学习方法是机器学习中的一种普遍的研究主题。在本文中,我们提出了一种深入学习方案,具有新的损失功能,用于弱监督乳腺癌癌症诊断。根据诺丁汉分级系统,有丝分裂计数在乳腺癌诊断和分级中起重要作用。为了确定癌症等级,病理学家通常需要从大量的组织病理学图像手动计数有丝分裂,这是一个非常繁琐且耗时的任务。本文提出了一种检测丝分裂的自动方法。我们将有丝分裂检测任务视为语义分割问题,并使用深度完全卷积的网络来解决它。与语义分割系统中使用的传统训练数据不同,有丝分裂数据的训练标签通常是质心像素的格式,而不是属于有丝分裂的所有像素。质心标签是一种薄弱的标签,这更容易注释,可以节省病理学家的努力。然而,技术上,这种弱标签不足以训练有丝分裂分割模型。为了解决这个问题,我们将单像素标签扩展到具有同心圆的新颖标签,其中内圈是有丝分裂区域,内部圆圈周围的环是“中间地”。在训练阶段,我们不会计算环形区域的损失,因为它可能存在有丝分裂和非丝分裂像素。这种新的损失被称为“同心损失”,能够使语义分割网络训练弱注释的有丝分裂数据。在来自分段模型的生成的分割图上,我们过滤出低置信度并获得有丝分裂细胞。在充满挑战的ICPR 2014 Mitosis DataSet和Amidai3数据集中,我们分别达到0.562 F分和0.673 F分,显着优于所有先前的方法。在最新的Tupac16数据集上,我们获得0.669的F分,这也是最先进的结果。优异的结果定量表现出所提出的丝分裂分割网络与同心损失的有效性。我们的所有代码都在HTTPS://github.Comchaoll977/segmitos_mitosis_dection上公开提供。 (c)2019年Elsevier B.V.保留所有权利。

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