Positive-unlabeled learning for binary and multi-class cell detection in histopathology images with incomplete annotations

Zipei Zhao, Fengqian Pang, Yaou Liu, Zhiwen Liu, Chuyang Ye
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引用次数: 1

Abstract

Cell detection in histopathology images is of great interest to clinical practice and research, and convolutional neural networks (CNNs) have achieved remarkable cell detection results. Typically, to train CNN-based cell detection models, every positive instance in the training images needs to be annotated, and instances that are not labeled as positive are considered negative samples. However, manual cell annotation is complicated due to the large number and diversity of cells, and it can be difficult to ensure the annotation of every positive instance. In many cases, only incomplete annotations are available, where some of the positive instances are annotated and the others are not, and the classification loss term for negative samples in typical network training becomes incorrect. In this work, to address this problem of incomplete annotations, we propose to reformulate the training of the detection network as a positive-unlabeled learning problem. Since the instances in unannotated regions can be either positive or negative, they have unknown labels. Using the samples with unknown labels and the positively labeled samples, we first derive an approximation of the classification loss term corresponding to negative samples for binary cell detection, and based on this approximation we further extend the proposed framework to multi-class cell detection. For evaluation, experiments were performed on four publicly available datasets. The experimental results show that our method improves the performance of cell detection in histopathology images given incomplete annotations for network training.
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带不完全注释的组织病理学图像中二元和多类细胞检测的正无标记学习
组织病理学图像中的细胞检测是临床实践和研究的热点,卷积神经网络(convolutional neural networks, cnn)已经取得了显著的细胞检测效果。通常,为了训练基于cnn的细胞检测模型,需要对训练图像中的每个正实例进行注释,未标记为正的实例被视为负样本。然而,由于细胞数量多、种类多,人工细胞标注比较复杂,难以保证对每个阳性实例都进行标注。在很多情况下,只有不完整的注释,其中一些正样本被注释而另一些没有,并且典型网络训练中负样本的分类损失项是不正确的。在这项工作中,为了解决这个不完整注释的问题,我们建议将检测网络的训练重新表述为一个正无标签学习问题。由于未注释区域中的实例可以是正的,也可以是负的,因此它们具有未知的标签。利用未知标记的样本和正标记的样本,我们首先推导出一个近似的负样本对应的分类损失项用于二分类细胞检测,并在此近似的基础上进一步将所提出的框架扩展到多分类细胞检测。为了评估,在四个公开可用的数据集上进行了实验。实验结果表明,我们的方法提高了网络训练中不完整注释的组织病理学图像的细胞检测性能。
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