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A Hybrid Convolutional and Recurrent Deep Neural Network for Breast Cancer Pathological Image Classification

机译:混合卷积和递归深度神经网络在乳腺癌病理图像分类中的应用

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Hematoxylin and Eosin H&E stained breast tissue samples from biopsies are observed under microscopy for the gold standard diagnosis of breast cancer. However, a substantial workload increases and the complexity of the pathological images make this task time-consuming and may suffer from pathologist's subjectivity. Facing this problem, the development of automatic and precise diagnosis methods is challenging but also essential for the field. In this paper, we propose a new hybrid convolutional and recurrent deep neural network for breast cancer pathological image classification. Our method considers the short-term as well as the long-term spatial correlations between patches through RNN which is directly incorporated on top of a CNN feature extractor. Experimental results showed that our method obtained an average accuracy of 90.5% for 4-class classification task, which outperforms the state-of-the-art method. At the same time, we release a bigger dataset with 1568 breast cancer pathological images to the scientific community, which are now publicly available from http://ear.ict.ac.cn/?page id=1576. In particular, our dataset covers as many different subclasses spanning different age groups as possible, thus alleviating the problem of relatively low classification accuracy of benign.
机译:在微观癌症的显微镜下观察来自活组织检查的血毒素和eosin H&E染色乳腺组织样品。然而,实质性的工作量增加,病理图像的复杂性使得这项任务耗时并且可能遭受病理学家的主体性。面对这个问题,自动和精确的诊断方法的发展是具有挑战性的,但对该领域也是必不可少的。在本文中,我们提出了一种新的杂交卷积和反复性深神经网络,用于乳腺癌病理学图像分类。我们的方法认为短期内以及通过RNN之间的贴片之间的长期空间相关,这是直接结合在CNN特征提取器的顶部。实验结果表明,对于4级分类任务,我们的方法获得了90.5%的平均精度,这优于最先进的方法。与此同时,我们向科学界释放了一个更大的数据集,与科学界有关,现在可以从http://ear.ict.ac.cn/?page ID = 1576公开使用。特别是,我们的数据集涵盖尽可能多的不同年龄组的不同子类,从而减轻了良性分类的较低分类准确性的问题。

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