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Semi-supervised learning with generative adversarial networks for chest X-ray classification with ability of data domain adaptation

机译:半监督学习与生成对抗网络的胸部X射线分类,数据域适应能力

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Deep learning algorithms require large amounts of labeled data which is difficult to attain for medical imaging. Even if a particular dataset is accessible, a learned classifier struggles to maintain the same level of performance on a different medical imaging dataset from a new or never-seen data source domain. Utilizing generative adversarial networks in a semi-supervised learning architecture, we address both problems of labeled data scarcity and data domain overfitting. For cardiac abnormality classification in chest X-rays, we demonstrate that an order of magnitude less data is required with semi-supervised learning generative adversarial networks than with conventional supervised learning convolutional neural networks. In addition, we demonstrate its robustness across different datasets for similar classification tasks.
机译:深度学习算法需要大量标记的数据,这难以达到医学成像。即使可以访问特定数据集,也可以从新的或从未查看的数据源域中维持不同的医学成像数据集在不同的医学成像数据集中保持相同的性能。利用生成的对冲网络在半监督的学习架构中,我们解决了标记数据稀缺和数据域过度的两个问题。对于胸部X射线中的心脏异常分类,我们证明了多个数量级数据是针对半监督的学习生成的对策网络而不是传统的监督学习卷积神经网络。此外,我们展示了不同数据集的鲁棒性,以获得类似的分类任务。

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