共享生成模型代替私有数据:乳房x线照相术贴片分类的仿真研究

Zuzanna Szafranowska, Richard Osuala, Bennet Breier, Kaisar Kushibar, K. Lekadir, Oliver Díaz
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引用次数: 7

摘要

通过基于深度学习的计算机辅助检测系统在乳房x线摄影筛查中早期发现乳腺癌,在提高乳腺癌的治愈率和死亡率方面显示出巨大的潜力。然而,许多临床中心在可用数据的数量和异质性方面受到限制,无法训练这样的模型(i)实现有希望的性能,(ii)在采集协议和领域之间很好地推广。由于中心之间的数据共享受到患者隐私问题的限制,我们提出了一个潜在的解决方案:在中心之间共享经过训练的生成模型,以替代真实的患者数据。在这项工作中,我们使用三个众所周知的乳房x线摄影数据集来模拟三个不同的中心,其中一个中心接收来自其余两个中心的生成对抗网络(gan)训练生成器,以增加其训练数据集的大小和异质性。我们使用两种不同的分类模型(a)卷积神经网络和(b)变压器神经网络,评估了这种方法在gan接收中心测试集上乳腺摄影贴片分类上的效用。我们的实验表明,共享gan显著提高了变压器和卷积分类模型的性能,并突出了这种方法作为中心间数据共享的可行替代方案。
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Sharing generative models instead of private data: a simulation study on mammography patch classification
Early detection of breast cancer in mammography screening via deep-learning based computer-aided detection systems shows promising potential in improving the curability and mortality rates of breast cancer. However, many clinical centres are restricted in the amount and heterogeneity of available data to train such models to (i) achieve promising performance and to (ii) generalise well across acquisition protocols and domains. As sharing data between centres is restricted due to patient privacy concerns, we propose a potential solution: sharing trained generative models between centres as substitute for real patient data. In this work, we use three well known mammography datasets to simulate three different centres, where one centre receives the trained generator of Generative Adversarial Networks (GANs) from the two remaining centres in order to augment the size and heterogeneity of its training dataset. We evaluate the utility of this approach on mammography patch classification on the test set of the GAN-receiving centre using two different classification models, (a) a convolutional neural network and (b) a transformer neural network. Our experiments demonstrate that shared GANs notably increase the performance of both transformer and convolutional classification models and highlight this approach as a viable alternative to inter-centre data sharing.
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