论文标题
拆分net:防止分裂学习中的数据泄漏,以进行协作多模式脑肿瘤分段
Split-U-Net: Preventing Data Leakage in Split Learning for Collaborative Multi-Modal Brain Tumor Segmentation
论文作者
论文摘要
已经提出了分裂学习(SL)以分散的方式训练深度学习模型。对于具有垂直数据分配的分散医疗保健应用,SL可以有益,因为它允许具有互补功能或图像的机构为一组共享的患者共同开发更强大且可推广的模型。在这项工作中,我们提出了“ split-u-net”,并成功地将SL应用于协作生物医学图像分割。但是,SL需要交换中间激活图和梯度,以允许跨不同特征空间的训练模型,这可能会泄漏数据并提高隐私问题。因此,我们还量化了生物医学图像分割的常见SL情况下的数据泄漏量,并通过应用适当的防御策略提供了抵消此类泄漏的方法。
Split learning (SL) has been proposed to train deep learning models in a decentralized manner. For decentralized healthcare applications with vertical data partitioning, SL can be beneficial as it allows institutes with complementary features or images for a shared set of patients to jointly develop more robust and generalizable models. In this work, we propose "Split-U-Net" and successfully apply SL for collaborative biomedical image segmentation. Nonetheless, SL requires the exchanging of intermediate activation maps and gradients to allow training models across different feature spaces, which might leak data and raise privacy concerns. Therefore, we also quantify the amount of data leakage in common SL scenarios for biomedical image segmentation and provide ways to counteract such leakage by applying appropriate defense strategies.