In clinical practice, a segmentation network is often required to continually learn on a sequential data stream from multiple sites rather than a consolidated set, due to the storage cost and privacy restriction. However, during the continual learning process, existing methods are usually restricted in either network memorizability on previous sites or generalizability on unseen sites. This paper aims to tackle the challenging problem of Synchronous Memorizability and Generalizability (SMG) and to simultaneously improve performance on both previous and unseen sites, with a novel proposed SMG-learning framework. First, we propose a Synchronous Gradient Alignment (SGA) objective, which \emph{not only} promotes the network memorizability by enforcing coordinated optimization for a small exemplar set from previous sites (called replay buffer), \emph{but also} enhances the generalizability by facilitating site-invariance under simulated domain shift. Second, to simplify the optimization of SGA objective, we design a Dual-Meta algorithm that approximates the SGA objective as dual meta-objectives for optimization without expensive computation overhead. Third, for efficient rehearsal, we configure the replay buffer comprehensively considering additional inter-site diversity to reduce redundancy. Experiments on prostate MRI data sequentially acquired from six institutes demonstrate that our method can simultaneously achieve higher memorizability and generalizability over state-of-the-art methods. Code is available at https://github.com/jingyzhang/SMG-Learning.
翻译:在临床实践中,由于存储成本和隐私限制,通常需要有一个分离网络,以便不断从多个地点、而不是综合数据集中学习相继数据流;然而,在持续学习过程中,通常限制现有方法,无论是在以前地点的网络可重新记忆性方面,还是在不见地点的可常规性方面;本文件的目的是解决同步 memoriizmizity and Generaliz(SMG)这一具有挑战性的问题,同时改进以往和无形地点的性能,同时提出一个新颖的SMG学习框架。首先,我们提议了一个同步渐进调整目标(SGA)目标,这个目标不仅促进网络的可重新定义性,通过对以前地点的小型前一套前一套前一套(称为重新显示缓冲)、\emph{but}的现有方法实行协调优化(即所谓的重新显示缓冲性),从而通过在模拟域变换(SMGM)下便利网站的不易变异性(SGGA)目标的优化,我们设计了一个双元算法,将SGA目标作为双重元目标,用于在不昂贵的计算间接费用上进行优化。第三,为了高效的预演,我们同时配置了RIRCreal-real Redition Rdeal-redition Reditional-reditionalsmlationalsml可以同时展示,我们用的方法可以同时展示了我们所获取的六级的升级的常规的系统。