Incremental Learning for Heterogeneous Structure Segmentation in Brain Tumor MRI.

Xiaofeng Liu, Helen A Shih, Fangxu Xing, Emiliano Santarnecchi, Georges El Fakhri, Jonghye Woo
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Abstract

Deep learning (DL) models for segmenting various anatomical structures have achieved great success via a static DL model that is trained in a single source domain. Yet, the static DL model is likely to perform poorly in a continually evolving environment, requiring appropriate model updates. In an incremental learning setting, we would expect that well-trained static models are updated, following continually evolving target domain data-e.g., additional lesions or structures of interest-collected from different sites, without catastrophic forgetting. This, however, poses challenges, due to distribution shifts, additional structures not seen during the initial model training, and the absence of training data in a source domain. To address these challenges, in this work, we seek to progressively evolve an "off-the-shelf" trained segmentation model to diverse datasets with additional anatomical categories in a unified manner. Specifically, we first propose a divergence-aware dual-flow module with balanced rigidity and plasticity branches to decouple old and new tasks, which is guided by continuous batch renormalization. Then, a complementary pseudo-label training scheme with self-entropy regularized momentum MixUp decay is developed for adaptive network optimization. We evaluated our framework on a brain tumor segmentation task with continually changing target domains-i.e., new MRI scanners/modalities with incremental structures. Our framework was able to well retain the discriminability of previously learned structures, hence enabling the realistic life-long segmentation model extension along with the widespread accumulation of big medical data.

脑肿瘤磁共振成像中异质结构分割的增量学习
用于分割各种解剖结构的深度学习(DL)模型通过在单一源域中训练的静态 DL 模型取得了巨大成功。然而,静态 DL 模型在不断发展的环境中很可能表现不佳,这就需要对模型进行适当的更新。在增量学习环境中,我们希望训练有素的静态模型能根据不断变化的目标领域数据(如从不同部位收集的额外病变或感兴趣的结构)进行更新,而不会出现灾难性遗忘。然而,由于分布变化、初始模型训练期间未见的额外结构以及源域训练数据的缺失,这就带来了挑战。为了应对这些挑战,在这项工作中,我们试图以一种统一的方式,将一个 "现成的 "训练有素的分割模型逐步演化为具有额外解剖类别的多样化数据集。具体来说,我们首先提出了一个具有发散意识的双流模块,该模块具有平衡的刚性和可塑性分支,可将新旧任务分离开来,并以连续批量重归一化为指导。然后,我们开发了一种具有自熵正则化动量混合衰减的互补伪标签训练方案,用于自适应网络优化。我们在目标领域不断变化的脑肿瘤分割任务上评估了我们的框架,即具有增量结构的新磁共振成像扫描仪/模态。我们的框架能够很好地保留先前学习到的结构的可辨别性,因此,随着医疗大数据的广泛积累,能够实现现实的终身分割模型扩展。
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