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从特定任务的异模态域移位数据集学习组织和脑损伤的联合分割。

Learning joint segmentation of tissues and brain lesions from task-specific hetero-modal domain-shifted datasets.

机构信息

King's College London, School of Biomedical Engineering & Imaging Sciences, St. Thomas' Hospital, London, United Kingdom.

King's College London, School of Biomedical Engineering & Imaging Sciences, St. Thomas' Hospital, London, United Kingdom; Department of Neuroradiology, King's College Hospital NHS Foundation Trust, London, United Kingdom.

出版信息

Med Image Anal. 2021 Jan;67:101862. doi: 10.1016/j.media.2020.101862. Epub 2020 Oct 9.

Abstract

Brain tissue segmentation from multimodal MRI is a key building block of many neuroimaging analysis pipelines. Established tissue segmentation approaches have, however, not been developed to cope with large anatomical changes resulting from pathology, such as white matter lesions or tumours, and often fail in these cases. In the meantime, with the advent of deep neural networks (DNNs), segmentation of brain lesions has matured significantly. However, few existing approaches allow for the joint segmentation of normal tissue and brain lesions. Developing a DNN for such a joint task is currently hampered by the fact that annotated datasets typically address only one specific task and rely on task-specific imaging protocols including a task-specific set of imaging modalities. In this work, we propose a novel approach to build a joint tissue and lesion segmentation model from aggregated task-specific hetero-modal domain-shifted and partially-annotated datasets. Starting from a variational formulation of the joint problem, we show how the expected risk can be decomposed and optimised empirically. We exploit an upper bound of the risk to deal with heterogeneous imaging modalities across datasets. To deal with potential domain shift, we integrated and tested three conventional techniques based on data augmentation, adversarial learning and pseudo-healthy generation. For each individual task, our joint approach reaches comparable performance to task-specific and fully-supervised models. The proposed framework is assessed on two different types of brain lesions: White matter lesions and gliomas. In the latter case, lacking a joint ground-truth for quantitative assessment purposes, we propose and use a novel clinically-relevant qualitative assessment methodology.

摘要

多模态 MRI 的脑组织结构分割是许多神经影像学分析管道的关键组成部分。然而,现有的组织分割方法并没有针对病理引起的大的解剖结构变化进行开发,例如白质病变或肿瘤,并且在这些情况下通常会失败。与此同时,随着深度神经网络(DNN)的出现,脑损伤的分割已经取得了显著的进展。然而,现有的方法很少允许正常组织和脑损伤的联合分割。开发用于此类联合任务的 DNN 目前受到以下事实的阻碍:注释数据集通常仅解决一个特定任务,并且依赖于特定任务的成像协议,包括特定任务的一组成像模式。在这项工作中,我们提出了一种从聚合的特定任务异模态域移位和部分注释数据集构建联合组织和损伤分割模型的新方法。从联合问题的变分公式出发,我们展示了如何分解和经验优化期望风险。我们利用风险的上限来处理跨数据集的异构成像模式。为了应对潜在的领域转移,我们整合并测试了三种基于数据增强、对抗学习和伪健康生成的传统技术。对于每个单独的任务,我们的联合方法达到了与特定任务和完全监督模型相当的性能。该框架在两种不同类型的脑损伤上进行了评估:白质病变和神经胶质瘤。在后一种情况下,由于缺乏联合的真实数据用于定量评估,我们提出并使用了一种新的临床相关定性评估方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/816d/7116853/db805fba93df/EMS117272-f001.jpg

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