首页> 外文会议>International Workshop on Statistical Atlases and Computational Models of the Heart;International Conference on Medical Imaging Computing for Computer Assisted Intervention >A 2-Step Deep Learning Method with Domain Adaptation for Multi-Centre, Multi-Vendor and Multi-Disease Cardiac Magnetic Resonance Segmentation
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A 2-Step Deep Learning Method with Domain Adaptation for Multi-Centre, Multi-Vendor and Multi-Disease Cardiac Magnetic Resonance Segmentation

机译:多中心,多供应商和多疾病心脏磁共振分割域改编的2步深学习方法

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Segmentation of anatomical structures from Cardiac Magnetic Resonance (CMR) is central to the non-invasive quantitative assessment of cardiac function and structure. Anatomical variability, imaging heterogeneity and cardiac dynamics challenge the automation of this task. Deep learning (DL) approaches have taken over the field of automatic segmentation in recent years, however they are limited by data availability and the additional variability introduced by differences in scanners and protocols. In this work, we propose a 2-step fully automated pipeline to segment CMR images, based on DL encoder-decoder frameworks, and we explore two domain adaptation techniques, domain adversarial training and iterative domain unlearning, to overcome the imaging heterogeneity limitations. We evaluate our methods on the MICCAI 2020 Multi-Centre, Multi-Vendor & Multi-Disease Cardiac Image Segmentation Challenge training and validation datasets. The results show the improvement in performance produced by domain adaptation models, especially among the seen vendors. Finally, we build an ensemble of baseline and domain adapted networks, that reported state-of-art mean Dice scores of 0.912,0.857 and 0.861 for left ventricle (LV) cavity, LV myocardium and right ventricle cavity, respectively, on the externally validated Challenge dataset, including several unseen vendors, centers and cardiac pathologies.
机译:来自心脏磁共振(CMR)的解剖结构的分割是心脏功能和结构的非侵入性定量评估的核心。解剖学可变性,成像异质性和心脏动态挑战这项任务的自动化。近年来,深入学习(DL)方法采用了自动分割领域,但是它们受数据可用性的限制,扫描仪和协议差异引入的额外变化。在这项工作中,我们向基于DL编码器 - 解码器框架提出了一款2步全自动管道到段CMR图像,我们探索了两个域适应技术,域对抗训练和迭代域,以克服成像异质性限制。我们在Miccai 2020多中心,多供应商和多疾病心脏图像细分挑战训练和验证数据集中评估我们的方法。结果表明,域适配模型产生的性能,尤其是所见供应商之间的性能。最后,我们建立了基线和域改性网络的集合,报告了左心室(LV)腔,LV心肌和右心室腔的0.912,0.857和0.861的最新骰子分数在外部验证的情况下挑战数据集,包括几个看不见的供应商,中心和心脏病学。

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