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Cardiac Segmentation of LGE MRI with Noisy Labels

机译:具有噪声标签的LGE MRI的心脏分割

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In this work, we attempt the segmentation of cardiac structures in late gadolinium-enhanced (LGE) magnetic resonance images (MRI) using only minimal supervision in a two-step approach. In the first step, we register a small set of five LGE cardiac magnetic resonance (CMR) images with ground truth labels to a set of 40 target LGE CMR images without annotation. Each manually annotated ground truth provides labels of the myocardium and the left ventricle (LV) and right ventricle (RV) cavities, which are used as atlases. After multi-atlas label fusion by majority voting, we possess noisy labels for each of the targeted LGE images. A second set of manual labels exists for 30 patients of the target LGE CMR images, but are annotated on different MRI sequences (bSSFP and T2-weighted). Again, we use multi-atlas label fusion with a consistency constraint to further refine our noisy labels if additional annotations in other modalities are available for a given patient. In the second step, we train a deep convolutional network for semantic segmentation on the target data while using data augmentation techniques to avoid over-fitting to the noisy labels. After inference and simple postprocessing, we achieve our final segmentation for the targeted LGE CMR images, resulting in an average Dice of 0.890, 0.780, and 0.844 for LV cavity, LV myocardium, and RV cavity, respectively.
机译:在这项工作中,我们尝试在两步方法中仅使用最小的监控来在晚钆增强(LGE)磁共振图像(MRI)中的心脏结构分割。在第一步中,我们注册了一小组五个LGE心脏磁共振(CMR)图像,其中具有地面真理标签到了一组40个目标LGE CMR图像而不注释。每个手动注释的地面真相都提供了心肌和左心室(LV)和右心室(RV)腔的标签,其用作atlases。通过多数投票融合多地图集标签融合后,我们对每个有针对性的LGE图像具有噪声标签。对于30个目标LGE CMR图像患者存在第二组手动标签,但在不同的MRI序列(BSSFP和T2加权)上注释。同样,我们使用多标准标签融合与一致性约束,如果其他方式的其他方式可用于给定的患者,则进一步优化我们的嘈杂标签。在第二步中,我们在使用数据增强技术时培训对目标数据的语义分割的深度卷积网络,以避免对嘈杂标签过度拟合。在推理和简单的后处理后,我们可以分别实现目标LGE CMR图像的最终分割,导致LV腔,LV心肌和RV腔的平均骰子为0.890,0.780和0.844。

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