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Domain Adaptation for Automatic Aorta Segmentation of 4D Flow Magnetic Resonance Imaging Data from Multiple Vendor Scanners

机译:来自多个供应商扫描仪的4D流动磁共振成像数据的自动主动脉分割的域改编

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The lack of standardized pipelines for image processing has prevented the application of deep learning (DL) techniques for the segmentation of the aorta in phase-contrast enhanced magnetic resonance angiography (PC-MRA). Furthermore, large, well-curated and annotated datasets, which are needed to create DL-based models able to generalize, are rare. We present the adaptation of the popular nnU-net DL framework to automatically segment the aorta in 4D flow MRI-derived angiograms. The resulting segmentations in a large database (> 300 cases) with normal cases and examples of different pathologies of the aorta provided from a single centre were excellent after post-processing (Dice score of 0.944). Subsequently, we explored the generalisation of the trained network in a small dataset of images (around 20 cases) acquired in a different hospital with another scanner. Without domain adaptation, only with a model trained with the large dataset, the obtained results were substantially worst than with adding a few cases of the small dataset (Dice scores of 0.61 vs 0.86, respectively). The obtained results created good quality segmentations of the aorta in 4D flow MRI, which can later be post-processed to assess blood flow patterns, similarly than with manual annotations. However, advanced domain adaptation schemes are very important in 4D flow MRI due to the large differences in image characteristics between different vendor scanners available in multiple centers.
机译:缺乏用于图像处理的标准化管道已经阻止了应用深度学习(DL)技术用于相对造影增强磁共振血管造影(PC-MRA)中的主动脉的分割。此外,需要概括的基于DL的模型需要的大型,策划和注释的数据集是罕见的。我们介绍了流行的NNU-NET DL框架的适应,以在4D流动MRI衍生的血管造影中自动段段。大数据库(> 300例)中所产生的细分与正常情况和由单个中心提供的主动脉的不同病理的实例是优异的(骰子得分为0.944)。随后,我们探讨了在与另一扫描仪的不同医院中获取的图像的小数据集中训练有素的网络(大约20例)。没有域适应,只有用大型数据集接受训练的模型,所获得的结果基本上比添加一些小型数据集(分别为0.61 vs 0.86的骰子得分)。所获得的结果在4D流动MRI中产生了良好的质量分割,后来可以将后处理以评估血流模式,同样与手动注释相似。然而,由于多个中心可用的不同供应商扫描仪之间的图像特性差异,高级域适配方案在4D流动MRI中非常重要。

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