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Multi-stage Image Quality Assessment of Diffusion MRI via Semi-supervised Nonlocal Residual Networks

机译:基于半监督非局部残差网络的扩散MRI多阶段图像质量评估

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Fast and automated image quality assessment (IQA) for diffusion MR images is crucial so that a rescan decision can be made swiftly during or after the scanning session. However, learning this task is challenging as the number of annotated data is limited and the annotated label is not always perfect. To this end, we introduce an automatic multistage IQA method for pediatric diffusion MR images. Our IQA is performed in three sequential stages, i.e., slice-wise quality assessment (QA) using a nonlocal residual network, volume-wise QA by agglomerating the extracted features of slices belonging to one volume using a nonlocal network, and subject-wise QA by ensembling the QA results of volumes belonging to one subject. In addition, we employ semi-supervised learning to make full use of a small amount of annotated data and a large amount of unlabeled data to train our network. Specifically, we first pre-train our network using labeled data, which are iteratively expanded by labeling the unlabeled data with the trained network. Furthermore, we devise a self-training strategy which iteratively relabels and prunes the labeled dataset when training the network to deal with noisy labels. Experimental results demonstrate that our network, trained using only samples of modest size, exhibits great generalizability and is capable of conducting large-scale rapid IQA with near-perfect accuracy.
机译:快速且自动的弥散MR图像质量评估(IQA)至关重要,因此可以在扫描期间或之后迅速做出重新扫描决定。但是,由于带注释的数据数量有限且带注释的标签并不总是完美的,因此学习此任务具有挑战性。为此,我们介绍了一种用于儿科弥散MR图像的自动多阶段IQA方法。我们的IQA分三个连续阶段执行,即使用非本地残差网络进行切片质量评估(QA),通过使用非本地网络将属于一个体积的切片的提取特征进行聚结而在体积方面进行质量检查,以及按主题进行质量检查通过汇总属于一个主题的卷的质量检查结果。此外,我们采用半监督学习来充分利用少量带注释的数据和大量未标记的数据来训练我们的网络。具体来说,我们首先使用标记的数据对网络进行预训练,然后通过使用训练后的网络标记未标记的数据来迭代地扩展网络。此外,我们设计了一种自训练策略,当训练网络处理嘈杂的标签时,该策略会反复重新标记和修剪标记的数据集。实验结果表明,我们的网络仅使用中等大小的样本进行训练,具有很高的通用性,并且能够以接近完美的精度进行大规模的快速IQA。

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