Quality-aware semi-supervised learning for CMR segmentation.

Bram Ruijsink, Esther Puyol-Antón, Ye Li, Wenja Bai, Eric Kerfoot, Reza Razavi, Andrew P King
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Abstract

One of the challenges in developing deep learning algorithms for medical image segmentation is the scarcity of annotated training data. To overcome this limitation, data augmentation and semi-supervised learning (SSL) methods have been developed. However, these methods have limited effectiveness as they either exploit the existing data set only (data augmentation) or risk negative impact by adding poor training examples (SSL). Segmentations are rarely the final product of medical image analysis -they are typically used in downstream tasks to infer higher-order patterns to evaluate diseases. Clinicians take into account a wealth of prior knowledge on biophysics and physiology when evaluating image analysis results. We have used these clinical assessments in previous works to create robust quality-control (QC) classifiers for automated cardiac magnetic resonance (CMR) analysis. In this paper, we propose a novel scheme that uses QC of the downstream task to identify high quality outputs of CMR segmentation networks, that are subsequently utilised for further network training. In essence, this provides quality-aware augmentation of training data in a variant of SSL for segmentation networks (semiQCSeg). We evaluate our approach in two CMR segmentation tasks (aortic and short axis cardiac volume segmentation) using UK Biobank data and two commonly used network architectures (U-net and a Fully Convolutional Network) and compare against supervised and SSL strategies. We show that semiQCSeg improves training of the segmentation networks. It decreases the need for labelled data, while outperforming the other methods in terms of Dice and clinical metrics. SemiQCSeg can be an efficient approach for training segmentation networks for medical image data when labelled datasets are scarce.

用于 CMR 分割的质量感知半监督学习。
为医学图像分割开发深度学习算法所面临的挑战之一是缺少标注的训练数据。为了克服这一限制,人们开发了数据增强和半监督学习(SSL)方法。然而,这些方法的有效性有限,因为它们要么只能利用现有数据集(数据增强),要么可能会增加不良的训练示例(SSL),从而产生负面影响。分割很少是医学图像分析的最终产品--它们通常用于下游任务,以推断评估疾病的高阶模式。临床医生在评估图像分析结果时,会考虑到大量有关生物物理学和生理学的先验知识。在以前的工作中,我们曾利用这些临床评估为自动心脏磁共振(CMR)分析创建了稳健的质量控制(QC)分类器。在本文中,我们提出了一种新方案,利用下游任务的质量控制来识别 CMR 分割网络的高质量输出,然后将其用于进一步的网络训练。从本质上讲,这为分割网络的 SSL 变体(semiQCSeg)提供了质量感知的训练数据增强。我们利用英国生物库数据和两种常用的网络架构(U 型网络和全卷积网络),在两个 CMR 分割任务(主动脉和短轴心脏容积分割)中对我们的方法进行了评估,并与监督和 SSL 策略进行了比较。我们发现,semiQCSeg 改进了分割网络的训练。它减少了对标记数据的需求,同时在 Dice 和临床指标方面优于其他方法。当标记数据集稀缺时,SemiQCSeg 可以成为训练医学图像数据分割网络的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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