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A Novel Spatio-Temporal Self-Supervised Framework to Improve the Generalization Ability for Left Ventricle Volume Quantification Based on CMR Data

机译:基于CMR数据提高左心室容积量化泛化能力的时空自我监督框架

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The automated quantification of the left ventricular (LV) volume on MRI is a crucial step for cardiac disease diagnosis. In recent years, deep learning (DL) technology has been widely used in the field of ventricle quantification and achieves relatively higher quantification accuracy. However, the LV volume quantification is still a challenging task, mainly because of limited labelled data. Hence, this study aims to propose an innovative approach to achieve accurate LV volume estimation based on limited labelled data.. The proposed method is three-fold: (1) For the first time, we proposed a self-supervised framework to model the significant spatio-temporal correlation information of adjacent slices from CMR images. (2) We designed a deep learning network based on spatio-temporal ranking loss to achieve self-supervised training utilizing large-scale unlabelled CMR data. (3) An iterative optimization strategy was developed to achieve efficient model optimization. The deep learning network was trained and validated on cardiac MRI datasets from MICCAI 2012 LV segmentation challenge including 100 patients (50 training patients and 50 test patients).
机译:MRI上左心室(LV)体积的自动定量是心脏病诊断的关键步骤。近年来,深度学习(DL)技术已在脑室量化领域中得到广泛使用,并获得了相对较高的量化精度。但是,LV体积定量仍然是一项艰巨的任务,主要是因为标记的数据有限。因此,本研究旨在提出一种创新的方法,以基于有限的标记数据实现准确的左心室容积估计。该方法具有三个方面:(1)首次,我们提出了一种自我监督的框架来对重要的心室进行建模。 CMR图像中相邻切片的时空相关信息。 (2)我们设计了一个基于时空排名损失的深度学习网络,以利用大规模的未标记CMR数据实现自我监督的训练。 (3)开发了迭代优化策略以实现有效的模型优化。在MICCAI 2012 LV分割挑战赛的心脏MRI数据集上对深度学习网络进行了培训和验证,其中包括100位患者(50位训练患者和50位测试患者)。

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