论文标题
COVID-19病理学定量的纵向自我实施
Longitudinal Self-Supervision for COVID-19 Pathology Quantification
论文作者
论文摘要
随着时间的流逝,量化Covid-19的感染是管理全球大流行期间患者住院治疗的重要任务。最近,已经提出了基于深度学习的方法,以帮助放射科医生自动量化纵向CT扫描中的COVID-19。但是,深度学习方法的学习过程需要广泛的培训数据,以了解感染区域的复杂特征,而不是纵向扫描。收集一个大规模数据集很具有挑战性,尤其是对于纵向培训。在这项研究中,我们希望通过提出一种新的自我监督学习方法来解决这个问题,以有效地训练纵向网络以量化Covid-19感染。为此,在临床纵向COVID-19 CT扫描上探索了纵向自我划分方案。实验结果表明,所提出的方法是有效的,有助于该模型更好地利用纵向数据的语义并改善了两项COVID-19量化任务。
Quantifying COVID-19 infection over time is an important task to manage the hospitalization of patients during a global pandemic. Recently, deep learning-based approaches have been proposed to help radiologists automatically quantify COVID-19 pathologies on longitudinal CT scans. However, the learning process of deep learning methods demands extensive training data to learn the complex characteristics of infected regions over longitudinal scans. It is challenging to collect a large-scale dataset, especially for longitudinal training. In this study, we want to address this problem by proposing a new self-supervised learning method to effectively train longitudinal networks for the quantification of COVID-19 infections. For this purpose, longitudinal self-supervision schemes are explored on clinical longitudinal COVID-19 CT scans. Experimental results show that the proposed method is effective, helping the model better exploit the semantics of longitudinal data and improve two COVID-19 quantification tasks.