An Efficient Deep Learning Framework of COVID-19 CT Scans Using Contrastive Learning and Ensemble Strategy

Shenghan Zhang, Binyi Zou, Binquan Xu, Jionglong Su, Huafeng Hu
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引用次数: 3

Abstract

Since the outbreak of COVID-19 in 2019, more than 200 million individuals have been infected worldwide, resulting in over four million deaths. Although large-scale nucleic acid test is an effective way to diagnose COVID-19, the possibility of false positives or false negatives means that the chest CT scan remains a necessary tool in COVID-19 diagnosis for cross-validation. A lot of research has been carried out using deep learning methods for COVID-19 diagnosis using CT scans. However, privacy concerns result in very limited datasets being publicly available. In this research, we propose a novel framework based on the centripetal contrastive learning of visual representations (CeCLR) method with stacking ensemble learning to represent features more efficiently so as to achieve better performance on a limited COVID-19 dataset. Experimental results demonstrate that our deep learning system is superior to other baseline models. Our method achieves an F1 score of 0.914, AUC of 0.952, and accuracy of 0.909 when diagnosing COVID-19 on CT scans.
基于对比学习和集成策略的新型冠状病毒CT扫描深度学习框架
自2019年2019冠状病毒病爆发以来,全球已有2亿多人感染,造成400多万人死亡。虽然大规模核酸检测是诊断新冠肺炎的有效方法,但假阳性或假阴性的可能性意味着胸部CT扫描仍然是诊断新冠肺炎的必要工具,需要交叉验证。利用CT扫描诊断新冠肺炎的深度学习方法已经进行了大量研究。然而,隐私问题导致了非常有限的数据集公开可用。在本研究中,我们提出了一种基于向心对比学习视觉表征(CeCLR)方法和堆叠集成学习的新框架,以更有效地表示特征,从而在有限的COVID-19数据集上获得更好的性能。实验结果表明,我们的深度学习系统优于其他基线模型。我们的方法在CT扫描上诊断COVID-19的F1评分为0.914,AUC为0.952,准确率为0.909。
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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