IEEE Trans Med Imaging. 2020 Aug;39(8):2606-2614. doi: 10.1109/TMI.2020.2992546. Epub 2020 May 5.
Recently, the outbreak of Coronavirus Disease 2019 (COVID-19) has spread rapidly across the world. Due to the large number of infected patients and heavy labor for doctors, computer-aided diagnosis with machine learning algorithm is urgently needed, and could largely reduce the efforts of clinicians and accelerate the diagnosis process. Chest computed tomography (CT) has been recognized as an informative tool for diagnosis of the disease. In this study, we propose to conduct the diagnosis of COVID-19 with a series of features extracted from CT images. To fully explore multiple features describing CT images from different views, a unified latent representation is learned which can completely encode information from different aspects of features and is endowed with promising class structure for separability. Specifically, the completeness is guaranteed with a group of backward neural networks (each for one type of features), while by using class labels the representation is enforced to be compact within COVID-19/community-acquired pneumonia (CAP) and also a large margin is guaranteed between different types of pneumonia. In this way, our model can well avoid overfitting compared to the case of directly projecting high-dimensional features into classes. Extensive experimental results show that the proposed method outperforms all comparison methods, and rather stable performances are observed when varying the number of training data.
最近,2019 年冠状病毒病(COVID-19)的爆发在全球迅速蔓延。由于感染患者数量众多,医生工作量大,因此迫切需要使用机器学习算法进行计算机辅助诊断,可以大大减少临床医生的工作量并加速诊断过程。胸部计算机断层扫描(CT)已被认为是诊断该疾病的一种有效工具。在这项研究中,我们提出使用从 CT 图像中提取的一系列特征来进行 COVID-19 的诊断。为了充分挖掘描述 CT 图像的多个特征,我们从不同角度学习统一的潜在表示,该表示可以完全编码来自不同特征方面的信息,并具有有前途的可分离类结构。具体来说,通过一组反向神经网络(每种特征一个)来保证完备性,同时利用类别标签强制表示在 COVID-19/社区获得性肺炎(CAP)内紧凑,并且在不同类型的肺炎之间保证大的间隔。通过这种方式,与直接将高维特征投影到类别中的情况相比,我们的模型可以很好地避免过拟合。大量实验结果表明,所提出的方法优于所有比较方法,并且在训练数据数量变化时观察到相当稳定的性能。