College of Mechanical Engineering, Zhejiang University of Technology, Hangzhou, 310023, China.
School of Intelligent Transportation, Zhejiang Institute of Mechanical & Electrical Engineering, Hangzhou, 310053, China.
Sci Rep. 2021 Jul 12;11(1):14353. doi: 10.1038/s41598-021-93832-2.
COVID-19 has tremendously impacted patients and medical systems globally. Computed tomography images can effectively complement the reverse transcription-polymerase chain reaction testing. This study adopted a convolutional neural network for COVID-19 testing. We examined the performance of different pre-trained models on CT testing and identified that larger, out-of-field datasets boost the testing power of the models. This suggests that a priori knowledge of the models from out-of-field training is also applicable to CT images. The proposed transfer learning approach proves to be more successful than the current approaches described in literature. We believe that our approach has achieved the state-of-the-art performance in identification thus far. Based on experiments with randomly sampled training datasets, the results reveal a satisfactory performance by our model. We investigated the relevant visual characteristics of the CT images used by the model; these may assist clinical doctors in manual screening.
新冠疫情对全球的患者和医疗系统产生了巨大影响。计算机断层扫描(CT)图像可以有效地补充逆转录-聚合酶链反应(RT-PCR)检测。本研究采用卷积神经网络(CNN)进行新冠病毒检测。我们考察了不同预训练模型在 CT 检测中的性能,发现更大、超域数据集可以提高模型的检测能力。这表明,来自超域训练的模型的先验知识也适用于 CT 图像。与文献中描述的当前方法相比,所提出的迁移学习方法证明更加成功。我们相信,到目前为止,我们的方法在识别方面已经达到了最新水平。通过对随机抽样训练数据集的实验,结果显示我们的模型具有令人满意的性能。我们研究了模型使用的 CT 图像的相关视觉特征;这些特征可能有助于临床医生进行手动筛选。