Department of Research and Development, Shanghai United Imaging Intelligence Co., Ltd, Shanghai, People's Republic of China.
Phys Med Biol. 2021 Mar 17;66(6):065031. doi: 10.1088/1361-6560/abe838.
The worldwide spread of coronavirus disease (COVID-19) has become a threat to global public health. It is of great importance to rapidly and accurately screen and distinguish patients with COVID-19 from those with community-acquired pneumonia (CAP). In this study, a total of 1,658 patients with COVID-19 and 1,027 CAP patients underwent thin-section CT and were enrolled. All images were preprocessed to obtain the segmentations of infections and lung fields. A set of handcrafted location-specific features was proposed to best capture the COVID-19 distribution pattern, in comparison to the conventional CT severity score (CT-SS) and radiomics features. An infection size-aware random forest method (iSARF) was proposed for discriminating COVID-19 from CAP. Experimental results show that the proposed method yielded its best performance when using the handcrafted features, with a sensitivity of 90.7%, a specificity of 87.2%, and an accuracy of 89.4% over state-of-the-art classifiers. Additional tests on 734 subjects, with thick slice images, demonstrates great generalizability. It is anticipated that our proposed framework could assist clinical decision making.
冠状病毒病 (COVID-19) 在全球范围内的传播已成为全球公共卫生的威胁。快速准确地筛查和区分 COVID-19 患者与社区获得性肺炎 (CAP) 患者非常重要。在这项研究中,共纳入了 1658 例 COVID-19 患者和 1027 例 CAP 患者,进行了薄层 CT 检查。所有图像都经过预处理,以获得感染和肺区的分割。与传统的 CT 严重程度评分 (CT-SS) 和放射组学特征相比,提出了一组特定于位置的手工制作特征,以最佳地捕获 COVID-19 的分布模式。提出了一种基于感染大小感知的随机森林方法 (iSARF) 来区分 COVID-19 和 CAP。实验结果表明,当使用手工制作的特征时,所提出的方法性能最佳,在最先进的分类器上的灵敏度为 90.7%,特异性为 87.2%,准确性为 89.4%。对 734 名具有厚切片图像的受试者进行的额外测试表明,该方法具有很好的泛化能力。预计我们提出的框架可以辅助临床决策。