论文标题
使用感染尺寸吸引分类从社区获得的肺炎进行大规模筛查。
Large-Scale Screening of COVID-19 from Community Acquired Pneumonia using Infection Size-Aware Classification
论文作者
论文摘要
冠状病毒疾病(Covid-19)的全球传播已成为全球公共卫生的威胁风险。从社区获得的肺炎(CAP)中快速,准确地筛查COVID-19患者非常重要。在这项研究中,共有1658例COVID-19和1027例CAP患者接受了薄片CT。预处理所有图像以获得感染和肺场的分割,这些片段用于提取特定于位置的特征。提出了一种感染大小的随机森林方法(ISARF),其中将受试者自动归类为具有不同感染病变范围的组,然后在每组中进行随机森林进行分类。实验结果表明,该方法的灵敏度为0.907,特异性为0.833,精度为0.879,在五倍的交叉验证下。特别是对于中等范围内感染大小的病例(从0.01%到10%),尤其是针对比较方法的较大性能边缘。进一步的放射素特征显示出略有改进。预计我们提出的框架可以帮助临床决策。
The worldwide spread of coronavirus disease (COVID-19) has become a threatening risk for global public health. It is of great importance to rapidly and accurately screen patients with COVID-19 from community acquired pneumonia (CAP). In this study, a total of 1658 patients with COVID-19 and 1027 patients of CAP underwent thin-section CT. All images were preprocessed to obtain the segmentations of both infections and lung fields, which were used to extract location-specific features. An infection Size Aware Random Forest method (iSARF) was proposed, in which subjects were automated categorized into groups with different ranges of infected lesion sizes, followed by random forests in each group for classification. Experimental results show that the proposed method yielded sensitivity of 0.907, specificity of 0.833, and accuracy of 0.879 under five-fold cross-validation. Large performance margins against comparison methods were achieved especially for the cases with infection size in the medium range, from 0.01% to 10%. The further inclusion of Radiomics features show slightly improvement. It is anticipated that our proposed framework could assist clinical decision making.