Castro Marcelo A, Reza Syed, Chu Winston T, Bradley Dara, Lee Ji Hyun, Crozier Ian, Sayre Philip J, Lee Byeong Y, Mani Venkatesh, Friedrich Thomas C, O'Connor David H, Finch Courtney L, Worwa Gabriella, Feuerstein Irwin M, Kuhn Jens H, Solomon Jeffrey
National Institutes of Health, National Institute of Allergy and Infectious Diseases, Integrated Research Facility at Fort Detrick, Frederick, Maryland, United States.
National Institutes of Health, Clinical Center, Radiology and Imaging Sciences, Center for Infectious Disease Imaging, Bethesda, Maryland, United States.
J Med Imaging (Bellingham). 2022 Nov;9(6):066003. doi: 10.1117/1.JMI.9.6.066003. Epub 2022 Dec 8.
We propose a method to identify sensitive and reliable whole-lung radiomic features from computed tomography (CT) images in a nonhuman primate model of coronavirus disease 2019 (COVID-19). Criteria used for feature selection in this method may improve the performance and robustness of predictive models.
Fourteen crab-eating macaques were assigned to two experimental groups and exposed to either severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) or a mock inoculum. High-resolution CT scans were acquired before exposure and on several post-exposure days. Lung volumes were segmented using a deep-learning methodology, and radiomic features were extracted from the original image. The reliability of each feature was assessed by the intraclass correlation coefficient (ICC) using the mock-exposed group data. The sensitivity of each feature was assessed using the virus-exposed group data by defining a factor R that estimates the excess of variation above the maximum normal variation computed in the mock-exposed group. R and ICC were used to rank features and identify non-sensitive and unstable features.
Out of 111 radiomic features, 43% had excellent reliability ( ), and 55% had either good ( ) or moderate ( ) reliability. Nineteen features were not sensitive to the radiological manifestations of SARS-CoV-2 exposure. The sensitivity of features showed patterns that suggested a correlation with the radiological manifestations.
Features were quantified and ranked based on their sensitivity and reliability. Features to be excluded to create more robust models were identified. Applicability to similar viral pneumonia studies is also possible.
我们提出一种方法,用于在2019冠状病毒病(COVID-19)的非人灵长类动物模型中,从计算机断层扫描(CT)图像中识别敏感且可靠的全肺放射组学特征。该方法中用于特征选择的标准可能会提高预测模型的性能和稳健性。
将14只食蟹猕猴分为两个实验组,分别暴露于严重急性呼吸综合征冠状病毒2(SARS-CoV-2)或模拟接种物。在暴露前和暴露后的几天内进行高分辨率CT扫描。使用深度学习方法分割肺体积,并从原始图像中提取放射组学特征。使用模拟暴露组数据通过组内相关系数(ICC)评估每个特征的可靠性。通过定义一个因子R来评估每个特征的敏感性,该因子R估计高于模拟暴露组计算的最大正常变异的变异过量,使用病毒暴露组数据进行评估。R和ICC用于对特征进行排名,并识别不敏感和不稳定的特征。
在111个放射组学特征中,43%具有优异的可靠性( ),55%具有良好( )或中等( )的可靠性。19个特征对SARS-CoV-2暴露的放射学表现不敏感。特征的敏感性显示出与放射学表现相关的模式。
根据特征的敏感性和可靠性对其进行量化和排名。确定了为创建更稳健模型而要排除的特征。该方法也可能适用于类似的病毒性肺炎研究。