Department of Radiology, PLA Central Theater General Hospital, Wuhan, Hubei, China.
Medicine (Baltimore). 2021 Mar 26;100(12):e25307. doi: 10.1097/MD.0000000000025307.
In 2020, the new type of coronal pneumonitis became a pandemic in the world, and has firstly been reported in Wuhan, China. Chest CT is a vital component in the diagnostic algorithm for patients with suspected or confirmed COVID-19 infection. Therefore, it is necessary to conduct automatic and accurate detection of COVID-19 by chest CT.The clinical classification of patients with COVID-19 pneumonia was predicted by Radiomics using chest CT.From the COVID-19 cases in our institution, 136 moderate patients and 83 severe patients were screened, and their clinical and laboratory data on admission were collected for statistical analysis. Initial CT Radiomics were modeled by automatic machine learning, and diagnostic performance was evaluated according to AUC, TPR, TNR, PPV and NPV of the subjects. At the same time, the initial CT main features of the two groups were analyzed semi-quantitatively, and the results were statistically analyzed.There was a statistical difference in age between the moderate group and the severe group. The model cohort showed TPR 96.9%, TNR 99.1%, PPV98.4%, NPV98.2%, and AUC 0.98. The test cohort showed TPR 94.4%, TNR100%, PPV100%, NPV96.2%, and AUC 0.97. There was statistical difference between the two groups with grade 1 score (P = .001), the AUC of grade 1 score, grade 2 score, grade 3 score and CT score were 0.619, 0.519, 0.478 and 0.548, respectively.Radiomics' Auto ML model was built by CT image of initial COVID -19 pneumonia, and it proved to be effectively used to predict the clinical classification of COVID-19 pneumonia. CT features have limited ability to predict the clinical typing of Covid-19 pneumonia.
2020 年,新型冠状肺炎在世界范围内大流行,最初在中国武汉被报道。胸部 CT 是疑似或确诊 COVID-19 感染患者诊断算法中的重要组成部分。因此,有必要通过胸部 CT 对 COVID-19 进行自动、准确的检测。利用胸部 CT 对 COVID-19 患者进行放射组学自动准确检测。从本机构的 COVID-19 病例中筛选出 136 例中度患者和 83 例重度患者,收集其入院时的临床和实验室数据进行统计分析。通过自动机器学习对初始 CT 放射组学进行建模,并根据受试者的 AUC、TPR、TNR、PPV 和 NPV 评估诊断性能。同时,对半定量分析两组患者的初始 CT 主要特征,并进行统计学分析。中度组和重度组之间在年龄方面存在统计学差异。模型队列显示 TPR 为 96.9%,TNR 为 99.1%,PPV 为 98.4%,NPV 为 98.2%,AUC 为 0.98。测试队列显示 TPR 为 94.4%,TNR 为 100%,PPV 为 100%,NPV 为 96.2%,AUC 为 0.97。两组间 1 级评分差异有统计学意义(P = .001),1 级评分、2 级评分、3 级评分和 CT 评分的 AUC 分别为 0.619、0.519、0.478 和 0.548。通过 COVID-19 肺炎初始 CT 图像构建了放射组学 Auto ML 模型,该模型可有效地用于预测 COVID-19 肺炎的临床分类。CT 特征对预测 COVID-19 肺炎的临床分型能力有限。