An artificial intelligence-based radiomics model for differential diagnosis between coronavirus disease 2019 and other viral pneumonias

Mudan Zhang, Wuchao Li, Xuntao Yin, Xianchun Zeng, Xinfeng Liu, Xiaochun Zhang, Qi Chen, Chencui Huang, Zhen Zhou, Rongpin Wang
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Abstract

OBJECTIVE: To set up a differential diagnosis radiomics model to identify coronavirus disease 2019 (COVID-19) and other viral pneumonias based on an artificial intelligence (AI) approach that utilizes computed tomography (CT) images. MATERIALS AND METHODS: This retrospective multi-center research involved 225 patients with COVID-19 and 265 patients with other viral pneumonias. The least absolute shrinkage and selection operator algorithm was used for the optimized features selection from 1218 radiomics features. Finally, a logistic regression (LR) classifier was applied to construct different diagnosis models. The receiver operating characteristic curve analysis was applied to evaluate the accuracy of different models. RESULTS: The patients were divided into a training set (313 of 392, 80%), an internal test set (79 of 392, 20%) and an external test set (n = 98). Thirteen features were selected to build the machine learning-based CT radiomics models. LR classifiers performed well in the training set (area under the curve [AUC] = 0.91), internal test set (AUC = 0.94), and external test set (AUC = 0.91). Delong tests suggested there was no significant difference between training and the two test sets (P > 0.05). CONCLUSION: The use of an AI-based radiomics model enables rapid discrimination of patients with COVID-19 from other viral infections, which can aid better surveillance and control during a pneumonia outbreak.
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基于人工智能的2019冠状病毒病与其他病毒性肺炎放射组学鉴别诊断模型
目的:利用计算机断层扫描(CT)图像,建立基于人工智能(AI)方法鉴别2019冠状病毒病(COVID-19)和其他病毒性肺炎的放射组学鉴别诊断模型。材料与方法:本回顾性多中心研究纳入225例COVID-19患者和265例其他病毒性肺炎患者。采用最小绝对收缩和选择算子算法对1218个放射组学特征进行优化选择。最后,应用逻辑回归(LR)分类器构建不同的诊断模型。采用受试者工作特征曲线分析评价不同模型的准确性。结果:将患者分为训练组(313 / 392,占80%)、内部测试组(79 / 392,占20%)和外部测试组(98)。选择13个特征构建基于机器学习的CT放射组学模型。LR分类器在训练集(曲线下面积[AUC] = 0.91)、内部测试集(AUC = 0.94)和外部测试集(AUC = 0.91)上表现良好。德隆检验表明,训练集与两个测试集之间无显著差异(P > 0.05)。结论:使用基于人工智能的放射组学模型可以快速区分COVID-19患者和其他病毒感染,有助于在肺炎暴发期间更好地监测和控制。
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