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Machine-learning classification of texture features of portable chest X-ray accurately classifies COVID-19 lung infection

机译:便携式胸部X射线纹理特征的机器学习分类准确分类Covid-19肺部感染

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The large volume and suboptimal image quality of portable chest X-rays (CXRs) as a result of the COVID-19 pandemic could post significant challenges for radiologists and frontline physicians. Deep-learning artificial intelligent (AI) methods have the potential to help improve diagnostic efficiency and accuracy for reading portable CXRs. The study aimed at developing an AI imaging analysis tool to classify COVID-19 lung infection based on portable CXRs. Public datasets of COVID-19 (N?=?130), bacterial pneumonia (N?=?145), non-COVID-19 viral pneumonia (N?=?145), and normal (N?=?138) CXRs were analyzed. Texture and morphological features were extracted. Five supervised machine-learning AI algorithms were used to classify COVID-19 from other conditions. Two-class and multi-class classification were performed. Statistical analysis was done using unpaired two-tailed t tests with unequal variance between groups. Performance of classification models used the receiver-operating characteristic (ROC) curve analysis. For the two-class classification, the accuracy, sensitivity and specificity were, respectively, 100%, 100%, and 100% for COVID-19 vs normal; 96.34%, 95.35% and 97.44% for COVID-19 vs bacterial pneumonia; and 97.56%, 97.44% and 97.67% for COVID-19 vs non-COVID-19 viral pneumonia. For the multi-class classification, the combined accuracy and AUC were 79.52% and 0.87, respectively. AI classification of texture and morphological features of portable CXRs accurately distinguishes COVID-19 lung infection in patients in multi-class datasets. Deep-learning methods have the potential to improve diagnostic efficiency and accuracy for portable CXRs.
机译:由于Covid-19大流行的结果,便携式胸部X射线(CXRS)的大容量和次优图像质量可能会为放射科医生和前线医生发布重大挑战。深度学习人工智能(AI)方法有可能有助于提高阅读便携式CXR的诊断效率和准确性。该研究旨在开发AI成像分析工具,基于便携式CXRS对Covid-19肺部感染进行分类。 Covid-19的公共数据集(n?=?130),细菌肺炎(n?= 145),非Covid-19病毒肺炎(n?=Δ145),正常(n?=?138)cxrs分析。提取纹理和形态特征。五个监督机器学习AI算法用于将Covid-19与其他条件分类。进行两班和多级分类。使用未配对的双尾T测试进行统计分析,在组之间具有不等差异。分类模型的性能使用接收器操作特性(ROC)曲线分析。对于两类分类,Covid-19 Vs Normal的准确度,敏感性和特异性分别为100%,100%和100%; Covid-19 Vs细菌肺炎的96.34%,95.35%和97.44%; Covid-19 Vs非Covid-19病毒肺炎的97.56%,97.44%和97.67%。对于多级分类,组合的精度和AUC分别为79.52%和0.87。可便携式CXR纹理和形态特征的AI分类准确地区分了多级数据集患者的Covid-19肺部感染。深度学习方法有可能提高便携式CXR的诊断效率和准确性。

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