Khuzani Abolfazl Zargari, Heidari Morteza, Shariati S Ali
Department of Electrical and Computer Engineering, University of California, Santa Cruz, Santa Cruz, CA.
School of Electrical and Computer Engineering, The University of Oklahoma, Norman, OK.
medRxiv. 2020 May 18:2020.05.09.20096560. doi: 10.1101/2020.05.09.20096560.
Chest-X ray (CXR) radiography can be used as a first-line triage process for non-COVID-19 patients with pneumonia. However, the similarity between features of CXR images of COVID-19 and pneumonia caused by other infections make the differential diagnosis by radiologists challenging. We hypothesized that machine learning-based classifiers can reliably distinguish the CXR images of COVID-19 patients from other forms of pneumonia. We used a dimensionality reduction method to generate a set of optimal features of CXR images to build an efficient machine learning classifier that can distinguish COVID-19 cases from non-COVID-19 cases with high accuracy and sensitivity. By using global features of the whole CXR images, we were able to successfully implement our classifier using a relatively small dataset of CXR images. We propose that our COVID-Classifier can be used in conjunction with other tests for optimal allocation of hospital resources by rapid triage of non-COVID-19 cases.
胸部X光(CXR)摄影可作为非新冠肺炎肺炎患者的一线分诊手段。然而,新冠肺炎CXR图像特征与其他感染所致肺炎特征的相似性,使得放射科医生进行鉴别诊断具有挑战性。我们假设基于机器学习的分类器能够可靠地将新冠肺炎患者的CXR图像与其他形式的肺炎区分开来。我们采用降维方法生成一组CXR图像的最佳特征,以构建一个高效的机器学习分类器,该分类器能够高精度、高灵敏度地将新冠肺炎病例与非新冠肺炎病例区分开来。通过使用整个CXR图像的全局特征,我们能够利用相对较小的CXR图像数据集成功实现我们的分类器。我们建议,我们的新冠分类器可与其他检测方法结合使用,通过对非新冠肺炎病例的快速分诊,实现医院资源的优化分配。