COVIDPEN: A Novel COVID-19 Detection Model using Chest X-Rays and CT Scans

A. K. Jaiswal, P. Tiwari, V. K. Rathi, J. Qian, Hari Mohan Pandey, V. H. C. Albuquerque
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引用次数: 28

Abstract

The trending global pandemic of COVID-19 is the fastest ever impact which caused people worldwide by severe acute respiratory syndrome~(SARS)-driven coronavirus. However, several countries suffer from the shortage of test kits and high false negative rate in PCR test. Enhancing the chest X-ray or CT detection rate becomes critical. The patient triage is of utmost importance and the use of machine learning can drive the diagnosis of chest X-ray or CT image by identifying COVID-19 cases. To tackle this problem, we propose~COVIDPEN~-~a transfer learning approach on Pruned EfficientNet-based model for the detection of COVID-19 cases. The proposed model is further interpolated by post-hoc analysis for the explainability of the predictions. The effectiveness of our proposed model is demonstrated on two systematic datasets of chest radiographs and computed tomography scans. Experimental results with several baseline comparisons show that our method is on par and confers clinically explicable instances, which are meant for healthcare providers.
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covid - pen:利用胸部x射线和CT扫描的新型COVID-19检测模型
2019冠状病毒病(COVID-19)全球大流行趋势是迄今为止由严重急性呼吸系统综合症(SARS)驱动的冠状病毒在全球范围内造成的最快影响。然而,一些国家存在检测试剂盒短缺和PCR检测假阴性率高的问题。提高胸部x线或CT的检出率变得至关重要。患者分诊至关重要,机器学习可以通过识别COVID-19病例来推动胸部x线或CT图像的诊断。为了解决这一问题,我们提出了一种基于Pruned efficientnet模型的迁移学习方法来检测COVID-19病例。提出的模型进一步内插通过事后分析预测的可解释性。我们提出的模型的有效性在胸部x线片和计算机断层扫描的两个系统数据集上得到了证明。几个基线比较的实验结果表明,我们的方法是平等的,并赋予临床可解释的实例,这意味着医疗保健提供者。
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