Deep learning classification of Covid-19, pneumonia, and lung cancer on chest radiographs

Falana William, Ali Serener, Sertan Serte
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引用次数: 3

Abstract

Lung illnesses like lung cancer, Covid-19 and pneumonia have in most cases deadly effects on humans if not immediately treated. In recent times, deep learning with medical imaging, like chest X-rays, has been used for diagnoses and to assist radiographers in several medical applications. In this paper, we investigate using deep learning architecture AlexNet the problem of classifying Covid-19, lung cancer and pneumonia medical images due to the similarities in medical chest X-rays imaging of the three diseases. The comparative results show that the classifier distinguishes Covid-19 from lung cancer with 94 percent accuracy, distinguishes Covid-19 from pneumonia with 96 percent accuracy, and also distinguishes lung cancer from pneumonia with 93 percent accuracy. Overall, AlexNet was able to distinguish Covid-19 from pneumonia with an excellent accuracy that is slightly better than the other two classifications.
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胸片上Covid-19、肺炎和肺癌的深度学习分类
肺癌、Covid-19和肺炎等肺部疾病如果不立即治疗,在大多数情况下会对人类造成致命影响。近年来,深度学习与医学成像,如胸部x光,已被用于诊断和协助放射技师在一些医疗应用中。在本文中,我们利用深度学习架构AlexNet研究了Covid-19、肺癌和肺炎医学图像的分类问题,因为这三种疾病的医学胸部x射线成像具有相似性。对比结果表明,该分类器将Covid-19与肺癌区分开来的准确率为94%,将Covid-19与肺炎区分开来的准确率为96%,将肺癌与肺炎区分开来的准确率为93%。总的来说,AlexNet能够以极好的准确性区分Covid-19和肺炎,略好于其他两种分类。
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