Effect of multimodal imaging on Covid-19 and lung cancer classification via deep learning

F. William, Ali Serener, Sertan Serte
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引用次数: 2

Abstract

The recent Coronavirus pandemic that affected every part of our society has been spreading rapidly due to its high infectious rate. Covid-19 is an illness that affects the respiratory system and its early symptoms include tiredness, cough and fever. It is generally diagnosed using reverse transcription-polymerase chain reaction (RT-PCR), and in some cases using computed tomography (CT) scans or radiography. However, the similarities in medical image structure of Covid-19 and lung cancer can lead to wrong treatment approaches. In this paper, the aim is to investigate if a deep learning model, specifically AlexNet, can accurately distinguish between lung cancer and Covid-19 from their CT and X-ray images. During this analysis, we carried out 3 different analyses, which included the classification of Covid-19 and lung cancer CT images, Covid-19 and lung cancer X-rays, and Covid-19 and lung cancer CT and X-rays. The results clearly demonstrated that deep learning was able to distinguish Covid-19 and lung cancer with very high accuracy from the CT images in comparison to X-ray and multimodal imaging. However, there was really no significant improvement as a result of multimodal imaging.
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多模态成像对Covid-19和深度学习肺癌分类的影响
最近,波及社会各个领域的新型冠状病毒感染症(covid - 19)的传染率很高,正在迅速扩散。Covid-19是一种影响呼吸系统的疾病,其早期症状包括疲倦、咳嗽和发烧。通常使用逆转录聚合酶链反应(RT-PCR)诊断,在某些情况下使用计算机断层扫描(CT)或放射照相。然而,新冠肺炎和肺癌在医学图像结构上的相似性可能导致错误的治疗方法。在本文中,目的是研究深度学习模型,特别是AlexNet,是否可以从CT和x射线图像中准确区分肺癌和Covid-19。在本次分析中,我们进行了3种不同的分析,包括Covid-19与肺癌CT图像的分类、Covid-19与肺癌x射线的分类、Covid-19与肺癌CT和x射线的分类。结果清楚地表明,与x射线和多模态成像相比,深度学习能够以非常高的准确率从CT图像中区分Covid-19和肺癌。然而,多模态成像确实没有显著的改善。
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