基于预训练模型的CT图像新冠肺炎诊断

Mohammed Hashem Almourish, Alaa A. Saif, Borhan M. N. Radman, Ahmed Y. A. Saeed
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引用次数: 1

摘要

最近,新型冠状病毒(COVID-19)因严重急性呼吸系统综合征(SARSCoV-2)而在世界范围内蔓延。据该领域的研究,全球新冠肺炎感染人数约为34440235人,死亡人数为1023430人,正在接受治疗的患者约为25633956人。在本文中,研究者使用了五个预训练模型。它们是:ResNet-50、ResNet-101、AlexNet、VGG11和SqueezeNetV-1.0。DTL (deep transfer learning)通过训练32批大小、25 epoch的COVID-19冠状病毒数据集来诊断新型冠状病毒(COVID-19)。在训练中,ResNet-50的损失率最好(0.22),准确率为93.2%,而VGG11的损失率最差(0.38)。在验证中,结果显示ResNet-50为最佳值(0.28),VGG11为最差值(0.39)。
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Covid-19 Diagnosis Based on CT Images Using Pre-Trained Models
the NOVEL (COVID-19) coronavirus has recently grown into a pandemic in the world due to the severe acute respiratory syndrome (SARSCoV-2). According to studies in this area, about 34,440,235 people are infected with COVID-19, 1,023,430 is the number of deaths, and around 25,633,956 patients are being subjected to treatment worldwide. In this paper researchers used five pre-trained models. They are: ResNet-50, ResNet-101, AlexNet, VGG11, and SqueezeNetV-1.0. DTL (deep transfer learning) is used to diagnose the NOVEL (COVID-19) by training the COVID-19 coronavirus dataset with 32-batch size and 25 epochs. In training, ResNet-50 gives the best value in loss rate (0.22) with an accuracy of 93.2%, whereas, VGG11 showed the worst value (0.38). Also, in validation, the results showed that ResNet-50 (0.28) is the best, and VGG11 achieved (0.39) as the worst value.
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