基于AI Deep VGG16模型的COVID-19(+)准确预测

A. Panthakkan, M. AnzarS., S. Al-Mansoori, Hussain Al-Ahmad
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引用次数: 9

摘要

目前的研究旨在利用先进的机器智能技术,通过肺部x射线有效预测COVID-19(+)。在本文中,我们提出了一种有前途的VGG16迁移学习模型,用于准确快速地诊断COVID-19(+)。该系统提供肺部x线图像的二进制分类,分为COVID-19(+)和正常。通过准确性、精密度、召回率和f1分数等性能指标来评价系统的有效性。实验用2000个x射线标本进行。对于报告样本量的两类分类,本文提出的VGG16模型的识别准确率达到99.5%,高于目前文献中提供的所有方法。建议的方法非常高效和精确,因此,它可用于帮助和支持放射科医生和医疗保健专业人员利用肺部x射线识别COVID-19(+)。
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Accurate Prediction of COVID-19 (+) Using AI Deep VGG16 Model
Current research aims at the efficient prediction of COVID-19 (+) by employing advanced machine intelligence techniques by means of lung X-rays. In this paper, we have presented the promising VGG16 transfer learning model for the accurate and faster diagnosis of COVID-19 (+). The system provides a binary classification of the lung X-ray image into COVID-19 (+) and Normal. The effectiveness of the system being proposed is appraised by means of the performance metrics such as accuracy, precision, recall, and f1 score. Experiments were performed with 2000 X-ray specimens. For the two-class classification of the reported sample size, the proposed VGG16 model provides an outstanding recognition accuracy of 99.5%, which is loftier to all the contemporary methods provided in the literature. The suggested approach is extremely efficient and precise, for that reason, it can be used to aid and support radiologists and healthcare professionals to identify COVID-19 (+) utilizing the lung X-rays.
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