Transfer Learning for Detection of COVID-19 Infection using Chest X-Ray Images

Nikhil Bhatia, Geetanjali Bhola
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引用次数: 3

Abstract

Coronavirus is a contagious disease that affects individuals in a large scale. Coronavirus had a huge impact on the nation’s economy and human lifestyle. The motivation behind this study was establishing a better diagnosis test for coronavirus infection. The RT-PCR test is used to diagnose the coronavirus frequently and returned a negative result for an infected individual. Furthermore, this test remains prohibitively expensive for most citizens, and not everyone could afford it due to financial hardship. An efficient imaging approach is de veloped for the evaluation of lung conditions, which has been done by examining the chest X-ray or chest CT of an infected person. Deep Learning is the well-suited sub domain of Artificial Intelligence [AI] technology, which offers helpful examination to consider more number of chest X-rays images that can basically have an effect on coronavirus screening. The goal of this research is to cluster the radiograph images present in the dataset into COVID-19, healthy and viral pneumonia by making use of the artificial neural networks. The training dataset was fine-tuned with eleven previously trained convolutional neural architectures. The assessment of the models on a test sample shows that AlexNet, DenseNet-121, GoogleNet and Squeezenet1.1 as the top performing models.
利用胸部x线图像检测COVID-19感染的迁移学习
冠状病毒是一种大规模影响个体的传染病。冠状病毒对国家经济和人类生活方式产生了巨大影响。这项研究背后的动机是建立一种更好的冠状病毒感染诊断测试。RT-PCR检测经常用于诊断冠状病毒,对感染者的诊断结果为阴性。此外,这项测试对大多数公民来说仍然过于昂贵,由于经济困难,并不是每个人都能负担得起。通过检查感染者的胸部x光片或胸部CT,开发了一种用于评估肺部状况的有效成像方法。深度学习是人工智能技术的一个非常合适的子领域,它提供了有用的检查,可以考虑更多的胸部x光图像,这些图像基本上可以对冠状病毒筛查产生影响。本研究的目标是利用人工神经网络将数据集中存在的x光片图像聚类为COVID-19,健康和病毒性肺炎。训练数据集使用11个先前训练过的卷积神经架构进行微调。在测试样本上对模型的评估表明,AlexNet、DenseNet-121、GoogleNet和Squeezenet1.1是表现最好的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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