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COVID_SCREENET:利用深度迁移堆叠技术对胸部X光图像进行COVID-19筛查

COVID_SCREENET: COVID-19 Screening in Chest Radiography Images Using Deep Transfer Stacking.

作者信息

Elakkiya R, Vijayakumar Pandi, Karuppiah Marimuthu

机构信息

School of Computing, SASTRA Deemed To Be University, Tamilnadu, Thanjavur India.

Department of Computer Science & Engineering, University College of Engineering Tindivanam, Tindivanam, Tamilnadu India.

出版信息

Inf Syst Front. 2021;23(6):1369-1383. doi: 10.1007/s10796-021-10123-x. Epub 2021 Mar 17.

Abstract

Infectious diseases are highly contagious due to rapid transmission and very challenging to diagnose in the early stage. Artificial Intelligence and Machine Learning now become a strategic weapon in assisting infectious disease prevention, rapid-response in diagnosis, surveillance, and management. In this paper, a bifold COVID_SCREENET architecture is introduced for providing COVID-19 screening solutions using Chest Radiography (CR) images. Transfer learning using nine pre-trained ImageNet models to extract the features of Normal, Pneumonia, and COVID-19 images is adapted in the first fold and classified using baseline Convolutional Neural Network (CNN). A Modified Stacked Ensemble Learning (MSEL) is proposed in the second fold by stacking the top five pre-trained models, and then the predictions resulted. Experimentation is carried out in two folds: In first fold, open-source samples are considered and in second fold 2216 real-time samples collected from Tamilnadu Government Hospitals, India, and the screening results for COVID data is 100% accurate in both the cases. The proposed approach is also validated and blind reviewed with the help of two radiologists at Thanjavur Medical College & Hospitals by collecting 2216 chest X-ray images between the month of April and May. Based on the reports, the measures are calculated for COVID_SCREENET and it showed 100% accuracy in performing multi-class classification.

摘要

传染病具有高度传染性,传播迅速,且在早期诊断极具挑战性。人工智能和机器学习如今已成为协助传染病预防、快速诊断、监测及管理的战略武器。本文介绍了一种双折的COVID_SCREENET架构,用于使用胸部X光(CR)图像提供新冠肺炎筛查解决方案。在第一折架构中,采用使用九个预训练的ImageNet模型进行迁移学习,以提取正常、肺炎和新冠肺炎图像的特征,并使用基线卷积神经网络(CNN)进行分类。在第二折架构中,通过堆叠排名前五的预训练模型提出了一种改进的堆叠集成学习(MSEL)方法,然后得出预测结果。实验分两折进行:第一折考虑开源样本,第二折使用从印度泰米尔纳德邦政府医院收集的2216个实时样本,两种情况下新冠肺炎数据的筛查结果均为100%准确。通过在坦贾武尔医学院和医院收集2216张4月至5月期间的胸部X光图像,在两名放射科医生的帮助下,对所提出的方法进行了验证和盲审。根据报告,计算了COVID_SCREENET的各项指标,结果表明其在进行多类分类时准确率达到100%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/339e/7968919/ded4500178ff/10796_2021_10123_Fig1_HTML.jpg

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