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

R Elakkiya, Pandi Vijayakumar, Marimuthu Karuppiah
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引用次数: 11

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.

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covid - screenet:基于深度转移叠加的胸片图像COVID-19筛查。
传染病传播迅速,传染性强,早期诊断非常困难。人工智能和机器学习已成为协助传染病预防、快速诊断、监测和管理的战略武器。本文介绍了一种双重COVID_SCREENET架构,用于利用胸部x线摄影(CR)图像提供COVID-19筛查解决方案。使用9个预训练的ImageNet模型来提取正常、肺炎和COVID-19图像的特征的迁移学习在第一个折叠中进行调整,并使用基线卷积神经网络(CNN)进行分类。在第二部分,提出了一种改进的堆叠集成学习(MSEL)方法,将前5个预训练模型堆叠起来,然后得到预测结果。实验分两部分进行:第一部分采用开源样本,第二部分采用从印度泰米尔纳德邦政府医院采集的2216份实时样本,两种病例的COVID数据筛查结果均为100%准确。在Thanjavur医学院和医院的两名放射科医生的帮助下,通过收集4月至5月期间的2216张胸部x射线图像,对所提出的方法进行了验证和盲检。在此基础上,对COVID_SCREENET进行了测度计算,其多类分类准确率达到100%。
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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