Attention Based Residual Network for Effective Detection of COVID-19 and Viral Pneumonia

M. A. Nawshad, Usama Aleem Shami, Sana Sajid, M. Fraz
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引用次数: 7

Abstract

The current coronavirus (COVID-19) pandemic has led us to the healthcare, global poverty and socioeconomic crisis. One of the most significant task in this pandemic is to accurately and efficiently diagnose the COVID-19 patients and to monitor them to make prompt decisions and take appropriate actions for their monitoring, management and treatment. The early diagnosis of COVID-19 was a very troublesome and difficult challenge that CAD (Computer-Aided Diagnosis) methods successfully tackled. The CXR (chest X-ray) method proved to be a very low-cost and effective alternative to Computed Tomography (CT) scan and Real Time Polymerase Chain Reaction (RT-PCR) test, which were previously the most commonly used methods for COVID-19 diagnosis. Till now, very few CAD based techniques have been proposed to effectively detect COVID-19, but their efficiency is limited due to a number of factors. In this study, we have proposed a deep learning model using the Convolutional Block Attention Module with ResNet32. For training the model, Kaggle’s dataset containing CXR images has been used. The dataset contains a total of 3886 images. Moreover, 64% of data has been used for training, 20% for testing and 16% for validation. We have experimented with different CNN architectures with different approaches like Transfer Learning, Data Augmentation and attention module. With 97.69% accuracy, the ResNet32 with attention module outperformed other architectures and approaches, improving the baseline network efficiency. This promising and efficient classification accomplishment of our proposed methodology demonstrates that it is well suited for CXR image classification in COVID-19 diagnosis in terms of both accuracy and cost.
基于关注的残差网络有效检测COVID-19和病毒性肺炎
当前的冠状病毒(COVID-19)大流行给我们带来了医疗保健、全球贫困和社会经济危机。在本次大流行中,最重要的任务之一是准确有效地诊断COVID-19患者并对其进行监测,及时做出决策并采取适当行动进行监测、管理和治疗。COVID-19的早期诊断是一项非常棘手和困难的挑战,CAD(计算机辅助诊断)方法成功地解决了这一挑战。事实证明,CXR(胸部x射线)方法是一种非常低成本和有效的替代方法,可以替代计算机断层扫描(CT)扫描和实时聚合酶链反应(RT-PCR)检测,这两种方法以前是COVID-19诊断中最常用的方法。到目前为止,很少有基于CAD的技术能够有效地检测COVID-19,但由于许多因素,它们的效率受到限制。在这项研究中,我们提出了一个使用卷积块注意力模块和ResNet32的深度学习模型。为了训练模型,使用了Kaggle的包含CXR图像的数据集。该数据集共包含3886张图像。此外,64%的数据用于培训,20%用于测试,16%用于验证。我们尝试了不同的CNN架构和不同的方法,如迁移学习、数据增强和注意力模块。具有注意力模块的ResNet32以97.69%的准确率优于其他架构和方法,提高了基线网络效率。我们提出的方法在准确性和成本方面都非常适合用于COVID-19诊断中的CXR图像分类。
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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