Deep Learning-Based COVID-19 Detection from Chest X-ray Images: A Comparative Study

Duc M. Cao, Md. Shahedul Amin, Md Tanvir Islam, Sabbir Ahmad, Md Sabbirul Haque, Md Abu Sayed, Md Minhazur Rahman, Tahera Koli
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Abstract

The COVID-19 pandemic, caused by the SARS-CoV-2 virus, has rapidly spread across the globe, leading to a significant number of illnesses and fatalities. Effective containment of the virus relies on the timely and accurate identification of infected individuals. While methods like RT-PCR assays are considered the gold standard for COVID-19 diagnosis due to their accuracy, they can be limited in their use due to cost and availability issues, particularly in resource-constrained regions. To address this challenge, our study presents a set of deep learning techniques for predicting COVID-19 detection using chest X-ray images. Chest X-ray imaging has emerged as a valuable and cost-effective diagnostic tool for managing COVID-19 because it is non-invasive and widely accessible. However, interpreting chest X-rays for COVID-19 detection can be complex, as the radiographic features of COVID-19 pneumonia can be subtle and may overlap with those of other respiratory illnesses. In this research, we evaluated the performance of various deep learning models, including VGG16, VGG19, DenseNet121, and Resnet50, to determine their ability to differentiate between cases of coronavirus pneumonia and non-COVID-19 pneumonia. Our dataset comprised 4,649 chest X-ray images, with 1,123 of them depicting COVID-19 cases and 3,526 representing pneumonia cases. We used performance metrics and confusion matrices to assess the models' performance. Our study's results showed that DenseNet121 outperformed the other models, achieving an impressive accuracy rate of 99.44%.
基于深度学习的胸部 X 光图像 COVID-19 检测:比较研究
由 SARS-CoV-2 病毒引起的 COVID-19 大流行已在全球迅速蔓延,导致大量人员患病和死亡。病毒的有效遏制有赖于及时准确地识别受感染的个体。虽然 RT-PCR 检测等方法因其准确性而被视为 COVID-19 诊断的黄金标准,但由于成本和可用性问题,它们的使用可能会受到限制,尤其是在资源有限的地区。为了应对这一挑战,我们的研究提出了一套利用胸部 X 光图像预测 COVID-19 检测的深度学习技术。胸部 X 光成像因其非侵入性和广泛可及性,已成为管理 COVID-19 的一种有价值且具有成本效益的诊断工具。然而,由于 COVID-19 肺炎的影像学特征可能很微妙,而且可能与其他呼吸道疾病的特征重叠,因此解读胸部 X 光图像以检测 COVID-19 可能很复杂。在这项研究中,我们评估了各种深度学习模型的性能,包括 VGG16、VGG19、DenseNet121 和 Resnet50,以确定它们区分冠状病毒肺炎和非 COVID-19 肺炎病例的能力。我们的数据集包括 4,649 张胸部 X 光图像,其中 1,123 张描绘了 COVID-19 病例,3,526 张代表肺炎病例。我们采用性能指标和混淆矩阵来评估模型的性能。研究结果表明,DenseNet 121 的表现优于其他模型,准确率高达 99.44%。
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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