Qanita Bani Baker, Mahmoud Hammad, Mohammed Al-Smadi, Heba Al-Jarrah, Rahaf Al-Hamouri, Sa'ad A Al-Zboon
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引用次数: 0
摘要
冠状病毒(COVID-19)在全球的传播促使人们必须研究可扩展的有效检测方法,以遏制其爆发。对 COVID-19 患者的早期诊断已成为缓解疾病传播的关键策略。利用胸部 X 射线 (CXR) 成像自动检测 COVID-19,在促进大规模筛查和疫情控制工作方面具有巨大潜力。本文介绍了一种采用最先进的卷积神经网络模型(CNN)进行 COVID-19 精确检测的新方法。采用的数据集各由 15,000 张 X 光图像组成。我们同时处理二元(正常与异常)和多类(正常、COVID-19、肺炎)分类任务。在这两项任务中,我们使用了六种不同的基于 CNN 的模型(Xception、Inception-V3、ResNet50、VGG19、DenseNet201 和 InceptionResNet-V2)进行了综合评估。结果,Xception 模型表现优异,在二元分类中取得了 98.13% 的准确率、98.14% 的精确率、97.65% 的召回率和 97.89% 的 F1 分数,而在多元分类中取得了 87.73% 的准确率、90.20% 的精确率、87.73% 的召回率和 87.49% 的 F1 分数。此外,所使用的其他模型(如 ResNet50)的性能与许多最新研究成果相比也很有竞争力。
Enhanced COVID-19 Detection from X-ray Images with Convolutional Neural Network and Transfer Learning.
The global spread of Coronavirus (COVID-19) has prompted imperative research into scalable and effective detection methods to curb its outbreak. The early diagnosis of COVID-19 patients has emerged as a pivotal strategy in mitigating the spread of the disease. Automated COVID-19 detection using Chest X-ray (CXR) imaging has significant potential for facilitating large-scale screening and epidemic control efforts. This paper introduces a novel approach that employs state-of-the-art Convolutional Neural Network models (CNNs) for accurate COVID-19 detection. The employed datasets each comprised 15,000 X-ray images. We addressed both binary (Normal vs. Abnormal) and multi-class (Normal, COVID-19, Pneumonia) classification tasks. Comprehensive evaluations were performed by utilizing six distinct CNN-based models (Xception, Inception-V3, ResNet50, VGG19, DenseNet201, and InceptionResNet-V2) for both tasks. As a result, the Xception model demonstrated exceptional performance, achieving 98.13% accuracy, 98.14% precision, 97.65% recall, and a 97.89% F1-score in binary classification, while in multi-classification it yielded 87.73% accuracy, 90.20% precision, 87.73% recall, and an 87.49% F1-score. Moreover, the other utilized models, such as ResNet50, demonstrated competitive performance compared with many recent works.