Department of Electrical Engineering, National Taiwan Ocean University, Keelung City, 202301, Taiwan.
Sci Rep. 2024 Nov 30;14(1):29759. doi: 10.1038/s41598-024-80826-z.
In this study, we developed a lightweight and rapid convolutional neural network (CNN) architecture for chest X-ray images; it primarily consists of a redesigned feature extraction (FE) module and multiscale feature (MF) module and validated using publicly available COVID-19 datasets. Experiments were conducted on multiple updated versions of the COVID-19 Radiography Database, a publicly accessible dataset on Kaggle. The database contained images categorized into three classes: COVID-19 coronavirus, viral or bacterial pneumonia, and normal. The results revealed that the proposed method achieved a training accuracy of 99.85% and a validation accuracy of 96.28% when detecting the three classes. In the test set, the optimal results were 96.03% accuracy for COVID-19, 97.10% accuracy for viral or bacterial pneumonia, and 97.86% accuracy for normal individuals. By reducing the computational requirements and improving the speed of the model, the proposed method can achieve real-time, low-error performance to help medical professionals with rapid diagnosis of COVID-19.
在这项研究中,我们开发了一种用于胸部 X 光图像的轻量级快速卷积神经网络(CNN)架构;它主要由重新设计的特征提取(FE)模块和多尺度特征(MF)模块组成,并使用公开的 COVID-19 数据集进行了验证。实验在多个更新版本的 COVID-19 射线照相数据库上进行,该数据库是 Kaggle 上的一个公开数据集。该数据库包含分为三类的图像:COVID-19 冠状病毒、病毒性或细菌性肺炎和正常。结果表明,当检测到这三个类别时,所提出的方法在训练中达到了 99.85%的准确率,在验证中达到了 96.28%的准确率。在测试集中,COVID-19 的最佳结果是 96.03%的准确率,病毒性或细菌性肺炎的准确率是 97.10%,正常个体的准确率是 97.86%。通过降低计算要求并提高模型的速度,所提出的方法可以实现实时、低误差的性能,帮助医疗专业人员快速诊断 COVID-19。