School of Electrical Engineering, Iran University of Science and Technology, Tehran, Iran.
BMC Med Imaging. 2023 Jun 15;23(1):83. doi: 10.1186/s12880-023-01039-w.
The medical profession is facing an excessive workload, which has led to the development of various Computer-Aided Diagnosis (CAD) systems as well as Mobile-Aid Diagnosis (MAD) systems. These technologies enhance the speed and accuracy of diagnoses, particularly in areas with limited resources or remote regions during the pandemic. The primary purpose of this research is to predict and diagnose COVID-19 infection from chest X-ray images by developing a mobile-friendly deep learning framework, which has the potential for deployment in portable devices such as mobile or tablet, especially in situations where the workload of radiology specialists may be high. Moreover, this could improve the accuracy and transparency of population screening to assist radiologists during the pandemic.
In this study, the Mobile Networks ensemble model called COV-MobNets is proposed to classify positive COVID-19 X-ray images from negative ones and can have an assistant role in diagnosing COVID-19. The proposed model is an ensemble model, combining two lightweight and mobile-friendly models: MobileViT based on transformer structure and MobileNetV3 based on Convolutional Neural Network. Hence, COV-MobNets can extract the features of chest X-ray images in two different methods to achieve better and more accurate results. In addition, data augmentation techniques were applied to the dataset to avoid overfitting during the training process. The COVIDx-CXR-3 benchmark dataset was used for training and evaluation.
The classification accuracy of the improved MobileViT and MobileNetV3 models on the test set has reached 92.5% and 97%, respectively, while the accuracy of the proposed model (COV-MobNets) has reached 97.75%. The sensitivity and specificity of the proposed model have also reached 98.5% and 97%, respectively. Experimental comparison proves the result is more accurate and balanced than other methods.
The proposed method can distinguish between positive and negative COVID-19 cases more accurately and quickly. The proposed method proves that utilizing two automatic feature extractors with different structures as an overall framework of COVID-19 diagnosis can lead to improved performance, enhanced accuracy, and better generalization to new or unseen data. As a result, the proposed framework in this study can be used as an effective method for computer-aided diagnosis and mobile-aided diagnosis of COVID-19. The code is available publicly for open access at https://github.com/MAmirEshraghi/COV-MobNets .
医学领域正面临着工作量过大的问题,这促使了各种计算机辅助诊断(CAD)系统和移动辅助诊断(MAD)系统的发展。这些技术提高了诊断的速度和准确性,尤其是在资源有限或大流行期间的偏远地区。本研究的主要目的是通过开发一个移动友好的深度学习框架来预测和诊断 COVID-19 感染,该框架有可能部署在移动或平板电脑等便携式设备上,特别是在放射科专家工作量可能很大的情况下。此外,这可以提高人群筛查的准确性和透明度,以帮助放射科医生在大流行期间进行诊断。
在这项研究中,提出了一种名为 COV-MobNets 的移动网络集成模型,用于对阳性 COVID-19 胸片图像和阴性图像进行分类,并在 COVID-19 诊断中发挥辅助作用。所提出的模型是一个集成模型,结合了两种轻量级和移动友好的模型:基于变压器结构的 MobileViT 和基于卷积神经网络的 MobileNetV3。因此,COV-MobNets 可以使用两种不同的方法提取胸片图像的特征,以实现更好、更准确的结果。此外,还应用了数据增强技术来避免在训练过程中出现过拟合。使用 COVIDx-CXR-3 基准数据集进行训练和评估。
改进后的 MobileViT 和 MobileNetV3 模型在测试集上的分类准确率分别达到了 92.5%和 97%,而所提出模型(COV-MobNets)的准确率达到了 97.75%。所提出模型的灵敏度和特异性也分别达到了 98.5%和 97%。实验比较证明,该结果比其他方法更准确、更平衡。
所提出的方法可以更准确、更快速地区分 COVID-19 阳性和阴性病例。所提出的方法证明,利用具有不同结构的两个自动特征提取器作为 COVID-19 诊断的总体框架可以提高性能、增强准确性,并更好地推广到新的或未见过的数据。因此,本研究中提出的框架可以作为 COVID-19 的计算机辅助诊断和移动辅助诊断的有效方法。该代码可在 https://github.com/MAmirEshraghi/COV-MobNets 上公开获取,供开放访问。