Electrical Department, National Engineering School of Monastir (ENIM), Laboratory of Electronics and Micro-electronics (LR99ES30), Faculty of Sciences of Monastir (FSM), University of Monastir, Monastir, Tunisia.
Electrical Department, National Engineering School of Monastir (ENIM), Laboratory of Control, Electrical Systems and Environment (LASEE), National Engineering School of Monastir (ENIM), University of Monastir, Monastir, Tunisia.
Phys Eng Sci Med. 2020 Dec;43(4):1415-1431. doi: 10.1007/s13246-020-00957-1. Epub 2020 Dec 10.
The novel Coronavirus disease (COVID-19), which first appeared at the end of December 2019, continues to spread rapidly in most countries of the world. Respiratory infections occur primarily in the majority of patients treated with COVID-19. In light of the growing number of COVID-19 cases, the need for diagnostic tools to identify COVID-19 infection at early stages is of vital importance. For decades, chest X-ray (CXR) technologies have proven their ability to accurately detect respiratory diseases. More recently, with the availability of COVID-19 CXR scans, deep learning algorithms have played a critical role in the healthcare arena by allowing radiologists to recognize COVID-19 patients from their CXR images. However, the majority of screening methods for COVID-19 reported in recent studies are based on 2D convolutional neural networks (CNNs). Although 3D CNNs are capable of capturing contextual information compared to their 2D counterparts, their use is limited due to their increased computational cost (i.e. requires much extra memory and much more computing power). In this study, a transfer learning-based hybrid 2D/3D CNN architecture for COVID-19 screening using CXRs has been developed. The proposed architecture consists of the incorporation of a pre-trained deep model (VGG16) and a shallow 3D CNN, combined with a depth-wise separable convolution layer and a spatial pyramid pooling module (SPP). Specifically, the depth-wise separable convolution helps to preserve the useful features while reducing the computational burden of the model. The SPP module is designed to extract multi-level representations from intermediate ones. Experimental results show that the proposed framework can achieve reasonable performances when evaluated on a collected dataset (3 classes to be predicted: COVID-19, Pneumonia, and Normal). Notably, it achieved a sensitivity of 98.33%, a specificity of 98.68% and an overall accuracy of 96.91.
新型冠状病毒病(COVID-19)于 2019 年底首次出现,目前仍在世界大多数国家迅速传播。大多数 COVID-19 患者以呼吸道感染为主要症状。鉴于 COVID-19 病例不断增加,及早识别 COVID-19 感染的诊断工具显得尤为重要。几十年来,胸部 X 射线(CXR)技术已证明其准确诊断呼吸道疾病的能力。最近,随着 COVID-19 CXR 扫描的出现,深度学习算法在医疗保健领域发挥了至关重要的作用,使放射科医生能够从 CXR 图像中识别 COVID-19 患者。然而,最近研究中报道的 COVID-19 筛查方法大多基于二维卷积神经网络(CNN)。虽然 3D CNN 可以与二维 CNN 相比捕获上下文信息,但由于其计算成本增加(即需要更多额外的内存和更多的计算能力),其使用受到限制。在这项研究中,开发了一种基于迁移学习的混合 2D/3D CNN 架构,用于使用 CXR 进行 COVID-19 筛查。所提出的架构由整合预训练的深度模型(VGG16)和浅层 3D CNN 组成,结合了深度可分离卷积层和空间金字塔池化模块(SPP)。具体来说,深度可分离卷积有助于在减少模型计算负担的同时保留有用的特征。SPP 模块旨在从中间层提取多层次表示。实验结果表明,在所收集的数据集(需预测的 3 个类别:COVID-19、肺炎和正常)上评估时,该框架可以实现合理的性能。值得注意的是,它的灵敏度为 98.33%,特异性为 98.68%,总体准确性为 96.91%。