Department of Electronics and Communication Engineering, Hindusthan College of Engineering and Technology, Coimbatore, Tamil Nadu, India.
Department of Electronics and Communication Engineering, Lakireddy Bali Reddy College of Engineering, Mylavaram, Andhra Pradesh, India.
J Xray Sci Technol. 2024;32(3):623-649. doi: 10.3233/XST-230421.
COVID-19 needs to be diagnosed and staged to be treated accurately. However, prior studies' diagnostic and staging abilities for COVID-19 infection needed to be improved. Therefore, new deep learning-based approaches are required to aid radiologists in detecting and quantifying COVID-19-related lung infections.
To develop deep learning-based models to classify and quantify COVID-19-related lung infections.
Initially, Dual Decoder Attention-based Semantic Segmentation Networks (DDA-SSNets) such as Dual Decoder Attention-UNet (DDA-UNet) and Dual Decoder Attention-SegNet (DDA-SegNet) are proposed to facilitate the dual segmentation tasks such as lung lobes and infection segmentation in chest X-ray (CXR) images. The lung lobe and infection segmentations are mapped to grade the severity of COVID-19 infection in both the lungs of CXRs. Later, a Genetic algorithm-based Deep Convolutional Neural Network classifier with the optimum number of layers, namely GADCNet, is proposed to classify the extracted regions of interest (ROI) from the CXR lung lobes into COVID-19 and non-COVID-19.
The DDA-SegNet shows better segmentation with an average BCSSDC of 99.53% and 99.97% for lung lobes and infection segmentations, respectively, compared with DDA-UNet with an average BCSSDC of 99.14% and 99.92%. The proposed DDA-SegNet with GADCNet classifier offered excellent classification results with an average BCCAC of 99.98%, followed by the GADCNet with DDA-UNet with an average BCCAC of 99.92% after extensive testing and analysis.
The results show that the proposed DDA-SegNet has superior performance in the segmentation of lung lobes and COVID-19-infected regions in CXRs, along with improved severity grading compared to the DDA-UNet and improved accuracy of the GADCNet classifier in classifying the CXRs into COVID-19, and non-COVID-19.
COVID-19 需要准确诊断和分期才能进行治疗。然而,先前研究对 COVID-19 感染的诊断和分期能力需要改进。因此,需要新的基于深度学习的方法来帮助放射科医生检测和量化 COVID-19 相关的肺部感染。
开发基于深度学习的模型来对 COVID-19 相关的肺部感染进行分类和量化。
最初,提出了基于双解码器注意语义分割网络(DDA-SSNets)的模型,例如双解码器注意-Unet(DDA-UNet)和双解码器注意-SegNet(DDA-SegNet),以促进胸部 X 射线(CXR)图像中的双分割任务,例如肺叶和感染分割。将肺叶和感染分割映射到 CXR 肺部的 COVID-19 感染严重程度分级。后来,提出了一种基于遗传算法的深度卷积神经网络分类器,具有最佳的层数,即 GADCNet,用于将从 CXR 肺叶中提取的感兴趣区域(ROI)分类为 COVID-19 和非 COVID-19。
与平均 BCSSDC 为 99.14%和 99.92%的 DDA-UNet 相比,DDA-SegNet 对肺叶和感染分割的分割效果更好,平均 BCSSDC 分别为 99.53%和 99.97%。与 DDA-UNet 相比,使用 GADCNet 分类器的 DDA-SegNet 提供了出色的分类结果,平均 BCCAC 为 99.98%,其次是使用 DDA-UNet 的 GADCNet,平均 BCCAC 为 99.92%,经过广泛的测试和分析。
结果表明,与 DDA-UNet 相比,所提出的 DDA-SegNet 在 CXR 中肺叶和 COVID-19 感染区域的分割、严重程度分级方面表现出色,并且 GADCNet 分类器在将 CXR 分类为 COVID-19 和非 COVID-19 方面的准确性更高。