Gopatoti Anandbabu, Vijayalakshmi P
Department of Electronics and Communication Engineering, Hindusthan College of Engineering and Technology, Coimbatore, Tamil Nadu, India.
Centre for Research, Anna University, Chennai, Tamil Nadu, India.
Biomed Signal Process Control. 2023 Aug;85:104857. doi: 10.1016/j.bspc.2023.104857. Epub 2023 Mar 21.
Coronavirus disease (COVID-19) has infected over 603 million confirmed cases as of September 2022, and its rapid spread has raised concerns worldwide. More than 6.4 million fatalities in confirmed patients have been reported. According to reports, the COVID-19 virus causes lung damage and rapidly mutates before the patient receives any diagnosis-specific medicine. Daily increasing COVID-19 cases and the limited number of diagnosis tool kits encourage the use of deep learning (DL) models to assist health care practitioners using chest X-ray (CXR) images. The CXR is a low radiation radiography tool available in hospitals to diagnose COVID-19 and combat this spread. We propose a Multi-Textural Multi-Class (MTMC) UNet-based Recurrent Residual Convolutional Neural Network (MTMC-UR2CNet) and MTMC-UR2CNet with attention mechanism (MTMC-AUR2CNet) for multi-class lung lobe segmentation of CXR images. The lung lobe segmentation output of MTMC-UR2CNet and MTMC-AUR2CNet are mapped individually with their input CXRs to generate the region of interest (ROI). The multi-textural features are extracted from the ROI of each proposed MTMC network. The extracted multi-textural features from ROI are fused and are trained to the Whale optimization algorithm (WOA) based DeepCNN classifier on classifying the CXR images into normal (healthy), COVID-19, viral pneumonia, and lung opacity. The experimental result shows that the MTMC-AUR2CNet has superior performance in multi-class lung lobe segmentation of CXR images with an accuracy of 99.47%, followed by MTMC-UR2CNet with an accuracy of 98.39%. Also, MTMC-AUR2CNet improves the multi-textural multi-class classification accuracy of the WOA-based DeepCNN classifier to 97.60% compared to MTMC-UR2CNet.
截至2022年9月,冠状病毒病(COVID-19)已确诊感染超过6.03亿例,其迅速传播引发了全球关注。据报道,确诊患者中有超过640万人死亡。据报道,COVID-19病毒会导致肺部损伤,并在患者接受任何针对特定诊断的药物治疗之前迅速变异。COVID-19病例每日增加,且诊断工具包数量有限,这促使人们使用深度学习(DL)模型,通过胸部X光(CXR)图像来辅助医护人员。CXR是医院中用于诊断COVID-19并对抗其传播的低辐射射线照相工具。我们提出了一种基于多纹理多类(MTMC)U-Net的循环残差卷积神经网络(MTMC-UR2CNet)以及带有注意力机制的MTMC-UR2CNet(MTMC-AUR2CNet),用于CXR图像的多类肺叶分割。MTMC-UR2CNet和MTMC-AUR2CNet的肺叶分割输出分别与其输入的CXR图像进行映射,以生成感兴趣区域(ROI)。从每个提出的MTMC网络的ROI中提取多纹理特征。从ROI中提取的多纹理特征进行融合,并在将CXR图像分类为正常(健康)、COVID-19、病毒性肺炎和肺不透明的任务中,训练至基于鲸鱼优化算法(WOA)的深度卷积神经网络(DeepCNN)分类器。实验结果表明,MTMC-AUR2CNet在CXR图像的多类肺叶分割中具有卓越性能,准确率为99.47%,其次是MTMC-UR2CNet,准确率为98.39%。此外,与MTMC-UR2CNet相比,MTMC-AUR2CNet将基于WOA的DeepCNN分类器的多纹理多类分类准确率提高到了97.60%。