Punn Narinder Singh, Agarwal Sonali
IIIT Allahabad, Prayagraj, 211015 India.
Neural Process Lett. 2022;54(5):3771-3792. doi: 10.1007/s11063-022-10785-x. Epub 2022 Mar 16.
The pandemic of novel severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) also known as COVID-19 has been spreading worldwide, causing rampant loss of lives. Medical imaging such as computed tomography (CT), X-ray, etc., plays a significant role in diagnosing the patients by presenting the visual representation of the functioning of the organs. However, for any radiologist analyzing such scans is a tedious and time-consuming task. The emerging deep learning technologies have displayed its strength in analyzing such scans to aid in the faster diagnosis of the diseases and viruses such as COVID-19. In the present article, an automated deep learning based model, COVID-19 hierarchical segmentation network (CHS-Net) is proposed that functions as a semantic hierarchical segmenter to identify the COVID-19 infected regions from lungs contour via CT medical imaging using two cascaded residual attention inception U-Net (RAIU-Net) models. RAIU-Net comprises of a residual inception U-Net model with spectral spatial and depth attention network (SSD) that is developed with the contraction and expansion phases of depthwise separable convolutions and hybrid pooling (max and spectral pooling) to efficiently encode and decode the semantic and varying resolution information. The CHS-Net is trained with the segmentation loss function that is the defined as the average of binary cross entropy loss and dice loss to penalize false negative and false positive predictions. The approach is compared with the recently proposed approaches and evaluated using the standard metrics like accuracy, precision, specificity, recall, dice coefficient and Jaccard similarity along with the visualized interpretation of the model prediction with GradCam++ and uncertainty maps. With extensive trials, it is observed that the proposed approach outperformed the recently proposed approaches and effectively segments the COVID-19 infected regions in the lungs.
新型严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引发的大流行,也就是我们熟知的COVID-19,已在全球范围内蔓延,造成了大量生命损失。诸如计算机断层扫描(CT)、X射线等医学成像,通过呈现器官功能的视觉表现,在诊断患者方面发挥着重要作用。然而,对于任何放射科医生而言,分析此类扫描都是一项繁琐且耗时的任务。新兴的深度学习技术在分析此类扫描以辅助更快诊断诸如COVID-19等疾病和病毒方面展现出了优势。在本文中,提出了一种基于深度学习的自动化模型——COVID-19分层分割网络(CHS-Net),它作为语义分层分割器,通过使用两个级联的残差注意力初始U-Net(RAIU-Net)模型,从肺部轮廓的CT医学影像中识别出COVID-19感染区域。RAIU-Net由一个带有光谱空间和深度注意力网络(SSD)的残差初始U-Net模型组成,该模型通过深度可分离卷积的收缩和扩展阶段以及混合池化(最大池化和光谱池化)来有效编码和解码语义及变化分辨率信息。CHS-Net使用分割损失函数进行训练,该损失函数定义为二元交叉熵损失和骰子损失的平均值,以惩罚假阴性和假阳性预测。该方法与最近提出的方法进行了比较,并使用准确性、精确性、特异性、召回率、骰子系数和杰卡德相似度等标准指标进行评估,同时还通过GradCam++和不确定性图对模型预测进行可视化解释。经过大量试验,发现所提出的方法优于最近提出的方法,并能有效分割肺部的COVID-19感染区域。