Sitaula Chiranjibi, Aryal Sunil
School of Information Technology, Deakin University, 75 Pigdons Rd, Waurn Ponds, Melbourne, VIC 3216 Australia.
Health Inf Sci Syst. 2021 Jun 18;9(1):24. doi: 10.1007/s13755-021-00152-w. eCollection 2021 Dec.
Because the infection by Severe Acute Respiratory Syndrome Coronavirus 2 (COVID-19) causes the Pneumonia-like effect in the lung, the examination of Chest X-Rays (CXR) can help diagnose the disease. For automatic analysis of images, they are represented in machines by a set of semantic features. Deep Learning (DL) models are widely used to extract features from images. General deep features extracted from intermediate layers may not be appropriate to represent CXR images as they have a few semantic regions. Though the Bag of Visual Words (BoVW)-based features are shown to be more appropriate for different types of images, existing BoVW features may not capture enough information to differentiate COVID-19 infection from other Pneumonia-related infections.
In this paper, we propose a new BoVW method over deep features, called Bag of Deep Visual Words (BoDVW), by removing the feature map normalization step and adding the deep features normalization step on the raw feature maps. This helps to preserve the semantics of each feature map that may have important clues to differentiate COVID-19 from Pneumonia.
We evaluate the effectiveness of our proposed BoDVW features in CXR image classification using Support Vector Machine (SVM) to diagnose COVID-19. Our results on four publicly available COVID-19 CXR image datasets (D1, D2, D3, and D4) reveal that our features produce stable and prominent classification accuracy (82.00% on D1, 87.86% on D2, 87.92% on D3, and 83.22% on D4), particularly differentiating COVID-19 infection from other Pneumonia.
Our method could be a very useful tool for the quick diagnosis of COVID-19 patients on a large scale.
由于严重急性呼吸综合征冠状病毒2(COVID-19)感染会在肺部引发类似肺炎的症状,胸部X光(CXR)检查有助于诊断该疾病。对于图像的自动分析,它们在机器中由一组语义特征表示。深度学习(DL)模型被广泛用于从图像中提取特征。从中间层提取的一般深度特征可能不太适合表示CXR图像,因为它们的语义区域较少。尽管基于视觉词袋(BoVW)的特征被证明更适合不同类型的图像,但现有的BoVW特征可能无法捕获足够的信息来区分COVID-19感染与其他肺炎相关感染。
在本文中,我们提出了一种基于深度特征的新BoVW方法,称为深度视觉词袋(BoDVW),通过去除特征图归一化步骤并在原始特征图上添加深度特征归一化步骤。这有助于保留每个特征图的语义,而这些语义可能包含区分COVID-19和肺炎的重要线索。
我们使用支持向量机(SVM)评估了我们提出的BoDVW特征在CXR图像分类中诊断COVID-19的有效性。我们在四个公开可用的COVID-19 CXR图像数据集(D1、D2、D3和D4)上的结果表明,我们的特征产生了稳定且显著的分类准确率(D1上为82.00%,D2上为87.86%,D3上为87.92%,D4上为83.22%),特别是在区分COVID-19感染与其他肺炎方面。
我们的方法可能是大规模快速诊断COVID-19患者的非常有用的工具。