Wang Xusheng, Gong Cunqi, Khishe Mohammad, Mohammadi Mokhtar, Rashid Tarik A
Xi'an University of Technology, Xi'an, 710048 Shaanxi China.
Department of Clinical Laboratory, Jining No.1 People's Hospital, Jining, 272011 Shandong China.
Wirel Pers Commun. 2022;124(2):1355-1374. doi: 10.1007/s11277-021-09410-2. Epub 2021 Dec 1.
The early diagnosis and the accurate separation of COVID-19 from non-COVID-19 cases based on pulmonary diffuse airspace opacities is one of the challenges facing researchers. Recently, researchers try to exploit the Deep Learning (DL) method's capability to assist clinicians and radiologists in diagnosing positive COVID-19 cases from chest X-ray images. In this approach, DL models, especially Deep Convolutional Neural Networks (DCNN), propose real-time, automated effective models to detect COVID-19 cases. However, conventional DCNNs usually use Gradient Descent-based approaches for training fully connected layers. Although GD-based Training (GBT) methods are easy to implement and fast in the process, they demand numerous manual parameter tuning to make them optimal. Besides, the GBT's procedure is inherently sequential, thereby parallelizing them with Graphics Processing Units is very difficult. Therefore, for the sake of having a real-time COVID-19 detector with parallel implementation capability, this paper proposes the use of the Whale Optimization Algorithm for training fully connected layers. The designed detector is then benchmarked on a verified dataset called COVID-Xray-5k, and the results are verified by a comparative study with classic DCNN, DUICM, and Matched Subspace classifier with Adaptive Dictionaries. The results show that the proposed model with an average accuracy of 99.06% provides 1.87% better performance than the best comparison model. The paper also considers the concept of Class Activation Map to detect the regions potentially infected by the virus. This was found to correlate with clinical results, as confirmed by experts. Although results are auspicious, further investigation is needed on a larger dataset of COVID-19 images to have a more comprehensive evaluation of accuracy rates.
基于肺部弥漫性空域混浊对新冠肺炎与非新冠肺炎病例进行早期诊断和准确区分是研究人员面临的挑战之一。最近,研究人员试图利用深度学习(DL)方法的能力,协助临床医生和放射科医生从胸部X光图像中诊断新冠肺炎阳性病例。在这种方法中,DL模型,尤其是深度卷积神经网络(DCNN),提出了实时、自动化的有效模型来检测新冠肺炎病例。然而,传统的DCNN通常使用基于梯度下降的方法来训练全连接层。尽管基于梯度下降的训练(GBT)方法易于实现且过程快速,但它们需要大量手动参数调整才能达到最优。此外,GBT的过程本质上是顺序的,因此很难用图形处理单元对其进行并行化。因此,为了拥有一个具有并行实现能力的实时新冠肺炎检测器,本文提出使用鲸鱼优化算法来训练全连接层。然后,在一个名为COVID-Xray-5k的经过验证的数据集上对设计的检测器进行基准测试,并通过与经典DCNN、DUICM和具有自适应字典的匹配子空间分类器的比较研究来验证结果。结果表明,所提出的模型平均准确率为99.06%,比最佳比较模型的性能高出1.87%。本文还考虑了类激活映射的概念,以检测可能被病毒感染的区域。专家证实,这与临床结果相关。尽管结果是吉祥的,但仍需要在更大的新冠肺炎图像数据集上进行进一步研究,以对准确率进行更全面的评估。