Jalali Seyed Mohammad Jafar, Ahmadian Milad, Ahmadian Sajad, Hedjam Rachid, Khosravi Abbas, Nahavandi Saeid
Institute for Intelligent Systems Research and Innovation, (IISRI), Deakin University, Geelong, Australia.
Department of Computer Engineering, Razi University, Kermanshah, Iran.
Expert Syst Appl. 2022 Sep 1;201:116942. doi: 10.1016/j.eswa.2022.116942. Epub 2022 Mar 30.
Radiological methodologies, such as chest x-rays and CT, are widely employed to help diagnose and monitor COVID-19 disease. COVID-19 displays certain radiological patterns easily detectable by X-rays of the chest. Therefore, radiologists can investigate these patterns for detecting coronavirus disease. However, this task is time-consuming and needs lots of trial and error. One of the main solutions to resolve this issue is to apply intelligent techniques such as deep learning (DL) models to automatically analyze the chest X-rays. Nevertheless, fine-tuning of architecture and hyperparameters of DL models is a complex and time-consuming procedure. In this paper, we propose an effective method to detect COVID-19 disease by applying convolutional neural network (CNN) to the chest X-ray images. To improve the accuracy of the proposed method, the last Softmax CNN layer is replaced with a -nearest neighbors (KNN) classifier which takes into account the agreement of the neighborhood labeling. Moreover, we develop a novel evolutionary algorithm by improving the basic version of competitive swarm optimizer. To this end, three powerful evolutionary operators: Cauchy Mutation (CM), Evolutionary Boundary Constraint Handling (EBCH), and tent chaotic map are incorporated into the search process of the proposed evolutionary algorithm to speed up its convergence and make an excellent balance between exploration and exploitation phases. Then, the proposed evolutionary algorithm is used to automatically achieve the optimal values of CNN's hyperparameters leading to a significant improvement in the classification accuracy of the proposed method. Comprehensive comparative results reveal that compared with current models in the literature, the proposed method performs significantly more efficient.
放射学方法,如胸部X光和CT,被广泛用于帮助诊断和监测新冠肺炎疾病。新冠肺炎呈现出某些易于通过胸部X光检测到的放射学模式。因此,放射科医生可以研究这些模式以检测冠状病毒疾病。然而,这项任务耗时且需要大量的反复试验。解决这个问题的主要方法之一是应用深度学习(DL)模型等智能技术来自动分析胸部X光。尽管如此,DL模型的架构和超参数微调是一个复杂且耗时的过程。在本文中,我们提出了一种通过将卷积神经网络(CNN)应用于胸部X光图像来检测新冠肺炎疾病的有效方法。为了提高所提方法的准确性,将最后一个Softmax CNN层替换为考虑邻域标签一致性的K近邻(KNN)分类器。此外,我们通过改进竞争群体优化器的基本版本开发了一种新颖的进化算法。为此,将三个强大的进化算子:柯西变异(CM)、进化边界约束处理(EBCH)和帐篷混沌映射纳入所提进化算法的搜索过程,以加速其收敛并在探索和利用阶段之间实现良好的平衡。然后,所提进化算法用于自动获得CNN超参数的最优值,从而显著提高所提方法的分类准确率。综合比较结果表明,与文献中的当前模型相比,所提方法的性能显著更优。