Choudhry Imran Arshad, Qureshi Adnan N, Aurangzeb Khursheed, Iqbal Saeed, Alhussein Musaed
Department of Computer Science, Faculty of Information Technology & Computer Science, University of Central Punjab, Lahore 54000, Pakistan.
Faculty of Arts, Society and Professional Studies, Newman University, Birmingham B32 3NT, UK.
Biomimetics (Basel). 2023 Sep 1;8(5):406. doi: 10.3390/biomimetics8050406.
A recently discovered coronavirus (COVID-19) poses a major danger to human life and health across the planet. The most important step in managing and combating COVID-19 is to accurately screen and diagnose affected people. The imaging technology of lung X-ray is a useful imaging identification/detection approach among them. The help of such computer-aided machines and diagnoses to examine lung X-ray images of COVID-19 instances can give supplemental assessment ideas to specialists, easing their workload to some level. The novel concept of this study is a hybridized approach merging pertinent manual features with deep spatial features for the classification of COVID-19. Further, we employed traditional transfer learning techniques in this investigation, utilizing four different pre-trained CNN-based deep learning models, with the Inception model showing a reasonably accurate result and a diagnosis accuracy of 82.17%. We provide a successful diagnostic approach that blends deep characteristics with machine learning classification to further increase clinical performance. It employs a complete diagnostic model. Two datasets were used to test the suggested approach, and it did quite well on several of them. On 1102 lung X-ray scans, the model was originally evaluated. The results of the experiments indicate that the suggested SVM model has a diagnostic accuracy of 95.57%. When compared to the Xception model's baseline, the diagnostic accuracy had risen by 17.58 percent. The sensitivity, specificity, and AUC of the proposed models were 95.37 percent, 95.39%, and 95.77%, respectively. To show the adaptability of our approach, we also verified our proposed model on other datasets. Finally, we arrived at results that were conclusive. When compared to research of a comparable kind, our suggested CNN model has a greater accuracy of classification and diagnostic effectiveness.
一种最近发现的冠状病毒(COVID-19)对全球人类生命和健康构成了重大威胁。管理和抗击COVID-19的最重要步骤是准确筛查和诊断受感染人群。肺部X光成像技术就是其中一种有用的成像识别/检测方法。这种计算机辅助机器和诊断手段有助于检查COVID-19病例的肺部X光图像,能为专家提供补充评估思路,在一定程度上减轻他们的工作量。本研究的新颖概念是一种将相关手动特征与深度空间特征相结合的混合方法,用于COVID-19的分类。此外,我们在这项研究中采用了传统的迁移学习技术,利用了四种不同的基于卷积神经网络(CNN)的预训练深度学习模型,其中Inception模型显示出相当准确的结果,诊断准确率为82.17%。我们提供了一种成功的诊断方法,将深度特征与机器学习分类相结合,以进一步提高临床性能。它采用了一个完整的诊断模型。使用了两个数据集来测试所提出的方法,并且在其中几个数据集上表现良好。该模型最初在1102次肺部X光扫描上进行评估。实验结果表明,所提出的支持向量机(SVM)模型的诊断准确率为95.57%。与Xception模型的基线相比,诊断准确率提高了17.58%。所提出模型的敏感性、特异性和曲线下面积(AUC)分别为95.37%、95.39%和95.77%。为了展示我们方法的适应性,我们还在其他数据集上验证了我们提出的模型。最后,我们得出了结论性的结果。与同类研究相比,我们提出的CNN模型具有更高的分类准确率和诊断效果。