Pradhan Ashwini Kumar, Mishra Debahuti, Das Kaberi, Obaidat Mohammad S, Kumar Manoj
Department of Computer Science and Engineering, Siksha O Anusandhan (Deemed to Be University), Khandagiri, Bhubaneswar, 751030 Odisha India.
Distingsuhed Professor, Indian Institute of Technology, Dhanbad, India.
Multimed Tools Appl. 2023;82(9):14219-14237. doi: 10.1007/s11042-022-13826-8. Epub 2022 Sep 27.
The classification of medical images is significant among researchers and physicians for the early identification and clinical treatment of many disorders. Though, traditional classifiers require more time and effort for feature extraction and reduction from images. To overcome this problem, there is a need for a new deep learning method known as Convolution Neural Network (CNN), which shows the high performance and self-learning capabilities. In this paper,to classify whether a chest X-ray (CXR) image shows pneumonia (Normal) or COVID-19 illness, a test-bed analysis has been carried out between pre-trained CNN models like Visual Geometry Group (VGG-16), VGG-19, Inception version 3 (INV3), Caps Net, DenseNet121, Residual Neural Network with 50 deep layers (ResNet50), Mobile-Net and proposed CNN classifier. It has been observed that, in terms of accuracy, the proposed CNN model appears to be potentially superior to others. Additionally, in order to increase the performance of the CNN classifier, a nature-inspired optimization method known as Hill-Climbing Algorithm based CNN (CNN-HCA) model has been proposed to enhance the CNN model's parameters. The proposed CNN-HCA model performance is tested using a simulation study and contrasted to existing hybridized classifiers like as Particle Swarm Optimization (CNN-PSO) and CNN-Jaya. The proposed CNN-HCA model is compared with peer reviewed works in the same domain. The CXR dataset, which is freely available on the Kaggle repository, was used for all experimental validations. In terms of Receiver Operating Characteristic Curve (ROC), Area Under the ROC Curve (AUC), sensitivity, specificity, F-score, and accuracy, the simulation findings show that the CNN-HCA is possibly superior than existing hybrid approaches. Each method employs a k-fold stratified cross-validation strategy to reduce over-fitting.
医学图像分类在研究人员和医生中对于许多疾病的早期识别和临床治疗具有重要意义。然而,传统分类器在从图像中提取和减少特征时需要更多时间和精力。为了克服这个问题,需要一种称为卷积神经网络(CNN)的新深度学习方法,它具有高性能和自学习能力。在本文中,为了对胸部X光(CXR)图像是否显示肺炎(正常)或COVID-19疾病进行分类,在预训练的CNN模型如视觉几何组(VGG-16)、VGG-19、Inception版本3(INV3)、Caps Net、DenseNet121、具有50个深层的残差神经网络(ResNet50)、Mobile-Net和提出的CNN分类器之间进行了试验台分析。据观察,在准确性方面,提出的CNN模型似乎可能优于其他模型。此外,为了提高CNN分类器的性能,提出了一种基于自然启发的优化方法,即基于爬山算法的CNN(CNN-HCA)模型来增强CNN模型的参数。使用模拟研究对提出的CNN-HCA模型性能进行测试,并与现有的混合分类器如粒子群优化(CNN-PSO)和CNN-Jaya进行对比。将提出的CNN-HCA模型与同一领域的同行评审作品进行比较。在Kaggle存储库上免费提供的CXR数据集用于所有实验验证。在接收器操作特征曲线(ROC)、ROC曲线下面积(AUC)、灵敏度、特异性、F分数和准确性方面,模拟结果表明CNN-HCA可能优于现有的混合方法。每种方法都采用k折分层交叉验证策略来减少过拟合。