Diab Amal G, El-Kenawy El-Sayed M, Areed Nihal F F, Amer Hanan M, El-Seddek Mervat
Department of Communications and Electronics Engineering, MISR Higher Institute for Engineering and Technology, Mansoura, 35511, Egypt.
Department of Communications and Electronics Engineering, Delta Higher Institute of Engineering and Technology, Mansoura, 35111, Egypt.
Sci Rep. 2025 May 14;15(1):16815. doi: 10.1038/s41598-025-99460-4.
Knee osteoarthritis (KOA) is a severe arthrodial joint condition with significant global socioeconomic consequences. Early recognition and treatment of KOA is critical for avoiding disease progression and developing effective treatment programs. The prevailing method for knee joint analysis involves manual diagnosis, segmentation, and annotation to diagnose osteoarthritis (OA) in clinical practice while being highly laborious and a susceptible variable among users. To address the constraints of this method, several deep learning techniques, particularly the deep convolutional neural networks (CNNs), were applied to increase the efficiency of the proposed workflow. The main objective of this study is to create advanced deep learning (DL) approaches for risk assessment to forecast the evolution of pain for people suffering from KOA or those at risk of developing it. The suggested methodology applies a collective transfer learning approach for extracting accurate deep features using four pre-trained models, VGG19, ResNet50, AlexNet, and GoogleNet, to extract features from KOA images. The numeral of extracted features was reduced for identifying the most appropriate feature attributes for the disease. The binary Greylag Goose (bGGO) optimizer was employed to perform this task, with an average fitness of 0.4137 and a best fitness of 0.3155. The chosen features were categorized utilizing both deep learning and machine learning approaches. Finally, a CNN hyper-parameter algorithm was performed utilizing GGO. The suggested model outperformed previous models with accuracy, sensitivity, and specificity of 0.988692, 0.980156, and 0.990089, respectively. A comprehensive statistical analysis test was performed to confirm the validity of our findings.
膝骨关节炎(KOA)是一种严重的关节疾病,具有重大的全球社会经济影响。KOA的早期识别和治疗对于避免疾病进展和制定有效的治疗方案至关重要。在临床实践中,膝关节分析的主流方法包括手动诊断、分割和注释以诊断骨关节炎(OA),但这种方法非常费力且使用者之间存在易变因素。为了解决这种方法的局限性,应用了几种深度学习技术,特别是深度卷积神经网络(CNN),以提高所提出工作流程的效率。本研究的主要目标是创建先进的深度学习(DL)方法用于风险评估,以预测KOA患者或有患KOA风险人群的疼痛演变。所建议的方法应用集体迁移学习方法,使用四个预训练模型VGG19、ResNet50、AlexNet和GoogleNet提取准确的深度特征,从KOA图像中提取特征。为了识别该疾病最合适的特征属性,减少了提取特征的数量。采用二元灰雁(bGGO)优化器来执行此任务,平均适应度为0.4137,最佳适应度为0.3155。所选特征使用深度学习和机器学习方法进行分类。最后,利用GGO执行CNN超参数算法。所建议的模型在准确性、敏感性和特异性方面分别达到0.988692、0.980156和0.990089,优于先前的模型。进行了全面的统计分析测试以证实我们研究结果的有效性。