Abdusalomov Akmalbek, Mirzakhalilov Sanjar, Umirzakova Sabina, Ismailov Otabek, Sultanov Djamshid, Nasimov Rashid, Cho Young Im
Department of Computer Engineering, Gachon University Sujeong-Gu, Seongnam-si, 13120, Gyeonggi-Do, Korea.
Department of Computer Systems, Tashkent University of Information Technologies Named after Muhammad Al-Khwarizmi, Tashkent, 100200, Uzbekistan.
Sci Rep. 2025 Aug 26;15(1):31413. doi: 10.1038/s41598-025-04095-0.
Osteoarthritis (OA) is a prevalent condition among athletes, characterized by the progressive degradation of joint cartilage, particularly in weight-bearing joints such as the knees. Early detection is critical for effective management and prevention of long-term complications. Recent advancements in deep learning, particularly convolutional neural networks (CNNs), have shown promise in medical diagnostics. In this study, we propose a novel approach for early-stage OA detection using an optimized EfficientNet-B0 architecture enhanced with the Efficient Channel Attention (ECA) module. This integration addresses the limitations of traditional attention mechanisms, such as Squeeze-and-Excitation (SE) blocks, by providing lightweight and computationally efficient feature recalibration. Our methodology is evaluated using the Knee Osteoarthritis Severity Grading Dataset, focusing on binary classification between healthy and early-stage OA cases. Comprehensive experiments demonstrate that the proposed model achieves superior accuracy, precision, and recall compared to baseline and State-of-the-Art (SOTA) architectures, including ResNet-50, VGG-16, and DenseNet, while maintaining minimal computational overhead. Class Activation Maps (CAMs) further validate the model capability to localize clinically relevant features, such as joint space narrowing and osteophyte formation, indicative of OA progression. This research not only sets a new benchmark for automated OA diagnostics but also emphasizes the importance of balancing high performance with resource efficiency. The proposed model lightweight architecture and robust diagnostic capabilities make it a strong candidate for real-time clinical applications, paving the way for improved patient outcomes through early intervention.
骨关节炎(OA)在运动员中是一种普遍存在的病症,其特征是关节软骨逐渐退化,尤其是在膝盖等负重关节中。早期检测对于有效管理和预防长期并发症至关重要。深度学习的最新进展,特别是卷积神经网络(CNN),在医学诊断中显示出了前景。在本研究中,我们提出了一种用于早期OA检测的新方法,该方法使用了经过优化的EfficientNet-B0架构,并通过高效通道注意力(ECA)模块进行增强。这种整合通过提供轻量级且计算高效的特征重新校准,解决了传统注意力机制(如挤压与激励(SE)块)的局限性。我们使用膝关节骨关节炎严重程度分级数据集对我们的方法进行评估,重点是健康与早期OA病例之间的二分类。全面的实验表明,与包括ResNet-50、VGG-16和DenseNet在内的基线和当前最先进(SOTA)架构相比,所提出的模型在保持最小计算开销的同时,实现了更高的准确率、精确率和召回率。类激活映射(CAM)进一步验证了模型定位临床相关特征(如关节间隙变窄和骨赘形成)的能力,这些特征表明OA的进展。这项研究不仅为自动化OA诊断设定了新的基准,还强调了在高性能与资源效率之间取得平衡的重要性。所提出的模型轻量级架构和强大的诊断能力使其成为实时临床应用的有力候选者,为通过早期干预改善患者预后铺平了道路。