Kim Soo-Been, Kim Young Jae, Jung Joon-Yong, Kim Kwang Gi
Medical Devices R&D Center, Gil Medical Center, Gachon University, Incheon 21565, Republic of Korea.
Gachon Biomedical & Convergence Institute, Gil Medical Center, Gachon University, Incheon 21565, Republic of Korea.
Sensors (Basel). 2025 Apr 17;25(8):2535. doi: 10.3390/s25082535.
Osteoarthritis (OA) is the most common joint disease, affecting over 300 million people worldwide. Subchondral sclerosis is a key indicator of OA. Currently, the diagnosis of subchondral sclerosis is primarily based on radiographic images; however, reliability issues exist owing to subjective evaluations and inter-observer variability. This study proposes a novel diagnostic method that utilizes artificial intelligence (AI) to automatically classify the severity of subchondral sclerosis. A total of 4019 radiographic images of the knee were used to train the 3-Layer CNN, DenseNet121, MobileNetV2, and EfficientNetB0 models. The best-performing model was determined based on sensitivity, specificity, accuracy, and area under the curve (AUC). The proposed model exhibited outstanding performance, achieving 84.27 ± 1.03% sensitivity, 92.46 ± 0.49% specificity, 84.70 ± 0.98% accuracy, and 95.17 ± 0.41% AUC. The analysis of variance confirmed significant performance differences across models, age groups, and sexes ( < 0.05). These findings demonstrate the utility of AI in diagnosing and treating knee subchondral sclerosis and suggest that this approach could provide a new diagnostic method in clinical medicine. By precisely classifying the grades of subchondral sclerosis, this method contributes to improved overall diagnostic accuracy and offers valuable insights for clinical decision-making.
骨关节炎(OA)是最常见的关节疾病,全球有超过3亿人受其影响。软骨下骨硬化是OA的一个关键指标。目前,软骨下骨硬化的诊断主要基于影像学图像;然而,由于主观评估和观察者间的差异,存在可靠性问题。本研究提出了一种利用人工智能(AI)自动分类软骨下骨硬化严重程度的新型诊断方法。共使用4019张膝关节影像学图像来训练三层卷积神经网络(CNN)、DenseNet121、MobileNetV2和EfficientNetB0模型。基于灵敏度、特异度、准确度和曲线下面积(AUC)确定表现最佳的模型。所提出的模型表现出色,灵敏度达到84.27±1.03%,特异度达到92.46±0.49%,准确度达到84.70±0.98%,AUC达到95.17±0.41%。方差分析证实各模型、年龄组和性别之间存在显著的性能差异(<0.05)。这些发现证明了AI在诊断和治疗膝关节软骨下骨硬化方面的效用,并表明这种方法可为临床医学提供一种新的诊断方法。通过精确分类软骨下骨硬化的等级,该方法有助于提高整体诊断准确性,并为临床决策提供有价值的见解。