Won Hyeyeon, Lee Hye Sang, Youn Daemyung, Park Doohyun, Eo Taejoon, Kim Wooju, Hwang Dosik
School of Electrical and Electronic Engineering, Yonsei University, Seoul 03722, Republic of Korea.
Probe Medical Inc., 61, Yonsei-ro 2na-gil, Seodaemun-gu, Seoul 03777, Republic of Korea.
Diagnostics (Basel). 2024 Aug 29;14(17):1900. doi: 10.3390/diagnostics14171900.
Knee effusion, a common and important indicator of joint diseases such as osteoarthritis, is typically more discernible on magnetic resonance imaging (MRI) scans compared to radiographs. However, the use of radiographs for the early detection of knee effusion remains promising due to their cost-effectiveness and accessibility. This multi-center prospective study collected a total of 1413 radiographs from four hospitals between February 2022 to March 2023, of which 1281 were analyzed after exclusions. To automatically detect knee effusion on radiographs, we utilized a state-of-the-art (SOTA) deep learning-based classification model with a novel preprocessing technique to optimize images for diagnosing knee effusion. The diagnostic performance of the proposed method was significantly higher than that of the baseline model, achieving an area under the receiver operating characteristic curve (AUC) of 0.892, accuracy of 0.803, sensitivity of 0.820, and specificity of 0.785. Moreover, the proposed method significantly outperformed two non-orthopedic physicians. Coupled with an explainable artificial intelligence method for visualization, this approach not only improved diagnostic performance but also interpretability, highlighting areas of effusion. These results demonstrate that the proposed method enables the early and accurate classification of knee effusions on radiographs, thereby reducing healthcare costs and improving patient outcomes through timely interventions.
膝关节积液是骨关节炎等关节疾病常见且重要的指标,与X线片相比,在磁共振成像(MRI)扫描上通常更易辨别。然而,由于X线片具有成本效益且易于获取,其在膝关节积液早期检测中的应用仍具有前景。这项多中心前瞻性研究在2022年2月至2023年3月期间从四家医院共收集了1413张X线片,排除后对其中1281张进行了分析。为了在X线片上自动检测膝关节积液,我们使用了一种基于深度学习的先进(SOTA)分类模型,并采用了一种新颖的预处理技术来优化用于诊断膝关节积液的图像。所提方法的诊断性能显著高于基线模型,受试者操作特征曲线(AUC)下面积为0.892,准确率为0.803,灵敏度为0.820,特异性为0.785。此外,所提方法明显优于两名非骨科医生。结合可解释人工智能方法进行可视化,这种方法不仅提高了诊断性能,还提高了可解释性,突出了积液区域。这些结果表明,所提方法能够在X线片上对膝关节积液进行早期准确分类,从而通过及时干预降低医疗成本并改善患者预后。