Department of Applied Physics, University of Eastern Finland, Kuopio, Finland.
Diagnostic Imaging Center, Kuopio University Hospital, Kuopio, Finland.
Sci Rep. 2017 Sep 6;7(1):10586. doi: 10.1038/s41598-017-10973-z.
Conventional arthroscopic evaluation of articular cartilage is subjective and poorly reproducible. Therefore, implementation of quantitative diagnostic techniques, such as near infrared spectroscopy (NIRS) and optical coherence tomography (OCT), is essential. Locations (n = 44) with various cartilage conditions were selected from mature equine fetlock joints (n = 5). These locations and their surroundings were measured with NIRS and OCT (n = 530). As a reference, cartilage proteoglycan (PG) and collagen contents, and collagen network organization were determined using quantitative microscopy. Additionally, lesion severity visualized in OCT images was graded with an automatic algorithm according to International Cartilage Research Society (ICRS) scoring system. Artificial neural network with variable selection was then employed to predict cartilage composition in the superficial and deep zones from NIRS data, and the performance of two models, generalized (including all samples) and condition-specific models (based on ICRS-grades), was compared. Spectral data correlated significantly (p < 0.002) with PG and collagen contents, and collagen orientation in the superficial and deep zones. The combination of NIRS and OCT provided the most reliable outcome, with condition-specific models having lower prediction errors (9.2%) compared to generalized models (10.4%). Therefore, the results highlight the potential of combining both modalities for comprehensive evaluation of cartilage during arthroscopy.
传统的关节镜下关节软骨评估具有主观性且重现性较差。因此,实施定量诊断技术,如近红外光谱(NIRS)和光相干断层扫描(OCT),是至关重要的。从成熟的马球节(n=5)中选择具有不同软骨状况的位置(n=44)。使用 NIRS 和 OCT 对这些位置及其周围进行了测量(n=530)。作为参考,使用定量显微镜确定了软骨蛋白聚糖(PG)和胶原蛋白含量以及胶原网络组织。此外,根据国际软骨研究协会(ICRS)评分系统,使用自动算法对 OCT 图像中可视化的病变严重程度进行了分级。然后,使用具有变量选择的人工神经网络来预测 NIRS 数据中浅层和深层区域的软骨成分,并比较了两种模型(广义模型[包括所有样本]和特定条件模型[基于 ICRS 分级])的性能。光谱数据与浅层和深层的 PG 和胶原蛋白含量以及胶原取向显著相关(p<0.002)。NIRS 和 OCT 的结合提供了最可靠的结果,特定条件模型的预测误差(9.2%)低于广义模型(10.4%)。因此,这些结果强调了在关节镜检查期间结合这两种方式对软骨进行全面评估的潜力。