Oka H, Muraki S, Akune T, Mabuchi A, Suzuki T, Yoshida H, Yamamoto S, Nakamura K, Yoshimura N, Kawaguchi H
22nd Century Medical Center, The University of Tokyo, Tokyo, Japan.
Osteoarthritis Cartilage. 2008 Nov;16(11):1300-6. doi: 10.1016/j.joca.2008.03.011. Epub 2008 Apr 18.
Although knee osteoarthritis (OA) is a major public health issue causing chronic disability, there is no objective or accurate method for measurement of the structural severity in general clinical practice. Here we have established a fully automatic program KOACAD (knee OA computer-aided diagnosis) to quantify the major OA parameters on plain knee radiographs, validated the reproducibility and reliability, and investigated the association of the parameters with knee pain.
KOACAD was programmed to measure joint space narrowing at medial and lateral sides, osteophyte formation, and joint angulation. Anteroposterior radiographs of 1979 knees of a large-scale cohort population were analyzed by KOACAD and conventional categorical grading systems.
KOACAD automatically measured all parameters in less than 1s without intra- or interobserver variability. All parameters, especially medial joint space narrowing, were significantly correlated with the conventional gradings. In the parameters, osteophyte formation was associated with none of the joint space parameters, suggesting different etiologic mechanisms between them. Multivariate logistic regression analysis after adjustment for age and confounding factors revealed that medial joint space narrowing and varus angulation of knee joints were risk factors for the presence of pain (594/1979 knees), while neither lateral joint space nor osteophyte area was.
KOACAD was shown to be useful for objective, accurate, simple and easy evaluation of the radiographic knee OA severity in daily clinical practice. This system may also serve as a surrogate measure for the development of disease-modifying drugs for OA, just as bone mineral density does in osteoporosis.
尽管膝关节骨关节炎(OA)是导致慢性残疾的主要公共卫生问题,但在一般临床实践中,尚无客观准确的方法来测量结构严重程度。在此,我们建立了一个全自动程序KOACAD(膝关节OA计算机辅助诊断),用于量化膝关节X线平片上的主要OA参数,验证其可重复性和可靠性,并研究这些参数与膝关节疼痛的关联。
KOACAD被编程用于测量内侧和外侧关节间隙变窄、骨赘形成和关节成角。通过KOACAD和传统分类分级系统对一个大规模队列人群的1979个膝关节的前后位X线片进行分析。
KOACAD能在不到1秒的时间内自动测量所有参数,且不存在观察者内或观察者间的差异。所有参数,尤其是内侧关节间隙变窄,与传统分级显著相关。在这些参数中,骨赘形成与任何关节间隙参数均无关联,表明它们之间存在不同的病因机制。在对年龄和混杂因素进行调整后的多因素逻辑回归分析显示,内侧关节间隙变窄和膝关节内翻成角是疼痛存在(594/1979个膝关节)的危险因素,而外侧关节间隙和骨赘面积均不是。
KOACAD被证明在日常临床实践中可用于客观、准确、简单且容易地评估膝关节X线OA的严重程度。该系统也可作为OA疾病修饰药物研发的替代指标,就像骨密度在骨质疏松症中那样。