Department of Orthopedic Surgery, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Department of Orthopedic Surgery, Bone Joint and Related Tissues Research Center, Akhtar Orthopedic Hospital, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
Medicine (Baltimore). 2024 Jul 12;103(28):e38888. doi: 10.1097/MD.0000000000038888.
Malalignment is one of the most critical risk factors for knee osteoarthritis (KOA). Biomechanical factors such as knee varus or valgus, hip-knee-ankle angle, and femoral anteversion affect KOA severity. In this study, we aimed to investigate KOA severity predictive factors based on hip and pelvic radiographic geometry. In this cross-sectional study, 125 patients with idiopathic KOA were enrolled. Two investigators evaluated the knee and pelvic radiographs of 125 patients, and 16 radiological parameters were measured separately. KOA severity was categorized based on the medial tibiofemoral joint space widths (JSW). Based on JSW measurements, 16% (n = 40), 8.8% (n = 22), 16.4% (n = 41), and 56.8% (n = 147) were defined as grades 0, 1, 2, 3, respectively. There were significant differences between the JSW groups with respect to hip axis length, femoral neck-axis length, acetabular width, neck shaft angle (NSA), outer pelvic diameter, midpelvis-caput distance, acetabular-acetabular distance, and femoral head to femoral head length (P < .05). Two different functions were obtained using machine learning classification and logistic regression, and the accuracy of predicting was 74.4% by using 1 and 89.6% by using both functions. Our findings revealed that some hip and pelvic geometry measurements could affect the severity of KOA. Furthermore, logistic functions using predictive factors of hip and pelvic geometry can predict the severity of KOA with acceptable accuracy, and it could be used in clinical decisions.
对线不良是膝关节骨关节炎(KOA)的最重要危险因素之一。生物力学因素,如膝内翻或外翻、髋膝踝角和股骨前倾角,会影响 KOA 的严重程度。在这项研究中,我们旨在研究基于髋部和骨盆放射影像学的 KOA 严重程度的预测因素。本横断面研究纳入了 125 例特发性 KOA 患者。两名研究者分别评估了 125 例患者的膝关节和骨盆 X 线片,并单独测量了 16 个影像学参数。根据内侧胫骨股关节间隙宽度(JSW)将 KOA 严重程度进行分类。根据 JSW 测量结果,16%(n=40)、8.8%(n=22)、16.4%(n=41)和 56.8%(n=147)分别被定义为 0 级、1 级、2 级和 3 级。JSW 组之间在髋关节轴长、股骨颈轴长、髋臼宽度、颈干角(NSA)、骨盆外直径、中骨盆-股骨头距离、髋臼-髋臼距离和股骨头-股骨头长度方面存在显著差异(P<.05)。使用机器学习分类和逻辑回归得到了两个不同的函数,使用这两个函数分别可以达到 74.4%和 89.6%的预测准确率。我们的研究结果表明,一些髋部和骨盆几何结构的测量可以影响 KOA 的严重程度。此外,使用髋部和骨盆几何结构预测因子的逻辑函数可以以可接受的准确性预测 KOA 的严重程度,可用于临床决策。