Long Michael J, Papi Enrica, Duffell Lynsey D, McGregor Alison H
Department of Surgery and Cancer, Imperial College London, Room 7L16, Floor 7, Laboratory Block, Charing Cross Hospital, London W6 8RF, UK.
Department of Surgery and Cancer, Imperial College London, Room 7L16, Floor 7, Laboratory Block, Charing Cross Hospital, London W6 8RF, UK.
Clin Biomech (Bristol). 2017 Aug;47:87-95. doi: 10.1016/j.clinbiomech.2017.06.001. Epub 2017 Jun 12.
Individuals who suffered a lower limb injury have an increased risk of developing knee osteoarthritis. Early diagnosis of osteoarthritis and the ability to track its progression is challenging. This study aimed to explore links between self-reported knee osteoarthritis outcome scores and biomechanical gait parameters, whether self-reported outcome scores could predict gait abnormalities characteristic of knee osteoarthritis in injured populations and, whether scores and biomechanical outcomes were related to osteoarthritis severity via Spearman's correlation coefficient.
A cross-sectional study was conducted with asymptomatic participants, participants with lower-limb injury and those with medial knee osteoarthritis. Spearman rank determined relationships between knee injury and outcome scores and hip and knee kinetic/kinematic gait parameters. K-Nearest Neighbour algorithm was used to determine which of the evaluated parameters created the strongest classifier model.
Differences in outcome scores were evident between groups, with knee quality of life correlated to first and second peak external knee adduction moment (0.47, 0.55). Combining hip and knee kinetics with quality of life outcome produced the strongest classifier (1.00) with the least prediction error (0.02), enabling classification of injured subjects gait as characteristic of either asymptomatic or knee osteoarthritis subjects. When correlating outcome scores and biomechanical outcomes with osteoarthritis severity only maximum external hip and knee abduction moment (0.62, 0.62) in addition to first peak hip adduction moment (0.47) displayed significant correlations.
The use of predictive models could enable clinicians to identify individuals at risk of knee osteoarthritis and be a cost-effective method for osteoarthritis screening.
下肢受伤的个体患膝骨关节炎的风险增加。骨关节炎的早期诊断及其进展追踪具有挑战性。本研究旨在探讨自我报告的膝骨关节炎结局评分与生物力学步态参数之间的联系,自我报告的结局评分是否能够预测受伤人群中膝骨关节炎特有的步态异常,以及评分和生物力学结局是否通过Spearman相关系数与骨关节炎严重程度相关。
对无症状参与者、下肢受伤参与者和膝内侧骨关节炎患者进行了一项横断面研究。Spearman秩次法确定了膝部损伤与结局评分以及髋部和膝部动力学/运动学步态参数之间的关系。使用K近邻算法确定所评估的参数中哪些创建了最强的分类模型。
各组之间结局评分存在明显差异,膝关节生活质量与第一和第二峰值膝关节外侧内收力矩相关(分别为0.47、0.55)。将髋部和膝部动力学与生活质量结局相结合产生了最强的分类器(1.00),预测误差最小(0.02),能够将受伤受试者的步态分类为无症状或膝骨关节炎受试者的特征。当将结局评分和生物力学结局与骨关节炎严重程度进行关联时,除了第一峰值髋部内收力矩(0.47)外,最大髋部和膝部外展力矩(分别为0.62、0.62)也显示出显著相关性。
使用预测模型可以使临床医生识别出有膝骨关节炎风险的个体,并且是一种具有成本效益的骨关节炎筛查方法。