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Changes in frontal plane dynamics and the loading response phase of the gait cycle are characteristic of severe knee osteoarthritis application of a multidimensional analysis technique.

机译:额叶动力学的变化和步态周期的负荷反应阶段是多维分析技术在重度膝关节炎中的特征。

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Background. Osteoarthritis of the knee is related to many correlated mechanical factors that can be measured with gait analysis. Gait analysis results in large data sets. The analysis of these data is difficult due to the correlated, multidimensional nature of the measures. Methods. A multidimensional model that uses two multivariate statistical techniques, principal component analysis and discriminant analysis, was used to discriminate between the gait patterns of the normal subject group and the osteoarthritis subject group. Nine time varying gait measures and eight discrete measures were included in the analysis. All interrelationships between and within the measures were retained in the analysis. Findings. The multidimensional analysis technique successfully separated the gait patterns of normal and knee osteoarthritis subjects with a misclassification error rate of <6%. The most discriminatory feature described a static and dynamic alignment factor. The second most discriminatory feature describeda gait pattern change during the loading response phase of the gait cycle. Interpretation. The interrelationships between gait measures and between the time instants of the gait cycle can provide insight into the mechanical mechanisms of pathologies such as knee osteoarthritis. These results suggest that changes in frontal plane loading and alignment and the loading response phase of the gait cycle are characteristic of severe knee osteoarthritis gait patterns. Subsequent investigations earlier in the disease process may suggest the importance of these factors to the progression of knee osteoarthritis.
机译:背景。膝骨关节炎与许多相关的机械因素有关,这些因素可以通过步态分析进行测量。步态分析可得出大量数据。由于这些措施具有相关的多维性质,因此难以分析这些数据。方法。使用了使用两种多元统计技术(主成分分析和判别分析)的多维模型来区分正常受试者组和骨关节炎受试者组的步态模式。分析中包括九种时变步态测度和八种离散测度。度量之间和度量内部的所有相互关系都保留在分析中。发现。多维分析技术成功地将正常和膝盖骨关节炎受试者的步态模式分离,误分类错误率<6%。最有区别的功能描述了静态和动态对齐因子。第二个最有区别的特征是在步态周期的负荷响应阶段中的步态模式变化。解释。步态测量之间以及步态周期的各个时刻之间的相互关系可以提供对诸如膝盖骨关节炎之类的病理机制的洞察力。这些结果表明,额叶面负荷和对准的变化以及步态周期的负荷响应阶段是严重膝骨关节炎步态模式的特征。在疾病过程的早期进行的后续研究可能表明这些因素对膝关节骨关节炎的进展很重要。

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