Department of Orthopaedic Surgery, Duke University School of Medicine, Durham, NC 27710, United States; Department of Biomedical Engineering, Duke University, Durham, NC 27708, United States.
Department of Orthopaedic Surgery, Duke University School of Medicine, Durham, NC 27710, United States.
J Biomech. 2021 Dec 2;129:110771. doi: 10.1016/j.jbiomech.2021.110771. Epub 2021 Sep 27.
Changes in cartilage structure and composition are commonly observed during the progression of osteoarthritis (OA). Importantly, quantitative magnetic resonance imaging (MRI) methods, such as T1rho relaxation imaging, can noninvasively provide in vivo metrics that reflect changes in cartilage composition and therefore have the potential for use in early OA detection. Changes in cartilage mechanical properties are also hallmarks of OA cartilage; thus, measurement of cartilage mechanical properties may also be beneficial for earlier OA detection. However, the relative predictive ability of compositional versus mechanical properties in detecting OA has yet to be determined. Therefore, we developed logistic regression models predicting OA status in an ex vivo environment using several mechanical and compositional metrics to assess which metrics most effectively predict OA status. Specifically, in this study the compositional metric analyzed was the T1rho relaxation time, while the mechanical metrics analyzed were the stiffness and recovery (defined as a measure of how quickly cartilage returns to its original shape after loading) of the cartilage. Cartilage recovery had the best predictive ability of OA status both alone and in a multivariate model including the T1rho relaxation time. These findings highlight the potential of cartilage recovery as a non-invasive marker of in vivo cartilage health and motivate future investigation of this metric clinically.
在骨关节炎(OA)的进展过程中,软骨结构和成分的变化是常见的。重要的是,定量磁共振成像(MRI)方法,如 T1rho 弛豫成像,可以无创地提供反映软骨成分变化的体内指标,因此具有用于早期 OA 检测的潜力。软骨机械性能的变化也是 OA 软骨的特征;因此,测量软骨机械性能也可能有助于更早地发现 OA。然而,在检测 OA 方面,成分与机械性能的相对预测能力尚未确定。因此,我们开发了逻辑回归模型,使用几种机械和成分指标在体外环境中预测 OA 状态,以评估哪些指标最有效地预测 OA 状态。具体来说,在这项研究中,分析的成分指标是 T1rho 弛豫时间,而分析的机械指标是软骨的刚度和恢复(定义为衡量软骨在加载后恢复到原始形状的速度)。软骨恢复在单独以及包括 T1rho 弛豫时间的多变量模型中对 OA 状态具有最佳的预测能力。这些发现强调了软骨恢复作为体内软骨健康的非侵入性标志物的潜力,并促使未来对该指标进行临床研究。