Institute of Orthopedic Research and Biomechanics, Center for Trauma Research Ulm, Ulm University Medical Center, Ulm, Germany.
Spine Center, Schulthess Clinic, Zurich, Switzerland.
Comput Biol Med. 2024 Nov;182:109230. doi: 10.1016/j.compbiomed.2024.109230. Epub 2024 Oct 2.
Accurate identification of local changes in the biomechanical properties of the normal and degenerative meniscus is critical to better understand knee joint osteoarthritis onset and progression. Ex-vivo material characterization is typically performed on specimens obtained from different locations, compromising the tissue's structural integrity and thus altering its mechanical behavior. Therefore, the aim of this in-silico study was to establish a non-invasive method to determine the region-specific material properties of the degenerated human meniscus. In a previous experimental magnetic resonance imaging (MRI) study, the spatial displacement of the meniscus and its root attachments in mildly degenerated (n = 12) and severely degenerated (n = 12) cadaveric knee joints was determined under controlled subject-specific axial joint loading. To simulate the experimental response of the lateral and medial menisci, individual finite element models were created utilizing a transverse isotropic hyper-poroelastic constitutive material formulation. The superficial displacements were applied to the individual models to calculate the femoral reaction force in an inverse finite element analysis. During particle swarm optimization, the four most sensitive material parameters were varied to minimize the error between the femoral reaction force and the force applied in the MRI loading experiment. Individual global and regional parameter sets were identified. In addition to in-depth model verification, prediction errors were determined to quantify the reliability of the identified parameter sets. Both compressibility of the solid meniscus matrix (+141 %, p ≤ 0.04) and hydraulic permeability (+53 %, p ≤ 0.04) were significantly increased in the menisci of severely degenerated knees compared to mildly degenerated knees, irrespective of the meniscus region. By contrast, tensile and shear properties were unaffected by progressive knee joint degeneration. Overall, the optimization procedure resulted in reliable and robust parameter sets, as evidenced by mean prediction errors of <1 %. In conclusion, the proposed approach demonstrated high potential for application in clinical practice, where it might provide a non-invasive diagnostic tool for the early detection of osteoarthritic changes within the knee joint.
准确识别正常和退行性半月板生物力学特性的局部变化对于更好地理解膝关节骨关节炎的发病机制和进展至关重要。离体材料特性分析通常是在从不同位置获得的标本上进行的,这会损害组织的结构完整性,从而改变其力学性能。因此,本计算机模拟研究旨在建立一种非侵入性方法来确定退行性人半月板的区域特异性材料特性。在之前的一项实验性磁共振成像(MRI)研究中,在受控的特定于个体的轴向关节加载下,确定了轻度退行性(n=12)和重度退行性(n=12)尸体膝关节中半月板及其根部附着处的空间位移。为了模拟外侧和内侧半月板的实验响应,使用横向各向同性超多孔弹性本构材料公式创建了单独的有限元模型。将表面位移应用于各个模型,以在逆有限元分析中计算股骨反作用力。在粒子群优化过程中,变化了四个最敏感的材料参数,以最小化股骨反作用力和 MRI 加载实验中施加的力之间的误差。确定了个体全局和区域参数集。除了深入的模型验证外,还确定了预测误差以量化识别参数集的可靠性。与轻度退行性膝关节相比,严重退行性膝关节的半月板基质的可压缩性(+141%,p≤0.04)和液压渗透率(+53%,p≤0.04)均显著增加,与半月板区域无关。相比之下,渐进性膝关节退变对拉伸和剪切性能没有影响。总体而言,优化过程产生了可靠且稳健的参数集,平均预测误差<1%。综上所述,所提出的方法具有在临床实践中应用的巨大潜力,它可能为膝关节内骨关节炎变化的早期检测提供一种非侵入性诊断工具。