Lerchl Tanja, El Husseini Malek, Bayat Amirhossein, Sekuboyina Anjany, Hermann Luis, Nispel Kati, Baum Thomas, Löffler Maximilian T, Senner Veit, Kirschke Jan S
Associate Professorship of Sport Equipment and Sport Materials, School of Engineering and Design, Technical University of Munich, Munich, Germany.
Department of Diagnostic and Interventional Neuroradiology, School of Medicine, Klinikum rechts der Isar, Technical University of Munich, Munich, Germany.
Front Bioeng Biotechnol. 2022 Jul 11;10:862804. doi: 10.3389/fbioe.2022.862804. eCollection 2022.
Chronic back pain is a major health problem worldwide. Although its causes can be diverse, biomechanical factors leading to spinal degeneration are considered a central issue. Numerical biomechanical models can identify critical factors and, thus, help predict impending spinal degeneration. However, spinal biomechanics are subject to significant interindividual variations. Therefore, in order to achieve meaningful findings on potential pathologies, predictive models have to take into account individual characteristics. To make these highly individualized models suitable for systematic studies on spinal biomechanics and clinical practice, the automation of data processing and modeling itself is inevitable. The purpose of this study was to validate an automatically generated patient-specific musculoskeletal model of the spine simulating static loading tasks. CT imaging data from two patients with non-degenerative spines were processed using an automated deep learning-based segmentation pipeline. In a semi-automated process with minimal user interaction, we generated patient-specific musculoskeletal models and simulated various static loading tasks. To validate the model, calculated vertebral loadings of the lumbar spine and muscle forces were compared with data from the literature. Finally, results from both models were compared to assess the potential of our process for interindividual analysis. Calculated vertebral loads and muscle activation overall stood in close correlation with data from the literature. Compression forces normalized to upright standing deviated by a maximum of 16% for flexion and 33% for lifting tasks. Interindividual comparison of compression, as well as lateral and anterior-posterior shear forces, could be linked plausibly to individual spinal alignment and bodyweight. We developed a method to generate patient-specific musculoskeletal models of the lumbar spine. The models were able to calculate loads of the lumbar spine for static activities with respect to individual biomechanical properties, such as spinal alignment, bodyweight distribution, and ligament and muscle insertion points. The process is automated to a large extent, which makes it suitable for systematic investigation of spinal biomechanics in large datasets.
慢性背痛是全球范围内的一个主要健康问题。尽管其病因可能多种多样,但导致脊柱退变的生物力学因素被认为是核心问题。数值生物力学模型可以识别关键因素,从而有助于预测即将发生的脊柱退变。然而,脊柱生物力学存在显著的个体间差异。因此,为了在潜在病理方面获得有意义的发现,预测模型必须考虑个体特征。为了使这些高度个体化的模型适用于脊柱生物力学的系统研究和临床实践,数据处理和建模本身的自动化是不可避免的。本研究的目的是验证一个自动生成的模拟静态负荷任务的患者特异性脊柱肌肉骨骼模型。使用基于深度学习的自动化分割流程处理了两名非退变脊柱患者的CT成像数据。在一个用户交互最少的半自动过程中,我们生成了患者特异性的肌肉骨骼模型,并模拟了各种静态负荷任务。为了验证模型,将计算得到的腰椎椎体负荷和肌肉力量与文献数据进行了比较。最后,比较了两个模型的结果,以评估我们的方法进行个体间分析的潜力。计算得到的椎体负荷和肌肉激活总体上与文献数据密切相关。相对于直立站立时归一化的压缩力,屈曲时最大偏差为16%,举重任务时为33%。压缩力以及横向和前后剪切力的个体间比较可以合理地与个体脊柱排列和体重相关联。我们开发了一种生成腰椎患者特异性肌肉骨骼模型的方法。这些模型能够根据个体生物力学特性,如脊柱排列、体重分布以及韧带和肌肉附着点,计算静态活动时腰椎的负荷。该过程在很大程度上是自动化的,这使其适用于对大型数据集中脊柱生物力学的系统研究。