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Multimodal medical imaging (CT and dynamic MRI) data and computer-graphics multi-physical model for the estimation of patient specific lumbar spine muscle forces

机译:多模态医学成像(CT和动态MRI)数据和计算机图形学多物理模型,用于估计患者特定的腰椎肌肉力量

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Computer-graphics multi-physical model has been used to assist the clinician in their decision-making processes. In particular, patient specific musculoskeletal modeling using medical imaging data and physical laws has demonstrated great potential for future clinical analysis of the lumbar spine. The main objective of this present work was to propose a data-driven modeling workflow to create computer-graphics multi-physical model from multimodal medical imaging data to extract useful clinical simulation knowledge leading to better diagnosis and treatment of human diseases such as low back pain. Computed Tomography (CT) data and tissue-based physical laws were used to create geometries as well as to compute full patient specific anthropometrical properties of a patient specific multi-physical lumbar spine model. Kinematical range of motion and spinal curvatures were derived from in vivo dynamic MRI. Then, these multimodal data were combined into the developed model to estimate the lumbar spine muscle forces using inverse dynamics and static optimization. Finally, kinematic behavior of the developed model was evaluated. As results, maximal estimated forces of all muscle groups range from 3 to 40 N for hyperlordosis motion. The higher muscle forces were estimated in iliocostalis lumborum pars lumborum muscle group. The simulated spinal curvatures ranging from 2.7909 to 3.1745 (1/m) are within the range of values (from 2.02 to 9.6142 (1/m)) measured from in vivo dynamic MRI. This study suggested that multimodal medical imaging data derived from CT and dynamic MRI could be of great interest in the development of computer-graphics multi-physical model as well as in the estimation of kinematical ranges of motion, their evaluation and muscle forces for biomechanical applications. (C) 2015 Elsevier B.V. All rights reserved.
机译:计算机图形学的多物理模型已用于协助临床医生的决策过程。特别是,使用医学成像数据和物理定律对患者进行特定的骨骼肌肉建模已显示出对未来腰椎临床分析的巨大潜力。本工作的主要目的是提出一种数据驱动的建模工作流程,以从多模式医学影像数据中创建计算机图形多物理模型,以提取有用的临床模拟知识,从而更好地诊断和治疗人类疾病,例如腰痛。计算机断层扫描(CT)数据和基于组织的物理定律用于创建几何形状,并计算患者特定的多物理性腰椎模型的完整患者特定的人体测量学特性。运动和脊柱弯曲的运动学范围来自体内动态MRI。然后,将这些多模态数据组合到已开发的模型中,以使用逆向动力学和静态优化来估计腰椎肌肉力量。最后,评估了开发模型的运动学行为。结果,对于超汗病运动,所有肌肉群的最大估计力为3至40N。估计i肌腰肌组肌肉力量更高。从体内动态MRI测得的2.7909至3.1745(1 / m)范围内的模拟脊柱曲率在值范围内(从2.02至9.6142(1 / m))。这项研究表明,从CT和动态MRI获得的多峰医学影像数据可能对计算机图形学的多物理模型的开发以及运动的运动范围的估计,其评估和用于生物力学应用的肌肉力具有极大的兴趣。 。 (C)2015 Elsevier B.V.保留所有权利。

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