Silva Elisabete, Parente Marco, Brandão Sofia, Mascarenhas Teresa, Natal Jorge Renato
LAETA, INEGI, Faculty of Engineering, University of Porto, Rua Roberto Frias s/n, Porto 4200-465, Portugal e-mail: .
Department of Radiology, CHSJ-EPE/Faculty of Medicine, University of Porto, Hernâni Monteiro, Porto 4200-319, Portugal e-mail: .
J Biomech Eng. 2019 Jan 1;141(1). doi: 10.1115/1.4041524.
To better understand the disorders in the pelvic cavity associated with the pelvic floor muscles (PFM) using computational models, it is fundamental to identify the biomechanical properties of these muscles. For this purpose, we implemented an optimization scheme, involving a genetic algorithm (GA) and an inverse finite element analysis (FEA), in order to estimate the material properties of the pubovisceralis muscle (PVM). The datasets of five women were included in this noninvasive analysis. The numerical models of the PVM were built from static axial magnetic resonance (MR) images, and the hyperplastic Mooney-Rivlin constitutive model was used. The material parameters obtained were compared with the ones established through a similar optimization scheme, using Powell's algorithm. To validate the values of the material parameters that characterize the passive behavior of the PVM, the displacements obtained via the numerical models with both methods were compared with dynamic MR images acquired during Valsalva maneuver. The material parameters (c1 and c2) were higher for the GA than for Powell's algorithm, but when comparing the magnitude of the displacements in millimeter of the PVM, there was only a 5% difference, and 4% for the principal logarithmic strain. The GA allowed estimating the in vivo biomechanical properties of the PVM of different subjects, requiring a lower number of simulations when compared to Powell's algorithm.
为了使用计算模型更好地理解与盆底肌肉(PFM)相关的盆腔疾病,识别这些肌肉的生物力学特性至关重要。为此,我们实施了一种优化方案,该方案涉及遗传算法(GA)和逆有限元分析(FEA),以估计耻骨内脏肌(PVM)的材料特性。该无创分析纳入了五名女性的数据集。PVM的数值模型由静态轴向磁共振(MR)图像构建,并使用了超弹性Mooney-Rivlin本构模型。将获得的材料参数与通过类似优化方案、使用鲍威尔算法建立的参数进行比较。为了验证表征PVM被动行为的材料参数值,将通过两种方法的数值模型获得的位移与瓦尔萨尔瓦动作期间采集的动态MR图像进行比较。GA得到的材料参数(c1和c2)比鲍威尔算法的更高,但在比较PVM以毫米为单位的位移大小时,差异仅为5%,主对数应变为4%。与鲍威尔算法相比,GA能够估计不同受试者PVM的体内生物力学特性,且所需的模拟次数更少。