Tong Qianqian, Yuan Zhiyong, Zheng Mianlun, Liao Xiangyun, Zhu Weixu, Zhang Guian
School of Computer, Wuhan University, Wuhan 430072, China.
School of Computer, Wuhan University, Wuhan 430072, China.
Genomics Proteomics Bioinformatics. 2017 Dec;15(6):371-380. doi: 10.1016/j.gpb.2017.09.003. Epub 2017 Dec 13.
The elastic parameters of soft tissues are important for medical diagnosis and virtual surgery simulation. In this study, we propose a novel nonlinear parameter estimation method for soft tissues. Firstly, an in-house data acquisition platform was used to obtain external forces and their corresponding deformation values. To provide highly precise data for estimating nonlinear parameters, the measured forces were corrected using the constructed weighted combination forecasting model based on a support vector machine (WCFM_SVM). Secondly, a tetrahedral finite element parameter estimation model was established to describe the physical characteristics of soft tissues, using the substitution parameters of Young's modulus and Poisson's ratio to avoid solving complicated nonlinear problems. To improve the robustness of our model and avoid poor local minima, the initial parameters solved by a linear finite element model were introduced into the parameter estimation model. Finally, a self-adapting Levenberg-Marquardt (LM) algorithm was presented, which is capable of adaptively adjusting iterative parameters to solve the established parameter estimation model. The maximum absolute error of our WCFM_SVM model was less than 0.03 Newton, resulting in more accurate forces in comparison with other correction models tested. The maximum absolute error between the calculated and measured nodal displacements was less than 1.5 mm, demonstrating that our nonlinear parameters are precise.
软组织的弹性参数对于医学诊断和虚拟手术模拟至关重要。在本研究中,我们提出了一种针对软组织的新型非线性参数估计方法。首先,使用一个内部数据采集平台来获取外力及其相应的变形值。为了为估计非线性参数提供高精度数据,利用基于支持向量机构建的加权组合预测模型(WCFM_SVM)对测量力进行校正。其次,建立了一个四面体有限元参数估计模型来描述软组织的物理特性,使用杨氏模量和泊松比的替代参数以避免求解复杂的非线性问题。为了提高我们模型的鲁棒性并避免局部极小值不佳的情况,将线性有限元模型求解的初始参数引入到参数估计模型中。最后,提出了一种自适应列文伯格 - 马夸尔特(LM)算法,该算法能够自适应地调整迭代参数以求解所建立的参数估计模型。我们的WCFM_SVM模型的最大绝对误差小于0.03牛顿,与测试的其他校正模型相比,得到的力更准确。计算得到的节点位移与测量值之间的最大绝对误差小于1.5毫米,表明我们的非线性参数是精确的。