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Improved Rubin-Bodner Model for the Prediction of Soft Tissue Deformations

机译:改进的Rubin-Bodner模型用于预测软组织变形

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摘要

In craniomaxillofacial (CMF) surgery, a reliable way of simulating the soft tissue deformation resulted from skeletal reconstruction is vitally important for preventing the risks of facial distortion postoperatively. However, it is difficult to simulate the soft tissue behaviors affected by different types of CMF surgery. This study presents an integrated bio-mechanical and statistical learning model to improve accuracy and reliability of predictions on soft facial tissue behavior. The Rubin-Bodner (RB) model is initially used to describe the biomechanical behavior of the soft facial tissue. Subsequently, a finite element model (FEM) computers the stress of each node in soft facial tissue mesh data resulted from bone displacement. Next, the Generalized Regression Neural Network (GRNN) method is implemented to obtain the relationship between the facial soft tissue deformation and the stress distribution corresponding to different CMF surgical types and to improve evaluation of elastic parameters included in the RB model. Therefore, the soft facial tissue deformation can be predicted by biomechanical properties and statistical model. Leave-one-out cross-validation is used on eleven patients. As a result, the average prediction error of our model (0.7035mm) is lower than those resulting from other approaches. It also demonstrates that the more accurate bio-mechanical information the model has, the better prediction performance it could achieve.
机译:在颅颌面外科(CMF)手术中,模拟骨骼重建导致的软组织变形的可靠方法对于预防术后出现面部畸变的风险至关重要。但是,很难模拟受不同类型的CMF手术影响的软组织行为。这项研究提出了一个综合的生物力学和统计学习模型,以提高对面部软组织行为预测的准确性和可靠性。 Rubin-Bodner(RB)模型最初用于描述面部软组织的生物力学行为。随后,有限元模型(FEM)将骨骼位移导致的面部软组织网格数据中每个节点的应力计算机化。接下来,实施广义回归神经网络(GRNN)方法以获得与不同CMF手术类型相对应的面部软组织变形与应力分布之间的关系,并改善RB模型中包含的弹性参数的评估。因此,可以通过生物力学特性和统计模型来预测面部软组织的变形。留一法交叉验证用于11位患者。结果,我们模型的平均预测误差(0.7035mm)低于其他方法产生的预测误差。它还表明,模型拥有的生物力学信息越准确,其可获得的预测性能就越好。

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