针刺软组织变形场重建的无网格法

Jingtao Chen, Zeng Lin, Shoujun Zhou, Tiexiang Wen, Quan Zeng
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摘要

目的:软组织内的变形场有助于预测和跟踪针入针的具体目标。有限元(FE)提供了一种无传感器的方法来重建软组织内部的变形场。但由于模型网格划分耗时长,难以实现插针过程中的自动重建。本工作的目的是提出一种能够自动重建大变形软组织在插针过程中的变形场的数值方法。方法:采用再现核粒子法(RKPM),实时获取位移和力边界条件,重建软组织的变形和应力场。采用节点劈裂机制模拟组织裂纹。验证实验包括用带有针的机械臂刺穿硅胶假体。结果:在插入深度为12mm、24mm、36mm和40mm时,重建位移与实验测量值接近,平均误差分别为0.15mm、0.30mm、0.63mm和0.55mm。重构数据的节点数分别为88.9%、50%、16.7%和27.8%,绝对误差小于0.3mm(2像素)。揭示了硅模型的应力松弛现象,并可用来定性地解释重构误差。Von-mises应力场也被记录在x射线图像中。结论:所提出的基于无网格的方法对于大变形器官内部的变形场重建具有可接受的精度。
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A Meshfree Method for Deformation Field Reconstruction of Soft Tissue in Needle Insertion
Objective: The deformation field inside the soft tissue is useful to predict and track the specific target of needle insertion. Finite element (FE) provides a sensorless way to reconstruct the deformation field inside soft tissue. However, the time-consuming model meshing makes it difficult to automate the reconstruction during needle insertion operation. The purpose of this work is to present a numerical method that can automatically reconstruction of deformation field of large-deformed soft tissue during needle insertion. Methods: Reproducing kernel particle method (RKPM) was used to reconstruct the deformation and stress field of soft tissue with real-time acquired displacement and force boundary conditions. The tissue crack was simulated by employing a node split mechanism. The validation experiment involves puncturing a silicone phantom with a robotic arm integrated with a needle. Results: The reconstructed displacements approach the experimental measurements with the average error of 0.15mm, 0.30mm, 0.63mm, and 0.55mm respectively at 12mm, 24mm, 36mm, and 40mm insertion depths. The reconstructed data have respectively 88.9%, 50%, 16.7%, and 27.8% nodes with an absolute error of less than 0.3mm (2 pixels). The stress relaxation of the silicon model has been revealed and be used to qualitatively explain the reconstruction error. Von-mises stress field has been also presented and registered into the X-ray image. Conclusion: The proposed meshfree-based method has acceptable accuracy for reconstructing the deformation field inside the large-deformed organ.
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