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一种用于快速识别异质软组织杨氏模量的无力传感器方法。

A Force-Sensor-Less Approach for Rapid Young's Modulus Identification of Heterogeneous Soft Tissue.

作者信息

Wang Zhen, Xu Tian, Shen Mengruo, Lei Yong

机构信息

State Key Laboratory of Fluid Power and Mechatronic Systems, Department of Mechanical Engineering, Zhejiang University, Hangzhou 315000, China.

出版信息

J Biomech Eng. 2025 Apr 1;147(4). doi: 10.1115/1.4067735.

Abstract

Due to individual differences, accurate identification of tissue elastic parameters is essential for biomechanical modeling in surgical guidance for hepatic venous injections. This paper aims to acquire the absolute Young's modulus of heterogeneous soft tissues during endoscopic surgery with two-dimensional (2D) ultrasound images. First, we introduced a force-sensor-less approach that utilizes a precalibrated soft patch with a known Young's modulus and its ultrasound images to calculate the external forces exerted by the probe on the tissue. Second, we introduced a Kriging-based inverse algorithm to identify the relative Young's modulus (RYM) between the inclusion and the background tissue. The RYM was estimated based on 2D plane strain approximation and mapped to the RYM of three-dimensional (3D) soft tissue through a trained Kriging model. Finally, we developed a direct method to identify the background Young's modulus (BYM) based on calculated external forces and RYM. The simulation results demonstrate the high efficiency and robustness of the Kriging-based inverse algorithm in identifying RYM. Physical experiments on the three phantoms show that the errors of the identified BYM and RYM are all below 15%. The proposed methodology for Young's modulus identification is feasible and achieves satisfactory accuracy and computational efficiency in both simulations and physical experiments.

摘要

由于个体差异,准确识别组织弹性参数对于肝静脉注射手术指导中的生物力学建模至关重要。本文旨在利用二维(2D)超声图像在内镜手术中获取异质软组织的绝对杨氏模量。首先,我们引入了一种无测力传感器的方法,该方法利用具有已知杨氏模量的预校准软贴片及其超声图像来计算探头对组织施加的外力。其次,我们引入了一种基于克里金法的反演算法来识别内含物与背景组织之间的相对杨氏模量(RYM)。基于二维平面应变近似估计RYM,并通过训练好的克里金模型将其映射到三维(3D)软组织的RYM。最后,我们开发了一种直接方法,基于计算出的外力和RYM来识别背景杨氏模量(BYM)。仿真结果表明基于克里金法的反演算法在识别RYM方面具有高效性和鲁棒性。对三种体模进行的物理实验表明,识别出的BYM和RYM的误差均低于15%。所提出的杨氏模量识别方法是可行的,并且在仿真和物理实验中均实现了令人满意的精度和计算效率。

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