State Key Laboratory of Modern Optical Instrumentation, Department of Optical Engineering, Zhejiang University, Hangzhou, China.
Biomed Eng Online. 2013 Aug 10;12:79. doi: 10.1186/1475-925X-12-79.
The convectional strain-based algorithm has been widely utilized in clinical practice. It can only provide the information of relative information of tissue stiffness. However, the exact information of tissue stiffness should be valuable for clinical diagnosis and treatment.
In this study we propose a reconstruction strategy to recover the mechanical properties of the tissue. After the discrepancies between the biomechanical model and data are modeled as the process noise, and the biomechanical model constraint is transformed into a state space representation the reconstruction of elasticity can be accomplished through one filtering identification process, which is to recursively estimate the material properties and kinematic functions from ultrasound data according to the minimum mean square error (MMSE) criteria. In the implementation of this model-based algorithm, the linear isotropic elasticity is adopted as the biomechanical constraint. The estimation of kinematic functions (i.e., the full displacement and velocity field), and the distribution of Young's modulus are computed simultaneously through an extended Kalman filter (EKF).
In the following experiments the accuracy and robustness of this filtering framework is first evaluated on synthetic data in controlled conditions, and the performance of this framework is then evaluated in the real data collected from elastography phantom and patients using the ultrasound system. Quantitative analysis verifies that strain fields estimated by our filtering strategy are more closer to the ground truth. The distribution of Young's modulus is also well estimated. Further, the effects of measurement noise and process noise have been investigated as well.
The advantage of this model-based algorithm over the conventional strain-based algorithm is its potential of providing the distribution of elasticity under a proper biomechanical model constraint. We address the model-data discrepancy and measurement noise by introducing process noise and measurement noise in our framework, and then the absolute values of Young's modulus are estimated through the EFK in the MMSE sense. However, the initial conditions, and the mesh strategy will affect the performance, i.e., the convergence rate, and computational cost, etc.
传统的基于应变的算法已在临床实践中得到广泛应用。它只能提供组织刚度的相对信息。然而,组织刚度的确切信息对于临床诊断和治疗应该是有价值的。
在这项研究中,我们提出了一种重建策略来恢复组织的力学性能。在将生物力学模型和数据之间的差异建模为过程噪声之后,并将生物力学模型约束转换为状态空间表示,通过一个滤波识别过程就可以完成弹性的重建,这是根据最小均方误差(MMSE)准则从超声数据递归估计材料特性和运动学函数。在这个基于模型的算法的实现中,采用线性各向同性弹性作为生物力学约束。通过扩展卡尔曼滤波器(EKF)同时估计运动学函数(即完整位移和速度场)和杨氏模量分布。
在以下实验中,首先在受控条件下对合成数据评估了该滤波框架的准确性和鲁棒性,然后使用超声系统从弹性体体模和患者采集的真实数据评估了该框架的性能。定量分析验证了我们的滤波策略估计的应变场更接近真实值。杨氏模量的分布也得到了很好的估计。此外,还研究了测量噪声和过程噪声的影响。
与传统的基于应变的算法相比,该基于模型的算法的优势在于它能够在适当的生物力学模型约束下提供弹性分布。通过在我们的框架中引入过程噪声和测量噪声,我们解决了模型-数据差异和测量噪声问题,然后通过 EFK 在 MMSE 意义上估计杨氏模量的绝对值。然而,初始条件和网格策略会影响性能,即收敛速度和计算成本等。