A Method for the Reconstruction of Myocardial Fiber Structure in Diffusivity Adaptive Imaging Based on Particle Filter

Jun Yin, Xuan Gao, Min Wu, Yan Liang
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Abstract

In order to explore the cause of characteristic change and pathological variation of myocardial fiber structure, the posterior probability distribution of fiber direction was described. To solve the problems of low computational efficiency and slow convergence of traditional particle filter, an adaptive particle filter myocardial fiber reconstruction algorithm based on diffusion anisotropy is proposed. This algorithm dynamically adjusts the number of particles and the disturbance intensity at the prediction stage according to the diffusion anisotropy values at different body elements. While ensuring the quality of state estimation, the computational complexity of the algorithm is reduced and the operating efficiency of the system is significantly improved. The experimental results show that the proposed method has strong anti-noise ability. While improving the accuracy of fiber reconstruction, the computational cost of the system decreases by 50%, which significantly improves the efficiency of the system. The proposed algorithm is good over traditional PF and STL approaches.
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一种基于粒子滤波的扩散率自适应成像心肌纤维结构重建方法
为了探讨心肌纤维结构特征变化和病理变异的原因,描述了纤维方向的后验概率分布。针对传统粒子滤波计算效率低、收敛速度慢的问题,提出了一种基于扩散各向异性的自适应粒子滤波心肌纤维重建算法。该算法根据不同体元处的扩散各向异性值动态调整预测阶段的粒子数和扰动强度。在保证状态估计质量的同时,降低了算法的计算复杂度,显著提高了系统的运行效率。实验结果表明,该方法具有较强的抗噪能力。在提高光纤重构精度的同时,系统的计算成本降低了50%,显著提高了系统的效率。该算法优于传统的PF和STL方法。
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