基于区域生长运动跟踪的贝叶斯推理与局部多项式拟合增强三维超声应变弹性图

Shuojie Wen, Bo Peng, Hao Jiang, Junkai Cao, Jingfeng Jiang
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引用次数: 1

摘要

在一系列超声图像上准确跟踪大组织运动对许多临床应用至关重要,包括但不限于弹性成像、血流成像和超声引导运动补偿。然而,在3D中跟踪体内大组织变形是一个具有挑战性的问题,需要进一步发展。在本研究中,我们探索了一种将贝叶斯推理与局部多项式拟合相结合的新颖跟踪策略。由于该策略被整合到区域增长块匹配运动跟踪框架中,我们将该策略称为贝叶斯区域增长运动跟踪与局部多项式拟合(BRGMTLPF)算法。更具体地说,与传统的块匹配算法不同,我们使用最大后验概率密度函数来确定“正确”的三维位移向量。采用组织模拟模型和病理证实的人乳腺肿瘤超声数据对提出的BRGMT-LPF算法进行了评估。体内超声数据使用三维全乳超声扫描仪获取,而组织模拟假体使用实验性CMUT超声换能器获取。为了验证贝叶斯推理与局部多项式拟合相结合的有效性,将该方法与原始的区域增长运动跟踪算法(RGMT)、仅含贝叶斯干扰的区域增长算法(BRGMT)和局部多项式拟合的区域增长算法(RGMT- lpf)进行了比较。实验结果表明,BRGMT-LPF算法可以提高运动跟踪的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmenting 3D Ultrasound Strain Elastography by combining Bayesian inference with local Polynomial fitting in Region-growing-based Motion Tracking
Accurately tracking large tissue motion over a sequence of ultrasound images is critically important to several clinical applications including, but not limited to, elastography, flow imaging, and ultrasound-guided motion compensation. However, tracking in vivo large tissue deformation in 3D is a challenging problem and requires further developments. In this study, we explore a novel tracking strategy that combines Bayesian inference with local polynomial fitting. Since this strategy is incorporated into a region-growing block-matching motion tracking framework we call this strategy a Bayesian region-growing motion tracking with local polynomial fitting (BRGMTLPF) algorithm. More specifically, unlike a conventional block-matching algorithm, we use a maximum posterior probability density function to determine the “correct” three-dimensional displacement vector.The proposed BRGMT-LPF algorithm was evaluated using a tissue-mimicking phantom and ultrasound data acquired from a pathologically-confirmed human breast tumor. The in vivo ultrasound data was acquired using a 3D whole breast ultrasound scanner, while the tissue-mimicking phantom was acquired using an experimental CMUT ultrasound transducer. To demonstrate the effectiveness of combining Bayesian inference with local Polynomial fitting, the proposed method was compared to the original region-growing motion tracking algorithm (RGMT), region-growing with Bayesian interference only (BRGMT), and region-growing with local polynomial fitting (RGMT-LPF). Our preliminary data demonstrate that the proposed BRGMT-LPF algorithm can improve the accuracy of motion tracking.
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