A new approach to ultrasonic elasticity imaging

Cameron Hoerig, J. Ghaboussi, M. Fatemi, M. Insana
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引用次数: 6

Abstract

Biomechanical properties of soft tissues can provide information regarding the local health status. Often the cells in pathological tissues can be found to form a stiff extracellular environment, which is a sensitive, early diagnostic indicator of disease. Quasi-static ultrasonic elasticity imaging provides a way to image the mechanical properties of tissues. Strain images provide a map of the relative tissue stiffness, but ambiguities and artifacts limit its diagnostic value. Accurately mapping intrinsic mechanical parameters of a region may increase diagnostic specificity. However, the inverse problem, whereby force and displacement estimates are used to estimate a constitutive matrix, is ill conditioned. Our method avoids many of the issues involved with solving the inverse problem, such as unknown boundary conditions and incomplete information about the stress field, by building an empirical model directly from measured data. Surface force and volumetric displacement data gathered during imaging are used in conjunction with the AutoProgressive method to teach artificial neural networks the stress-strain relationship of tissues. The Autoprogressive algorithm has been successfully used in many civil engineering applications and to estimate ocular pressure and corneal stiffness; here, we are expanding its use to any tissues imaged ultrasonically. We show that force-displacement data recorded with an ultrasound probe and displacements estimated at a few points in the imaged region can be used to estimate the full stress and strain vectors throughout an entire model while only assuming conservation laws. We will also demonstrate methods to parameterize the mechanical properties based on the stress-strain response of trained neural networks. This method is a fundamentally new approach to medical elasticity imaging that for the first time provides full stress and strain vectors from one set of observation data.
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超声弹性成像的一种新方法
软组织的生物力学特性可以提供有关局部健康状况的信息。通常可以发现病理组织中的细胞形成僵硬的细胞外环境,这是疾病的敏感、早期诊断指标。准静态超声弹性成像为组织的力学特性成像提供了一种方法。应变图像提供了相对组织刚度的图,但模糊性和伪影限制了其诊断价值。准确地绘制一个区域的内在力学参数可以增加诊断的特异性。然而,用力和位移估计来估计本构矩阵的反问题是病态的。我们的方法通过直接从测量数据建立经验模型,避免了求解反问题所涉及的许多问题,例如未知的边界条件和应力场信息不完整。在成像过程中收集的表面力和体积位移数据与AutoProgressive方法结合使用,向人工神经网络教授组织的应力-应变关系。自渐进算法已成功地用于许多土木工程应用和估计眼压和角膜刚度;在这里,我们将其应用扩展到超声成像的任何组织。我们表明,用超声探头记录的力-位移数据和在成像区域的几个点估计的位移可以用来估计整个模型的全部应力和应变矢量,而只假设守恒定律。我们还将演示基于训练神经网络的应力-应变响应参数化力学性能的方法。这种方法是医学弹性成像的一种全新方法,首次从一组观察数据中提供完整的应力和应变向量。
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