通过基于物理信息的神经网络全横波反演揭示软组织声辐射力的隐藏特征

IF 6 2区 工程技术 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Zhaoyi Zhang , Shiyu Ma , Ziying Yin , Jing Qiu , Zhongtao Hu , Guo-Yang Li , Xi-Qiao Feng , Yanping Cao
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引用次数: 0

摘要

聚焦超声(FUS)机械效应的治疗效果在很大程度上取决于声辐射力(ARF)的空间定位、强度分布和力场几何形状等关键特征的精确控制。然而,生物组织的异质性给定量ARF表征带来了持续的挑战。在这里,我们报告了一种新的方法,通过利用其力学后果,特别是软组织中ARF产生的剪切波,来量化聚焦ARF的特征。在我们的方法中,依靠深度神经网络进行全横波反演(FSWI),以重建ARF活动时原本无法进入的横波运动。通过将波动方程的物理约束集成到深度神经网络中,我们的方法对噪声具有显著的鲁棒性,并且在推断聚焦ARF的特征方面具有优越的泛化能力。通过数值模拟和组织模拟实验对该方法进行了验证。结果表明,我们的方法能够可靠地评估ARF焦点位置,精确地绘制焦点区域几何形状的空间映射,并合理地量化ARF震级,这是以往方法无法实现的。我们的方法提高了治疗计划的准确性,同时实现了动态术中治疗跟踪,从而可以促进FUS在不同临床环境中的使用,包括经颅超声(TUS)神经调节和内源性免疫反应的刺激。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling hidden features of acoustic radiation forces in soft tissues via physics-informed neural network-based full shear wave inversion
The therapeutic efficacy employing mechanical effect of focused ultrasound (FUS) largely depends on precise control of the key features of acoustic radiation force (ARF) including spatial localization, magnitude distribution, and force field geometry. However, the heterogeneous nature of biological tissues poses persistent challenges in quantitative ARF characterization. Here, we report a novel methodology for quantifying focused ARF features by leveraging its mechanical consequences, specifically the shear waves generated by ARF in soft tissues. In our method, full shear wave inversion (FSWI) relying on a deep neural network is performed to reconstruct the otherwise inaccessible shear wave motions when the ARF is active. By integrating physical constraints from wave equations into the deep neural network, our method demonstrates remarkable robustness against noise and superior generalization capabilities in inferring the features of focused ARF. Numerical simulations and tissue-mimicking phantom experiments have been performed to validate this method. The results demonstrate that our approach enables reliable assessment of the ARF focal position, precise spatial mapping of the focal zone geometry, and reasonable quantification of ARF magnitude, which were not achievable with previous methods. Our method enhances precision in treatment planning while enabling dynamic intraoperative therapy tracking, thereby may promote the use of FUS across diverse clinical settings, including transcranial ultrasound (TUS) neuromodulation and the stimulation of endogenous immune responses.
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来源期刊
Journal of The Mechanics and Physics of Solids
Journal of The Mechanics and Physics of Solids 物理-材料科学:综合
CiteScore
9.80
自引率
9.40%
发文量
276
审稿时长
52 days
期刊介绍: The aim of Journal of The Mechanics and Physics of Solids is to publish research of the highest quality and of lasting significance on the mechanics of solids. The scope is broad, from fundamental concepts in mechanics to the analysis of novel phenomena and applications. Solids are interpreted broadly to include both hard and soft materials as well as natural and synthetic structures. The approach can be theoretical, experimental or computational.This research activity sits within engineering science and the allied areas of applied mathematics, materials science, bio-mechanics, applied physics, and geophysics. The Journal was founded in 1952 by Rodney Hill, who was its Editor-in-Chief until 1968. The topics of interest to the Journal evolve with developments in the subject but its basic ethos remains the same: to publish research of the highest quality relating to the mechanics of solids. Thus, emphasis is placed on the development of fundamental concepts of mechanics and novel applications of these concepts based on theoretical, experimental or computational approaches, drawing upon the various branches of engineering science and the allied areas within applied mathematics, materials science, structural engineering, applied physics, and geophysics. The main purpose of the Journal is to foster scientific understanding of the processes of deformation and mechanical failure of all solid materials, both technological and natural, and the connections between these processes and their underlying physical mechanisms. In this sense, the content of the Journal should reflect the current state of the discipline in analysis, experimental observation, and numerical simulation. In the interest of achieving this goal, authors are encouraged to consider the significance of their contributions for the field of mechanics and the implications of their results, in addition to describing the details of their work.
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