A Roadmap to Holographic Focused Ultrasound Approaches to Generate Thermal Patterns

Ceren Cengiz, Zekeriya Ender Eger, Pinar Acar, Wynn Legon, Shima Shahab
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Abstract

In therapeutic focused ultrasound (FUS), such as thermal ablation and hyperthermia, effective acousto-thermal manipulation requires precise targeting of complex geometries, sound wave propagation through irregular structures and selective focusing at specific depths. Acoustic holographic lenses (AHLs) provide a distinctive capability to shape acoustic fields into precise, complex and multifocal FUS-thermal patterns. Acknowledging the under-explored potential of AHLs in shaping ultrasound-induced heating, this study introduces a roadmap for acousto-thermal modeling in the design of AHLs. Three primary modeling approaches are studied and contrasted using four distinct shape groups for the imposed target field. They include pressure-based (BSC-TR and ITER-TR), temperature-based (IHTO-TR), and machine learning (ML)-based (GaN and Feat-GAN) methods. New metrics including image quality, thermal efficiency, control, and computational time are introduced. The importance of evaluating target pattern complexity, thermal and pressure requirements, and computational resources is highlighted for selecting the appropriate methods. For lightly heterogeneous media and targets with lower pattern complexity, BSC-TR combined with error diffusion algorithms provides an effective solution. As pattern complexity increases, ITER-TR becomes more suitable, enabling optimization through iterative forward and backward propagations controlled by different error metrics. IHTO-TR is recommended for highly heterogeneous media, particularly in applications requiring thermal control and precise heat deposition. GaN is ideal for rapid solutions that account for acousto-thermal effects, especially when model parameters and boundary conditions remain constant. In contrast, Feat-GaN is effective for moderately complex shape groups and applications where model parameters must be adjusted.
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全息聚焦超声方法生成热模式路线图
在治疗性聚焦超声(FUS)中,例如热消融和热疗,有效的声热操纵需要精确瞄准复杂的几何形状、声波在不规则结构中传播以及在特定深度选择性聚焦。声全息透镜(AHL)具有将声场塑造成精确、复杂和多焦点 FUS 热模式的独特能力。考虑到 AHL 在塑造超声诱导加热方面的潜力尚未得到充分开发,本研究介绍了在设计 AHL 时进行声热建模的路线图。研究了三种主要建模方法,并使用四组不同的形状对施加的靶场进行了对比。它们包括基于压力(BSC-TR 和 ITER-TR)、基于温度(IHTO-TR)和基于机器学习(ML)(GaN 和 Feat-GAN)的方法。介绍了包括图像质量、热效率、控制和计算时间在内的新指标。评估目标模式复杂性、热和压力要求以及计算资源对于选择适当方法的重要性得到了强调。对于轻度异质介质和图案复杂度较低的目标,BSC-TR 结合错误扩散算法提供了有效的解决方案。随着图案复杂度的增加,ITER-TR 变得更加合适,它可以通过由不同误差度量控制的迭代前向和后向传播进行优化。对于高度异质介质,特别是需要热控制和精确热沉积的应用,建议使用 IHTO-TR。GaN 适用于考虑声热效应的快速求解,尤其是在模型参数和边界条件保持不变的情况下。相比之下,Feat-GaN 适用于中等复杂形状组和必须调整模型参数的应用。
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