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利用超声射频回波信号的稀疏表达对聚焦超声照射引起的组织温度变化进行无创监测。

Noninvasive Monitoring of Tissue Temperature Changes Induced by Focused Ultrasound Exposure using Sparse Expression of Ultrasonic Radio Frequency Echo Signals.

作者信息

Malekzadeh Kiarash Behnam, Behnam Hamid, Tavakkoli Jahangir Jahan

机构信息

Department of Biomedical Engineering, School of Electrical Engineering, Iran University of Science and Technology, Tehran, Iran.

Department of Physics, Toronto Metropolitan University, Toronto, ON, Canada.

出版信息

J Med Signals Sens. 2024 Mar 27;14:8. doi: 10.4103/jmss.jmss_23_23. eCollection 2024.

Abstract

BACKGROUND

Noninvasive therapies such as focused ultrasound were developed to be used for cancer therapies, vessel bleeding, and drug delivery. The main purpose of focused ultrasound therapy is to affect regions of interest (ROI) of tissues without any injuries to surrounding tissues. In this regard, an appropriate monitoring method is required to control the treatment.

METHODS

This study is aimed to develop a noninvasive monitoring technique of focused ultrasound (US) treatment using sparse representation of US radio frequency (RF) echo signals. To this end, reasonable results in temperature change estimation in the tissue under focused US radiation were obtained by utilizing algorithms related to sparse optimization as orthogonal matching pursuit (OMP) and accompanying Shannon's entropy. Consequently, ex vivo tissue experimental tests yielded two datasets, including low-intensity focused US (LIFU) and high-intensity focused US (HIFU) data. The proposed processing method analyzed the ultrasonic RF echo signal and expressed it as a sparse signal and calculated the entropy of each frame.

RESULTS

The results indicated that the suggested approach could noninvasively estimate temperature changes between 37°C and 47°C during LIFU therapy. In addition, it represented temperature changes during HIFU ablation at various powers, ranging from 10 to 130 W. The normalized mean square error of the proposed method is 0.28, approximately 2.15 on previous related methods.

CONCLUSION

These results demonstrated that this novel proposed approach, including the combination of sparsity and Shanoon's entropy, is more feasible and effective in temperature change estimation than its predecessors.

摘要

背景

聚焦超声等非侵入性疗法被开发用于癌症治疗、血管出血和药物递送。聚焦超声治疗的主要目的是影响组织的感兴趣区域(ROI),而不损伤周围组织。在这方面,需要一种合适的监测方法来控制治疗。

方法

本研究旨在利用超声射频(RF)回波信号的稀疏表示开发一种聚焦超声(US)治疗的非侵入性监测技术。为此,通过利用与稀疏优化相关的算法,如正交匹配追踪(OMP)和伴随的香农熵,在聚焦超声辐射下的组织温度变化估计中获得了合理的结果。因此,离体组织实验测试产生了两个数据集,包括低强度聚焦超声(LIFU)和高强度聚焦超声(HIFU)数据。所提出的处理方法分析了超声RF回波信号并将其表示为稀疏信号,并计算了每一帧的熵。

结果

结果表明,所建议的方法可以在LIFU治疗期间非侵入性地估计37°C至47°C之间的温度变化。此外,它还表示了在10至130 W不同功率下HIFU消融期间的温度变化。所提出方法的归一化均方误差为0.28,约为先前相关方法的2.15倍。

结论

这些结果表明,这种新提出的方法,包括稀疏性和香农熵的结合,在温度变化估计方面比其前身更可行、更有效。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e3ba/11111126/14bfe61fb0cd/JMSS-14-8-g001.jpg

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