Self-Sensing Cavitation Detection for Pulsed Cavitational Ultrasound Therapy.

IF 4.4 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Clara Magnier, Wojciech Kwiecinski, Daniel Suarez Escudero, Suxer Alfonso Garcia, Elise Vacher, Maurice Delplanque, Emmanuel Messas, Mathieu Pernot
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Abstract

Objectives: Monitoring cavitation during ultrasound therapy is crucial for assessing the procedure safety and efficacy. This work aims to develop a self-sensing and low-complexity approach for robust cavitation detection in moving organs such as the heart.

Methods: An analog-to-digital converter was connected onto one channel of the therapeutic transducer from a clinical system dedicated to cardiac therapy, allowing to record signals on a computer. Acquisition of successive echoes backscattered by the cavitation cloud on the therapeutic transducer was performed at a high repetition rate. Temporal variations of the backscattered echoes were analyzed with a Singular-Value Decomposition filter to discriminate signals associated to cavitation, based on its stochastic nature. Metrics were derived to classify the filtered backscattered echoes. Classification of raw backscattered echoes was also performed with a machine learning approach. The performances were evaluated on 155 in vitro acquisitions and 110 signals acquired in vivo during transthoracic cardiac ultrasound therapy on 3 swine.

Results: Cavitation detection was achieved successfully in moving tissues with high signal to noise ratio in vitro (cSNR = 25±5) and in vivo (cSNR = 20±6) and outperformed conventional methods (cSNR = 11±6). Classification methods were validated with spectral analysis of hydrophone measurements. High accuracy was obtained using either the clutter filter-based method (accuracy of 1) or the neural network-based method (accuracy of 0.99).

Conclusion: Robust self-sensing cavitation detection was demonstrated to be possible with a clutter filter-based method and a machine learning approach.

Significance: The self-sensing cavitation detection method enables robust, reliable and low complexity cavitation activity monitoring during ultrasound therapy.

用于脉冲空化超声波疗法的自感应空化检测。
目的:在超声波治疗过程中监测空化现象对于评估手术的安全性和有效性至关重要。这项工作旨在开发一种自感应、低复杂度的方法,对心脏等运动器官进行可靠的空化检测:方法:将一个模数转换器连接到心脏治疗临床系统的治疗传感器的一个通道上,以便在计算机上记录信号。以高重复率采集治疗换能器上空化云的连续反向散射回波。利用奇异值分解滤波器对反向散射回波的时间变化进行分析,根据其随机性来区分与空化有关的信号。得出了对过滤后的后向散射回波进行分类的指标。此外,还利用机器学习方法对原始后向散射回波进行了分类。在对 3 头猪进行经胸心脏超声治疗期间,对 155 次体外采集和 110 次体内采集的信号进行了性能评估:在体外(cSNR = 25±5)和体内(cSNR = 20±6)高信噪比的移动组织中成功实现了空化检测,并优于传统方法(cSNR = 11±6)。水听器测量的频谱分析验证了分类方法。使用基于杂波滤波器的方法(准确率为 1)或基于神经网络的方法(准确率为 0.99)都获得了很高的准确率:结论:利用基于杂波滤波器的方法和机器学习方法,可以实现稳健的自感空化检测:自感空化检测方法可在超声治疗过程中实现稳健、可靠和低复杂度的空化活动监测。
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来源期刊
IEEE Transactions on Biomedical Engineering
IEEE Transactions on Biomedical Engineering 工程技术-工程:生物医学
CiteScore
9.40
自引率
4.30%
发文量
880
审稿时长
2.5 months
期刊介绍: IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.
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