声电成像在生物电流检测中的应用
作者:
作者单位:

1)天津大学医学工程与转化医学研究院,天津 300072;2)脑机交互与人机共融海河实验室,天津 300392

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基金项目:

国家自然科学基金(82302340,81925020) 资助项目。


Application of Acoustoelectric Imaging in Biological Current Detection
Author:
Affiliation:

1)Academy of Medical Engineering and Translational Medicine, Tianjin University, Tianjin 300072, China;2)Haihe Laboratory of Brain-computer Interaction and Human-machine Integration, Tianjin 300392, China

Fund Project:

This work was supported by grants from The National Natural Science Foundation of China (82302340, 81925020).

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    摘要:

    心电、头皮脑电、表面肌电等传统无创生物电检测方法可为相关疾病诊断提供电学依据。由于生物电信号是机体细胞群共同放电的混叠集合结果,上述生物电检测方法空间分辨率相对有限。近些年兴起的声电成像利用无创聚焦超声空间编码生物电流,靶向获得精确聚焦位置的电信号,可实现毫米级空间分辨率、毫秒级时间分辨率的无创生物电信号检测,有望成为精准检测生命体深层电活动的新型成像技术。本文首先简述声电成像原理与声电信号特征,进而从声电耦合机理、声电成像方法、声电脑成像及声电心脏成像等方面详细介绍声电成像的典型研究,最后围绕声电成像关键技术环节所面临的挑战,对未来研究方向进行探讨,以期为建立完善的声电成像技术体系和实现其临床转化提供依据与启发。

    Abstract:

    The conventional noninvasive biological current detection such as electrocardiogram, electroencephalography and surface electromyography can provide electrical reference for diseases diagnosis. Because the bioelectrical signals are the mixed result of the common discharge of sell populations, the spatial resolution of the above bioelectrical detection is relatively limited. In recent years, the acoustoelectric imaging (AEI) has been introduced to spatially code biological current through noninvasive focused ultrasound. Then the electrical signal with precise focus position can be obtained. It can achieve noninvasive detection of biological electrical signals with millimeter-level spatial resolution and millisecond-level temporal resolution which is expected to develop into a new imaging technology for accurately detecting deep electrical activities of living organisms. We firstly describe AEI principle, including acoustoelectric effect and the derivation of acoustoelectric signal equation. Then we briefly introduce characteristics of acoustoelectric signal. It can be seen from the equation of acoustoelectric signal that the acoustoelectric signal depends on the current field and the ultrasonic field. Furtherly, the typical studies of AEI are introduced including acoustoelectric coupling mechanism, AEI methods, acoustoelectric brain imaging (ABI) and acoustoelectric cardiac imaging (ACI). In terms of the acoustoelectric coupling mechanism, the researchers found that the acoustoelectric effect of electrolyte solution is caused by the change of ion molar concentration, ion migration rate and ion viscosity with pressure and temperature, and the acoustoelectric effect coefficient of normal saline is accurate to (0.034±0.003)% MPa–1. In terms of AEI methods, researchers improved the detection sensitivity, spatial resolution, signal to noise ratio and other performance indicators by improving AEI methods and optimizing AEI systems. In terms of ABI, it can utilize the acoustoelectric coupling mechanism to endow the target area with spatial features of ultrasound, and achieve noninvasive high resolution EEG detection. We review the important research achievements and significance layer by layer from the perspectives of feasibility verification, method system optimization, and clinical application exploration in acoustoelectric imaging. In terms of ACI, it can be used to quantitatively evaluate the spatial distribution and dynamic changes of cardiac current field, providing a new idea for real-time monitoring of cardiac electrophysiological state before and after surgery. We summarize and review the important research achievements and significance of ACI at each stage: in phantom, in vitro and in vivo. Finally, we discuss the future research direction by focusing on the challenges faced by key technical links such as focused ultrasound targeting, ultrasonic spatial coding and decoding, acoustoelectric sensing detection, and imaging system integration, in order to provide basis and inspiration for AEI technology system and clinical transformation.

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周伊婕,宋一博,宋西姊,何峰,明东.声电成像在生物电流检测中的应用[J].生物化学与生物物理进展,2024,51(5):1134-1146

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历史
  • 收稿日期:2023-08-13
  • 最后修改日期:2024-04-05
  • 接受日期:2023-10-18
  • 在线发布日期: 2024-05-21
  • 出版日期: 2024-05-20