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Application of Artificial Neural Networks for Accurate Determination of the Complex Permittivity of Biological Tissue

机译:人工神经网络在精确测定生物组织复合介电常数中的应用

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摘要

Medical devices making use of radio frequency (RF) and microwave (MW) fields have been studied as alternatives to existing diagnostic and therapeutic modalities since they offer several advantages. However, the lack of accurate knowledge of the complex permittivity of different biological tissues continues to hinder progress in of these technologies. The most convenient and popular measurement method used to determine the complex permittivity of biological tissues is the open-ended coaxial line, in combination with a vector network analyser (VNA) to measure the reflection coefficient (S11) which is then converted to the corresponding tissue permittivity using either full-wave analysis or through the use of equivalent circuit models. This paper proposes an innovative method of using artificial neural networks (ANN) to convert measured S11 to tissue permittivity, circumventing the requirement of extending the VNA measurement plane to the coaxial line open end. The conventional three-step calibration technique used with coaxial open-ended probes lacks repeatability, unless applied with extreme care by experienced persons, and is not adaptable to alternative sensor antenna configurations necessitated by many potential diagnostic and monitoring applications. The method being proposed does not require calibration at the tip of the probe, thus simplifying the measurement procedure while allowing arbitrary sensor design, and was experimentally validated using S11 measurements and the corresponding complex permittivity of 60 standard liquid and 42 porcine tissue samples. Following ANN training, validation and testing, we obtained a prediction accuracy of 5% for the complex permittivity.
机译:已经研究了利用射频(RF)和微波(MW)字段的医疗设备作为现有诊断和治疗方式的替代品,因为它们提供了几个优点。然而,缺乏对不同生物组织的复杂介电常数的准确知识继续妨碍这些技术的进展。用于确定生物组织复杂介电常数的最方便和最流行的测量方法是开口结束的同轴线,与矢量网络分析仪(VNA)组合测量反射系数(S11),然后转换为相应的组织使用全波分析或通过使用等效电路模型的介电常数。本文提出了一种使用人工神经网络(ANN)将测量S11转换为组织介电常数的创新方法,避免将VNA测量平面延伸到同轴线路的要求。除非经验丰富的人施用,否则传统的三步校准技术缺乏可重复性,除非用极端护理,并且不适用于许多潜在的诊断和监测应用所需的替代传感器天线配置。所提出的方法在探针的尖端不需要校准,从而简化了测量过程,同时允许任意传感器设计,并且使用S11测量实验验证和60标准液体和42个猪组织样品的相应复杂介电常数。在ANN培训,验证和测试之后,我们获得了复杂介电常数的预测精度为5%。

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