Directivity enhancement of microstrip antennas for high-resolution brain tumor imaging using characteristic modes theory and the confocal microwave image reconstruction algorithm

Mouad El Moudden , Badiaa Ait Ahmed , Ibtisam Amdaouch , Mohamed Zied Chaari , Juan Ruiz-Alzola , Otman Aghzout
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Abstract

The increasing prevalence of brain tumors necessitates the development of advanced diagnostic techniques to enhance detection and characterization. This paper presents innovative methodologies for designing and optimizing antenna characteristics using characteristic modes theory (CMT), specifically adapted for high-resolution imaging in medical applications. Our research focuses on the critical goal of improving the accuracy and precision of brain tumor detection through a confocal microwave image reconstruction algorithm. The study begins with an in-depth modeling of essential antenna elements, examining their behavior to understand their interactions within the overall structure. This comprehensive analysis enhances our understanding of antenna performance and characteristics. The introduction of CMT is pivotal, as it facilitates the identification of resonance frequencies that exhibit exceptional radiation efficiency. Moreover, the antenna’s directivity is significantly enhanced through a thorough investigation of the effects of various substrate materials and patch shapes on the performance of the radiated antenna modes. This study prioritizes the optimization of the dominant directive mode to improve tumor imaging resolution, ultimately leading to superior quality imaging results. To compare and analyze the impact of different antenna directivity modes on the imaging resolution of brain tumors, two optimized antennas with distinct patch shapes and radiation patterns are integrated into a microwave imaging system. This advanced system is carefully designed to accurately locate and characterize brain tumors, enhancing diagnostic precision. The confocal imaging algorithm demonstrates that the dominant mode with high directivity radiation produces high-resolution images that significantly improve tumor detection and diagnosis.
基于特征模理论和共聚焦微波图像重建算法的微带天线高分辨率脑肿瘤成像指向性增强
脑肿瘤的日益流行需要发展先进的诊断技术来加强检测和表征。本文介绍了利用特征模式理论(CMT)设计和优化天线特性的创新方法,特别适用于医疗应用中的高分辨率成像。我们的研究重点是通过共聚焦微波图像重建算法提高脑肿瘤检测的准确性和精密度。该研究从对基本天线元件的深入建模开始,检查它们的行为以了解它们在整体结构中的相互作用。这种全面的分析增强了我们对天线性能和特性的理解。CMT的引入是至关重要的,因为它有助于识别具有特殊辐射效率的共振频率。此外,通过深入研究各种衬底材料和贴片形状对辐射天线模式性能的影响,天线的指向性得到了显著增强。本研究优先优化主导指示模式,提高肿瘤成像分辨率,最终获得高质量的成像结果。为了比较和分析不同天线指向性模式对脑肿瘤成像分辨率的影响,将两种具有不同贴片形状和辐射方向图的优化天线集成到微波成像系统中。这种先进的系统经过精心设计,可以准确定位和表征脑肿瘤,提高诊断精度。共聚焦成像算法表明,具有高指向性辐射的优势模式产生高分辨率图像,显着提高了肿瘤的检测和诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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