一种新型应用器优化微波消融:整合田口神经网络提高消融区预测精度

IF 1.5 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Suyash Kumar Singh;Brij Kumar Bharti;Amar Nath Yadav;Ajay Kumar Dwivedi
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引用次数: 0

摘要

本研究探讨了与使用微波消融(MWA)建模肝脏肿瘤相关的计算挑战,同时强调了传统方法的局限性,并倡导将MWA与人工智能结合使用,这是一种更有前途的方法。提出的创新天线设计包括具有锥形外导体和偶极子天线的同轴线,旨在产生接近球形的烧蚀区,而无需任何额外的匹配网络。它能够在2.45 GHz和5.8 GHz的频率下工作,并进行了微小的结构修改,为肿瘤消融系统提供了灵活性。该研究进一步结合并比较了s型模型(一种成熟的计算方法)和最近开发的用于评估三维肝组织建模中温度依赖特性的参数模型,以确定MWA期间消融区域的差异。此外,由于消融不足和消融过度是MWA过程中的主要问题,分别导致健康组织损伤和肿瘤复发,因此本研究引入了Taguchi人工神经网络(TNN)框架,用于提前预测消融区域,从而显著减少所需训练数据集的数量,同时不影响性能指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Microwave Ablation With a Novel Applicator: Integration of Taguchi Neural Networks for Enhanced Predictive Accuracy of Ablation Zone
This study examines the computational challenges associated with modeling liver tumors using microwave ablation (MWA), while highlighting the limitations of conventional methods and advocating for the use of MWA in conjunction with artificial intelligence as a more promising approach. The proposed innovative antenna design, which comprises a coaxial line featuring a tapered outer conductor and a dipole antenna, aims to produce a nearly spherical ablation zone without the need for any additional matching network. Capable of operating at both 2.45 GHz and 5.8 GHz with minor structural modifications, it offers flexibility in tumor ablation systems. The research further incorporates and compares the sigmoidal model, a well-established computational method, and a recently developed parametric model for evaluating temperature-dependent properties in modeling the 3-D liver tissue, identifying differences in the ablation zone during MWA. Additionally, since both under and over ablation are major concerns during the MWA procedure, resulting in damage to healthy tissue and tumor recurrence, respectively, this study introduces a Taguchi Artificial Neural Networks (TNN) framework for the prediction of ablation zone in advance, thereby, significantly reducing the number of required training datasets without compromising performance metrics.
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
27
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