A novel real-time efficacy assessment method for tumor treating fields

IF 4.2 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Yueyue Xiao , Songpei Hu , Chunxiao Chen , Hao Yu , Liang Wang , Jie Yu , Bokai Chen , Ming Lu , Jagath C. Rajapakse
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引用次数: 0

Abstract

Tumor treating fields (TTFields) is a promising non-invasive cancer treatment that uses alternating electric fields to disrupt tumor cell division. Despite its potential, there is a significant lack of precise and reliable methods for evaluating the efficacy of TTFields in clinical settings. The aim of this study is to develop and validate a new method for real-time assessment of the efficacy of TTFields. We proposed a novel neural network based on a collaborative fusion strategy of dual-branch (CFS-DB) to reconstruct the conductivity of tumor region for real-time assessment of the efficacy of TTFields. The proposed CFS-DB includes two independent branches: a conductivity branch and a structure branch. The conductivity branch employs FC-UNet to learn the mapping from measured boundary voltages to conductivity. The structural branch uses the results reconstructed by Gaussian-Newton method as the input for image-to-image training. Finally, the features from both branches are fused for coordinated end-to-end training. The simulation and experimental results show that the proposed CFS-DB has superior performance compared to five state-of-the-art deep learning networks. The CFS-DB method offers a novel and precise approach for evaluating the efficacy of TTFields, providing a new paradigm for clinical assessment.
一种新的肿瘤治疗领域实时疗效评估方法
肿瘤治疗场(TTFields)是一种很有前景的非侵入性癌症治疗方法,它利用交变电场破坏肿瘤细胞分裂。尽管肿瘤治疗场很有潜力,但在临床环境中却严重缺乏精确可靠的疗效评估方法。本研究旨在开发和验证一种实时评估 TTFields 疗效的新方法。我们提出了一种基于双分支协同融合策略(CFS-DB)的新型神经网络,用于重建肿瘤区域的电导率,以实时评估 TTFields 的疗效。拟议的 CFS-DB 包括两个独立的分支:电导分支和结构分支。传导性分支利用 FC-UNet 学习从测量的边界电压到传导性的映射。结构分支使用高斯-牛顿法重建的结果作为图像到图像训练的输入。最后,融合两个分支的特征,进行协调的端到端训练。仿真和实验结果表明,与五种最先进的深度学习网络相比,所提出的 CFS-DB 具有更优越的性能。CFS-DB 方法为评估 TTFields 的疗效提供了一种新颖而精确的方法,为临床评估提供了一种新的范例。
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来源期刊
Engineering Analysis with Boundary Elements
Engineering Analysis with Boundary Elements 工程技术-工程:综合
CiteScore
5.50
自引率
18.20%
发文量
368
审稿时长
56 days
期刊介绍: This journal is specifically dedicated to the dissemination of the latest developments of new engineering analysis techniques using boundary elements and other mesh reduction methods. Boundary element (BEM) and mesh reduction methods (MRM) are very active areas of research with the techniques being applied to solve increasingly complex problems. The journal stresses the importance of these applications as well as their computational aspects, reliability and robustness. The main criteria for publication will be the originality of the work being reported, its potential usefulness and applications of the methods to new fields. In addition to regular issues, the journal publishes a series of special issues dealing with specific areas of current research. The journal has, for many years, provided a channel of communication between academics and industrial researchers working in mesh reduction methods Fields Covered: • Boundary Element Methods (BEM) • Mesh Reduction Methods (MRM) • Meshless Methods • Integral Equations • Applications of BEM/MRM in Engineering • Numerical Methods related to BEM/MRM • Computational Techniques • Combination of Different Methods • Advanced Formulations.
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