Ambrosanio Michele, Franceschini Stefano, Pascazio Vito, Baselice Fabio
Dipartimento di Scienze Motorie e del Benessere, University of Napoli Parthenope, Via Medina 40, 80133 Napoli, Italy.
Centro Direzionale, Dipartimento di Ingegneria, University of Napoli Parthenope, 80143 Napoli, Italy.
Bioengineering (Basel). 2022 Nov 4;9(11):651. doi: 10.3390/bioengineering9110651.
(1) Background: In this paper, an artificial neural network approach for effective and real-time quantitative microwave breast imaging is proposed. It proposes some numerical analyses for the optimization of the network architecture and the improvement of recovery performance and processing time in the microwave breast imaging framework, which represents a fundamental preliminary step for future diagnostic applications. (2) Methods: The methodological analysis of the proposed approach is based on two main aspects: firstly, the definition and generation of a proper database adopted for the training of the neural networks and, secondly, the design and analysis of different neural network architectures. (3) Results: The methodology was tested in noisy numerical scenarios with different values of SNR showing good robustness against noise. The results seem very promising in comparison with conventional nonlinear inverse scattering approaches from a qualitative as well as a quantitative point of view. (4) Conclusion: The use of quantitative microwave imaging and neural networks can represent a valid alternative to (or completion of) modern conventional medical imaging techniques since it is cheaper, safer, fast, and quantitative, thus suitable to assist medical decisions.
(1)背景:本文提出了一种用于有效且实时定量微波乳腺成像的人工神经网络方法。针对微波乳腺成像框架中网络架构的优化以及恢复性能和处理时间的改进,提出了一些数值分析方法,这是未来诊断应用的一个基本初步步骤。(2)方法:所提出方法的方法论分析基于两个主要方面:第一,定义并生成用于训练神经网络的合适数据库;第二,设计并分析不同的神经网络架构。(3)结果:该方法在具有不同信噪比(SNR)值的噪声数值场景中进行了测试,显示出对噪声具有良好的鲁棒性。从定性和定量的角度来看,与传统非线性逆散射方法相比,结果似乎非常有前景。(4)结论:定量微波成像和神经网络的使用可以成为现代传统医学成像技术的有效替代方案(或补充),因为它成本更低、更安全、速度更快且具有定量性,因此适合辅助医疗决策。