Shao Wenyi, Zhou Beibei
Russell H. Morgan Department of Radiology and Radiological Science, Johns Hopkins University School of Medicine, Baltimore, MD 21287, USA.
EMAI LLC, Laurel, MD 20723, USA.
IEEE Trans Antennas Propag. 2022 Aug;70(8):6256-6264. doi: 10.1109/tap.2021.3121149. Epub 2021 Oct 26.
In order to conduct the research of machine-learning (ML) based microwave breast imaging (MBI), a large number of digital dielectric breast phantoms that can be used as training data (ground truth) are required but are difficult to be achieved from practice. Although a few dielectric breast phantoms have been developed for research purpose, the number and the diversity are limited and is far inadequate to develop a robust ML algorithm for MBI. This paper presents a neural network method to generate 2D virtual breast phantoms that are similar to the real ones, which can be used to develop ML-based MBI in the future. The generated phantoms are similar but are different from those used in training. Each phantom consists of several images with each representing the distribution of a dielectric parameter in the breast map. Statistical analysis was performed over 10,000 generated phantoms to investigate the performance of the generative network. With the generative network, one may generate unlimited number of breast images with more variations, so the ML-based MBI will be more ready to deploy.
为了开展基于机器学习(ML)的微波乳腺成像(MBI)研究,需要大量可作为训练数据(真实情况)的数字介电乳腺体模,但实际中很难实现。尽管已经开发了一些用于研究目的的介电乳腺体模,但其数量和多样性有限,远远不足以开发用于MBI的强大ML算法。本文提出了一种神经网络方法来生成与真实乳腺相似的二维虚拟乳腺体模,可用于未来基于ML的MBI开发。生成的体模相似但与训练中使用的体模不同。每个体模由几张图像组成,每张图像代表乳腺图中介电参数的分布。对10000多个生成的体模进行了统计分析,以研究生成网络的性能。借助生成网络,可以生成数量无限且变化更多的乳腺图像,因此基于ML的MBI将更易于部署。