Balasubramaniam Ganesh M, Arnon Shlomi
Department of Electrical and Computer Engineering, Ben-Gurion University of the Negev, Be'er Sheva, 8441405, Israel.
Biomed Opt Express. 2022 Mar 11;13(4):2006-2017. doi: 10.1364/BOE.449448. eCollection 2022 Apr 1.
Diffuse optical tomography (DOT) is a non-invasive imaging technique utilizing multi-scattered light at visible and infrared wavelengths to detect anomalies in tissues. However, the DOT image reconstruction is based on solving the inverse problem, which requires massive calculations and time. In this article, for the first time, to the best of our knowledge, a simple, regression-based cascaded feed-forward deep learning neural network is derived to solve the inverse problem of DOT in compressed breast geometry. The predicted data is subsequently utilized to visualize the breast tissues and their anomalies. The dataset in this study is created using a Monte-Carlo algorithm, which simulates the light propagation in the compressed breast placed inside a parallel plate source-detector geometry (forward process). The simulated DL-DOT system's performance is evaluated using the Pearson correlation coefficient (R) and the Mean squared error (MSE) metrics. Although a comparatively smaller dataset (50 nos.) is used, our simulation results show that the developed feed-forward network algorithm to solve the inverse problem delivers an increment of ∼30% over the analytical solution approach, in terms of R. Furthermore, the proposed network's MSE outperforms that of the analytical solution's MSE by a large margin revealing the robustness of the network and the adaptability of the system for potential applications in medical settings.
扩散光学层析成像(DOT)是一种非侵入性成像技术,它利用可见光和红外波长的多重散射光来检测组织中的异常情况。然而,DOT图像重建基于求解逆问题,这需要大量计算和时间。在本文中,据我们所知,首次推导了一种基于回归的简单级联前馈深度学习神经网络,以解决压缩乳房几何形状下DOT的逆问题。随后利用预测数据对乳房组织及其异常情况进行可视化。本研究中的数据集是使用蒙特卡罗算法创建的,该算法模拟了置于平行板源-探测器几何结构内的压缩乳房中的光传播(正向过程)。使用皮尔逊相关系数(R)和均方误差(MSE)指标评估模拟的DL-DOT系统的性能。尽管使用的数据集相对较小(50个),但我们的模拟结果表明,所开发的用于解决逆问题的前馈网络算法在R方面比解析解方法提高了约30%。此外,所提出网络的MSE大大优于解析解的MSE,揭示了该网络的稳健性以及该系统在医疗环境中潜在应用的适应性。