IEEE Trans Med Imaging. 2023 Aug;42(8):2439-2450. doi: 10.1109/TMI.2023.3252576. Epub 2023 Aug 1.
Near-infrared diffuse optical tomography (DOT) is a promising functional modality for breast cancer imaging; however, the clinical translation of DOT is hampered by technical limitations. Specifically, conventional finite element method (FEM)-based optical image reconstruction approaches are time-consuming and ineffective in recovering full lesion contrast. To address this, we developed a deep learning-based reconstruction model (FDU-Net) comprised of a Fully connected subnet, followed by a convolutional encoder-Decoder subnet, and a U-Net for fast, end-to-end 3D DOT image reconstruction. The FDU-Net was trained on digital phantoms that include randomly located singular spherical inclusions of various sizes and contrasts. Reconstruction performance was evaluated in 400 simulated cases with realistic noise profiles for the FDU-Net and conventional FEM approaches. Our results show that the overall quality of images reconstructed by FDU-Net is significantly improved compared to FEM-based methods and a previously proposed deep-learning network. Importantly, once trained, FDU-Net demonstrates substantially better capability to recover true inclusion contrast and location without using any inclusion information during reconstruction. The model was also generalizable to multi-focal and irregularly shaped inclusions unseen during training. Finally, FDU-Net, trained on simulated data, could successfully reconstruct a breast tumor from a real patient measurement. Overall, our deep learning-based approach demonstrates marked superiority over the conventional DOT image reconstruction methods while also offering over four orders of magnitude acceleration in computational time. Once adapted to the clinical breast imaging workflow, FDU-Net has the potential to provide real-time accurate lesion characterization by DOT to assist the clinical diagnosis and management of breast cancer.
近红外漫射光学断层成像(DOT)是一种很有前途的乳腺癌成像功能模态;然而,DOT 的临床转化受到技术限制的阻碍。具体来说,基于传统有限元方法(FEM)的光学图像重建方法耗时且无法有效恢复完整的病变对比度。为了解决这个问题,我们开发了一种基于深度学习的重建模型(FDU-Net),它由全连接子网络、卷积编码器-解码器子网络和 U-Net 组成,用于快速、端到端的 3D DOT 图像重建。FDU-Net 在包括随机位置的不同大小和对比度的奇异球形内含物的数字体模上进行训练。在 400 个具有实际噪声分布的模拟案例中,对 FDU-Net 和传统 FEM 方法的重建性能进行了评估。我们的结果表明,与基于 FEM 的方法和之前提出的深度学习网络相比,FDU-Net 重建的图像整体质量得到了显著提高。重要的是,一旦经过训练,FDU-Net 就能够在不使用任何内含物信息的情况下,显著提高重建时真实内含物对比度和位置的恢复能力。该模型也可以推广到训练中未见过的多焦点和不规则形状的内含物。最后,FDU-Net 在模拟数据上进行训练,可以成功地从真实患者的测量数据中重建出乳腺肿瘤。总的来说,我们的基于深度学习的方法与传统的 DOT 图像重建方法相比具有明显的优势,同时在计算时间上也提高了四个数量级。一旦适应临床乳腺成像工作流程,FDU-Net 就有可能通过 DOT 提供实时准确的病变特征描述,以协助乳腺癌的临床诊断和管理。