Beijing National Research Center for Information Science and Technology, Department of Electronic Engineering, Tsinghua University, Beijing 100084, China.
Institute for Precision Healthcare, Tsinghua University, Beijing 100084, China.
Sensors (Basel). 2023 Aug 5;23(15):6970. doi: 10.3390/s23156970.
In recent years, photoacoustic (PA) imaging has rapidly grown as a non-invasive screening technique for breast cancer detection using three-dimensional (3D) hemispherical arrays due to their large field of view. However, the development of breast imaging systems is hindered by a lack of patients and ground truth samples, as well as under-sampling problems caused by high costs. Most research related to solving these problems in the PA field were based on 2D transducer arrays or simple regular shape phantoms for 3D transducer arrays or images from other modalities. Therefore, we demonstrate an effective method for removing under-sampling artifacts based on deep neural network (DNN) to reconstruct high-quality PA images using numerical digital breast simulations. We constructed 3D digital breast phantoms based on human anatomical structures and physical properties, which were then subjected to 3D Monte-Carlo and K-wave acoustic simulations to mimic acoustic propagation for hemispherical transducer arrays. Finally, we applied a 3D delay-and-sum reconstruction algorithm and a Res-UNet network to achieve higher resolution on sparsely-sampled data. Our results indicate that when using a 757 nm laser with uniform intensity distribution illuminated on a numerical digital breast, the imaging depth can reach 3 cm with 0.25 mm spatial resolution. In addition, the proposed DNN can significantly enhance image quality by up to 78.4%, as measured by MS-SSIM, and reduce background artifacts by up to 19.0%, as measured by PSNR, even at an under-sampling ratio of 10%. The post-processing time for these improvements is only 0.6 s. This paper suggests a new 3D real time DNN method addressing the sparse sampling problem based on numerical digital breast simulations, this approach can also be applied to clinical data and accelerate the development of 3D photoacoustic hemispherical transducer arrays for early breast cancer diagnosis.
近年来,由于其大视场角,基于三维(3D)半球形阵列的光声(PA)成像已迅速成为一种用于乳腺癌检测的非侵入性筛查技术。然而,由于缺乏患者和真实样本,以及由于成本高而导致的欠采样问题,乳腺成像系统的发展受到了阻碍。PA 领域中大多数解决这些问题的研究都是基于 2D 换能器阵列或简单的规则形状的 3D 换能器阵列或来自其他模态的图像的体模进行的。因此,我们提出了一种基于深度神经网络(DNN)的有效方法,该方法可用于通过数值数字乳房模拟来重建高质量的 PA 图像,以消除欠采样伪影。我们基于人体解剖结构和物理特性构建了 3D 数字乳房体模,然后对其进行 3D 蒙特卡罗和 K 波声学模拟,以模拟半球形换能器阵列的声传播。最后,我们应用 3D 延迟和求和重建算法和 Res-UNet 网络,以在稀疏采样数据上实现更高的分辨率。我们的结果表明,当使用具有均匀强度分布的 757nm 激光照射数值数字乳房时,成像深度可达 3cm,空间分辨率为 0.25mm。此外,所提出的 DNN 可以通过 MS-SSIM 测量将图像质量提高高达 78.4%,通过 PSNR 测量将背景伪影降低高达 19.0%,即使在欠采样比为 10%的情况下也是如此。这些改进的后处理时间仅为 0.6s。本文提出了一种新的基于数值数字乳房模拟的 3D 实时 DNN 方法来解决稀疏采样问题,该方法也可以应用于临床数据,从而加速用于早期乳腺癌诊断的 3D 光声半球形换能器阵列的发展。