IEEE Trans Med Imaging. 2018 Jun;37(6):1382-1393. doi: 10.1109/TMI.2018.2820382.
Recent advances in deep learning for tomographic reconstructions have shown great potential to create accurate and high quality images with a considerable speed up. In this paper, we present a deep neural network that is specifically designed to provide high resolution 3-D images from restricted photoacoustic measurements. The network is designed to represent an iterative scheme and incorporates gradient information of the data fit to compensate for limited view artifacts. Due to the high complexity of the photoacoustic forward operator, we separate training and computation of the gradient information. A suitable prior for the desired image structures is learned as part of the training. The resulting network is trained and tested on a set of segmented vessels from lung computed tomography scans and then applied to in-vivo photoacoustic measurement data.
深度学习在层析重建方面的最新进展表明,其具有极大的潜力可以实现精确、高质量的图像重建,并且速度非常快。在本文中,我们提出了一种深度神经网络,该网络专门用于从有限的光声测量中提供高分辨率的 3D 图像。该网络旨在表示一个迭代方案,并包含数据拟合的梯度信息,以补偿有限视角的伪影。由于光声正演算子的高度复杂性,我们将梯度信息的训练和计算分开。作为训练的一部分,学习到了合适的先验知识,以用于期望的图像结构。所得到的网络在一组来自肺部计算机断层扫描的分割血管上进行训练和测试,然后应用于体内光声测量数据。