Feng Chuqing, Kang Kejun, Xing Yuxiang
Tsinghua University, Department of Engineering Physics, Beijing, China.
Key Laboratory of Particle and Radiation Imaging (Tsinghua University), Ministry of Education, Beijing, China.
J Med Imaging (Bellingham). 2019 Jan;6(1):011006. doi: 10.1117/1.JMI.6.1.011006. Epub 2018 Oct 22.
Spectral computed tomography (SCT) has advantages in multienergy material decomposition for material discrimination and quantitative image reconstruction. However, due to the nonideal physical effects of photon counting detectors, including charge sharing, pulse pileup and -escape, it is difficult to obtain precise system models in practical SCT systems. Serious spectral distortion is unavoidable, which introduces error into the decomposition model and affects material decomposition accuracy. Recently, neural networks demonstrated great potential in image segmentation, object detection, natural language processing, etc. By adjusting the interconnection relationship among internal nodes, it provides a way to mine information from data. Considering the difficulty in modeling SCT system spectra and the superiority of data-driven characteristics of neural networks, we proposed a spectral information extraction method for virtual monochromatic attenuation maps using a simple fully connected neural network without knowing spectral information. In our method, virtual monochromatic linear attenuation coefficients can be obtained directly through our neural network, which could contribute to further material recognition. Our method also provides outstanding performance on denoising and artifacts suppression. It can be furnished for SCT systems with different settings of energy bins or thresholds. Various substances available can be used for training. The trained neural network has a good generalization ability according to our results. The testing mean square errors are about .
光谱计算机断层扫描(SCT)在多能量物质分解以进行物质鉴别和定量图像重建方面具有优势。然而,由于光子计数探测器存在电荷共享、脉冲堆积和逃逸等不理想的物理效应,在实际的SCT系统中难以获得精确的系统模型。严重的光谱畸变不可避免,这会给分解模型引入误差并影响物质分解精度。近年来,神经网络在图像分割、目标检测、自然语言处理等方面展现出巨大潜力。通过调整内部节点之间的连接关系,它提供了一种从数据中挖掘信息的方法。考虑到SCT系统光谱建模的困难以及神经网络数据驱动特性的优势,我们提出了一种使用简单全连接神经网络在不知道光谱信息的情况下提取虚拟单色衰减图光谱信息的方法。在我们的方法中,虚拟单色线性衰减系数可直接通过我们的神经网络获得,这有助于进一步的物质识别。我们的方法在去噪和伪影抑制方面也表现出色。它可用于具有不同能量区间或阈值设置的SCT系统。可用的各种物质都可用于训练。根据我们的结果,训练后的神经网络具有良好的泛化能力。测试均方误差约为 。