医学影像学
分解
双重能量
网(多面体)
计算机断层摄影术
对偶(语法数字)
人工智能
能量(信号处理)
领域(数学分析)
计算机科学
计算机视觉
物理
数学
放射科
医学
生态学
内分泌学
数学分析
艺术
文学类
生物
骨质疏松症
骨矿物
量子力学
几何学
作者
Jiongtao Zhu,Xin Zhang,Ting Su,H. Cui,Yuhang Tan,Hao Huang,Jinchuan Guo,Hairong Zheng,Dong Liang,Guangyao Wu,Yongshuai Ge
摘要
Multi-material decomposition is an interesting topic in dual-energy CT (DECT) imaging; however, the accuracy and performance may be limited using the conventional algorithms. In this work, a novel multi-material decomposition network (MMD-Net) is proposed to improve the multi-material decomposition performance of DECT imaging. To achieve dual-energy multi-material decomposition, a deep neural network, named as MMD-Net, is proposed in this work. In MMD-Net, two specific convolutional neural network modules, Net-I and Net-II, are developed. Specifically, Net-I is used to distinguish the material triangles, while Net-II predicts the effective attenuation coefficients corresponding to the vertices of the material triangles. Subsequently, the material-specific density maps are calculated analytically through matrix inversion. The new method is validated using in-house benchtop DECT imaging experiments with a solution phantom and a pig leg specimen, as well as commercial medical DECT imaging experiments with a human patient. The decomposition accuracy, edge spreading function, and noise power spectrum are quantitatively evaluated. Compared to the conventional multiple material decomposition (MMD) algorithm, the proposed MMD-Net method is more effective at suppressing image noise. Additionally, MMD-Net outperforms the iterative MMD approach in maintaining decomposition accuracy, image sharpness, and high-frequency content. Consequently, MMD-Net is capable of generating high-quality material decomposition images. A high performance multi-material decomposition network is developed for dual-energy CT imaging.
科研通智能强力驱动
Strongly Powered by AbleSci AI