Generation of quantification maps and weighted images from synthetic magnetic resonance imaging using deep learning network.

Journal: Physics in medicine and biology
Published Date:

Abstract

The generation of quantification maps and weighted images in synthetic MRI techniques is based on complex fitting equations. This process requires longer image generation times. The objective of this study is to evaluate the feasibility of deep learning method for fast reconstruction of synthetic MRI.A total of 44 healthy subjects were recruited and random divided into a training set (30 subjects) and a testing set (14 subjects). A multiple-dynamic, multiple-echo (MDME) sequence was used to acquire synthetic MRI images. Quantification maps (T1, T2, and proton density (PD) maps) and weighted (T1W, T2W, and T2W FLAIR) images were created with MAGiC software and then used as the ground truth images in the deep learning (DL) model. An improved multichannel U-Net structure network was trained to generate quantification maps and weighted images from raw synthetic MRI imaging data (8 module images). Quantitative evaluation was performed on quantification maps. Quantitative evaluation metrics, as well as qualitative evaluation were used in weighted image evaluation. Nonparametric Wilcoxon signed-rank tests were performed in this study.The results of quantitative evaluation show that the error between the generated quantification images and the reference images is small. For weighted images, no significant difference in overall image quality or signal-to-noise ratio was identified between DL images and synthetic images. Notably, the DL images achieved improved image contrast with T2W images, and fewer artifacts were present on DL images than synthetic images acquired by T2W FLAIR.The DL algorithm provides a promising method for image generation in synthetic MRI techniques, in which every step of the calculation can be optimized and faster, thereby simplifying the workflow of synthetic MRI techniques.

Authors

  • Yawen Liu
    School of Biological Science and Medical Engineering, Beihang University, Beijing, China.
  • Haijun Niu
    School of Biological Science and Medical Engineering, Beihang University, Beijing, China.
  • Pengling Ren
    Department of Radiology, Beijing Friendship Hospital, Capital Medical University, 100050, People's Republic of China.
  • Jialiang Ren
    GE Healthcare China, 100176, People's Republic of China.
  • Xuan Wei
    Department of Radiology, Beijing Friendship Hospital, Capital Medical University, 100050, People's Republic of China.
  • Wenjuan Liu
    College of Materials Science and Engineering , Nanjing Tech University , Nanjing , Jiangsu 211816 , China.
  • Heyu Ding
    Department of Radiology, Beijing Friendship Hospital, Capital Medical University, Beijing, China.
  • Jing Li
    Department of Neurosurgery, Tianjin Medical University General Hospital, Tianjin, China.
  • Jingjing Xia
    College of Science, China Agricultural University, Beijing 100193, PR China.
  • Tingting Zhang
    Department of Environmental Science and Engineering, College of Chemical Engineering, Beijing University of Chemical Technology, Beijing 100029, China. Electronic address: zhangtt@mail.buct.edu.cn.
  • Han Lv
    Department of Radiology, Beijing Friendship Hospital, Capital Medical University, Beijing, China.
  • Hongxia Yin
    Department of Radiology, Beijing Friendship Hospital, Capital Medical University, Beijing, China.
  • Zhenchang Wang
    School of Biological Science and Medical Engineering, Beihang University, Beijing, China.