Technical Note: Deep learning based MRAC using rapid ultrashort echo time imaging

被引:48
|
作者
Jang, Hyungseok [1 ]
Liu, Fang [2 ]
Zhao, Gengyan [3 ]
Bradshaw, Tyler [2 ]
McMillan, Alan B. [2 ]
机构
[1] Univ Calif San Diego, Dept Radiol, 200 West Arbor Dr, San Diego, CA 92103 USA
[2] Univ Wisconsin, Sch Med & Publ Hlth, Dept Radiol, 600 Highland Ave, Madison, WI 53705 USA
[3] Univ Wisconsin, Sch Med & Publ Hlth, Dept Med Phys, 1111 Highland Ave, Madison, WI 53705 USA
基金
美国国家卫生研究院;
关键词
deep learning; MR-based attenuation correction; transfer learning; ATTENUATION-CORRECTION; AUTOMATIC SEGMENTATION; PET/MRI; ATLAS; IMAGES; RECONSTRUCTION; SYSTEMS; PET/CT; HEAD;
D O I
10.1002/mp.12964
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
PurposeIn this study, we explore the feasibility of a novel framework for MR-based attenuation correction for PET/MR imaging based on deep learning via convolutional neural networks, which enables fully automated and robust estimation of a pseudo CT image based on ultrashort echo time (UTE), fat, and water images obtained by a rapid MR acquisition. MethodsMR images for MRAC are acquired using dual echo ramped hybrid encoding (dRHE), where both UTE and out-of-phase echo images are obtained within a short single acquisition (35s). Tissue labeling of air, soft tissue, and bone in the UTE image is accomplished via a deep learning network that was pre-trained with T1-weighted MR images. UTE images are used as input to the network, which was trained using labels derived from co-registered CT images. The tissue labels estimated by deep learning are refined by a conditional random field based correction. The soft tissue labels are further separated into fat and water components using the two-point Dixon method. The estimated bone, air, fat, and water images are then assigned appropriate Hounsfield units, resulting in a pseudo CT image for PET attenuation correction. To evaluate the proposed MRAC method, PET/MR imaging of the head was performed on eight human subjects, where Dice similarity coefficients of the estimated tissue labels and relative PET errors were evaluated through comparison to a registered CT image. ResultDice coefficients for air (within the head), soft tissue, and bone labels were 0.760.03, 0.96 +/- 0.006, and 0.88 +/- 0.01. In PET quantitation, the proposed MRAC method produced relative PET errors less than 1% within most brain regions. ConclusionThe proposed MRAC method utilizing deep learning with transfer learning and an efficient dRHE acquisition enables reliable PET quantitation with accurate and rapid pseudo CT generation.
引用
收藏
页码:3697 / 3704
页数:8
相关论文
共 50 条
  • [31] Motion compensated self supervised deep learning for highly accelerated 3D ultrashort Echo time pulmonary MRI
    Miller, Zachary
    Johnson, Kevin M.
    MAGNETIC RESONANCE IN MEDICINE, 2023, 89 (06) : 2361 - 2375
  • [32] K-space trajectory mapping and its application for ultrashort Echo time imaging
    Latta, Peter
    Starcuk, Zenon, Jr.
    Gruwel, Marco L. H.
    Weber, Michael H.
    Tomanek, Boguslaw
    MAGNETIC RESONANCE IMAGING, 2017, 36 : 68 - 76
  • [33] Knee menisci segmentation and relaxometry of 3D ultrashort echo time cones MR imaging using attention U-Net with transfer learning
    Byra, Michal
    Wu, Mei
    Zhang, Xiaodong
    Jang, Hyungseok
    Ma, Ya-Jun
    Chang, Eric Y.
    Shah, Sameer
    Du, Jiang
    MAGNETIC RESONANCE IN MEDICINE, 2020, 83 (03) : 1109 - 1122
  • [34] Early cancer detection using deep learning and medical imaging: A survey
    Ahmad, Istiak
    Alqurashi, Fahad
    CRITICAL REVIEWS IN ONCOLOGY HEMATOLOGY, 2024, 204
  • [35] TickPhone App: A Smartphone Application for Rapid Tick Identification Using Deep Learning
    Xu, Zhiheng
    Ding, Xiong
    Yin, Kun
    Li, Ziyue
    Smyth, Joan A.
    Sims, Maureen B.
    McGinnis, Holly A.
    Liu, Changchun
    APPLIED SCIENCES-BASEL, 2021, 11 (16):
  • [36] Magnetic resonance shoulder imaging using deep learning-based algorithm
    Liu, Jing
    Li, Wei
    Li, Ziyuan
    Yang, Junzhe
    Wang, Ke
    Cao, Xinming
    Qin, Naishan
    Xue, Ke
    Dai, Yongming
    Wu, Peng
    Qiu, Jianxing
    EUROPEAN RADIOLOGY, 2023, 33 (07) : 4864 - 4874
  • [37] Deep learning based spectral CT imaging
    Wu, Weiwen
    Hu, Dianlin
    Niu, Chuang
    Vanden Broeke, Lieza
    Butler, Anthony P. H.
    Cao, Peng
    Atlas, James
    Chernoglazov, Alexander
    Vardhanabhuti, Varut
    Wang, Ge
    NEURAL NETWORKS, 2021, 144 : 342 - 358
  • [38] Rapid Detection of Camouflaged Artificial Target Based on Polarization Imaging and Deep Learning
    Shen, Ying
    Lin, Wenfu
    Wang, Zhifeng
    Li, Jie
    Sun, Xinquan
    Wu, Xianyu
    Wang, Shu
    Huang, Feng
    IEEE PHOTONICS JOURNAL, 2021, 13 (04):
  • [39] Radiofrequency phase encoded half-pulses in simultaneous multislice ultrashort echo time imaging
    Rettenmeier, Christoph
    Stenger, V. Andrew
    MAGNETIC RESONANCE IN MEDICINE, 2019, 81 (06) : 3720 - 3733
  • [40] Tool wear classification using time series imaging and deep learning
    Martinez-Arellano, Giovanna
    Terrazas, German
    Ratchev, Svetan
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 104 (9-12) : 3647 - 3662