Automatic segmentation of the interscapular brown adipose tissue in rats based on deep learning using the dynamic magnetic resonance fat fraction images

被引:0
|
作者
Cheng, Chuanli [1 ,2 ]
Wu, Bingxia [3 ]
Zhang, Lei [4 ]
Wan, Qian [1 ]
Peng, Hao [1 ]
Liu, Xin [1 ]
Zheng, Hairong [1 ]
Zhang, Huimao [4 ]
Zou, Chao [1 ,2 ]
机构
[1] Shenzhen Univ Town, Shenzhen Inst Adv Technol, Chinese Acad Sci, Paul C Lauterbur Res Ctr Biomed Imaging, 1068 Xueyuan Ave, Shenzhen 518055, Peoples R China
[2] Imaging Res Inst Innovat Med Equipment, Shenzhen, Peoples R China
[3] Wuhan Univ Technol, Sch Informat Engn, Wuhan, Peoples R China
[4] Jilin Univ, Bethune Hosp 1, Radiol Dept, Changchun, Peoples R China
关键词
Brown adipose tissue; Automatic labelling; Magnetic resonance imaging; Fat fraction; Deep learning; IDENTIFICATION; ALGORITHM; OBESITY; WHITE;
D O I
10.1007/s10334-023-01133-8
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
Objective The study aims to propose an accurate labelling method of interscapular BAT (iBAT) in rats using dynamic MR fat fraction (FF) images with noradrenaline (NE) stimulation and then develop an automatic iBAT segmentation method using a U-Net model. Materials and methods Thirty-four rats fed different diets or housed at different temperatures underwent successive MR scans before and after NE injection. The iBAT were labelled automatically by identifying the regions with obvious FF change in response to the NE stimulation. Further, these FF images along with the recognized iBAT mask images were used to develop a deep learning network to accomplish the robust segmentation of iBAT in various rat models, even without NE stimulation. The trained model was then validated in rats fed with high-fat diet (HFD) in comparison with normal diet (ND). Result A total of 6510 FF images were collected using a clinical 3.0 T MR scanner. The dice similarity coefficient (DSC) between the automatic and manual labelled results was 0.895 +/- 0.022. For the network training, the DSC, precision rate, and recall rate were found to be 0.897 +/- 0.061, 0.901 +/- 0.068 and 0.899 +/- 0.086, respectively. The volumes and FF values of iBAT in HFD rats were higher than ND rats, while the FF decrease was larger in ND rats after NE injection. Conclusion An automatic iBAT segmentation method for rats was successfully developed using the dynamic labelled FF images of activated BAT and deep learning network.
引用
收藏
页码:215 / 226
页数:12
相关论文
共 50 条
  • [1] Automatic segmentation of the interscapular brown adipose tissue in rats based on deep learning using the dynamic magnetic resonance fat fraction images
    Chuanli Cheng
    Bingxia Wu
    Lei Zhang
    Qian Wan
    Hao Peng
    Xin Liu
    Hairong Zheng
    Huimao Zhang
    Chao Zou
    Magnetic Resonance Materials in Physics, Biology and Medicine, 2024, 37 : 215 - 226
  • [2] Automatic segmentation of whole-body adipose tissue from magnetic resonance fat fraction images based on machine learning
    Zhiming Wang
    Chuanli Cheng
    Hao Peng
    Yulong Qi
    Qian Wan
    Hongyu Zhou
    Shaocheng Qu
    Dong Liang
    Xin Liu
    Hairong Zheng
    Chao Zou
    Magnetic Resonance Materials in Physics, Biology and Medicine, 2022, 35 : 193 - 203
  • [3] Automatic segmentation of whole-body adipose tissue from magnetic resonance fat fraction images based on machine learning
    Wang, Zhiming
    Cheng, Chuanli
    Peng, Hao
    Qi, Yulong
    Wan, Qian
    Zhou, Hongyu
    Qu, Shaocheng
    Liang, Dong
    Liu, Xin
    Zheng, Hairong
    Zou, Chao
    MAGNETIC RESONANCE MATERIALS IN PHYSICS BIOLOGY AND MEDICINE, 2022, 35 (02) : 193 - 203
  • [4] Segmentation and characterization of interscapular brown adipose tissue in rats by multi-parametric magnetic resonance imaging
    Bhanu Prakash, K. N.
    Verma, Sanjay K.
    Yaligar, Jadegoud
    Goggi, Julian
    Gopalan, Venkatesh
    Lee, Swee Shean
    Tian, Xianfeng
    Sugii, Shigeki
    Leow, Melvin Khee Shing
    Bhakoo, Kishore
    Velan, Sendhil S.
    MAGNETIC RESONANCE MATERIALS IN PHYSICS BIOLOGY AND MEDICINE, 2016, 29 (02) : 277 - 286
  • [5] Segmentation and characterization of interscapular brown adipose tissue in rats by multi-parametric magnetic resonance imaging
    K. N. Bhanu Prakash
    Sanjay K. Verma
    Jadegoud Yaligar
    Julian Goggi
    Venkatesh Gopalan
    Swee Shean Lee
    Xianfeng Tian
    Shigeki Sugii
    Melvin Khee Shing Leow
    Kishore Bhakoo
    Sendhil S. Velan
    Magnetic Resonance Materials in Physics, Biology and Medicine, 2016, 29 : 277 - 286
  • [6] Automatic Segmentation of Adipose Tissue from Thigh Magnetic Resonance Images
    Purushwalkam, Senthil
    Li, Baihua
    Meng, Qinggang
    McPhee, Jamie
    IMAGE ANALYSIS AND RECOGNITION, 2013, 7950 : 451 - 458
  • [7] Automatic segmentation of the temporomandibular joint disc on magnetic resonance images using a deep learning technique
    Nozawa, Michihito
    Ito, Hirokazu
    Ariji, Yoshiko
    Fukuda, Motoki
    Igarashi, Chinami
    Nishiyama, Masako
    Ogi, Nobumi
    Katsumata, Akitoshi
    Kobayashi, Kaoru
    Ariji, Eiichiro
    DENTOMAXILLOFACIAL RADIOLOGY, 2022, 51 (01)
  • [8] Automatic Vertebral Body Segmentation Based on Deep Learning of Dixon Images for Bone Marrow Fat Fraction Quantification
    Zhou, Jiamin
    Damasceno, Pablo F.
    Chachad, Ravi
    Cheung, Justin R.
    Ballatori, Alexander
    Lotz, Jeffrey C.
    Lazar, Ann A.
    Link, Thomas M.
    Fields, Aaron J.
    Krug, Roland
    FRONTIERS IN ENDOCRINOLOGY, 2020, 11
  • [9] Brown adipose tissue estimated with the magnetic resonance imaging fat fraction is associated with glucose metabolism in adolescents
    Lundstrom, Elin
    Ljungberg, Joy
    Andersson, Jonathan
    Manell, Hannes
    Strand, Robin
    Forslund, Anders
    Bergsten, Peter
    Weghuber, Daniel
    Morwald, Katharina
    Zsoldos, Fanni
    Widhalm, Kurt
    Meissnitzer, Matthias
    Ahlstrom, Hakan
    Kullberg, Joel
    PEDIATRIC OBESITY, 2019, 14 (09):
  • [10] Deep Learning for Brain Tumor Segmentation using Magnetic Resonance Images
    Gupta, Surbhi
    Gupta, Manoj
    2021 IEEE CONFERENCE ON COMPUTATIONAL INTELLIGENCE IN BIOINFORMATICS AND COMPUTATIONAL BIOLOGY (CIBCB), 2021, : 97 - 102