Deep Learning Technique for Automatic Segmentation of Proximal Hip Musculoskeletal Tissues From CT Scan Images: A MrOS Study

被引:0
|
作者
Imani, Mahdi [1 ,2 ,3 ]
Buratto, Jared [3 ]
Dao, Thang [3 ]
Meijering, Erik [4 ]
Vogrin, Sara [1 ,2 ,3 ]
Kwok, Timothy C. Y. [5 ]
Orwoll, Eric S. [6 ]
Cawthon, Peggy M. [7 ,8 ]
Duque, Gustavo [1 ,2 ,3 ,9 ,10 ]
机构
[1] Univ Melbourne, Australian Inst Musculoskeletal Sci AIMSS, St Albans, Vic, Australia
[2] Western Hlth, St Albans, Vic, Australia
[3] Univ Melbourne, Western Hlth, Dept Med, St Albans, Vic, Australia
[4] Univ New South Wales, Sch Comp Sci & Engn, Kensington, NSW, Australia
[5] Chinese Univ Hong Kong, Sch Publ Hlth, Jockey Club Ctr Osteoporosis Care & Control, Shatin, Hong Kong, Peoples R China
[6] Oregon Hlth & Sci Univ, Sch Med, Div Endocrinol Diabet & Clin Nutr, Portland, OR USA
[7] Calif Pacific Med Ctr, Res Inst, San Francisco, CA USA
[8] Univ Calif San Francisco, Sch Med, San Francisco, CA USA
[9] McGill Univ, Res Inst, Hlth Ctr, Bone Muscle & Geroscience Grp, Montreal, PQ, Canada
[10] McGill Univ, Dr Joseph Kaufmann Chair Geriatr Med, Dept Med, Montreal, PQ, Canada
关键词
artificial intelligence; CT scan; image segmentation; intermuscular adipose tissue; marrow adipose tissue; osteoporosis; sarcopenia; CROSS-SECTIONAL AREA; COMPUTED-TOMOGRAPHY; ADIPOSE-TISSUE; SKELETAL-MUSCLE; FAT; ASSOCIATIONS; ATTENUATION; HEALTH;
D O I
10.1002/jcsm.13728
中图分类号
R592 [老年病学]; C [社会科学总论];
学科分类号
03 ; 0303 ; 100203 ;
摘要
Background: Age-related conditions, such as osteoporosis and sarcopenia, alongside chronic diseases, can result in significant musculoskeletal tissue loss. This impacts individuals' quality of life and increases risk of falls and fractures. Computed tomography (CT) has been widely used for assessing musculoskeletal tissues. Although automatic techniques have been investigated for segmenting tissues in the abdomen and mid-thigh regions, studies in proximal hip remain limited. This study aims to develop a deep learning technique for segmentation and quantification of musculoskeletal tissues in CT scans of proximal hip. Methods: We examined 300 participants (men, 73 +/- 6 years) from two cohorts of the Osteoporotic Fractures in Men Study (MrOS). We manually segmented cortical bone, trabecular bone, marrow adipose tissue (MAT), haematopoietic bone marrow (HBM), muscle, intermuscular adipose tissue (IMAT) and subcutaneous adipose tissue (SAT) from CT scan images at the proximal hip level. Using these data, we trained a U-Net-like deep learning model for automatic segmentation. The association between model-generated quantitative results and outcome variables such as grip strength, chair sit-to-stand time, walking speed, femoral neck and spine bone mineral density (BMD), and total lean mass was calculated. Results: An average Dice similarity coefficient (DSC) above 90% was observed across all tissue types in the test dataset. Grip strength showed positive correlations with cortical bone area (coefficient: 0.95, 95% confidence interval: [0.10, 1.80]), muscle area (0.41, [0.19, 0.64]) and average Hounsfield unit for muscle adjusted for height squared (AHU/h(2)) (1.1, [0.53, 1.67]), while it was negatively correlated with IMAT (-1.45, [-2.21, -0.70]) and SAT (-0.32, [-0.50, -0.13]). Gait speed was directly related to muscle area (0.01, [0.00, 0.02]) and inversely to IMAT (-0.04, [-0.07, -0.01]), while chair sit-to-stand time was associated with muscle area (0.98, [0.98, 0.99]), IMAT area (1.04, [1.01, 1.07]), SAT area (1.01, [1.01, 1.02]) and AHU/h(2) for muscle (0.97, [0.95, 0.99]). MAT area showed a potential link to non-trauma fractures post-50 years (1.67, [0.98, 2.83]). Femoral neck BMD was associated with cortical bone (0.09, [0.08, 0.10]), MAT (-0.11, [-0.13, -0.10]), MAT adjusted for total bone marrow area (-0.06, [-0.07, -0.05]) and AHU/h(2) for muscle (0.01, [0.00, 0.02]). Total spine BMD showed similar associations and with AHU for muscle (0.02, [0.00, 0.05]). Total lean mass was correlated with cortical bone (517.3, [148.26, 886.34]), trabecular bone (924, [262.55, 1585.45]), muscle (381.71, [291.47, 471.96]), IMAT (-1096.62, [-1410.34, -782.89]), SAT (-413.28, [-480.26, -346.29]), AHU (527.39, [159.12, 895.66]) and AHU/h(2) (300.03, [49.23, 550.83]). Conclusion: Our deep learning-based technique offers a fast and accurate method for segmentation and quantification of musculoskeletal tissues in proximal hip, with potential clinical value.
引用
收藏
页数:13
相关论文
共 50 条
  • [41] Automatic Osteoporosis Screening System Using Radiomics and Deep Learning from Low-Dose Chest CT Images
    Tong, Xiaoyu
    Wang, Shigeng
    Zhang, Jingyi
    Fan, Yong
    Liu, Yijun
    Wei, Wei
    BIOENGINEERING-BASEL, 2024, 11 (01):
  • [42] Landscape of 2D Deep Learning Segmentation Networks Applied to CT Scan from Lung Cancer Patients: A Systematic Review
    Mehrnia, Somayeh Sadat
    Safahi, Zhino
    Mousavi, Amin
    Panahandeh, Fatemeh
    Farmani, Arezoo
    Yuan, Ren
    Rahmim, Arman
    Salmanpour, Mohammad R.
    JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2025,
  • [43] Evaluation of Semiautomatic and Deep Learning–Based Fully Automatic Segmentation Methods on [18F]FDG PET/CT Images from Patients with Lymphoma: Influence on Tumor Characterization
    Cláudia S. Constantino
    Sónia Leocádio
    Francisco P. M. Oliveira
    Mariana Silva
    Carla Oliveira
    Joana C. Castanheira
    Ângelo Silva
    Sofia Vaz
    Ricardo Teixeira
    Manuel Neves
    Paulo Lúcio
    Cristina João
    Durval C. Costa
    Journal of Digital Imaging, 2023, 36 : 1864 - 1876
  • [44] Deep learning for automatic segmentation of vestibular schwannoma: a retrospective study from multi-center routine MRI
    Kujawa, Aaron
    Dorent, Reuben
    Connor, Steve
    Thomson, Suki
    Ivory, Marina
    Vahedi, Ali
    Guilhem, Emily
    Wijethilake, Navodini
    Bradford, Robert
    Kitchen, Neil
    Bisdas, Sotirios
    Ourselin, Sebastien
    Vercauteren, Tom
    Shapey, Jonathan
    FRONTIERS IN COMPUTATIONAL NEUROSCIENCE, 2024, 18
  • [45] Evaluation of Semiautomatic and Deep Learning-Based Fully Automatic Segmentation Methods on [18F]FDG PET/CT Images from Patients with Lymphoma: Influence on Tumor Characterization
    Constantino, Claudia S.
    Leocadio, Sonia
    Oliveira, Francisco P. M.
    Silva, Mariana
    Oliveira, Carla
    Castanheira, Joana C.
    Silva, Angelo
    Vaz, Sofia
    Teixeira, Ricardo
    Neves, Manuel
    Lucio, Paulo
    Joao, Cristina
    Costa, Durval C.
    JOURNAL OF DIGITAL IMAGING, 2023, 36 (04) : 1864 - 1876
  • [46] A deep learning-based automatic segmentation of zygomatic bones from cone-beam computed tomography images: A proof of concept
    Tao, Baoxin
    Yu, Xinbo
    Wang, Wenying
    Wang, Haowei
    Chen, Xiaojun
    Wang, Feng
    Wu, Yiqun
    JOURNAL OF DENTISTRY, 2023, 135
  • [47] Development and validation of fully automated robust deep learning models for multi-organ segmentation from whole-body CT images
    Salimi, Yazdan
    Shiri, Isaac
    Mansouri, Zahra
    Zaidi, Habib
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2025, 130
  • [48] Using 2D U-Net convolutional neural networks for automatic acetabular and proximal femur segmentation of hip MRI images and morphological quantification: a preliminary study in DDH
    Zhang, Dian
    Zhou, Hongyan
    Zhou, Tianli
    Chang, Yan
    Wang, Lei
    Sheng, Mao
    Jia, Huihui
    Yang, Xiaodong
    BIOMEDICAL ENGINEERING ONLINE, 2024, 23 (01)
  • [49] AOSLO-net: A Deep Learning-Based Method for Automatic Segmentation of Retinal Microaneurysms From Adaptive Optics Scanning Laser Ophthalmoscopy Images
    Zhang, Qian
    Sampani, Konstantina
    Xu, Mengjia
    Cai, Shengze
    Deng, Yixiang
    Li, He
    Sun, Jennifer K.
    Karniadakis, George Em
    TRANSLATIONAL VISION SCIENCE & TECHNOLOGY, 2022, 11 (08):
  • [50] Semi-automatic recognition of juvenile scallops reared in lantern nets from time-lapse images using a deep learning technique
    Natsuike, Masafumi
    Natsuike, Yuki
    Kanamori, Makoto
    Honke, Kazuhiko
    PLANKTON & BENTHOS RESEARCH, 2022, 17 (01) : 91 - 94