Deep learning for automated segmentation of pelvic muscles, fat, and bone from CT studies for body composition assessment

被引:66
作者
Hemke, Robert [1 ,2 ]
Buckless, Colleen G. [1 ]
Tsao, Andrew [1 ]
Wang, Benjamin [1 ]
Torriani, Martin [1 ]
机构
[1] Harvard Med Sch, Massachusetts Gen Hosp, Dept Radiol, Div Musculoskeletal Imaging & Intervent, 55 Fruit St,YAW 6048, Boston, MA 02114 USA
[2] Univ Amsterdam, Acad Med Ctr, Med Ctr, Dept Radiol & Nucl Med,Amsterdam Movement Sci, Amsterdam, Netherlands
关键词
Deep learning; Muscle; Pelvis; Segmentation; Computed tomography; Body composition; SKELETAL-MUSCLE; COMPUTED-TOMOGRAPHY; GLUTEUS MINIMUS; SARCOPENIA; INFILTRATION; ASSOCIATION; STRENGTH; MASS;
D O I
10.1007/s00256-019-03289-8
中图分类号
R826.8 [整形外科学]; R782.2 [口腔颌面部整形外科学]; R726.2 [小儿整形外科学]; R62 [整形外科学(修复外科学)];
学科分类号
摘要
Objective To develop a deep convolutional neural network (CNN) to automatically segment an axial CT image of the pelvis for body composition measures. We hypothesized that a deep CNN approach would achieve high accuracy when compared to manual segmentations as the reference standard. Materials and methods We manually segmented 200 axial CT images at the supra-acetabular level in 200 subjects, labeling background, subcutaneous adipose tissue (SAT), muscle, inter-muscular adipose tissue (IMAT), bone, and miscellaneous intra-pelvic content. The dataset was randomly divided into training (180/200) and test (20/200) datasets. Data augmentation was utilized to enlarge the training dataset and all images underwent preprocessing with histogram equalization. Our model was trained for 50 epochs using the U-Net architecture with batch size of 8, learning rate of 0.0001, Adadelta optimizer and a dropout of 0.20. The Dice (F1) score was used to assess similarity between the manual segmentations and the CNN predicted segmentations. Results The CNN model with data augmentation of N = 3000 achieved accurate segmentation of body composition for all classes. The Dice scores were as follows: background (1.00), miscellaneous intra-pelvic content (0.98), SAT (0.97), muscle (0.95), IMAT (0.91), and bone (0.92). Mean time to automatically segment one CT image was 0.07 s (GPU) and 2.51 s (CPU). Conclusions Our CNN-based model enables accurate automated segmentation of multiple tissues on pelvic CT images, with promising implications for body composition studies.
引用
收藏
页码:387 / 395
页数:9
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