Purpose: To develop and validate a computer tool for automatic and simultaneous segmentation of body composition depicted on computed tomography (CT) scans for the following tissues: visceral adipose (VAT), subcutaneous adipose (SAT), intermuscular adipose (IMAT), skeletal muscle (SM), and bone. Approach: A cohort of 100 CT scans acquired from The Cancer Imaging Archive (TCIA) was used - 50 whole-body positron emission tomography (PET)-CTs, 25 chest, and 25 abdominal. Five different body compositions were manually annotated (VAT, SAT, IMAT, SM, and bone). A training-while-annotating strategy was used for efficiency. The UNet model was trained using the already annotated cases. Then, this model was used to enable semi-automatic annotation for the remaining cases. The 10-fold cross-validation method was used to develop and validate the performance of several convolutional neural networks (CNNs), including UNet, Recurrent Residual UNet (R2Unet), and UNet++. A 3-D patch sampling operation was used when training the CNN models. The separately trained CNN models were tested to see if they could achieve a better performance than segmenting them jointly. Paired-samples t-test was used to test for statistical significance. Results: Among the three CNN models, UNet demonstrated the best overall performance in jointly segmenting the five body compositions with a Dice coefficient of 0.840+/-0.091, 0.908+/-0.067, 0.603+/-0.084, 0.889+/-0.027, and 0.884+/-0.031, and a Jaccard index of 0.734+/-0.119, 0.837+/-0.096, 0.437+/-0.082, 0.800+/-0.042, 0.793+/-0.049, respectively for VAT, SAT, IMAT, SM, and bone. Conclusion: There were no significant differences among the CNN models in segmenting body composition, but jointly segmenting body compositions achieved a better performance than segmenting them separately.
翻译:目的:开发并验证一个计算机工具,用于自动和同时分割以下组织组织在计算断层仪表(CT)扫描中描述的身体成份:内脏脂肪(VAT)、下皮脂肪(SAT)、内肌肉脂肪(IMAT)、骨骼肌肉(SM)和骨骼。 方法:使用从癌症成像档案(TCIA)中获取的100个CT扫描器,50个全体正对数断层断层(PET)-CT)、25个胸腔和25个腹部。 五个不同的体成份是手动加注的(VAT、SAT、IMAT、SM和骨头) 。 一个培训同时加注的功能。 然后,这个模型用于为剩余案件提供半自动注解。 10倍交叉校验方法用来开发和验证若干革命性神经网络(CNN)的性能,包括UNTA、IMTO 0.803的骨骼(OT)的性能(R2Unet),一个经过联合测试的SMMM(O)的性能模型,一个比UN-0.0 3的性能(R2UT),一个经过共同测试的成像/UN-0.0)。