School of Biomedical Engineering (Suzhou), Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei, Anhui, China (R.Z.); Medical Imaging Department, Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou, China (R.Z., W.X., J.J., W.S., X.G.).
Department of Radiology, Yuxi Third Hospital, Yuxi, China (A.H.).
Acad Radiol. 2023 Oct;30(10):2280-2289. doi: 10.1016/j.acra.2023.06.009. Epub 2023 Jul 8.
We aim to develop a CT-based deep learning (DL) system for fully automatic segmentation of regional muscle volume and measurement of the spatial intermuscular fat distribution of the gluteus maximus muscle.
A total of 472 subjects were enrolled and randomly assigned to one of three groups: a training set, test set 1, and test set 2. For each subject in the training set and test set 1, we selected six slices of the CT images as the region of interest for manual segmentation by a radiologist. For each subject in test set 2, we selected all slices of the gluteus maximus muscle on the CT images for manual segmentation. The DL system was constructed using Attention U-Net and the Otsu binary thresholding method to segment the muscle and measure the fat fraction of the gluteus maximus muscle. The segmentation results of the DL system were evaluated using the Dice similarity coefficient (DSC), Hausdorff distance (HD), and the average surface distance (ASD) as metrics. Intraclass correlation coefficients (ICCs) and Bland-Altman plots were used to assess agreement in the measurements of fat fraction between the radiologist and the DL system.
The DL system showed good segmentation performance on the two test sets, with DSCs of 0.930 and 0.873, respectively. The fat fraction of the gluteus maximus muscle measured by the DL system was in agreement with the radiologist (ICC=0.748).
The proposed DL system showed accurate, fully automated segmentation performance and good agreement with the radiologist at fat fraction evaluation, and can be further used for muscle evaluation.
我们旨在开发一种基于 CT 的深度学习(DL)系统,用于全自动分割臀部最大肌肉的区域肌肉体积和测量其空间内肌脂肪分布。
共纳入 472 例患者,随机分为三组:训练集、测试集 1 和测试集 2。对于训练集和测试集 1 中的每个患者,我们选择 6 个 CT 图像切片作为放射科医生手动分割的感兴趣区。对于测试集 2 中的每个患者,我们选择 CT 图像上的所有最大臀部肌肉切片进行手动分割。使用 Attention U-Net 和 Otsu 二值化阈值法构建 DL 系统,以分割肌肉并测量最大臀部肌肉的脂肪分数。使用 Dice 相似系数(DSC)、Hausdorff 距离(HD)和平均表面距离(ASD)作为指标评估 DL 系统的分割结果。使用组内相关系数(ICC)和 Bland-Altman 图评估放射科医生和 DL 系统在脂肪分数测量方面的一致性。
DL 系统在两个测试集上的分割性能良好,DSC 分别为 0.930 和 0.873。DL 系统测量的最大臀部肌肉脂肪分数与放射科医生一致(ICC=0.748)。
所提出的 DL 系统在脂肪分数评估方面具有准确、全自动的分割性能,与放射科医生具有良好的一致性,可进一步用于肌肉评估。