School of Engineering Science, Simon Fraser University, Canada.
School of Engineering Science, Simon Fraser University, Canada.
Comput Med Imaging Graph. 2019 Jul;75:47-55. doi: 10.1016/j.compmedimag.2019.04.007. Epub 2019 May 9.
In diseases such as cancer, patients suffer from degenerative loss of skeletal muscle (cachexia). Muscle wasting and loss of muscle function/performance (sarcopenia) can also occur during advanced aging. Assessing skeletal muscle mass in sarcopenia and cachexia is therefore of clinical interest for risk stratification. In comparison with fat, body fluids and bone, quantifying the skeletal muscle mass is more challenging. Computed tomography (CT) is one of the gold standard techniques for cancer diagnostics and analysis of progression, and therefore a valuable source of imaging for in vivo quantification of skeletal muscle mass. In this paper, we design a novel deep neural network-based algorithm for the automated segmentation of skeletal muscle in axial CT images at the third lumbar (L3) and the fourth thoracic (T4) levels. A two-branch network with two training steps is investigated. The network's performance is evaluated for three trained models on separate datasets. These datasets were generated by different CT devices and data acquisition settings. To ensure the model's robustness, each trained model was tested on all three available test sets. Errors and the effect of labeling protocol in these cases were analyzed and reported. The best performance of the proposed algorithm was achieved on 1327 L3 test samples with an overlap Jaccard score of 98% and sensitivity and specificity greater than 99%.
在癌症等疾病中,患者会遭受骨骼肌退行性丧失(恶病质)。在衰老晚期,也会发生肌肉减少和肌肉功能/性能丧失(肌少症)。因此,评估肌少症和恶病质中的骨骼肌质量对风险分层具有临床意义。与脂肪、体液和骨骼相比,定量骨骼肌质量更具挑战性。计算机断层扫描(CT)是癌症诊断和进展分析的金标准技术之一,因此是用于体内定量骨骼肌质量的有价值的成像源。在本文中,我们设计了一种新的基于深度神经网络的算法,用于在第三腰椎(L3)和第四胸椎(T4)水平的轴向 CT 图像中自动分割骨骼肌。研究了具有两个训练步骤的双分支网络。在三个独立数据集上评估了三个训练模型的网络性能。这些数据集是由不同的 CT 设备和数据采集设置生成的。为了确保模型的稳健性,每个训练模型都在所有三个可用测试集上进行了测试。分析并报告了这些情况下的错误和标签协议的影响。该算法在 1327 个 L3 测试样本上的最佳性能为重叠 Jaccard 分数为 98%,灵敏度和特异性均大于 99%。