Comprehensive Cancer Imaging Centre, Division of Cancer, Dept of Cancer and Surgery, Faculty of Medicine, Imperial College London, Hammersmith Campus, Du Cane Road, London W12 0NS, UK; Dept of Radiology, Imperial College Healthcare NHS Trust, Hammersmith Hospital, Du Cane Rd, London, W12 0NS, UK.
Comprehensive Cancer Imaging Centre, Division of Cancer, Dept of Cancer and Surgery, Faculty of Medicine, Imperial College London, Hammersmith Campus, Du Cane Road, London W12 0NS, UK.
Clin Radiol. 2022 May;77(5):e363-e371. doi: 10.1016/j.crad.2022.01.036. Epub 2022 Mar 5.
To develop a fully automated deep-learning-based approach to measure muscle area for assessing sarcopenia on standard-of-care computed tomography (CT) of the abdomen without any case exclusion criteria, for opportunistic screening for frailty.
This ethically approved retrospective study used publicly available and institutional unselected abdominal CT images (n=1,070 training, n=31 testing). The method consisted of two sequential steps: section detection from CT volume followed by muscle segmentation on single-section. Both stages used fully convolutional neural networks (FCNN), based on a UNet-like architecture. Input data consisted of CT volumes with a variety of fields of view, section thicknesses, occlusions, artefacts, and anatomical variations. Output consisted of segmented muscle area on a CT section at the L3 vertebral level. The muscle was segmented into erector spinae, psoas, and rectus abdominus muscle groups. Output was tested against expert manual segmentation.
Threefold cross-validation was used to evaluate the model. Section detection cross-validation error was 1.41 ± 5.02 (in sections). Segmentation cross-validation Dice overlaps were 0.97 ± 0.02, 0.95 ± 0.04, and 0.94 ± 0.04 for erector spinae, psoas, and rectus abdominus, respectively, and 0.96 ± 0.02 for the combined muscle area, with R = 0.95/0.98 for muscle attenuation/area in 28/31 hold-out test cases. No statistical difference was found between the automated output and a second annotator. Fully automated processing took <1 second per CT examination.
A FCNN pipeline accurately and efficiently automates muscle segmentation at the L3 vertebral level from unselected abdominal CT volumes, with no manual processing step. This approach is promising as a generalisable tool for opportunistic screening for frailty on standard-of-care CT.
开发一种完全自动化的深度学习方法,用于测量肌肉面积,以评估标准护理腹部计算机断层扫描(CT)上的肌肉减少症,无需任何病例排除标准,用于衰弱的机会性筛查。
这项经过伦理批准的回顾性研究使用了公开可用的和机构未选择的腹部 CT 图像(n=1070 个训练,n=31 个测试)。该方法包括两个连续步骤:从 CT 容积中进行节段检测,然后在单节上进行肌肉分割。两个阶段均使用基于 U 型网络结构的全卷积神经网络(FCNN)。输入数据包括具有各种视野、节段厚度、遮挡、伪影和解剖变异的 CT 容积。输出结果是 L3 椎骨水平 CT 节段上的分割肌肉面积。肌肉被分割成竖脊肌、腰大肌和腹直肌肌群。输出结果与专家手动分割进行了比较。
采用三折交叉验证评估模型。节段检测交叉验证误差为 1.41±5.02(节段)。分割交叉验证 Dice 重叠率分别为 0.97±0.02、0.95±0.04 和 0.94±0.04,用于竖脊肌、腰大肌和腹直肌,以及 0.96±0.02 用于综合肌肉面积,在 28/31 个保留测试病例中肌肉衰减/面积的 R 值分别为 0.95/0.98。在自动输出和第二个注释器之间未发现统计学差异。全自动处理过程每个 CT 检查耗时<1 秒。
FCNN 管道准确、高效地自动分割未选择的腹部 CT 容积中的 L3 椎骨水平的肌肉,无需手动处理步骤。这种方法有望成为标准护理 CT 上衰弱机会性筛查的一种通用工具。