论文标题
从CT图像中基于深度学习切片的肌肉估算的全自动肌肉减少症评估
Fully-automated deep learning slice-based muscle estimation from CT images for sarcopenia assessment
论文作者
论文摘要
目的:证明使用基于深度学习的方法进行完全自动化切片的肌肉质量测量的有效性,以评估腹部CT扫描的肌肉减少症,而无需任何情况排除标准。 材料和方法:这项回顾性研究是使用公共和私人可用CT图像的集合(n = 1070)进行的。该方法由两个阶段组成:CT体积和单板CT分割的切片检测。这两个阶段都使用了完全卷积神经网络(FCNN),并且基于类似于Unet的架构。输入数据由具有各种视野的CT卷组成。输出由L3椎骨水平的CT切片上的分段肌肉组成。将肌肉质量分为勃起的脊柱,胸肌和腹肌肌肉群。该输出通过专家注释者针对手动基础真相分段进行了测试。 结果:使用3倍的交叉验证来评估所提出的方法。切片检测交叉验证误差为1.41+-5.02(切片)。对于肌肉质量组合的勃起脊柱,PSOA和腹膜分别为0.97+-0.02,0.95+-0.02,0.95+-0.04,0.94+-0.04,分别为腹部脊柱,PSOA和腹肌分别为0.96+-0.02。 结论:一种深度学习方法,用于检测CT切片和分段肌肉质量以进行基于切片的肌肉减少症分析是一种有效而有前途的方法。证明了FCNN准确有效地检测具有各种视野,遮挡和切片厚度的CT体积中的切片。
Objective: To demonstrate the effectiveness of using a deep learning-based approach for a fully automated slice-based measurement of muscle mass for assessing sarcopenia on CT scans of the abdomen without any case exclusion criteria. Materials and Methods: This retrospective study was conducted using a collection of public and privately available CT images (n = 1070). The method consisted of two stages: slice detection from a CT volume and single-slice CT segmentation. Both stages used Fully Convolutional Neural Networks (FCNN) and were based on a UNet-like architecture. Input data consisted of CT volumes with a variety of fields of view. The output consisted of a segmented muscle mass on a CT slice at the level of L3 vertebra. The muscle mass is segmented into erector spinae, psoas, and rectus abdominus muscle groups. The output was tested against manual ground-truth segmentation by an expert annotator. Results: 3-fold cross validation was used to evaluate the proposed method. The slice detection cross validation error was 1.41+-5.02 (in slices). The segmentation cross validation Dice overlaps were 0.97+-0.02, 0.95+-0.04, 0.94+-0.04 for erector spinae, psoas, and rectus abdominus, respectively, and 0.96+-0.02 for the combined muscle mass. Conclusion: A deep learning approach to detect CT slices and segment muscle mass to perform slice-based analysis of sarcopenia is an effective and promising approach. The use of FCNN to accurately and efficiently detect a slice in CT volumes with a variety of fields of view, occlusions, and slice thicknesses was demonstrated.