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Automated Characterization of Body Composition and Frailty with Clinically Acquired CT

机译:利用临床获得的CT自动表征身体成分和虚弱

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Quantification of fat and muscle on clinically acquired computed tomography (CT) scans is critical for determination of body composition, a key component of health. Manual tracing has been regarded as the gold standard method of body segmentation; however, manual tracing is time-consuming. Many semi-automated/automated algorithms have been proposed to avoid the manual efforts. Previous efforts largely focused on segmenting two-dimensional cross-sectional images (e.g., at L3/T4 vertebra locations) rather than on the whole-body volume. In this paper, we propose a fully automated three-dimensional (3D) body composition estimation framework for segmenting the muscle and fat from abdominal CT scans. The 3D whole body segmentations are reconstructed from a slice-wise multi-atlas label fusion (MALF) based framework. First, we use a low-dimensional atlas representation to estimate each class for each axial slice. Second, the abdominal wall and psoas muscle are segmented by combining MALF with active shape models and deformable models. Third, skeletal muscle, visceral adipose tissue (VAT) and subcutaneous adipose tissue (SAT) are measured to assess the areas of muscle and fat tissue. The proposed method was compared to manual segmentation and demonstrated high accuracy. Then, we evaluated the approach on 40 CT scans comparing the new method to a prior atlas-based segmentation method and achieved 0.854, 0.740, 0.887 and 0.933 on Dice similarity index for the skeletal muscle, psoas muscle, VAT and SAT, respectively. Compared with the baseline, our method showed significantly (p < 0.001) higher accuracy on skeletal muscle, VAT and SAT estimation.
机译:临床获取的计算机断层扫描(CT)扫描中的脂肪和肌肉定量对于确定身体组成(健康的关键组成部分)至关重要。手动跟踪已被视为人体分割的金标准方法;但是,手动跟踪非常耗时。为了避免手动工作,已经提出了许多半自动/自动算法。先前的工作主要集中在分割二维横截面图像(例如,在L3 / T4椎骨位置)上,而不是在整个身体上。在本文中,我们提出了一种全自动的三维(3D)人体成分估计框架,用于从腹部CT扫描中分割肌肉和脂肪。从基于切片多图集标签融合(MALF)的框架重建3D全身分割。首先,我们使用低维地图集表示来估计每个轴向切片的每个类别。其次,通过将MALF与活动形状模型和可变形模型相结合来分割腹壁和腰肌。第三,测量骨骼肌,内脏脂肪组织(VAT)和皮下脂肪组织(SAT),以评估肌肉和脂肪组织的面积。将该方法与手动分割进行了比较,并显示出较高的准确性。然后,我们在40次CT扫描上评估了该方法,并将该新方法与先前基于Atlas的分割方法进行了比较,得出骨骼肌,腰大肌,VAT和SAT的Dice相似性指数分别为0.854、0.740、0.887和0.933。与基线相比,我们的方法显示出在骨骼肌,VAT和SAT估计方面的准确性显着提高(p <0.001)。

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