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Automatic 3-D muscle and fat segmentation of thigh magnetic resonance images in individuals with spinal cord injury

机译:脊髓损伤中个体中大腿磁共振图像的自动三维肌肉和脂肪分割

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Spinal cord injured (SCI) individuals are often subject to skeletal muscles deterioration and adipose tissue gain in paralyzed muscles. These negative impacts can limit motor functions and lead to secondary complications such as diabetes, cardiovascular diseases and metabolic syndrome. In this study, we proposed an accurate and fast automatic framework for thigh muscle and fat volume segmentation using magnetic resonance 3-D images, which is aimed at quantifying the impact of SCI and different rehabilitative interventions for these individuals. In this framework, the subcutaneous, intermuscular fat volumes were segmented using a Linear Combination of Discrete Gaussians (LCDG) algorithm. In order to segment muscle group volumes, each MRI volume was initially registered to a training database using a 3-D Cubic B-splines based method. As a second step, a 3-D level-set method was developed utilizing the Joint Markov Gibbs Random Field (MGRF) model that integrates first order appearance model of the muscles, spatial information, and shape model to localize the muscle groups. The results of testing the new method on 15 MRI datasets from 10 SCI and 5 non-disabled subjects showed accuracy of 87.10% for fat segmentation and 96.71% for muscle group segmentation based on Dice similarity coefficient measurements.
机译:脊髓损伤(SCI)个体往往受到骨骼肌的恶化和脂肪肌肉的脂肪组织增益。这些负面影响可能会限制电动机功能并导致糖尿病,心血管疾病等继发性并发症和代谢综合征。在这项研究中,我们提出了一种使用磁共振3-D图像提出了大腿肌肉和脂肪体积分割的准确和快速的自动框架,其旨在量化SCI和不同康复干预的影响。在该框架中,使用离散高斯(LCDG)算法的线性组合来分割皮下渗出体积。为了对肌肉组卷进行分割,每个MRI卷最初使用基于3-D立方B样条曲线的方法注册到训练数据库。作为第二步,利用联合马尔可夫Gibbs随机场(MGRF)模型开发了三维电平法,该模型集成了肌肉,空间信息和形状模型的第一阶外观模型来定位肌肉群。从10个SCI和5个非残疾对象的15 MRI数据集测试新方法的结果显示,对于骰子相似度系数测量,肥胖分割的脂肪分割的精度为87.10±10℃。

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