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Automated assessment of paraspinal muscle fat composition based on the segmentation of chemical shift encoding-based water/fat-separated images

机译:基于化学换档编码的水/脂肪分离图像的分割的自动评估肩胛骨脂肪组分

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摘要

Abstract Proton-density fat fraction (PDFF) of the paraspinal muscles, derived from chemical shift encoding-based water-fat magnetic resonance imaging, has emerged as an important surrogate biomarker in individuals with intervertebral disc disease, osteoporosis, sarcopenia and neuromuscular disorders. However, quantification of paraspinal muscle PDFF is currently limited in clinical routine due to the required time-consuming manual segmentation procedure. The present study aimed to develop an automatic segmentation algorithm of the lumbar paraspinal muscles based on water-fat sequences and compare the performance of this algorithm to ground truth data based on manual segmentation. The algorithm comprised an average shape model, a dual feature model, associating each surface point with a fat and water image appearance feature, and a detection model. Right and left psoas, quadratus lumborum and erector spinae muscles were automatically segmented. Dice coefficients averaged over all six muscle compartments amounted to 0.83 (range 0.75–0.90).
机译:椎旁肌的抽象质子密度脂肪级分(PDFF),从基于编码化学位移水 - 脂肪的磁共振成像得到的,已成为在与椎间盘疾病,骨质疏松症,肌肉减少和神经肌肉疾病的个体的一个重要的替代标志物。然而,椎旁肌PDFF的量化,目前在临床常规由于所需耗时的人工分割程序的限制。针对本研究开发一种基于水发序列腰椎椎旁肌的自动分割算法和比较算法基于手动分割地面实况数据的性能。该算法包括平均形状模型,双特征模型,与脂肪和水图像的外观特征,每个表面点相关联,以及一个检测模型。右侧和左侧腰大肌,腰方肌和竖脊肌被自动分割。骰子系数平均超过所有六个肌肉车厢达0.83(范围0.75-0.90)。

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