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Thigh muscle segmentation of chemical shift encoding-based water-fat magnetic resonance images: The reference database MyoSegmenTUM

机译:基于化学位移编码的水脂磁共振图像的大腿肌肉分割:参考数据库MyoSegmenTUM

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摘要

Magnetic resonance imaging (MRI) can non-invasively assess muscle anatomy, exercise effects and pathologies with different underlying causes such as neuromuscular diseases (NMD). Quantitative MRI including fat fraction mapping using chemical shift encoding-based water-fat MRI has emerged for reliable determination of muscle volume and fat composition. The data analysis of water-fat images requires segmentation of the different muscles which has been mainly performed manually in the past and is a very time consuming process, currently limiting the clinical applicability. An automatization of the segmentation process would lead to a more time-efficient analysis. In the present work, the manually segmented thigh magnetic resonance imaging database MyoSegmenTUM is presented. It hosts water-fat MR images of both thighs of 15 healthy subjects and 4 patients with NMD with a voxel size of 3.2x2x4 mm3 with the corresponding segmentation masks for four functional muscle groups: quadriceps femoris, sartorius, gracilis, hamstrings. The database is freely accessible online at . The database is mainly meant as ground truth which can be used as training and test dataset for automatic muscle segmentation algorithms. The segmentation allows extraction of muscle cross sectional area (CSA) and volume. Proton density fat fraction (PDFF) of the defined muscle groups from the corresponding images and quadriceps muscle strength measurements/neurological muscle strength rating can be used for benchmarking purposes.
机译:磁共振成像(MRI)可以无创地评估肌肉解剖结构,运动效果和具有不同潜在病因(例如神经肌肉疾病(NMD))的病理。已经出现了定量MRI,包括使用基于化学位移编码的水脂MRI进行脂肪比例映射的方法,用于可靠地确定肌肉体积和脂肪成分。水脂肪图像的数据分析需要对不同的肌肉进行分割,这在过去主要是手动进行的,并且这是非常耗时的过程,目前限制了临床适用性。分割过程的自动化将导致更节省时间的分析。在当前的工作中,介绍了手动分割的大腿磁共振成像数据库MyoSegmenTUM。它包含15位健康受试者和4位NMD患者的大腿的水脂MR图像,其体素大小为3.2x2x4 mm 3 ,并具有针对四个功能性肌肉群的相应分割蒙版:股四头肌,缝线肌,肌腱,腿筋。该数据库可在上免费在线访问。该数据库主要是指地面真实情况,可用作自动肌肉分割算法的训练和测试数据集。分割允许提取肌肉横截面积(CSA)和体积。来自相应图像和股四头肌肌肉力量测量值/神经肌肉力量等级的定义的肌肉群的质子密度脂肪分数(PDFF)可用于基准测试。

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