Department of Biomedical Engineering, University of California Davis, Davis, CA 95616, USA.
Signal and Image Processing Institute, University of Southern California, Los Angeles, CA 90089, USA.
Comput Med Imaging Graph. 2018 Jan;63:31-40. doi: 10.1016/j.compmedimag.2017.12.003. Epub 2017 Dec 28.
Segmentation of the carpal bones from 3D imaging modalities, such as magnetic resonance imaging (MRI), is commonly performed for in vivo analysis of wrist morphology, kinematics, and biomechanics. This crucial task is typically carried out manually and is labor intensive, time consuming, subject to high inter- and intra-observer variability, and may result in topologically incorrect surfaces. We present a method, WRist Image Segmentation Toolkit (WRIST), for 3D semi-automated, rapid segmentation of the carpal bones of the wrist from MRI. In our method, the boundary of the bones were iteratively found using prior known anatomical constraints and a shape-detection level set. The parameters of the method were optimized using a training dataset of 48 manually segmented carpal bones and evaluated on 112 carpal bones which included both healthy participants without known wrist conditions and participants with thumb basilar osteoarthritis (OA). Manual segmentation by two expert human observers was considered as a reference. On the healthy subject dataset we obtained a Dice overlap of 93.0 ± 3.8, Jaccard Index of 87.3 ± 6.2, and a Hausdorff distance of 2.7 ± 3.4 mm, while on the OA dataset we obtained a Dice overlap of 90.7 ± 8.6, Jaccard Index of 83.0 ± 10.6, and a Hausdorff distance of 4.0 ± 4.4 mm. The short computational time of 20.8 s per bone (or 5.1 s per bone in the parallelized version) and the high agreement with the expert observers gives WRIST the potential to be utilized in musculoskeletal research.
从磁共振成像(MRI)等 3D 成像方式对腕骨进行分割,通常用于活体分析腕部形态、运动学和生物力学。这项关键任务通常是手动完成的,既耗费体力又耗时,容易受到观察者间和观察者内差异的影响,并且可能导致拓扑不正确的曲面。我们提出了一种方法,WRist Image Segmentation Toolkit(WRIST),用于从 MRI 半自动、快速分割腕骨。在我们的方法中,使用先前已知的解剖学约束和形状检测水平集迭代找到骨骼的边界。使用 48 个手动分割的腕骨的训练数据集对方法的参数进行优化,并在包括无已知腕部疾病的健康参与者和拇指基底骨关节炎(OA)参与者的 112 个腕骨上进行评估。手动分割由两名专家人类观察者进行,作为参考。在健康受试者数据集上,我们获得了 93.0±3.8 的 Dice 重叠率、87.3±6.2 的 Jaccard 指数和 2.7±3.4mm 的 Hausdorff 距离,而在 OA 数据集上,我们获得了 90.7±8.6 的 Dice 重叠率、83.0±10.6 的 Jaccard 指数和 4.0±4.4mm 的 Hausdorff 距离。每个骨骼的计算时间短(20.8 秒),并且与专家观察者的高度一致,这使得 WRIST 有可能用于肌肉骨骼研究。