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Automatic segmentation of the thumb trapeziometacarpal joint using parametric statistical shape modelling and random forest regression voting

机译:使用参数统计形状建模和随机森林回归投票自动分割拇指下颌掌关节

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摘要

We propose an automatic pipeline for creating shape modelling suitable parametric meshes of the trapeziometacarpal (TMC) joint from clinical CT images for the purpose of batch processing and analysis. The method uses 3D random forest regression voting with statistical shape model segmentation. The method was demonstrated in a validation experiment involving 65 CT images, 15 of which were randomly selected to be excluded from the training set for testing. With mean root mean squared errors of 1.066 and 0.632 mm for the first metacarpal and trapezial bones, respectively, and a segmentation time of ~2 min per CT image, the preliminary results showed promise for providing accurate 3D meshes of TMC joint bones for batch processing.
机译:我们提出了一种自动管道,用于根据临床CT图像创建梯形掌骨(TMC)关节的形状建模参数网格,以进行批处理和分析。该方法使用具有统计形状模型分割的3D随机森林回归投票。该方法在涉及65张CT图像的验证实验中得到了证明,其中随机选择了15张CT图像排除在训练集之外进行测试。第一掌骨和梯骨的均方根误差分别为1.066和0.632 mm,每张CT图像的分割时间约为2分钟,初步结果表明有望为批量处理提供准确的TMC关节骨3D网格。

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