用于消除几何形态测量分析中非生物变异的3D地标自动检测。

D Aneja, S R Vora, E D Camci, L G Shapiro, T C Cox
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引用次数: 14

摘要

基于地标的形态计量学分析被人类学家、发育和进化生物学家用来理解形状和大小的差异。在颅骨中)在标本群之间。标准的劳动密集型方法是研究人员手动在3D图像数据集上放置地标。由于地标识别受制于人类感知的不准确性,地标坐标的数字化通常是重复的(通常不止一个人),并使用平均坐标。为了提高研究人员之间的效率和可重复性,我们开发了一种算法来定位CT小鼠半下颌骨数据上的地标。该方法在28天龄小鼠的三维网格上进行了评估,并将结果与专家手动识别的地标进行了比较。对两种近交系小鼠的形状进行定量比较,结果表明,与手工标记数据相比,本文算法获得的数据具有更强的统计能力。
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Automated Detection of 3D Landmarks for the Elimination of Non-Biological Variation in Geometric Morphometric Analyses.

Landmark-based morphometric analyses are used by anthropologists, developmental and evolutionary biologists to understand shape and size differences (eg. in the cranioskeleton) between groups of specimens. The standard, labor intensive approach is for researchers to manually place landmarks on 3D image datasets. As landmark recognition is subject to inaccuracies of human perception, digitization of landmark coordinates is typically repeated (often by more than one person) and the mean coordinates are used. In an attempt to improve efficiency and reproducibility between researchers, we have developed an algorithm to locate landmarks on CT mouse hemi-mandible data. The method is evaluated on 3D meshes of 28-day old mice, and results compared to landmarks manually identified by experts. Quantitative shape comparison between two inbred mouse strains demonstrate that data obtained using our algorithm also has enhanced statistical power when compared to data obtained by manual landmarking.

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