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Technical Note: Geometric morphometrics and sexual dimorphism of the greater sciatic notch in adults from two skeletal collections: The accuracy and reliability of sex classification

机译:技术说明:来自两个骨骼集合的成年人中较大坐骨神经切迹的几何形态计量学和性二态性:性别分类的准确性和可靠性

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The greater sciatic notch (GSN) is one of the most important and frequently used characteristics for determining the sex of skeletons, but objective assessment of this characteristic is not without its difficulties. We tested the robustness of GSN sex classification on the basis of geometric morphometrics (GM) and support vector machines (SVM), using two different population samples. Using photographs, the shape of the GSN in 229 samples from two assemblages (documented collections of a Euroamerican population from the Maxwell Museum, University of New Mexico, and a Hispanic population from Universidad Nacional Aut?noma de México, Mexico City) was segmented automatically and evaluated using six curve representations. The optimal dimensionality for each representation was determined by finding the best sex classification. The classification accuracy of the six curve representations in our study was similar but the highest and concurrently homologous cross-validated accuracy of 92% was achieved for a pooled sample using Fourier coefficient and Legendre polynomial methods. The success rate of our classification was influenced by the number of semilandmarks or coefficients and was only slightly affected by GSN marginal point positions. The intrapopulation variability of the female GSN shape was significantly lower compared with the male variability, possibly as a consequence of the intense selection pressure associated with reproduction. Males were misclassified more often than females. Our results show that by using a suitable GSN curve representation, a GM approach, and SVM analysis, it is possible to obtain a robust separation between the sexes that is stable for a multipopulation sample. Am J Phys Anthropol 152:558-565, 2013.
机译:大坐骨神经切口(GSN)是确定骨骼性别的最重要且最常用的特征之一,但是对此特征进行客观评估并非没有困难。我们使用两个不同的人口样本,在几何形态计量学(GM)和支持向量机(SVM)的基础上测试了GSN性别分类的稳健性。使用照片对来自两个集合体(新墨西哥大学麦克斯韦尔博物馆的欧洲裔人口的文献收藏,以及墨西哥城墨西哥国立自治大学的西班牙裔人口)的229个样本中的GSN形状进行自动分割并使用六个曲线表示进行评估。通过找到最佳性别分类,可以确定每种代表的最佳尺寸。在我们的研究中,六个曲线表示的分类精度相似,但是使用傅立叶系数和勒让德多项式方法对合并样本实现了最高和同时的交叉验证的92%的交叉验证精度。我们分类的成功率受半陆标或系数的数量影响,而受GSN边缘点位置的影响很小。女性GSN形状的种群内变异性明显低于男性变异性,这可能是与繁殖相关的强烈选择压力的结果。男性比女性更容易被错误分类。我们的结果表明,通过使用合适的GSN曲线表示,GM方法和SVM分析,有可能获得对于多种群样本稳定的性别之间的稳健分离。 Am J Phys Anthropol 152:558-565,2013年。

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