基于五种颅骨特征估计性别的统计分类方法:使用3D CT模型的非度量评估。

IF 0.7 4区 社会学 Q3 ANTHROPOLOGY Homo-Journal of Comparative Human Biology Pub Date : 2023-04-14 DOI:10.1127/homo/2023/1632
Yun Taek Shim, Deog-Im Kim, Nahyun Aum, Seung Gyu Choi, Young Seok Lee, Hyung Nam Koo, Yi-Suk Kim
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引用次数: 0

摘要

在性别估计中,根据几何原理对5个颅非度量特征进行得分分类。原籍人口是影响颅骨非计量性状的因素之一。此外,在5个颅骨特征中,对性别估计的稳健性特征在不同人群中存在差异。本研究的目的是提出最有用的性别估计方法,并证明需要一种适合每个人口的方法。使用Buikstra & Ubelaker(1994)中概述的五个颅骨非度量特征的序数评分系统,对来自21世纪韩国尸检尸体的135个三维颅骨图像进行了评估。各性状的得分均采用线性判别分析和决策树分析进行性别估计。研究人员分析了每种特征的出现频率,并将其与其他研究中的人群进行了比较。判别分析的准确率为88.1%,决策树分析的准确率为90.4%。在判别分析和决策树分析中,准确率最高的性状是眉骨和乳突。判别分析和决策树结果表明,用颅骨非度量方法对现代韩国尸体进行性别估计具有很高的准确性。当将本研究中的频率得分模式与其他人群的频率得分模式进行比较时,每个人群估计性别的特征得分模式是不同的,即使在同一亚洲地区的人群中也是如此,这表明需要适合特定人群的方法。
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Statistical classification methods for estimating sex based on five skull traits: A nonmetric assessment using 3D CT models.

Five cranial nonmetric traits for sex estimation for sex estimation are classified by score according to geometry. The population of origin is one of the factors influencing cranial nonmetric traits. Moreover, among the five cranial traits, the robust traits for estimating sex varied across population. The aim of this study is to suggest the most useful method for sex estimation and demonstrate the need of a suitable method for each population. One-hundred thirty-five three-dimensional skull images from 21st century Korean autopsy cadavers were evaluated using the ordinal scoring system of five cranial nonmetric traits as outlined in Buikstra & Ubelaker (1994). All scores of each trait were analyzed by linear discriminant and decision tree analyses for sex estimation. The frequency of each trait was analyzed and compared to populations from other studies. The accuracy for both sexes was 88.1% by discriminant analysis and 90.4% by decision tree. The traits with the highest accuracy were the glabella and mastoid process in both discriminant analysis and decision tree. Sex estimation in modern Korean cadavers using the cranial nonmetric method was shown to be highly accurate by both discriminant analysis and decision tree. When comparing the pattern of frequency scores in this study with those of other populations, the pattern of trait scores for estimating sex was different for each population, even among populations in the same Asian region, which suggests the need for methods suited for specific populations.

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来源期刊
CiteScore
1.50
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0.00%
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6
期刊最新文献
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