Stature estimation equations from fragmentary long bones based on a modern Eastern Mediterranean assemblage.

IF 0.4 4区 社会学 Q3 ANTHROPOLOGY Anthropologischer Anzeiger Pub Date : 2024-10-15 DOI:10.1127/anthranz/2024/1850
Hannah Lee, Nikolaos Podaras, Efthymia Nikita, Maria-Eleni Chovalopoulou, Nefeli Garoufi
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Abstract

Stature estimation is central in forensic anthropology and very important in bioarchaeology. For this reason, several different methods have been proposed, employing different skeletal elements and statistical approaches. A major issue with skeletonized individuals is that their bones are often found fragmented, a taphonomic parameter that limits the application of many available methods. As a result, attempts have been made to create equations to predict either directly stature or long bone length (which can then be used with current stature prediction equations) from bone fragments. The current paper is a contribution in this direction. The femur, tibia and humerus of 76 individuals from a modern Greek skeletal collection were divided into different segments using a landmark approach. Subsequently, univariate and multivariate equations were created to predict both maximum long bone length and stature from the "bone fragments". The models varied in performance depending on the specific bone fragment used, the number of variables simultaneously employed for prediction and the sex of the individuals. Although the models used to directly predict stature from bone fragment dimensions should be treated cautiously because the stature of the assemblage from the Athens Collection had itself been anatomically estimated, the results are valuable towards highlighting the complex association between bone dimensions, long bone length and living/estimated stature.

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基于现代东地中海长骨碎片的身材估算公式。
身材估计是法医人类学的核心,在生物考古学中也非常重要。为此,人们提出了几种不同的方法,采用不同的骨骼元素和统计方法。骸骨化个体的一个主要问题是,他们的骨骼往往是支离破碎的,这是一个古生物学参数,限制了许多现有方法的应用。因此,人们试图建立一些方程,直接从骨骼碎片中预测身材或长骨长度(然后可与现有的身材预测方程一起使用)。本文就是在这一方向上的一个贡献。采用地标法将现代希腊骨骼采集的 76 人的股骨、胫骨和肱骨分为不同的部分。随后,建立了单变量和多变量方程来预测 "骨骼碎片 "的最大长骨长度和身材。这些模型的性能各不相同,取决于所使用的特定骨片、同时用于预测的变量数量以及个体的性别。尽管从骨片尺寸直接预测身材的模型应谨慎对待,因为雅典藏品中的组合身材本身是经过解剖学估算的,但这些结果对于突出骨片尺寸、长骨长度和活体/估算身材之间的复杂联系还是很有价值的。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
34
期刊介绍: AA is an international journal of human biology. It publishes original research papers on all fields of human biological research, that is, on all aspects, theoretical and practical of studies of human variability, including application of molecular methods and their tangents to cultural and social anthropology. Other than research papers, AA invites the submission of case studies, reviews, technical notes and short reports. AA is available online, papers must be submitted online to ensure rapid review and publication.
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