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基于 CT 图像的日本和西澳大利亚人群股骨近端测量估算人群亲和力。

Estimation of population affinity using proximal femoral measurements based on computed tomographic images in the Japanese and western Australian populations.

机构信息

Centre for Forensic Anthropology, University of Western Australia, Crawley, WA, 6009, Australia.

Department of Forensic Medicine, Graduate School of Medicine, The University of Tokyo, Tokyo, 113-0033, Japan.

出版信息

Int J Legal Med. 2024 Sep;138(5):2169-2179. doi: 10.1007/s00414-024-03257-5. Epub 2024 May 20.

Abstract

The present study analyzes morphological differences femora of contemporary Japanese and Western Australian individuals and investigates the feasibility of population affinity estimation based on computed tomographic (CT) data. The latter is deemed to be of practical importance because most anthropological methods rely on the assessment of aspects of skull morphology, which when damaged and/or unavailable, often hampers attempts to estimate population affinity. The study sample comprised CT scans of 297 (146 females; 151 males) Japanese and 330 (145 females; 185 males) Western Australian adult individuals. A total of 10 measurements were acquired in two-dimensional CT images of the left and right femora; two machine learning methods (random forest modeling [RFM]) and support vector machine [SVM]) were then applied for population affinity classification. The accuracy of the two-way (sex-specific and sex-mixed) model was between 71.38 and 82.07% and 76.09-86.09% for RFM and SVM, respectively. Sex-specific (female and male) models were slightly more accurate compared to the sex-mixed models; there were no considerable differences in the correct classification rates between the female- and male-specific models. All the classification accuracies were higher in the Western Australian population, except for the male model using SVM. The four-way sex and population affinity model had an overall classification accuracy of 74.96% and 79.11% for RFM and SVM, respectively. The Western Australian females had the lowest correct classification rate followed by the Japanese males. Our data indicate that femoral measurements may be particularly useful for classification of Japanese and Western Australian individuals.

摘要

本研究分析了当代日本和西澳大利亚个体的股骨形态差异,并探讨了基于计算机断层扫描 (CT) 数据进行人群亲和度估计的可行性。后者被认为具有实际意义,因为大多数人类学方法依赖于评估颅骨形态的各个方面,而当颅骨受损和/或无法获得时,通常会阻碍对人群亲和度的估计。研究样本包括 297 名(146 名女性;151 名男性)日本人和 330 名(145 名女性;185 名男性)西澳大利亚成年个体的 CT 扫描。在左、右股骨的二维 CT 图像中获得了 10 项测量值;然后应用两种机器学习方法(随机森林建模 [RFM])和支持向量机 [SVM])进行人群亲和度分类。两种方法(性别特异性和性别混合)模型的双向分类准确率分别在 71.38%至 82.07%和 76.09%至 86.09%之间,RFM 和 SVM 的准确率分别为 76.09%至 86.09%。与性别混合模型相比,性别特异性(女性和男性)模型稍为准确;女性和男性特异性模型之间的正确分类率没有明显差异。所有分类准确率在西澳大利亚人群中均较高,除了 SVM 男性模型。四向性别和人群亲和度模型的整体分类准确率分别为 RFM 的 74.96%和 SVM 的 79.11%。西澳大利亚女性的正确分类率最低,其次是日本男性。我们的数据表明,股骨测量值可能特别有助于日本和西澳大利亚个体的分类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0f6/11306720/a9453f0e211e/414_2024_3257_Fig1_HTML.jpg

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