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利用锥形束计算机断层扫描样本上的开放获取统计和机器学习工具,探索新的颅测计量指标在生物性别研究中的应用。

Exploratory analysis of new craniometric measures for the investigation of biological sex using open-access statistical and machine-learning tools on a cone-beam computed tomography sample.

机构信息

Federal University of Uberlândia, Minas Gerais, Uberlândia, Brazil.

Social and Preventive Dentistry Department , Centro Universitário Do Triângulo, Minas Gerais, Uberlândia, Brazil.

出版信息

Int J Legal Med. 2024 Nov;138(6):2595-2605. doi: 10.1007/s00414-024-03259-3. Epub 2024 Jun 10.

Abstract

Investigation of the biological sex of human remains is a crucial aspect of physical anthropology. However, due to varying states of skeletal preservation, multiple approaches and structures of interest need to be explored. This research aims to investigate the potential use of distances between bifrontal breadth (FMB), infraorbital foramina distance (IOD), nasal breadth (NLB), inter-canine width (ICD), and distance between mental foramina (MFD) for combined sex prediction through traditional statistical methods and through open-access machine-learning tools. Ethical approval was obtained from the ethics committee, and out of 100 cone beam computed tomography (CBCT) scans, 54 individuals were selected with all the points visible. Ten extra exams were chosen to test the predictors developed from the learning sample. Descriptive analysis of measurements, standard deviation, and standard error were obtained. T-student and Mann-Whitney tests were utilized to assess the sex differences within the variables. A logistic regression equation was developed and tested for the investigation of the biological sex as well as decision trees, random forest, and artificial neural networks machine-learning models. The results indicate a strong correlation between the measurements and the sex of individuals. When combined, the measurements were able to predict sex using a regression formula or machine learning based models which can be exported and added to software or webpages. Considering the methods, the estimations showed an accuracy rate superior to 80% for males and 82% for females. All skulls in the test sample were accurately predicted by both statistical and machine-learning models. This exploratory study successfully established a correlation between facial measurements and the sex of individuals, validating the prediction potential of machine learning, augmenting the investigative tools available to experts with a high differentiation potential.

摘要

研究人类遗骸的生物性别是体质人类学的一个关键方面。然而,由于骨骼保存状态的不同,需要探索多种方法和感兴趣的结构。本研究旨在通过传统统计学方法和开放获取的机器学习工具,研究双额宽(FMB)、眶下孔距(IOD)、鼻宽(NLB)、犬齿间宽(ICD)和颏孔距(MFD)之间的距离用于联合性别预测的潜力。伦理委员会批准了这项研究,从 100 个锥形束计算机断层扫描(CBCT)扫描中选择了 54 名个体,这些个体的所有点都可见。选择了另外 10 次检查来测试从学习样本中开发的预测因子。获得了测量值、标准差和标准误差的描述性分析。利用 t 检验和曼-惠特尼检验评估变量内的性别差异。开发了逻辑回归方程并进行了测试,以调查生物学性别以及决策树、随机森林和人工神经网络机器学习模型。结果表明,测量值与个体性别之间存在很强的相关性。当组合在一起时,这些测量值可以通过回归公式或基于机器学习的模型来预测性别,这些模型可以导出并添加到软件或网页中。考虑到这些方法,估计值显示出男性的准确率优于 80%,女性的准确率优于 82%。所有测试样本中的颅骨都被统计和机器学习模型准确预测。这项探索性研究成功地建立了面部测量值与个体性别的相关性,验证了机器学习的预测潜力,为专家提供了具有高区分潜力的调查工具。

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