Department of Animal and Human Physiology, Faculty of Biology, School of Sciences, University of Athens, Panepistimiopolis, GR 157 01, Athens, Greece.
Science and Technology in Archaeology and Culture Research Center, The Cyprus Institute, 2121 Aglantzia, Nicosia, Cyprus.
Int J Legal Med. 2020 Sep;134(5):1927-1937. doi: 10.1007/s00414-020-02334-9. Epub 2020 Jun 5.
This paper introduces an automated method for estimating sex from cranial sex diagnostic traits by extracting and evaluating specialized morphometric features from the glabella, the supraorbital ridge, the occipital protuberance, and the mastoid process. The proposed method was developed and evaluated using two European population samples, a Czech sample comprising 170 crania reconstructed from anonymized CT scans and a Greek sample of 156 crania from the Athens Collection. It is based on a fully automatic algorithm applied on 3D models for extracting sex diagnostic morphometric features which are further processed by computer vision and machine learning algorithms. Classification accuracy was evaluated in a population specific and a population generic 2-way cross-validation scheme. Population-specific accuracy for individual morphometric features ranged from 78.5 to 96.7%, whereas population generic correct classification ranged from 71.7 to 90.8%. Combining all sex diagnostic traits in multi-feature sex estimation yielded correct classification performance in excess of 91% for the entire sample, whereas the sex of about three fourths of the sample could be determined with 100% accuracy according to posterior probability estimates. The proposed method provides an efficient and reliable way to estimate sex from cranial remains, and it offers significant advantages over existing methods. The proposed method can be readily implemented with the skullanalyzer computer program and the estimate_sex.m GNU Octave function, which are freely available under a suitable license.
本文介绍了一种通过提取和评估额骨、眉弓、枕骨隆突和乳突等颅部性别诊断特征来自动估计性别的方法。该方法使用两个欧洲人群样本进行了开发和评估,一个是由匿名 CT 扫描重建的 170 个头骨组成的捷克样本,另一个是来自雅典收藏的 156 个头骨的希腊样本。该方法基于一种全自动算法,应用于 3D 模型以提取性别诊断形态特征,然后通过计算机视觉和机器学习算法进行处理。在特定人群和通用人群的 2 路交叉验证方案中评估了分类准确性。个体形态特征的特定人群准确性范围为 78.5%至 96.7%,而通用人群的正确分类范围为 71.7%至 90.8%。将所有性别诊断特征组合在多特征性别估计中,对整个样本的正确分类性能超过 91%,而根据后验概率估计,大约四分之三的样本的性别可以达到 100%的准确性。该方法为从颅骨遗骸中估计性别提供了一种高效可靠的方法,并且与现有方法相比具有显著优势。该方法可以与 skullanalyzer 计算机程序和 estimate_sex.m GNU Octave 函数一起轻松实现,这些程序和函数在适当的许可下免费提供。