Toneva Diana, Nikolova Silviya, Agre Gennady, Harizanov Stanislav, Fileva Nevena, Milenov Georgi, Zlatareva Dora
Institute of Experimental Morphology, Pathology and Anthropology with Museum, Bulgarian Academy of Sciences, 1113 Sofia, Bulgaria.
Institute of Information and Communication Technologies, Bulgarian Academy of Sciences, 1113 Sofia, Bulgaria.
Biology (Basel). 2024 Sep 29;13(10):780. doi: 10.3390/biology13100780.
The development of current sexing methods largely depends on the use of adequate sources of data and adjustable classification techniques. Most sex estimation methods have been based on linear measurements, while the angles have been largely ignored, potentially leading to the loss of valuable information for sex discrimination. This study aims to evaluate the usefulness of cranial angles for sex estimation and to differentiate the most dimorphic ones by training machine learning algorithms. Computed tomography images of 154 males and 180 females were used to derive data of 36 cranial angles. The classification models were created by support vector machines, naïve Bayes, logistic regression, and the rule-induction algorithm CN2. A series of cranial angle subsets was arranged by an attribute selection scheme. The algorithms achieved the highest accuracy on subsets of cranial angles, most of which correspond to well-known features for sex discrimination. Angles characterizing the lower forehead and upper midface were included in the best-performing models of all algorithms. The accuracy results showed the considerable classification potential of the cranial angles. The study demonstrates the value of the cranial angles as sex indicators and the possibility to enhance the sex estimation accuracy by using them.
当前性别鉴定方法的发展很大程度上取决于使用充足的数据来源和可调整的分类技术。大多数性别估计方法基于线性测量,而角度在很大程度上被忽视了,这可能导致在性别歧视方面失去有价值的信息。本研究旨在评估颅骨角度在性别估计中的有用性,并通过训练机器学习算法来区分最具二态性的角度。使用154名男性和180名女性的计算机断层扫描图像来获取36个颅骨角度的数据。分类模型由支持向量机、朴素贝叶斯、逻辑回归和规则归纳算法CN2创建。通过属性选择方案安排了一系列颅骨角度子集。这些算法在颅骨角度子集上取得了最高准确率,其中大部分对应于众所周知的性别歧视特征。表征下额和上中面部的角度包含在所有算法的最佳表现模型中。准确率结果显示了颅骨角度具有相当大的分类潜力。该研究证明了颅骨角度作为性别指标的价值以及使用它们提高性别估计准确性的可能性。