Sieber Katie S, García-Donas Julieta Gómez
Centre for Anatomy and Human Identification, School of Science and Engineering, University of Dundee, Dundee, UK.
Centre for Anatomy and Human Identification, School of Science and Engineering, University of Dundee, Dundee, UK.
Leg Med (Tokyo). 2023 Feb;60:102180. doi: 10.1016/j.legalmed.2022.102180. Epub 2022 Nov 23.
Population affinity estimation is an important step in the identification of unknown individuals. To ensure accurate results, validation studies of newly developed methods must be performed using different target populations and skeletal elements. This research aimed to determine the accuracy and reliability of population affinity estimation on a modern Spanish sample using two online software applications. The sample consisted of 114 adult individuals (51 males, 63 females) using 38 measurements and one angle from the skull and mandible. AncesTrees was used for craniometric measurements and (hu)MANid for mandibular variables with different classification models and probability thresholds being evaluated. The required parameters were inputted for each individual and statistics were generated to assess the accuracy of the estimation. AncesTrees performed with the greatest accuracy as the program correctly classified the sample as Southwestern European or European, with highest accuracies being 54.56% (trial 1), 86.05% (trial 2), 82.61% (trial 3), 34.55% (trial 4) and 100% (trial 5). (hu)MANid correctly classified the sample as being from white origin with accuracies ranging from 70.59% to 80% without considering correct sex estimation, while accuracy ranged between 62.75% and 80% accounting for estimated sex. Population affinity estimation may determine subsequent methods used in the construction of the biological profile. Our results demonstrated varying accuracy rates depending on the element and method, offering a critical view in relation to software applicability and validity. Reference populations and intrinsic and extrinsic factors can potentially influence the method accuracy and reliability. Future research should focus on the inclusion of underrepresented groups.
群体亲缘关系估计是识别未知个体的重要步骤。为确保结果准确,必须使用不同的目标群体和骨骼元素对新开发的方法进行验证研究。本研究旨在使用两个在线软件应用程序,确定现代西班牙样本中群体亲缘关系估计的准确性和可靠性。样本包括114名成年人(51名男性,63名女性),对头骨和下颌骨进行了38项测量和1个角度测量。使用AncesTrees进行颅骨测量,使用(hu)MANid进行下颌变量测量,并评估不同的分类模型和概率阈值。为每个个体输入所需参数,并生成统计数据以评估估计的准确性。AncesTrees的准确率最高,该程序将样本正确分类为西南欧或欧洲人,最高准确率分别为54.56%(试验1)、86.05%(试验2)、82.61%(试验3)、34.55%(试验4)和100%(试验5)。(hu)MANid在不考虑正确性别估计的情况下,将样本正确分类为白人,准确率在70.59%至80%之间,而考虑估计性别时,准确率在62.75%至80%之间。群体亲缘关系估计可能会决定构建生物特征档案时后续使用的方法。我们的结果表明,根据元素和方法的不同,准确率也不同,这为软件的适用性和有效性提供了批判性观点。参考群体以及内在和外在因素可能会影响方法的准确性和可靠性。未来的研究应侧重于纳入代表性不足的群体。