Institute of Forensic Medicine, University of Zurich, Zurich, Switzerland.
Department of Mathematics and Computer Science, University of Basel, Basel, Switzerland.
Am J Phys Anthropol. 2019 Jun;169(2):279-286. doi: 10.1002/ajpa.23828. Epub 2019 Mar 30.
Estimating the sex of decomposed corpses and skeletal remains of unknown individuals is one of the first steps in the identification process in forensic contexts. Although various studies have considered the femur for sex estimation, the focus has primarily been on a specific single or a handful of measurements rather than the entire shape of the bone. In this article, we use statistical shape modeling (SSM) for sex estimation. We hypothesize that the accuracy of sex estimation will be improved by using the entire shape.
For this study, we acquired a total of 61 femora from routine postmortem CT scans at the Institute for Forensic Medicine of the University of Zurich. The femora were extracted using segmentation technique. After building a SSM, we used the linear regression and nonlinear support vector machine technique for classification.
Using linear logistic regression and only the first principal component of the SSM, 76% of the femora were correctly classified by sex. Using the first five principal components, this value could be increased to 80%. Using nonlinear support vector machines and the first 20 principal components increased the rate of correctly classified femora to 87%.
Despite some limitations, the results obtained by using SSM for sex estimation in femur were promising and confirm the findings of other studies. Sex estimation accuracy, however, is not significantly improved over single or multiple linear measurements. Further research might improve the sex determination process in forensic anthropology by using SSM.
在法医学背景下,对未知个体的尸体和骨骼遗骸进行性别估计是识别过程的第一步。尽管有许多研究都考虑过使用股骨进行性别估计,但重点主要集中在一个特定的单一或少数几个测量值上,而不是骨骼的整体形状。在本文中,我们使用统计形状建模(SSM)进行性别估计。我们假设通过使用整个形状可以提高性别估计的准确性。
为此研究,我们从苏黎世大学法医学研究所的常规死后 CT 扫描中总共获得了 61 个股骨。使用分割技术提取股骨。在构建 SSM 后,我们使用线性回归和非线性支持向量机技术进行分类。
使用线性逻辑回归和 SSM 的第一个主成分,76%的股骨可以正确地按性别分类。使用前五个主成分,这个值可以增加到 80%。使用非线性支持向量机和前 20 个主成分,正确分类的股骨比例增加到 87%。
尽管存在一些局限性,但使用 SSM 进行股骨性别估计的结果是有希望的,并且证实了其他研究的发现。然而,与单个或多个线性测量值相比,性别估计的准确性并没有显著提高。进一步的研究可能会通过使用 SSM 来改善法医人类学中的性别确定过程。