AgeEst: An open access web application for skeletal age-at-death estimation employing machine learning

Q3 Medicine
Chrysovalantis Constantinou , Maria-Eleni Chovalopoulou , Efthymia Nikita
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Abstract

The present study tests the accuracy of commonly adopted age-at-death estimation markers based on the morphology of the pubic symphysis, iliac auricular surface and cranial sutures on a contemporary documented skeletal collection from Greece (81 males and 59 females). Machine learning techniques are used to assess whether a) machine learning classification models can correctly classify skeletons into their correct age group and b) machine learning regression models can predict the correct age to a satisfactory degree. The constructed models are used in a web application (AgeEst), where users can easily employ them to make predictions for their own skeletal assemblages. The results show that the use of machine learning improves age predictions in terms of bias and inaccuracy compared to the direct application of the original methods. However, there is a strong misclassification of middle-aged individuals, stressing the inherent biases both of the skeletal markers traditionally used in age-at-death prediction and of machine learning methods that, in our case, tend to classify most individuals to one of the two extremes (young or old). We would like to invite colleagues to share with us raw data from other skeletal collections to expand the training dataset to address to some extent issues of age mimicry, while the notebook used for the analysis as well as the code used to construct the web application are openly available to promote the further development of this or similar applications by other scholars.

AgeEst:一个使用机器学习进行骨骼死亡年龄估计的开放访问web应用程序
本研究测试了基于耻骨联合、髂耳面和颅缝形态的常用死亡年龄估计标记的准确性,这些标记来自希腊当代记录的骨骼标本(81名男性和59名女性)。使用机器学习技术来评估a)机器学习分类模型是否可以正确地将骨骼分类到正确的年龄组,b)机器学习回归模型是否可以令人满意地预测正确的年龄。构建的模型在web应用程序(AgeEst)中使用,用户可以很容易地使用它们对自己的骨架组合进行预测。结果表明,与直接应用原始方法相比,使用机器学习可以改善年龄预测的偏差和不准确性。然而,对中年人的分类存在严重的错误,强调了传统上用于死亡年龄预测的骨骼标记和机器学习方法的固有偏见,在我们的案例中,机器学习方法倾向于将大多数人分类为两个极端之一(年轻或年老)。我们希望邀请同事与我们分享来自其他骨骼收藏的原始数据,以扩展训练数据集,在一定程度上解决年龄模仿问题,而用于分析的笔记本以及用于构建web应用程序的代码是公开的,以促进其他学者进一步开发这一或类似的应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Forensic Science International: Reports
Forensic Science International: Reports Medicine-Pathology and Forensic Medicine
CiteScore
2.40
自引率
0.00%
发文量
47
审稿时长
57 days
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