Department of Computer Science and Artificial Intelligence, University of Granada, Granada, Spain.
Andalusian Research Institute in Data Science and Computational Intelligence, University of Granada, Granada, Spain.
Am J Biol Anthropol. 2024 Jun;184(2):e24912. doi: 10.1002/ajpa.24912. Epub 2024 Feb 24.
Over the past few years, several methods have been proposed to improve the accuracy of age estimation in infants with a focus on dental development as a reliable marker. However, traditional approaches have limitations in efficiently combining information from different teeth and features. In order to address these challenges, this article presents a study on age estimation in infants with Machine Learning (ML) techniques, using deciduous teeth.
The involved dataset comprises 114 infant skeletons from the Granada osteological collection of identified infants, aged between 5 months of gestation and 3 years of age. The samples consist of features such as the maximum length and mineralization and alveolar stages of teeth. For the purpose of designing a method capable of combining all the information available from each individual, a Multilayer Perceptron model is proposed, one of the most popular artificial neural networks. This model has been validated using the leave-one-out experimental validation protocol. Through different groups of experiments, the study examines the informativeness of the aforementioned features, individually and in combination.
The results indicate that the fusion of different variables allows for more accurate age estimates (RMSE = 66 days) than when variables are analyzed separately (RMSE = 101 days). Additionally, the study demonstrates the benefits of involving multiple teeth, which significantly reduces the RMSE compared to a single tooth.
This article underlines the clear advantages of ML-based methods, emphasizing their potential to improve the accuracy and robustness when estimating the age of infants.
在过去的几年中,已经提出了几种方法来提高婴儿年龄估计的准确性,重点是将牙齿发育作为可靠的标志。然而,传统方法在有效地结合来自不同牙齿和特征的信息方面存在局限性。为了解决这些挑战,本文提出了一项使用 ML 技术对婴儿进行年龄估计的研究,使用乳牙。
所涉及的数据集包括来自格拉纳达骨骼收藏的 114 名已识别婴儿的骨骼,年龄在 5 个月妊娠至 3 岁之间。样本包括牙齿的最大长度和矿化以及牙槽骨阶段等特征。为了设计一种能够组合每个个体提供的所有信息的方法,提出了一种多层感知器模型,这是最流行的人工神经网络之一。该模型使用留一法实验验证协议进行了验证。通过不同的实验组,研究检查了上述特征单独和组合的信息量。
结果表明,融合不同变量可以比单独分析变量(RMSE=101 天)更准确地估计年龄(RMSE=66 天)。此外,该研究还表明,涉及多颗牙齿的优势,与单颗牙齿相比,显著降低了 RMSE。
本文强调了基于 ML 的方法的明显优势,强调了它们在估计婴儿年龄时提高准确性和稳健性的潜力。