使用德米尔让法结合机器学习算法估算中国北方汉族儿童和青少年的牙齿年龄

Yu-Xin Guo, Wen-Qing Bu, Yu Tang, Di Wu, Hui Yang, Hao-Tian Meng, Yu-Cheng Guo
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引用次数: 0

摘要

目的研究将戴米尔吉安方法与机器学习算法相结合在中国北方汉族儿童和青少年牙齿年龄估计中的应用价值:收集了中国北方 10 256 名 5 至 24 岁汉族人的口腔全景图像。方法:在中国北方收集了 10 256 名 5 至 24 岁的汉族人的口腔全景图像,采用 Demirjian 方法将左下颌 8 颗恒牙的发育分为不同阶段。研究采用了多种机器学习算法,包括支持向量回归(SVR)、梯度提升回归(GBR)、线性回归(LR)、随机森林回归(RFR)和决策树回归(DTR)。使用这些算法分别根据总样本、雌性样本和雄性样本构建了年龄估计模型。评估了不同机器学习算法在这三类样本中的拟合性能:在所有机器学习模型中,SVR 在总体样本和女性样本中都表现出更高的估计效率,而 GBR 在男性样本中表现最佳。在全部样本、女性样本和男性样本中,最佳年龄估计模型的平均绝对误差(MAE)分别为 1.246 3 岁、1.281 8 岁和 1.153 8 岁。最佳年龄估计模型在不同年龄段表现出不同程度的准确性,为 18 岁以下的个体提供了相对准确的年龄估计:本研究开发的机器学习模型在中国北方汉族儿童和青少年中表现出良好的年龄估计效率。结论:本研究开发的机器学习模型在中国北方汉族儿童和青少年中表现出良好的年龄估计效率,但在应用于成年人群时,其表现并不理想。为了提高年龄估计的准确性,可以考虑使用其他变量。
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Dental Age Estimation in Northern Chinese Han Children and Adolescents Using Demirjian's Method Combined with Machine Learning Algorithms.

Objectives: To investigate the application value of combining the Demirjian's method with machine learning algorithms for dental age estimation in northern Chinese Han children and adolescents.

Methods: Oral panoramic images of 10 256 Han individuals aged 5 to 24 years in northern China were collected. The development of eight permanent teeth in the left mandibular was classified into different stages using the Demirjian's method. Various machine learning algorithms, including support vector regression (SVR), gradient boosting regression (GBR), linear regression (LR), random forest regression (RFR), and decision tree regression (DTR) were employed. Age estimation models were constructed based on total, female, and male samples respectively using these algorithms. The fitting performance of different machine learning algorithms in these three groups was evaluated.

Results: SVR demonstrated superior estimation efficiency among all machine learning models in both total and female samples, while GBR showed the best performance in male samples. The mean absolute error (MAE) of the optimal age estimation model was 1.246 3, 1.281 8 and 1.153 8 years in the total, female and male samples, respectively. The optimal age estimation model exhibited varying levels of accuracy across different age ranges, which provided relatively accurate age estimations in individuals under 18 years old.

Conclusions: The machine learning model developed in this study exhibits good age estimation efficiency in northern Chinese Han children and adolescents. However, its performance is not ideal when applied to adult population. To improve the accuracy in age estimation, the other variables can be considered.

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法医学杂志
法医学杂志 Medicine-Pathology and Forensic Medicine
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Advances in the Study of Cerebrocardiac Syndrome and Its Forensic Significance.
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