Adolescents and Children Age Estimation Using Machine Learning Based on Pulp and Tooth Volumes on CBCT Images.

Q3 Medicine
Jia-Xuan Han, Shi-Hui Shen, Yi-Wen Wu, Xiao-Dan Sun, Tian-Nan Chen, Jiang Tao
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引用次数: 0

Abstract

Objectives: To estimate adolescents and children age using stepwise regression and machine learning methods based on the pulp and tooth volumes of the left maxillary central incisor and cuspid on cone beam computed tomography (CBCT) images, and to compare and analyze the estimation results.

Methods: A total of 498 Shanghai Han adolescents and children CBCT images of the oral and maxillofacial regions were collected. The pulp and tooth volumes of the left maxillary central incisor and cuspid were measured and calculated. Three machine learning algorithms (K-nearest neighbor, ridge regression, and decision tree) and stepwise regression were used to establish four age estimation models. The coefficient of determination, mean error, root mean square error, mean square error and mean absolute error were computed and compared. A correlation heatmap was drawn to visualize and the monotonic relationship between parameters was visually analyzed.

Results: The K-nearest neighbor model (R2=0.779) and the ridge regression model (R2=0.729) outperformed stepwise regression (R2=0.617), while the decision tree model (R2=0.494) showed poor fitting. The correlation heatmap demonstrated a monotonically negative correlation between age and the parameters including pulp volume, the ratio of pulp volume to hard tissue volume, and the ratio of pulp volume to tooth volume.

Conclusions: Pulp volume and pulp volume proportion are closely related to age. The application of CBCT-based machine learning methods can provide more accurate age estimation results, which lays a foundation for further CBCT-based deep learning dental age estimation research.

根据 CBCT 图像上的牙髓和牙齿体积,利用机器学习估算青少年和儿童的年龄。
研究目的根据锥形束计算机断层扫描(CBCT)图像上左上颌中切牙和尖牙的牙髓和牙齿体积,采用逐步回归和机器学习方法估计青少年和儿童的年龄,并对估计结果进行比较和分析:方法:共收集了 498 张上海汉族青少年和儿童口腔颌面部 CBCT 图像。测量并计算了左上颌中切牙和尖牙的牙髓和牙齿体积。使用三种机器学习算法(K-近邻、脊回归和决策树)和逐步回归建立了四个年龄估计模型。计算并比较了决定系数、平均误差、均方根误差、均方误差和平均绝对误差。绘制了相关热图,直观地分析了参数之间的单调关系:结果:K-近邻模型(R2=0.779)和脊回归模型(R2=0.729)的拟合效果优于逐步回归模型(R2=0.617),而决策树模型(R2=0.494)的拟合效果较差。相关热图显示年龄与牙髓体积、牙髓体积与硬组织体积之比以及牙髓体积与牙齿体积之比等参数之间呈单调负相关:结论:牙髓体积和牙髓体积比例与年龄密切相关。结论:牙髓体积和牙髓体积比例与年龄密切相关,应用基于 CBCT 的机器学习方法可以提供更准确的年龄估计结果,这为进一步开展基于 CBCT 的深度学习牙科年龄估计研究奠定了基础。
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来源期刊
法医学杂志
法医学杂志 Medicine-Pathology and Forensic Medicine
CiteScore
1.50
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