Machine learning assisted 5-part tooth segmentation method for CBCT-based dental age estimation in adults.

Q3 Medicine
R Merdietio Boedi, S Shepherd, F Oscandar, A J Franco, S Mânica
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引用次数: 0

Abstract

Background: The utilization of segmentation method using volumetric data in adults dental age estimation (DAE) from cone-beam computed tomography (CBCT) was further expanded by using current 5-Part Tooth Segmentation (SG) method. Additionally, supervised machine learning modelling -namely support vector regression (SVR) with linear and polynomial kernel, and regression tree - was tested and compared with the multiple linear regression model.

Material and methods: CBCT scans from 99 patients aged between 20 to 59.99 was collected. Eighty eligible teeth including maxillary canine, lateral incisor, and central incisor were used in this study. Enamel to dentine volume ratio, pulp to dentine volume ratio, lower tooth volume ratio, and sex was utilized as independent variable to predict chronological age.

Results: No multicollinearity was detected in the models. The best performing model comes from maxillary lateral incisor using SVR with polynomial kernel ( = 0.73). The lowest error rate achieved by the model was given also by maxillary lateral incisor, with 4.86 years of mean average error and 6.05 years of root means squared error. However, demands a complex approach to segment the enamel volume in the crown section and a lengthier labour time of 45 minutes per tooth.

基于 CBCT 的成人牙齿年龄估计的机器学习辅助五部分牙齿分割方法。
背景:在利用锥形束计算机断层扫描(CBCT)进行成人牙龄估计(DAE)时,使用体积数据的分割方法的应用范围进一步扩大,使用了当前的五部分牙齿分割(SG)方法。此外,还测试了有监督的机器学习建模,即带有线性和多项式核的支持向量回归(SVR)和回归树,并与多元线性回归模型进行了比较:收集了 99 名年龄在 20 岁至 59 岁之间的患者的 CBCT 扫描图像。本研究使用了 80 颗符合条件的牙齿,包括上颌犬齿、侧切牙和中切牙。将釉质与牙本质体积比、牙髓与牙本质体积比、下牙体积比和性别作为自变量来预测年代年龄:结果:模型中未发现多重共线性。上颌侧切牙使用多项式核 SVR(= 0.73)建立的模型表现最佳。模型误差率最低的也是上颌侧切牙,平均误差为 4.86 年,根均值平方误差为 6.05 年。然而,这要求采用复杂的方法来分割牙冠部分的釉质体积,并且每颗牙齿需要较长的劳动时间(45 分钟)。
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
Journal of Forensic Odonto-Stomatology
Journal of Forensic Odonto-Stomatology Medicine-Pathology and Forensic Medicine
CiteScore
1.20
自引率
0.00%
发文量
14
期刊介绍: The Journal of Forensic Odonto-Stomatology is the official publication of the: INTERNATIONAL ORGANISATION FOR FORENSIC ODONTO-STOMATOLOGY (I.O.F.O.S
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