Dental age estimation by comparing Demirjian's method and machine learning in Southeast Brazilian youth.

IF 1.4 4区 医学 Q2 MEDICINE, LEGAL
Allan Abuabara, Thais Vilalba Paniagua Machado do Nascimento, Kaliane Rodrigues da Cruz, Erika Calvano Küchler, Isabela Ribeiro Madalena, Maria Beatriz Carvalho Ribeiro de Oliveira, César Penazzo Lepri, Maria Angélica Hueb de Menezes-Oliveira, Cristiano Miranda de Araujo, Flares Baratto-Filho
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Abstract

This study evaluated the applicability of combining Demirjian's method with machine learning algorithms to estimate the chronological age of children and adolescents from southeastern Brazil, using dental development stages as predictive variables. A retrospective study was conducted using 610 digital panoramic radiographs of children and adolescents. Demirjian's method was applied to classify the permanent mandibular teeth into eight developmental stages. Eight machine learning models-Linear Regression, Gradient Boosting Regressor, K-Nearest Neighbors Regressor, Support Vector Regression, Multilayer Perceptron Regressor, Decision Tree Regressor, Random Forest Regressor, and AdaBoost Regressor-were trained and evaluated using five-fold cross-validation. Model accuracy was compared to the traditional method using Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), and the Coefficient of Determination (R²). Paired Student's t-tests were used to compare actual chronological age with predicted age estimates, and bootstrapping with 1,000 iterations was performed to calculate 95% confidence intervals (CI95%). Machine learning-based models achieved predictive errors of less than 1.5 years. The Gradient Boosting and Random Forest models demonstrated the highest performance, with an MAE of 0.75 (95% CI: [0.66-0.85]) and an RMSE of 0.92 (95% CI: [0.81-1.05]), representing a 44.03% reduction in MAE and a 43.56% reduction in RMSE compared to Demirjian's method (MAE = 1.34, RMSE = 1.63). Integrating machine learning with Demirjian's method improved the accuracy of dental age estimation, reducing errors and enhancing the reliability of the approach. The application of artificial intelligence reduces the mean absolute error of the dental age estimation method. This approach can optimize diagnoses and assist in both clinical and forensic settings, providing a more precise and adaptable tool for diverse populations.

通过比较Demirjian的方法和机器学习来估计巴西东南部年轻人的牙齿年龄。
本研究评估了将Demirjian的方法与机器学习算法相结合的适用性,以牙齿发育阶段作为预测变量来估计巴西东南部儿童和青少年的实足年龄。对610张儿童和青少年的数字全景x线片进行回顾性研究。采用Demirjian方法将下颌恒牙分为8个发育阶段。八种机器学习模型——线性回归、梯度增强回归、k近邻回归、支持向量回归、多层感知器回归、决策树回归、随机森林回归和AdaBoost回归——通过五倍交叉验证进行了训练和评估。采用平均绝对误差(MAE)、均方根误差(RMSE)和决定系数(R²)与传统方法进行模型精度比较。配对学生t检验用于比较实际年龄与预测年龄估计,并进行1,000次迭代的自举以计算95%置信区间(CI95%)。基于机器学习的模型实现了不到1.5年的预测误差。梯度增强和随机森林模型表现出最高的性能,MAE为0.75 (95% CI: [0.66-0.85]), RMSE为0.92 (95% CI:[0.81-1.05]),与Demirjian的方法(MAE = 1.34, RMSE = 1.63)相比,MAE降低了44.03%,RMSE降低了43.56%。将机器学习与Demirjian的方法相结合,提高了牙龄估计的准确性,减少了误差,增强了方法的可靠性。人工智能的应用降低了牙龄估计方法的平均绝对误差。这种方法可以优化诊断并协助临床和法医设置,为不同人群提供更精确和适应性更强的工具。
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来源期刊
Forensic Science, Medicine and Pathology
Forensic Science, Medicine and Pathology MEDICINE, LEGAL-PATHOLOGY
CiteScore
3.90
自引率
5.60%
发文量
114
审稿时长
6-12 weeks
期刊介绍: Forensic Science, Medicine and Pathology encompasses all aspects of modern day forensics, equally applying to children or adults, either living or the deceased. This includes forensic science, medicine, nursing, and pathology, as well as toxicology, human identification, mass disasters/mass war graves, profiling, imaging, policing, wound assessment, sexual assault, anthropology, archeology, forensic search, entomology, botany, biology, veterinary pathology, and DNA. Forensic Science, Medicine, and Pathology presents a balance of forensic research and reviews from around the world to reflect modern advances through peer-reviewed papers, short communications, meeting proceedings and case reports.
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