Comparison of traditional regression modeling vs. AI modeling for the prediction of dental caries: a secondary data analysis

IF 3 Q1 DENTISTRY, ORAL SURGERY & MEDICINE Frontiers in oral health Pub Date : 2024-05-24 DOI:10.3389/froh.2024.1322733
Priya Dey, Chukwuebuka Ogwo, Marisol Tellez
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Abstract

There are substantial gaps in our understanding of dental caries in primary and permanent dentition and various predictors using newer modeling methods such as Machine Learning (ML) algorithms and Artificial Intelligence (AI). The objective of this study is to compare the accuracy, precision, and differences between the caries predictive capability of AI vs. traditional multivariable regression techniques.The study was conducted using secondary data stored in the Temple University Kornberg School of Dentistry electronic health records system (axiUm) of pediatric patients aged 6–16 years who were patients on record at the Pediatric Dentistry Clinic. The outcome variables considered in the study were the decayed–missing–filled teeth (DMFT) and the decayed–extracted–filled teeth (deft) scores. The predictors included age, sex, insurance, fluoride exposure, having a dental home, consumption of sugary meals, family caries experience, having special needs, visible plaque, medications reducing salivary flow, and overall assessment questions.The average DMFT score was 0.85 ± 2.15, while the average deft scores were 0.81 ± 2.15. For childhood dental caries, XGBoost was the best performing ML algorithm with accuracy, sensitivity. and Kappa as 81%, 84%, and 61%, respectively, followed by Support Vector Machine and Lasso Regression algorithms, both with 84% specificity. The most important variables for prediction found were age and visible plaque.The machine learning model outperformed the traditional statistical model in the prediction of childhood dental caries. Data from a more diverse population will help improve the quality of caries prediction for permanent dentition where the traditional statistical method outperformed the machine learning model.
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传统回归模型与人工智能模型在预测龋齿方面的比较:二手数据分析
我们对原牙和恒牙龋齿以及使用机器学习(ML)算法和人工智能(AI)等较新建模方法的各种预测指标的了解还存在很大差距。本研究的目的是比较人工智能与传统多变量回归技术在龋病预测能力方面的准确性、精确性和差异。研究使用了存储在天普大学科恩伯格牙科学院电子健康记录系统(axiUm)中的6-16岁儿童牙科门诊记录在案的儿科患者的二手数据。研究中考虑的结果变量是龋坏缺失填充牙(DMFT)和龋坏拔出填充牙(deft)评分。预测因素包括年龄、性别、保险、氟化物接触、有牙科之家、食用含糖食物、家庭龋齿经历、有特殊需求、可见牙菌斑、减少唾液流量的药物以及总体评估问题。在儿童龋齿方面,XGBoost 是性能最好的多项式算法,准确率、灵敏度和 Kappa 分别为 81%、84% 和 61%,其次是支持向量机和 Lasso 回归算法,特异性均为 84%。在预测儿童龋齿方面,机器学习模型优于传统的统计模型。来自更多不同人群的数据将有助于提高恒牙龋齿预测的质量,在恒牙龋齿预测方面,传统统计方法优于机器学习模型。
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来源期刊
CiteScore
3.30
自引率
0.00%
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0
审稿时长
13 weeks
期刊最新文献
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