Predicting Longitudinal Caries Trajectories from Childhood to Early Adulthood.

IF 5.9 1区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
C Ogwo,G Brown,J Warren,P Okeagu,D Caplan,S Levy
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引用次数: 0

Abstract

Prior studies have used traditional trajectory analyses to classify caries progression; however, none have applied machine learning (ML) to predict caries trajectories from childhood to early adulthood. The aims of our study are 1) to use unsupervised ML to perform trajectory analysis by clustering the longitudinal caries data into distinct trajectory groups and 2) to utilize supervised ML to predict trajectory group membership from behavioral/dietary, fluoride, and sociodemographic variables. This study was conducted using longitudinal data from 560 Iowa Fluoride Study participants. Trajectory analysis was first done via K-means for longitudinal data on caries data (D2+MFS counts) obtained at ages 9 y (n = 523), 13 y (n = 549), 17 y (n = 464), and 23 y (n = 342). The optimal number of trajectory groups was based on the Caliński-Harabasz criterion and clinical relevance. Supervised ML was then performed with trajectory group membership as the outcome variable against 11 predictor variables. The performance of 5 models was compared by Brier score and accuracy: 1) ordered multinomial logistic regression, 2) least absolute shrinkage and selection operation, 3) gradient boosting machine, 4) extreme gradient boosting, and 5) neural network. Of the 560 participants included in this study, 3 caries trajectory groups were identified: low (70.5%), medium (21.1%), and high (8.4%), characterized by minimal, moderate, and severe and progressive disease, respectively. Extreme gradient boosting outperformed the other 4 models, with 85.9% accuracy and a Brier score of 0.21. Top predictors included sex, socioeconomic status, home water fluoride concentration, fluoride intake from other sources, sugar-sweetened beverages, and 100% juice. This is the first study to combine ML models to predict caries trajectories from childhood to adulthood with high accuracy. Additional work is needed for validation using diverse clinical data. Predicting caries trajectories via ML could enable early identification of individuals at high risk and inform targeted, age-appropriate preventive interventions.
预测从童年到成年早期的纵向蛀牙轨迹。
先前的研究使用传统的轨迹分析来分类龋齿的进展;然而,还没有人应用机器学习(ML)来预测从童年到成年早期的蛀牙轨迹。本研究的目的是:1)使用无监督机器学习通过将纵向龋齿数据聚类到不同的轨迹组来进行轨迹分析;2)利用监督机器学习从行为/饮食、氟化物和社会人口变量中预测轨迹组成员。这项研究是利用560名爱荷华州氟化物研究参与者的纵向数据进行的。首先通过K-means对9岁(n = 523)、13岁(n = 549)、17岁(n = 464)和23岁(n = 342)时获得的龋病数据(D2+MFS计数)的纵向数据进行轨迹分析。轨迹组的最佳数量基于Caliński-Harabasz标准和临床相关性。然后以轨迹组成员作为11个预测变量的结果变量进行监督ML。通过Brier评分和准确率比较5个模型的性能:1)有序多项式逻辑回归,2)最小绝对收缩和选择操作,3)梯度增强机,4)极端梯度增强,5)神经网络。在这项研究中纳入的560名参与者中,确定了3个龋轨迹组:低(70.5%)、中(21.1%)和高(8.4%),分别以轻度、中度、重度和进展性疾病为特征。极端梯度增强优于其他4种模型,准确率为85.9%,Brier评分为0.21。最主要的预测因素包括性别、社会经济地位、家庭用水氟化物浓度、从其他来源摄入的氟化物、含糖饮料和100%果汁。这是第一次将ML模型结合起来,以高精度预测从童年到成年的龋齿轨迹。需要额外的工作来验证使用不同的临床数据。通过机器学习预测龋齿轨迹可以早期识别高危人群,并为有针对性的、适合年龄的预防干预提供信息。
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 Dental Research
Journal of Dental Research 医学-牙科与口腔外科
CiteScore
15.30
自引率
3.90%
发文量
155
审稿时长
3-8 weeks
期刊介绍: The Journal of Dental Research (JDR) is a peer-reviewed scientific journal committed to sharing new knowledge and information on all sciences related to dentistry and the oral cavity, covering health and disease. With monthly publications, JDR ensures timely communication of the latest research to the oral and dental community.
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