Abstract

IntroductionLittle is understood about the socioeconomic predictors of tooth loss, a condition that can negatively impact individual’s quality of life. The goal of this study is to develop a machine-learning algorithm to predict complete and incremental tooth loss among adults and to compare the predictive performance of these models.MethodsWe used data from the National Health and Nutrition Examination Survey from 2011 to 2014. We developed multiple machine-learning algorithms and assessed their predictive performances by examining the area under the receiver operating characteristic curve (AUC), accuracy, sensitivity, specificity, and positive and negative predictive values.ResultsThe extreme gradient boosting trees presented the highest performance in the prediction of edentulism (AUC = 88.7%; 95%CI: 87.1, 90.2), the absence of a functional dentition (AUC = 88.3% 95%CI: 87.3,89.3) and for predicting missing any tooth (AUC = 83.2%; 95%CI, 82.0, 84.4). Although, as expected, age and routine dental care emerged as strong predictors of tooth loss, the machine learning approach identified additional predictors, including socioeconomic conditions. Indeed, the performance of models incorporating socioeconomic characteristics was better at predicting tooth loss than those relying on clinical dental indicators alone.ConclusionsFuture application of machine-learning algorithm, with longitudinal cohorts, for identification of individuals at risk for tooth loss could assist clinicians to prioritize interventions directed toward the prevention of tooth loss.

Highlights

  • Little is understood about the socioeconomic predictors of tooth loss, a condition that can negatively impact individual’s quality of life

  • As expected, age and routine dental care emerged as strong predictors of tooth loss, the machine learning approach identified additional predictors, including socioeconomic conditions

  • The performance of models incorporating socioeconomic characteristics was better at predicting tooth loss than those relying on clinical dental indicators alone

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Summary

Objectives

The goal of this study is to develop a machinelearning algorithm to predict complete and incremental tooth loss among adults and to compare the predictive performance of these models. Our objective is to build on that evidence and develop and test multiple machine-learning algorithms to predict complete and incremental tooth loss among adults using socioeconomic and medical condition predictors and to compare the predictive performance of those developed models

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