Abstract

Early diagnosis is crucial for individuals who are susceptible to tooth-supporting tissue diseases (e.g., periodontitis) that may lead to tooth loss, so as to prevent systemic implications and maintain quality of life. The aim of this study was to propose a personalized explainable machine learning algorithm, solely based on non-invasive predictors that can easily be collected in a clinic, to identify subjects at risk of developing periodontal diseases. To this end, the individual data and periodontal health of 532 subjects was assessed. A machine learning pipeline combining a feature selection step, multilayer perceptron, and SHapley Additive exPlanations (SHAP) explainability, was used to build the algorithm. The prediction scores for healthy periodontium and periodontitis gave final F1-scores of 0.74 and 0.68, respectively, while gingival inflammation was harder to predict (F1-score of 0.32). Age, body mass index, smoking habits, systemic pathologies, diet, alcohol, educational level, and hormonal status were found to be the most contributive variables for periodontal health prediction. The algorithm clearly shows different risk profiles before and after 35 years of age and suggests transition ages in the predisposition to developing gingival inflammation or periodontitis. This innovative approach to systemic periodontal disease risk profiles, combining both ML and up-to-date explainability algorithms, paves the way for new periodontal health prediction strategies.

Highlights

  • A total of 50% of people over 50 years of age present periodontitis, and they have a potential risk of losing teeth during their lifetimes [1]

  • Because the mere presence of periodontal pathogens is not sufficient at inducing a dysfunctional clinical phenotype [3], it is currently accepted that the evolution towards periodontitis through host–microbiota homeostasis disruption and gingival inflammation occurs only in susceptible hosts [2,4,5], with an increase in the risk factors associated with periodontal disease

  • The aim of this study was to propose a predictive machine learning algorithm to identify the subjects at risk of developing periodontal diseases, solely based on non-invasive predictors that can be collected in the clinic

Read more

Summary

Introduction

A total of 50% of people over 50 years of age present periodontitis, and they have a potential risk of losing teeth during their lifetimes [1]. Susceptibility to periodontitis, as for other inflammatory diseases, appears to change in response to complex interactions between genetic and acquired environmental factors throughout a lifespan (e.g., smoking, pathologies, psychic stress, pregnancy, gender, ethnicity) [6] These modifiable and non-modifiable risk factors, may impact the initiation, progression, and severity of periodontal disease [3,4]. The aim of this study was to propose a predictive machine learning algorithm to identify the subjects at risk of developing periodontal diseases, solely based on non-invasive predictors that can be collected in the clinic. This innovative approach of a systemic periodontal disease risk score, combining both ML and up-to-date explainability algorithms, paves the way for a new strategy of periodontal health prediction

Objectives
Results
Discussion
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call