A predictive model for significant periodontal disease progression: A large-scale cohort study
Georgios S Chatzopoulos, Larry F Wolff

TL;DR
This study developed a machine learning model to predict which patients are at high risk for significant periodontal disease progression using real-world clinical data.
Contribution
The study introduces a validated machine learning model for predicting periodontal disease progression using electronic health records.
Findings
The Random Forest model achieved an AUC-ROC of 0.82, 81.6% accuracy, and 79.2% recall in predicting disease progression.
Baseline mean CAL, smoking, age, and diabetes were the most significant predictors of progression.
28.0% of patients experienced significant periodontal disease progression over a 34.7-month follow-up.
Abstract
The progression of periodontitis is challenging to predict. This study aimed to develop and validate a machine learning model to identify patients at high risk for significant periodontal disease progression using a large dataset from electronic health records. This retrospective cohort study included 4,117 patients with at least two comprehensive periodontal examinations separated by a minimum of 24 months. The primary outcome was significant progression, defined as a worsening of mean Clinical Attachment Level (CAL) by 1mm. A Random Forest Classifier was trained and validated using baseline demographic, behavioral (smoking), systemic (diabetes, high blood pressure), and periodontal (mean probing depth, mean CAL, bleeding on probing) data. Feature importance was analyzed, and a multivariable logistic regression was performed to quantify associations. Over a mean follow-up of 34.7…
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Taxonomy
TopicsOral microbiology and periodontitis research · Oral Health Pathology and Treatment · Dental Health and Care Utilization
