Clinical-imaging Model for Predicting Prognosis in Contemporary Endodontic Microsurgery: A Retrospective Machine Learning-based Study.

Journal of endodontics 2026

Tobón-Arroyave SI, Restrepo-Restrepo FA, Marín-Cardona N, Muñoz-Vélez JA, Tangarife-Villa CA, Fasoulas A, Villa-Machado PA

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Abstract

[INTRODUCTION] Predictive tools for endodontic microsurgery outcomes remain limited. This study evaluated the performance of various machine learning algorithms in forecasting endodontic microsurgery prognosis using patient-, tooth-, and procedure-related variables.

[METHODS] A retrospective analysis was conducted on 213 teeth from 180 patients. Clinical and tomographic data were dichotomized and processed using synthetic minority oversampling technique to address class imbalance. Feature selection used SelectKbest, chi-square, mutual information, and ensemble classifiers. Several classifiers including logistic regression, random forest, support vector machine, k-nearest neighbors, simple decision tree, and naïve Bayes were trained and validated on an 80:20 split, with performance assessed via accuracy, sensitivity, specificity, precision, F1-score, and area under the receiver operating characteristic curve. To interpret the model and assess feature importance, the SHapley Additive exPlanations technique was applied.

[RESULTS] The random forest classifier achieved the highest predictive performance (accuracy: 91%, sensitivity: 91%, specificity: 85%, area under the receiver operating characteristic curve: 0.97). Eight key predictors of poor prognosis were identified: lack of guided tissue regeneration techniques, poor root-end filling quality, use of rotary osteotomy, lesion size ≤6.29 mm, patient age >52.50 years, poor root-end resection quality, steep root-end resection bevel, and suboptimal coronal restoration.

[CONCLUSION] This study demonstrates that the random forest model showed strong internal performance, but results may be optimistic given the small, synthetic minority oversampling technique-augmented dataset and single train-test split. SHapley Additive exPlanations-derived predictors are clinically plausible yet represent model associations, underscoring the need for external validation before drawing firm clinical conclusions.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
시술 microsurgery 미세수술 dict 3

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