Litcius/Paper detail

A machine learning model for orthodontic extraction/non-extraction decision in a racially and ethnically diverse patient population

T. F. D. Mason, Kynnedy M. Kelly, George J. Eckert, Jeffrey A. Dean, M. Murat Dundar, Hakan Türkkahraman

2023International Orthodontics34 citationsDOIOpen Access PDF

Abstract

INTRODUCTION: The purpose of the present study was to create a machine learning (ML) algorithm with the ability to predict the extraction/non-extraction decision in a racially and ethnically diverse sample. METHODS: Data was gathered from the records of 393 patients (200 non-extraction and 193 extraction) from a racially and ethnically diverse population. Four ML models (logistic regression [LR], random forest [RF], support vector machine [SVM], and neural network [NN]) were trained on a training set (70% of samples) and then tested on the remaining samples (30%). The accuracy and precision of the ML model predictions were calculated using the area under the curve (AUC) of the receiver operating characteristics (ROC) curve. The proportion of correct extraction/non-extraction decisions was also calculated. RESULTS: The LR, SVM, and NN models performed best, with an AUC of the ROC of 91.0%, 92.5%, and 92.3%, respectively. The overall proportion of correct decisions was 82%, 76%, 83%, and 81% for the LR, RF, SVM, and NN models, respectively. The features found to be most helpful to the ML algorithms in making their decisions were maxillary crowding/spacing, L1-NB (mm), U1-NA (mm), PFH:AFH, and SN-MP(̊), although many other features contributed significantly. CONCLUSIONS: ML models can predict the extraction decision in a racially and ethnically diverse patient population with a high degree of accuracy and precision. Crowding, sagittal, and vertical characteristics all featured prominently in the hierarchy of components most influential to the ML decision-making process.

Topics & Concepts

Support vector machineArtificial intelligenceExtraction (chemistry)Receiver operating characteristicPopulationMachine learningLogistic regressionDecision treeComputer scienceRandom forestPattern recognition (psychology)MedicineChromatographyChemistryEnvironmental healthDental Radiography and ImagingOrthodontics and Dentofacial OrthopedicsForensic Anthropology and Bioarchaeology Studies