Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Predicting the Risk of Maxillary Canine Impaction Based on Maxillary Measurements Using Supervised Machine Learning

View through CrossRef
ABSTRACTObjectivesTo predict palatally impacted maxillary canines based on maxilla measurements through supervised machine learning techniques.Materials and MethodsThe maxilla images from 138 patients were analysed to investigate intermolar width, interpremolar width, interpterygoid width, maxillary length, maxillary width, nasal cavity width and nostril width, obtained through cone beam computed tomography scans. The predictive models were built using the following machine learning algorithms: Adaboost Classifier, Decision Tree, Gradient Boosting Classifier, K‐Nearest Neighbours (KNN), Logistic Regression, Multilayer Perceptron Classifier (MLP), Random Forest Classifier and Support Vector Machine (SVM). A 5‐fold cross‐validation approach was employed to validate each model. Metrics such as area under the curve (AUC), accuracy, recall, precision and F1 Score were calculated for each model, and ROC curves were constructed.ResultsThe predictive model included four variables (two dental and two skeletal measurements). The interpterygoid width and nostril width showed the largest effect sizes. The Gradient Boosting Classifier algorithm exhibited the best metrics, with AUC values ranging from 0.91 [CI95% = 0.74–0.98] for test data to 0.89 [CI95% = 0.86–0.94] for crossvalidation. The nostril width variable demonstrated the highest importance across all tested algorithms.ConclusionThe use of maxillary measurements, through supervised machine learning techniques, is a promising method for predicting palatally impacted maxillary canines. Among the models evaluated, both the Gradient Boosting Classifier and the Random Forest Classifier demonstrated the best performance metrics, with accuracy and AUC values exceeding 0.8, indicating strong predictive capability.
Title: Predicting the Risk of Maxillary Canine Impaction Based on Maxillary Measurements Using Supervised Machine Learning
Description:
ABSTRACTObjectivesTo predict palatally impacted maxillary canines based on maxilla measurements through supervised machine learning techniques.
Materials and MethodsThe maxilla images from 138 patients were analysed to investigate intermolar width, interpremolar width, interpterygoid width, maxillary length, maxillary width, nasal cavity width and nostril width, obtained through cone beam computed tomography scans.
The predictive models were built using the following machine learning algorithms: Adaboost Classifier, Decision Tree, Gradient Boosting Classifier, K‐Nearest Neighbours (KNN), Logistic Regression, Multilayer Perceptron Classifier (MLP), Random Forest Classifier and Support Vector Machine (SVM).
A 5‐fold cross‐validation approach was employed to validate each model.
Metrics such as area under the curve (AUC), accuracy, recall, precision and F1 Score were calculated for each model, and ROC curves were constructed.
ResultsThe predictive model included four variables (two dental and two skeletal measurements).
The interpterygoid width and nostril width showed the largest effect sizes.
The Gradient Boosting Classifier algorithm exhibited the best metrics, with AUC values ranging from 0.
91 [CI95% = 0.
74–0.
98] for test data to 0.
89 [CI95% = 0.
86–0.
94] for crossvalidation.
The nostril width variable demonstrated the highest importance across all tested algorithms.
ConclusionThe use of maxillary measurements, through supervised machine learning techniques, is a promising method for predicting palatally impacted maxillary canines.
Among the models evaluated, both the Gradient Boosting Classifier and the Random Forest Classifier demonstrated the best performance metrics, with accuracy and AUC values exceeding 0.
8, indicating strong predictive capability.

Related Results

Pattern and Prevalence of Maxillary Canine, A CBCT Based Study
Pattern and Prevalence of Maxillary Canine, A CBCT Based Study
Background: Maxillary canines are considered as the keystone of mouth. It plays main role in supporting the upper lip and biting and tearing of food. Canines are also called as cus...
Management of Unilateral Impacted Maxillary Permanent Canine: A Case Report
Management of Unilateral Impacted Maxillary Permanent Canine: A Case Report
Introduction The management of maxillary canine is very complex because it must be carefully planned and carried out as a team. The handling of impacted canine cases must...
Abstract 1772: A naturally occurring canine model of peripheral T-cell lymphoma, not otherwise specified
Abstract 1772: A naturally occurring canine model of peripheral T-cell lymphoma, not otherwise specified
Abstract Despite being the most common subtype of human peripheral T-cell lymphoma (PTCL), PTCL-not otherwise specified (PTCL-NOS) remains a poorly understood diagno...
Clinical, hematological and biochemical findings in cattle suffering from rumen impaction in Libya
Clinical, hematological and biochemical findings in cattle suffering from rumen impaction in Libya
The present study was conducted on 32 cattle suffering from rumen impaction caused by plastic material as foreign body, admitted to the Veterinary Teaching Hospital, University of ...
Prevalence of Impacted Mandibular Third Molar and its Relationship Based on Pell & Gregory Classification
Prevalence of Impacted Mandibular Third Molar and its Relationship Based on Pell & Gregory Classification
Objective: Tooth impaction arises due to insufficient space in the retromolar. Impaction of third molar teeth can cause various oral health problems,  such as discomfort when chewi...

Back to Top