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A Multiclass Classification Model for Tooth Removal Procedures

Authors :
W.M. de Graaf
T.C.T. van Riet
J. de Lange
J. Kober
Orthodontics
Oral Kinesiology
Maxillofacial Surgery (AMC + VUmc)
Maxillofacial Surgery (AMC)
Oral and Maxillofacial Surgery
AMS - Rehabilitation & Development
AMS - Tissue Function & Regeneration
Source :
Journal of Dental Research, 101(11), de Graaf, W M, van Riet, T C T, de Lange, J & Kober, J 2022, ' A Multiclass Classification Model for Tooth Removal Procedures ', Journal of Dental Research, vol. 101, no. 11, pp. 1357-1362 . https://doi.org/10.1177/00220345221117745, Journal of Dental Research, 101(11), 1357-1362. SAGE Publications Inc., Journal of dental research, 101(11), 1357-1362. SAGE Publications Inc.
Publication Year :
2022

Abstract

Surprisingly little is known about tooth removal procedures. This might be due to the difficulty of gaining reliable data on these procedures. To improve our understanding of these procedures, machine learning techniques were used to design a multiclass classification model of tooth removal based on force, torque, and movement data recorded during tooth removal. A measurement setup consisting of, among others, robot technology was used to gather high-quality data on forces, torques, and movement in clinically relevant dimensions. Fresh-frozen cadavers were used to match the clinical situation as closely as possible. Clinically interpretable variables or “features” were engineered and feature selection took place to process the data. A Gaussian naive Bayes model was trained to classify tooth removal procedures. Data of 110 successful tooth removal experiments were available to train the model. Out of 75 clinically designed features, 33 were selected for the classification model. The overall accuracy of the classification model in 4 random subsamples of data was 86% in the training set and 54% in the test set. In 95% and 88%, respectively, the model correctly classified the (upper or lower) jaw and either the right class or a class of neighboring teeth. This article discusses the design and performance of a multiclass classification model for tooth removal. Despite the relatively small data set, the quality of the data was sufficient to develop a first model with reasonable performance. The results of the feature engineering, selection process, and the classification model itself can be considered a strong first step toward a better understanding of these complex procedures. It has the potential to aid in the development of evidence-based educational material and clinical guidelines in the near future.

Details

Language :
English
ISSN :
00220345
Volume :
101
Issue :
11
Database :
OpenAIRE
Journal :
Journal of Dental Research
Accession number :
edsair.doi.dedup.....55e7e27304907496892c5b72d8a6d1c7