Experimental Investigation and Neural Network Modeling for Force System of Retraction T-Spring for Orthodontic Treatment

Author:

Kazem Bahaa I.1,Ghaib Nidahal Hussain2,Grama Noor M. Hasan2

Affiliation:

1. Department of Mechatronics Engineering, College of Engineering, University of Baghdad, Al-Jhadriah Campus, P.O. Box, Baghdad, Iraq

2. College of Dentistry, University of Baghdad, Al-Jhadriah Campus, P.O. Box, Baghdad, Iraq

Abstract

In this work three different cross section groups of stainless steel T-Spring, for tooth retraction, have been tested; each spring is activated for 1 mm, 2 mm, and 3 mm, and the resultant force system is evaluated by using a testing apparatus. The results showed that when the cross section and activation distances are increased, the horizontal force and moment increased, while for the moment-to-force ratio, the lowest mean value was at the first activation distance of the first group, and the highest mean values were at the third activation distance of the third group. All three groups at all activation distance are insufficient to produce bodily tooth movement. T-springs of the (0.016×0.022 in.) cross section and with frequent activation provide the best in force system production. An artificial neural network model was trained for simulation of the correlation between input parameters: spring cross section and activation distance, and the outputs spring force system. The network model has prediction ability with low mean error of force prediction (5.707%), and for the moment is (4.048%), and it can successfully reflect the results that were obtained experimentally with less costs and efforts.

Publisher

ASME International

Subject

Biomedical Engineering,Medicine (miscellaneous)

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1. Artificial intelligence in orthodontics: A way towards modernization;IP Indian Journal of Orthodontics and Dentofacial Research;2023-03-15

2. Artificial Intelligence – Creating the Future in Orthodontics – A Review;Journal of Evolution of Medical and Dental Sciences;2021-07-12

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