Development of intra-oral automated landmark recognition (ALR) for dental and occlusal outcome measurements

Author:

Woodsend Brénainn1,Koufoudaki Eirini2,Lin Ping1,McIntyre Grant2,El-Angbawi Ahmed3,Aziz Azad3,Shaw William3,Semb Gunvor3,Reesu Gowri Vijay3,Mossey Peter A2

Affiliation:

1. Mathematics Department, School of Science and Engineering, University of Dundee, Nethergate, Dundee, UK

2. Orthodontic Department, School of Dentistry, University of Dundee, Nethergate, Dundee, UK

3. School of Medical Sciences, Division of Dentistry, The University of Manchester, Greater Manchester, UK

Abstract

Summary Background Previous studies embracing digital technology and automated methods of scoring dental arch relationships have shown that such technology is valid and accurate. To date, however there is no published literature on artificial intelligence and machine learning to completely automate the process of dental landmark recognition. Objectives This study aimed to develop and evaluate a fully automated system and software tool for the identification of landmarks on human teeth using geometric computing, image segmenting, and machine learning technology. Methods Two hundred and thirty-nine digital models were used in the automated landmark recognition (ALR) validation phase, 161 of which were digital models from cleft palate subjects aged 5 years. These were manually annotated to facilitate qualitative validation. Additionally, landmarks were placed on 20 adult digital models manually by 3 independent observers. The same models were subjected to scoring using the ALR software and the differences (in mm) were calculated. All the teeth from the 239 models were evaluated for correct recognition by the ALR with a breakdown to find which stages of the process caused the errors. Results The results revealed that 1526 out of 1915 teeth (79.7%) were correctly identified, and the accuracy validation gave 95% confidence intervals for the geometric mean error of [0.285, 0.317] for the humans and [0.269, 0.325] for ALR—a negligible difference. Conclusions/implications It is anticipated that ALR software tool will have applications throughout clinical dentistry and anthropology, and in research will constitute an accurate and objective tool for handling large datasets without the need for time intensive employment of experts to place landmarks manually.

Funder

TOPS

National Institute of Dental and Craniofacial Research

Publisher

Oxford University Press (OUP)

Subject

Orthodontics

Reference17 articles.

1. Intraoral 3D scanning or dental impressions for the assessment of dental arch relationships in cleft care: which is superior?;Chalmers;The Cleft Palate-Craniofacial Journal,2016

2. Three-dimensional treatment planning of orthognathic surgery in the era of virtual imaging;Swennen;Journal of Oral and Maxillofacial Surgery,2009

3. Craniofacial imaging in orthodontics—past present and future;Jyothikiran;International Journal of Orthodontics (Milwaukee, Wis.),2014

4. Preliminary investigation of a modified Huddart/Bodenham scoring system for assessment of maxillary arch constriction in unilateral cleft lip and palate subjects;Mossey;European Journal of Orthodontics,2003

5. Classification, epidemiology, and genetics of orofacial clefts;Watkins;Clinics in Plastic Surgery,2014

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