Dental Images Recognition Technology and Applications: A Literature Review
Neural networks are increasingly being used in the field of dentistry. The aim of this literature review was to visualize the state of the art of artificial intelligence in dental applications, such as the detection of teeth, caries, filled teeth, crown, prosthesis, dental implants and endodontic tr...
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doaj-63b093c4a6a54fe0b509b8e4c739e9512020-11-25T02:29:51ZengMDPI AGApplied Sciences2076-34172020-04-01102856285610.3390/app10082856Dental Images Recognition Technology and Applications: A Literature ReviewMaría Prados-Privado0Javier García Villalón1Carlos Hugo Martínez-Martínez2Carlos Ivorra3Asisa Dental, Research Department, C/José Abascal, 32, 28003 Madrid, SpainAsisa Dental, Research Department, C/José Abascal, 32, 28003 Madrid, SpainAsisa Dental, Research Department, C/José Abascal, 32, 28003 Madrid, SpainAsisa Dental, Research Department, C/José Abascal, 32, 28003 Madrid, SpainNeural networks are increasingly being used in the field of dentistry. The aim of this literature review was to visualize the state of the art of artificial intelligence in dental applications, such as the detection of teeth, caries, filled teeth, crown, prosthesis, dental implants and endodontic treatment. A search was conducted in PubMed, the Institute of Electrical and Electronics Engineers (IEEE) Xplore and arXiv.org. Data extraction was performed independently by two reviewers. Eighteen studies were included. The variable teeth was the most analyzed (<i>n =</i> 9), followed by caries (<i>n</i> = 7). No studies detecting dental implants and filled teeth were found. Only two studies investigated endodontic applications. Panoramic radiographies were the most common image employed (<i>n =</i> 5), followed by periapical images (<i>n =</i> 3). Near-infrared light transillumination images were employed in two studies and bitewing and computed tomography (CT) were employed in one study. The included articles used a wide variety of neuronal networks to detect the described variables. In addition, the database used also had a great heterogeneity in the number of images. A standardized methodology should be used in order to increase the compatibility and robustness between studies because of the heterogeneity in the image database, type, neural architecture and results.https://www.mdpi.com/2076-3417/10/8/2856artificial intelligencedental applicationimagesdetection |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
María Prados-Privado Javier García Villalón Carlos Hugo Martínez-Martínez Carlos Ivorra |
spellingShingle |
María Prados-Privado Javier García Villalón Carlos Hugo Martínez-Martínez Carlos Ivorra Dental Images Recognition Technology and Applications: A Literature Review Applied Sciences artificial intelligence dental application images detection |
author_facet |
María Prados-Privado Javier García Villalón Carlos Hugo Martínez-Martínez Carlos Ivorra |
author_sort |
María Prados-Privado |
title |
Dental Images Recognition Technology and Applications: A Literature Review |
title_short |
Dental Images Recognition Technology and Applications: A Literature Review |
title_full |
Dental Images Recognition Technology and Applications: A Literature Review |
title_fullStr |
Dental Images Recognition Technology and Applications: A Literature Review |
title_full_unstemmed |
Dental Images Recognition Technology and Applications: A Literature Review |
title_sort |
dental images recognition technology and applications: a literature review |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2020-04-01 |
description |
Neural networks are increasingly being used in the field of dentistry. The aim of this literature review was to visualize the state of the art of artificial intelligence in dental applications, such as the detection of teeth, caries, filled teeth, crown, prosthesis, dental implants and endodontic treatment. A search was conducted in PubMed, the Institute of Electrical and Electronics Engineers (IEEE) Xplore and arXiv.org. Data extraction was performed independently by two reviewers. Eighteen studies were included. The variable teeth was the most analyzed (<i>n =</i> 9), followed by caries (<i>n</i> = 7). No studies detecting dental implants and filled teeth were found. Only two studies investigated endodontic applications. Panoramic radiographies were the most common image employed (<i>n =</i> 5), followed by periapical images (<i>n =</i> 3). Near-infrared light transillumination images were employed in two studies and bitewing and computed tomography (CT) were employed in one study. The included articles used a wide variety of neuronal networks to detect the described variables. In addition, the database used also had a great heterogeneity in the number of images. A standardized methodology should be used in order to increase the compatibility and robustness between studies because of the heterogeneity in the image database, type, neural architecture and results. |
topic |
artificial intelligence dental application images detection |
url |
https://www.mdpi.com/2076-3417/10/8/2856 |
work_keys_str_mv |
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