Artigos

Nesta seção, apresentaremos três artigos científicos a cada semana, selecionados de uma lista crescente de publicações recentes no campo da Inteligência Artificial na Odontologia. Estes incluirão ambos: - Publicações primárias – projetos de pesquisa, estudos clínicos e relatos de caso - Publicações secundárias – revisões narrativas, revisões sistemáticas, visões gerais e revisões de escopo Cada artigo será acompanhado pelo link oficial para a revista de publicação. Por favor, note que nem todos os artigos estarão disponíveis para download gratuito; o acesso pode depender das assinaturas da sua instituição ou pode exigir a compra individual.

A brief introduction to concepts and applications of artificial intelligence in dental imaging

Authors: Ruben Pauwels

Year: 2020

Journal: Oral Radiology

Type: Report

Abstract: This report aims to summarize the fundamental concepts of Artificial Intelligence (AI), and to provide a non-exhaustive overview of AI applications in dental imaging, comprising diagnostics, forensics, image processing and image reconstruction. AI has arguably become the hottest topic in radiology in recent years owing to the increased computational power available to researchers, the continuing collection of digital data, as well as the development of highly efficient algorithms for machine learning and deep learning. It is now feasible to develop highly robust AI applications that make use of the vast amount of data available to us, and that keep learning and improving over time.

Availability: Restricted

Keywords:

Artificial Intelligence Machine learningdeep learningdentistryRadiology

Artificial intelligence in dentomaxillofacial radiology

Authors: Seyide Tugce Gokdeniz

Year: 2022

Journal: World Journal of Radiology: March 28; 14(3): 55-59

Type: Editorial

Abstract: Artificial intelligence (AI) has the potential to revolutionize healthcare and dentistry. Recently, there has been much interest in the development of AI applications. Dentomaxillofacial radiology (DMFR) is within the scope of these applications due to its compatibility with image processing methods. Classification and segmentation of teeth, automatic marking of anatomical structures and cephalometric analysis, determination of early dental diseases, gingival, periodontal diseases and evaluation of risk groups, diagnosis of certain diseases, such as; osteoporosis that can be detected in jaw radiographs are among studies conducted by using radiological images. Further research in the field of AI will make great contributions to DMFR. We aim to discuss most recent AI-based studies in the field of DMFR

Availability: Open

Keywords:

Artificial Intelligence diagnostic imagingRadiologydentistry

Artificial intelligence in medico‑dental diagnostics of the face: a narrative review of opportunities and challenges

Authors: Raphael Patcas

Year: 2022

Journal: Clinical Oral Investigations

Type: Narrative Review

Abstract: Objectives: This review aims to share the current developments of artificial intelligence (AI) solutions in the field of medico-dental diagnostics of the face. The primary focus of this review is to present the applicability of artificial neural networks (ANN) to interpret medical images, together with the associated opportunities, obstacles, and ethico-legal concerns. Material and methods:Narrative literature review. Results: Narrative literature review. Conclusion: Curated facial images are widely available and easily accessible and are as such particularly suitable big data for ANN training. New AI solutions have the potential to change contemporary dentistry by optimizing existing processes and enriching dental care with the introduction of new tools for assessment or treatment planning. The analyses of health-related big data may also contribute to revolutionize personalized medicine through the detection of previously unknown associations. In regard to facial images, advances in medico-dental AI-based diagnostics include software solutions for the detection and classification of pathologies, for rating attractiveness and for the prediction of age or gender. In order for an ANN to be suitable for medical diagnostics of the face, the arising challenges regarding computation and management of the software are discussed, with special emphasis on the use of non-medical big data for ANN training. The legal and ethical ramifications of feeding patients’ facial images to a neural network for diagnostic purposes are related to patient consent, data privacy, data security, liability, and intellectual property. Current ethico-legal regulation practices seem incapable of addressing all concerns and ensuring accountability. Clinical significance While this review confirms the many benefits derived from AI solutions used for the diagnosis of medical images, it highlights the evident lack of regulatory oversight, the urgent need to establish licensing protocols, and the imperative to investigate the moral quality of new norms set with the implementation of AI applications in medico-dental diagnostics.

Availability: Open

Keywords:

Artificial Intelligence PhotographyFaceNeural NetworksGovernment Regulation and Oversight

Where Is the Artificial Intelligence Applied in Dentistry? Systematic Review and Literature Analysis

Authors: Andrej Thurzo et all

Year: 2022

Journal: Healthcare 2022, 10, 1269

Type: Systematic Review

Abstract: This literature research had two main objectives. The first objective was to quantify how frequently artificial intelligence (AI) was utilized in dental literature from 2011 until 2021. The second objective was to distinguish the focus of such publications; in particular, dental field and topic. The main inclusion criterium was an original article or review in English focused on dental utilization of AI. All other types of publications or non-dental or non-AI-focused were excluded. The information sources were Web of Science, PubMed, Scopus, and Google Scholar, queried on 19 April 2022. The search string was “artificial intelligence” AND (dental OR dentistry OR tooth OR teeth OR dentofacial OR maxillofacial OR orofacial OR orthodontics OR endodontics OR periodontics OR prosthodontics). Following the removal of duplicates, all remaining publications were returned by searches and were screened by three independent operators to minimize the risk of bias. The analysis of 2011–2021 publications identifie 4413 records, from which 1497 were finally selected andcalculated according to the year of publication. The results confirmed a historically unprecedented boom in AI dental publications, with an average increase of 21.6% per year over the last decade and a 34.9% increase per year over the last 5 years. In the achievement of the second objective, qualitative assessment of dental AI publications since 2021 identified 1717 records, with 497 papers finally selected. The results of this assessment indicated the relative proportions of focal topics, as follows: radiology 26.36%, orthodontics 18.31%, general scope 17.10%, restorative 12.09%, surgery 11.87% and education 5.63%. The review confirms that the current use of artificial intelligence in dentistry is concentrated mainly around the evaluation of digital diagnostic methods, especially radiology; however, its implementation is expected to gradually penetrate all parts of the profession.

Availability: Open

Keywords:

artificial intelligencedeep learningdentistryendodonticsevidence-based practiceforensic odontologymaxillofacial surgeryorthodonticsperiodonticsprosthodontics

The use and performance of artificial intelligence applications in dental and maxillofacial radiology: A systematic review

Authors: Kuofeng Hung et all

Year: 2020

Journal: Dentomaxillofacial Radiology (2020) 49, 20190107

Type: Systematic Review

Abstract: Objectives: To investigate the current clinical applications and diagnostic performance of artificial intelligence (AI) in dental and maxillofacial radiology (DMFR). Methods: Studies using applications related to DMFR to develop or implement AI models were sought by searching five electronic databases and four selected core journals in the field of DMFR. The customized assessment criteria based on QUADAS-2 were adapted for quality analysis of the studies included. Results: The initial electronic search yielded 1862 titles, and 50 studies were eventually included. Most studies focused on AI applications for an automated localization of cephalometric landmarks, diagnosis of osteoporosis, classification/segmentation of maxillofacial cysts and/or tumors, and identification of periodontitis/periapical disease. The performance of AI models varies among different algorithms. Conclusion: The AI models proposed in the studies included exhibited wide clinical applications in DMFR. Nevertheless, it is still necessary to further verify the reliability and applicability of the AI models prior to transferring these models into clinical practice.

Availability: Restricted

Keywords:

artificial intelligencediagnostic imagingradiographydentistrycomputer-assisted

Artificial Intelligence-based methods in head and neck cancer diagnosis: an overview

Authors: Hanya Mahmood

Year: 2021

Journal: British Journal of Cancer (2021) 124:1934–1940

Type: Overview

Abstract: BACKGROUND: This paper reviews recent literature employing Artificial Intelligence/Machine Learning (AI/ML) methods for diagnostic evaluation of head and neck cancers (HNC) using automated image analysis. METHODS: Electronic database searches using MEDLINE via OVID, EMBASE and Google Scholar were conducted to retrieve articles using AI/ML for diagnostic evaluation of HNC (2009–2020). No restrictions were placed on the AI/ML method or imaging modality used. RESULTS: In total, 32 articles were identified. HNC sites included oral cavity (n = 16), nasopharynx (n = 3), oropharynx (n = 3), larynx (n = 2), salivary glands (n = 2), sinonasal (n = 1) and in five studies multiple sites were studied. Imaging modalities included histological (n = 9), radiological (n = 8), hyperspectral (n = 6), endoscopic/clinical (n = 5), infrared thermal (n = 1) and optical (n = 1). Clinicopathologic/genomic data were used in two studies. Traditional ML methods were employed in 22 studies (69%), deep learning (DL) in eight studies (25%) and a combination of these methods in two studies (6%). CONCLUSIONS: There is an increasing volume of studies exploring the role of AI/ML to aid HNC detection using a range of imaging modalities. These methods can achieve high degrees of accuracy that can exceed the abilities of human judgement in making data predictions. Large-scale multi-centric prospective studies are required to aid deployment into clinical practice.

Availability: Open

Keywords:

Artificial Intelligence Machine learningdeep learningHead and Neck CancerHistopathology

An overview of deep learning in the field of dentistry

Authors: Jae-Joon Hwang

Year: 2019

Journal: Imaging Science in Dentistry 2019; 49: 1-7

Type: Overview

Abstract: Purpose: Artificial intelligence (AI), represented by deep learning, can be used for real-life problems and is applied across all sectors of society including medical and dental field. The purpose of this study is to review articles about deep learning that were applied to the field of oral and maxillofacial radiology. Materials and Methods: A systematic review was performed using Pubmed, Scopus, and IEEE explore databases to identify articles using deep learning in English literature. The variables from 25 articles included network architecture, number of training data, evaluation result, pros and cons, study object and imaging modality. Results: Convolutional Neural network (CNN) was used as a main network component. The number of published paper and training datasets tended to increase, dealing with various field of dentistry. Conclusion: Dental public datasets need to be constructed and data standardization is necessary for clinical application of deep learning in dental field.

Availability: Open

Keywords:

Artificial Intelligence deep learningdentistryRadiology