4.1 Review

Demystifying artificial intelligence and deep learning in dentistry

Journal

BRAZILIAN ORAL RESEARCH
Volume 35, Issue -, Pages -

Publisher

SOCIEDADE BRASILEIRA DE PESQUISA ODONTOLOGICA
DOI: 10.1590/1807-3107bor-2021.vol35.0094

Keywords

Artificial Intelligence; Deep Learning; Neural Networks; Computer; Diagnostic Imaging; Dentistry

Funding

  1. CAPES/PrInt -UFRGS funding program for the Visiting Senior Professorship (PVE Senior) [88887.194845/2018-00]

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Artificial intelligence (AI) is the umbrella term for computer systems that can perform tasks requiring human cognition, where machine learning (ML) and neural networks (NNs) play important roles. Deep learning, particularly using convolutional neural networks (CNNs), is increasingly applied to complex data like imagery, with potential benefits in dentistry. However, limited collaboration between dental and technical disciplines poses a challenge to the advancement of dental AI, which will ultimately benefit clinicians and patients.
Artificial intelligence (AI) is a general term used to describe the development of computer systems which can perform tasks that normally require human cognition. Machine learning (ML) is one subfield of AI, where computers learn rules from data, capturing its intrinsic statistical patterns and structures. Neural networks (NNs) have been increasingly employed for ML complex data. The application of multilayered NN is referred to as deep learning, which has been recently investigated in dentistry. Convolutional neural networks (CNNs) are mainly used for processing large and complex imagery data, as they are able to extract image features like edges, corners, shapes, and macroscopic patterns using layers of filters. CNN algorithms allow to perform tasks like image classification, object detection and segmentation. The literature involving AI in dentistry has increased rapidly, so a methodological guidance for designing, conducting and reporting studies must be rigorously followed, including the improvement of datasets. The limited interaction between the dental field and the technical disciplines, however, remains a hurdle for applicable dental AI. Similarly, dental users must understand why and how AI applications work and decide to appraise their decisions critically. Generalizable and robust AI applications will eventually prove helpful for clinicians and patients alike.

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