Abstract
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.
Highlights
Artificial intelligence (AI) has recently attracted significant public interest and is impacting many industries worldwide
Neural networks (NNs) build on the idea of artificial neurons, which are semi-parametric mathematical nonlinear models. When these neurons are organized in layers of different form and size and connected using mathematical operations, classification and regression tasks might be performed.[17]
deep learning” (DL) is especially suitable complex data, like imagery, and its application has been investigated in dentistry
Summary
Artificial intelligence (AI) has recently attracted significant public interest and is impacting many industries worldwide. The advances in data availability, for example via electronic health records and digital imaging, the growth in computational power and the development of software approaches allowing to employ big Pictures of dogs labeled “dog” allow the machine to develop an algorithm which can eventually classify new, unseen images (dog present yes/no).
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