4.3 Article

Applications of deep learning in dentistry

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ELSEVIER SCIENCE INC
DOI: 10.1016/j.oooo.2020.11.003

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This article reviews 28 studies on the application of deep learning in dentistry, highlighting methodological limitations and the need for further research to improve the application of deep learning in dentistry.
Over the last few years, translational applications of so-called artificial intelligence in the field of medicine have garnered a significant amount of interest. The present article aims to review existing dental literature that has examined deep learning, a subset of machine learning that has demonstrated the highest performance when applied to image processing and that has been tested as a formidable diagnostic support tool through its automated analysis of radiographic/photographic images. Furthermore, the article will critically evaluate the literature to describe potential methodological weaknesses of the studies and the need for further development. This review includes 28 studies that have described the applications of deep learning in various fields of dentistry. Research into the applications of deep learning in dentistry contains claims of its high accuracy. Nonetheless, many of these studies have substantial limitations and methodological issues (e.g., examiner reliability, the number of images used for training/testing, the methods used for validation) that have significantly limited the external validity of their results. Therefore, future studies that acknowledge the methodological limitations of existing literature will help to establish a better understanding of the usefulness of applying deep learning in dentistry. (Oral Surg Oral Med Oral Pathol Oral Radiol 2021;132:225-238)

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