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Machine learning concepts applied to oral pathology and oral medicine: A convolutional neural networks' approach

期刊

JOURNAL OF ORAL PATHOLOGY & MEDICINE
卷 52, 期 2, 页码 109-118

出版社

WILEY
DOI: 10.1111/jop.13397

关键词

artificial intelligence; artificial neural network; deep learning; oral cancer; supervised learning

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This paper aims to provide oral pathologists, oral medicinists, and head and neck surgeons with a theoretical and conceptual foundation of artificial intelligence-based diagnostic approaches, with a special focus on convolutional neural networks, the state-of-the-art in artificial intelligence and deep learning. Artificial intelligence models and networks can learn and process dense information in a short time, leading to an efficient, objective, and accurate clinical and histopathological analysis, which can be useful to improve treatment modalities and prognostic outcomes.
IntroductionArtificial intelligence models and networks can learn and process dense information in a short time, leading to an efficient, objective, and accurate clinical and histopathological analysis, which can be useful to improve treatment modalities and prognostic outcomes. This paper targets oral pathologists, oral medicinists, and head and neck surgeons to provide them with a theoretical and conceptual foundation of artificial intelligence-based diagnostic approaches, with a special focus on convolutional neural networks, the state-of-the-art in artificial intelligence and deep learning. MethodsThe authors conducted a literature review, and the convolutional neural network's conceptual foundations and functionality were illustrated based on a unique interdisciplinary point of view. ConclusionThe development of artificial intelligence-based models and computer vision methods for pattern recognition in clinical and histopathological image analysis of head and neck cancer has the potential to aid diagnosis and prognostic prediction.

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