Artificial Intellect in Stomatology
Keywords:
Artificial Intelligence, Machine Learning, Deep Learning, Neural Networks, Dentistry, Diagnostics, Computer Vision, Digital PathologyAbstract
Artificial intelligence, artificial intelligence, and machine learning are among the most revolutionary and promising technologies that have been rapidly being implemented in various fields of medicine, including dentistry, over the past decade, transforming the processes of diagnostics, treatment planning, outcome prediction, and practical implementation of dental procedures. Stomatology, as a field of medicine highly dependent on visual information and requiring precise analysis of complex morphological structures, is an ideal field for applying artificial intelligence algorithms based on deep learning and neural networks.
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