牙科放射成像中的深度学习

Hyuntae Kim
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引用次数: 0

摘要

深度学习算法在牙科研究中越来越普遍,因为它们在日常活动中得到了应用。然而,牙科研究人员和临床医生发现解读深度学习研究具有挑战性。这篇综述旨在概述深度学习的一般概念和当前在牙科放射影像分析中的深度学习研究。此外,还介绍了深度学习研究的实施过程。基于深度学习的算法模型在分类、物体检测和分割任务中表现出色,使自动诊断口腔病变和解剖结构成为可能。深度学习模型可以增强研究人员和临床医生的决策过程。这篇综述可能对目前正在牙科领域评估和评价深度学习研究的牙科研究人员有所帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning in Dental Radiographic Imaging
Deep learning algorithms are becoming more prevalent in dental research because they are utilized in everyday activities. However, dental researchers and clinicians find it challenging to interpret deep learning studies. This review aimed to provide an overview of the general concept of deep learning and current deep learning research in dental radiographic image analysis. In addition, the process of implementing deep learning research is described. Deep-learning-based algorithmic models perform well in classification, object detection, and segmentation tasks, making it possible to automatically diagnose oral lesions and anatomical structures. The deep learning model can enhance the decision-making process for researchers and clinicians. This review may be useful to dental researchers who are currently evaluating and assessing deep learning studies in the field of dentistry.
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