Deep Learning in Dental Image Analysis: A Systematic Review of Datasets, Methodologies, and Emerging Challenges
Zhenhuan Zhou, Jingbo Zhu, Yuchen Zhang, Xiaohang Guan, Peng Wang, Tao Li

TL;DR
This systematic review analyzes deep learning applications in dental image analysis, focusing on datasets, models, challenges, and future directions to guide researchers in the field.
Contribution
It provides a comprehensive overview of 260 studies, categorizing models, datasets, and techniques, and discusses current challenges and future research directions in deep learning for dental imaging.
Findings
Reviewed 260 studies on deep learning in dental imaging
Summarized characteristics of publicly available datasets
Analyzed model architectures and training strategies
Abstract
Efficient analysis and processing of dental images are crucial for dentists to achieve accurate diagnosis and optimal treatment planning. However, dental imaging inherently poses several challenges, such as low contrast, metallic artifacts, and variations in projection angles. Combined with the subjectivity arising from differences in clinicians' expertise, manual interpretation often proves time-consuming and prone to inconsistency. Artificial intelligence (AI)-based automated dental image analysis (DIA) offers a promising solution to these issues and has become an integral part of computer-aided dental diagnosis and treatment. Among various AI technologies, deep learning (DL) stands out as the most widely applied and influential approach due to its superior feature extraction and representation capabilities. To comprehensively summarize recent progress in this field, we focus on the…
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Taxonomy
TopicsDental Radiography and Imaging · COVID-19 diagnosis using AI · Brain Tumor Detection and Classification
