Exploring a decade of deep learning in dentistry: A comprehensive mapping review.

IF 3.1 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE Clinical Oral Investigations Pub Date : 2025-02-19 DOI:10.1007/s00784-025-06216-5
Fatemeh Sohrabniya, Sahel Hassanzadeh-Samani, Seyed AmirHossein Ourang, Bahare Jafari, Golnoush Farzinnia, Fatemeh Gorjinejad, Azadeh Ghalyanchi-Langeroudi, Hossein Mohammad-Rahimi, Antonin Tichy, Saeed Reza Motamedian, Falk Schwendicke
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Abstract

Objectives: Artificial Intelligence (AI), particularly deep learning, has significantly impacted healthcare, including dentistry, by improving diagnostics, treatment planning, and prognosis prediction. This systematic mapping review explores the current applications of deep learning in dentistry, offering a comprehensive overview of trends, models, and their clinical significance.

Materials and methods: Following a structured methodology, relevant studies published from January 2012 to September 2023 were identified through database searches in PubMed, Scopus, and Embase. Key data, including clinical purpose, deep learning tasks, model architectures, and data modalities, were extracted for qualitative synthesis.

Results: From 21,242 screened studies, 1,007 were included. Of these, 63.5% targeted diagnostic tasks, primarily with convolutional neural networks (CNNs). Classification (43.7%) and segmentation (22.9%) were the main methods, and imaging data-such as cone-beam computed tomography and orthopantomograms-were used in 84.4% of cases. Most studies (95.2%) applied fully supervised learning, emphasizing the need for annotated data. Pathology (21.5%), radiology (17.5%), and orthodontics (10.2%) were prominent fields, with 24.9% of studies relating to more than one specialty.

Conclusion: This review explores the advancements in deep learning in dentistry, particulary for diagnostics, and identifies areas for further improvement. While CNNs have been used successfully, it is essential to explore emerging model architectures, learning approaches, and ways to obtain diverse and reliable data. Furthermore, fostering trust among all stakeholders by advancing explainable AI and addressing ethical considerations is crucial for transitioning AI from research to clinical practice.

Clinical relevance: This review offers a comprehensive overview of a decade of deep learning in dentistry, showcasing its significant growth in recent years. By mapping its key applications and identifying research trends, it provides a valuable guide for future studies and highlights emerging opportunities for advancing AI-driven dental care.

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探索十年来牙科领域的深度学习:全面的地图回顾。
人工智能(AI),特别是深度学习,通过改进诊断、治疗计划和预后预测,对包括牙科在内的医疗保健产生了重大影响。这篇系统的地图综述探讨了目前深度学习在牙科中的应用,提供了趋势、模型及其临床意义的全面概述。材料和方法:采用结构化方法,通过PubMed、Scopus和Embase数据库检索2012年1月至2023年9月发表的相关研究。关键数据,包括临床目的、深度学习任务、模型架构和数据模式,被提取出来进行定性合成。结果:从21,242项筛选研究中,纳入了1,007项。其中,63.5%的目标是诊断任务,主要是卷积神经网络(cnn)。分类(43.7%)和分割(22.9%)是主要的方法,84.4%的病例采用锥束计算机断层扫描和正断层扫描。大多数研究(95.2%)应用完全监督学习,强调对注释数据的需求。病理学(21.5%)、放射学(17.5%)和正畸学(10.2%)是突出的领域,其中24.9%的研究涉及多个专业。结论:本综述探讨了深度学习在牙科,特别是诊断方面的进展,并确定了进一步改进的领域。虽然cnn已经被成功使用,但探索新兴的模型架构、学习方法和获得多样化和可靠数据的方法是至关重要的。此外,通过推进可解释的人工智能和解决伦理问题,促进所有利益相关者之间的信任,对于将人工智能从研究过渡到临床实践至关重要。临床相关性:本综述提供了十年来牙科深度学习的全面概述,展示了其近年来的显著增长。通过绘制其关键应用和确定研究趋势,它为未来的研究提供了有价值的指导,并突出了推进人工智能驱动的牙科护理的新兴机会。
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来源期刊
Clinical Oral Investigations
Clinical Oral Investigations 医学-牙科与口腔外科
CiteScore
6.30
自引率
5.90%
发文量
484
审稿时长
3 months
期刊介绍: The journal Clinical Oral Investigations is a multidisciplinary, international forum for publication of research from all fields of oral medicine. The journal publishes original scientific articles and invited reviews which provide up-to-date results of basic and clinical studies in oral and maxillofacial science and medicine. The aim is to clarify the relevance of new results to modern practice, for an international readership. Coverage includes maxillofacial and oral surgery, prosthetics and restorative dentistry, operative dentistry, endodontics, periodontology, orthodontics, dental materials science, clinical trials, epidemiology, pedodontics, oral implant, preventive dentistiry, oral pathology, oral basic sciences and more.
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