基于人工智能的深度学习模型在口腔内图像检测龋齿中的应用——系统综述。

Q3 Dentistry Evidence-based dentistry Pub Date : 2024-11-28 DOI:10.1038/s41432-024-01089-1
Ayesha Noor Uddin, Syed Ahmed Ali, Abhishek Lal, Niha Adnan, Syed Muhammad Faizan Ahmed, Fahad Umer
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引用次数: 0

摘要

目的:本系统综述旨在评估基于人工智能(AI)的深度学习(DL)模型在口腔内图像龋齿检测中的有效性。方法:本系统综述遵循PRISMA 2020指南,对PubMed、Scopus和CENTRAL数据库进行电子检索,检索截至2024年6月1日发表的回顾性、前瞻性和横断面研究。评估了使用DL模型的临床研究的方法学和性能指标。采用改进的QUADAS偏倚风险工具进行质量评估。结果:在确定的273项研究中,共纳入23项研究,其中19项研究具有低风险偏倚,4项研究具有高风险偏倚。总体准确度为56% ~ 99.1%,灵敏度为23% ~ 98%,特异性为65.7% ~ 100%。只有3项研究使用了可解释的人工智能(XAI)技术进行龋齿检测。通过开发移动或基于web的应用程序,共有4项研究显示了4级部署状态。结论:基于人工智能的深度学习模型在加强龋齿检测方面具有良好的应用前景,特别是在资源匮乏的环境下。然而,未来需要部署研究来增强人工智能模型,以改善其实际应用。
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Applications of AI-based deep learning models for detecting dental caries on intraoral images - a systematic review.

Objectives: This systematic review aimed to assess the effectiveness of Artificial Intelligence (AI)-based Deep Learning (DL) models in the detection of dental caries on intraoral images.

Methods: This systematic review adhered to PRISMA 2020 guidelines conducting an electronic search on PubMed, Scopus, and CENTRAL databases for retrospective, prospective, and cross-sectional studies published till 1st June 2024. Methodological and performance metrics of clinical studies utilizing DL models were assessed. A modified QUADAS risk of bias tool was used for quality assessment.

Results: Out of 273 studies identified, a total of 23 were included with 19 studies having a low risk and 4 studies having a high risk of bias. Overall accuracy ranged from 56% to 99.1%, sensitivity ranged from 23% to 98% and specificity ranged from 65.7% to 100%. Only 3 studies utilized explainable AI (XAI) techniques for caries detection. A total of 4 studies exhibited a level 4 deployment status by developing mobile or web-based applications.

Conclusion: AI-based DL models have demonstrated promising prospects in enhancing the detection of dental caries, especially in terms of low-resource settings. However, there is a need for future deployed studies to enhance the AI models to improve their real-world applications.

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来源期刊
Evidence-based dentistry
Evidence-based dentistry Dentistry-Dentistry (all)
CiteScore
2.50
自引率
0.00%
发文量
77
期刊介绍: Evidence-Based Dentistry delivers the best available evidence on the latest developments in oral health. We evaluate the evidence and provide guidance concerning the value of the author''s conclusions. We keep dentistry up to date with new approaches, exploring a wide range of the latest developments through an accessible expert commentary. Original papers and relevant publications are condensed into digestible summaries, drawing attention to the current methods and findings. We are a central resource for the most cutting edge and relevant issues concerning the evidence-based approach in dentistry today. Evidence-Based Dentistry is published by Springer Nature on behalf of the British Dental Association.
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