Artificial Intelligence Methods in the Detection of Oral Diseases on Pantomographic Images-A Systematic Narrative Review.

IF 3 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Katarzyna Zaborowicz, Maciej Zaborowicz, Katarzyna Cieślińska, Agata Daktera-Micker, Marcel Firlej, Barbara Biedziak
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引用次数: 0

Abstract

Background: Artificial intelligence (AI) is playing an increasingly important role in everyday dental practice and diagnosis, especially in the area of analysing digital pantomographic images. Through the use of innovative and modern algorithms, clinicians can more quickly and accurately identify pathological changes contained in digital pantomographic images, such as caries, periapical lesions, cysts, and tumours. It should be noted that pantomographic images are one of the most commonly used imaging modalities in dentistry, and their digital analysis enables the construction of AI models to support diagnosis. Objectives: This paper presents a systematic narrative review of studies included in scientific articles from 2020 to 2025, focusing on three main diagnostic areas: detection of caries, periapical lesions, and cysts and tumours. The results show that neural network models, such as U-Net, Swin Transformer, and CNN, are most commonly used in caries diagnosis and have achieved high performance in lesion identification. In the case of periapical lesions, AI models such as U-Net and Decision Tree also showed high performance, surpassing the performance of young dentists in assessing radiographs in some cases. Results: The studies cited in this review show that the diagnosis of cysts and tumours, on the other hand, relies on more advanced models such as YOLO v8, DCNN, and EfficientDet, which in many cases achieved more than 95% accuracy in the detection of this pathology. The cited studies were conducted at various universities and institutions around the world, and the databases (case databases) analysed in this work ranged from tens to thousands of images. Conclusions: The main conclusion of the literature analysis is that, thanks to its accessibility, speed, and accuracy, AI can significantly assist the work of physicians by reducing the time needed to analyse images. However, despite the promising results, AI should only be considered as an enabling tool and not as a replacement for the knowledge of doctors and their long experience. There is still a need for further improvement of algorithms and further training of the network, especially in identifying more complex clinical cases.

人工智能在口腔疾病扫描图像检测中的应用综述。
背景:人工智能(AI)在日常牙科实践和诊断中发挥着越来越重要的作用,特别是在分析数字断层图像领域。通过使用创新的现代算法,临床医生可以更快、更准确地识别数字断层图像中包含的病理变化,如龋齿、根尖周病变、囊肿和肿瘤。需要指出的是,体层摄影图像是牙科中最常用的成像方式之一,对其进行数字化分析可以构建人工智能模型来支持诊断。目的:本文对2020年至2025年科学论文中的研究进行了系统的叙述回顾,重点关注三个主要诊断领域:龋齿检测、根尖周病变、囊肿和肿瘤。结果表明,U-Net、Swin Transformer、CNN等神经网络模型在龋病诊断中应用最为广泛,在病变识别方面取得了较好的效果。在根尖周病变的情况下,U-Net和Decision Tree等人工智能模型也表现出了很高的性能,在某些情况下,在评估x光片方面超过了年轻牙医的表现。结果:本综述引用的研究表明,另一方面,囊肿和肿瘤的诊断依赖于更先进的模型,如YOLO v8、DCNN和EfficientDet,在许多情况下,这些模型对这种病理的检测准确率超过95%。引用的研究是在世界各地不同的大学和机构进行的,在这项工作中分析的数据库(案例数据库)从数万到数千张图像不等。结论:文献分析的主要结论是,由于其可访问性,速度和准确性,AI可以通过减少分析图像所需的时间来显着协助医生的工作。然而,尽管取得了令人鼓舞的成果,人工智能应该只被视为一种辅助工具,而不是取代医生的知识和他们的长期经验。算法还需要进一步的改进,网络还需要进一步的训练,特别是在识别更复杂的临床病例方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Clinical Medicine
Journal of Clinical Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
5.70
自引率
7.70%
发文量
6468
审稿时长
16.32 days
期刊介绍: Journal of Clinical Medicine (ISSN 2077-0383), is an international scientific open access journal, providing a platform for advances in health care/clinical practices, the study of direct observation of patients and general medical research. This multi-disciplinary journal is aimed at a wide audience of medical researchers and healthcare professionals. Unique features of this journal: manuscripts regarding original research and ideas will be particularly welcomed.JCM also accepts reviews, communications, and short notes. There is no limit to publication length: our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible.
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