ResNet-Transformer deep learning model-aided detection of dens evaginatus.

IF 2.3 3区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE
Siwei Wang, Jialing Liu, Shihao Li, Pengcheng He, Xin Zhou, Zhihe Zhao, Liwei Zheng
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引用次数: 0

Abstract

Background: Dens evaginatus is a dental morphological developmental anomaly. Failing to detect it may lead to tubercles fracture and pulpal/periapical disease. Consequently, early detection and intervention of dens evaginatus are significant to preserve vital pulp.

Aim: This study aimed to develop a deep learning model to assist dentists in early diagnosing dens evaginatus, thereby supporting early intervention and mitigating the risk of severe consequences.

Design: In this study, a deep learning model was developed utilizing panoramic radiograph images sourced from 1410 patients aged 3-16 years, with high-quality annotations to enable the automatic detection of dens evaginatus. Model performance and model's efficacy in aiding dentists were evaluated.

Results: The findings indicated that the current deep learning model demonstrated commendable sensitivity (0.8600) and specificity (0.9200), outperforming dentists in detecting dens evaginatus with an F1-score of 0.8866 compared to their average F1-score of 0.8780, indicating that the model could detect dens evaginatus with greater precision. Furthermore, with its support, young dentists heightened their focus on dens evaginatus in tooth germs and achieved improved diagnostic accuracy.

Conclusion: Based on these results, the integration of deep learning for dens evaginatus detection holds significance and can augment dentists' proficiency in identifying such anomaly.

ResNet-Transformer深度学习模型辅助检测dens evaginatus。
背景:地包天是一种牙齿形态发育异常。如果未能及时发现,可能会导致小瘤断裂和牙髓/根尖周疾病。目的:本研究旨在开发一种深度学习模型,以协助牙科医生早期诊断牙隐窝,从而支持早期干预并降低严重后果的风险:在这项研究中,我们利用来自 1410 名 3-16 岁患者的全景放射影像开发了一个深度学习模型,该模型具有高质量的注释,能够自动检测牙槽骨发育不全。对模型的性能和模型在帮助牙医方面的功效进行了评估:结果表明,当前的深度学习模型在检测牙槽骨方面表现出了值得称赞的灵敏度(0.8600)和特异度(0.9200),其 F1 分数为 0.8866,而牙医的平均 F1 分数为 0.8780,这表明该模型可以更精确地检测牙槽骨。此外,在该模型的支持下,年轻牙医提高了对牙菌斑的关注,提高了诊断的准确性:基于这些结果,将深度学习整合到牙菌斑检测中具有重要意义,可以提高牙科医生识别此类异常的能力。
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来源期刊
CiteScore
5.50
自引率
2.60%
发文量
82
审稿时长
6-12 weeks
期刊介绍: The International Journal of Paediatric Dentistry was formed in 1991 by the merger of the Journals of the International Association of Paediatric Dentistry and the British Society of Paediatric Dentistry and is published bi-monthly. It has true international scope and aims to promote the highest standard of education, practice and research in paediatric dentistry world-wide. International Journal of Paediatric Dentistry publishes papers on all aspects of paediatric dentistry including: growth and development, behaviour management, diagnosis, prevention, restorative treatment and issue relating to medically compromised children or those with disabilities. This peer-reviewed journal features scientific articles, reviews, case reports, clinical techniques, short communications and abstracts of current paediatric dental research. Analytical studies with a scientific novelty value are preferred to descriptive studies. Case reports illustrating unusual conditions and clinically relevant observations are acceptable but must be of sufficiently high quality to be considered for publication; particularly the illustrative material must be of the highest quality.
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