评估深度学习模型和牙科研究生测量口腔内根尖周x射线工作长度的准确性:一项体外研究。

IF 0.9 Q3 DENTISTRY, ORAL SURGERY & MEDICINE
Contemporary Clinical Dentistry Pub Date : 2025-01-01 Epub Date: 2025-03-25 DOI:10.4103/ccd.ccd_274_24
R S Basavanna, Ishaan Adhaulia, N M Dhanyakumar, Jyoti Joshi
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引用次数: 0

摘要

背景:人工智能在牙科领域的整合已经取得了显著的进展,特别是在诊断成像方面。本研究评估并比较了深度学习模型与牙科研究生在确定口腔内根尖周x线片工作时长方面的准确性。材料与方法:获得100张工作长度锉形的匿名单根牙x线片。这些图像经过预处理并用于训练深度学习模型。5名牙科研究生在接受培训后直观估计工作时长。图像处理软件中的像素计数提供了金标准测量。准确性比较采用t检验。结果:与人类估计(平均准确率75.4%)相比,深度学习模型显示出显着更高的准确率(85%)。t检验结果P = 0.0374 (P < 0.05),拒绝原假设。结论:深度学习模型在提高牙髓学工作长度确定的准确性和可靠性方面具有很大的潜力。随着进一步的改进,这些模型可以有效地补充人类在牙科放射学解释方面的专业知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the Accuracy of Deep Learning Models and Dental Postgraduate Students in Measuring Working Length on Intraoral Periapical X-rays: An In vitro Study.

Background: The integration of artificial intelligence in dentistry has seen remarkable advancements, especially in diagnostic imaging. This study evaluates and compares the accuracy of deep learning models with that of dental postgraduate students in determining working length on intraoral periapical radiographs.

Materials and methods: One hundred anonymized radiographs of single-rooted teeth with files at working length were obtained. The images were preprocessed and used to train a deep learning model. Five dental postgraduates visually estimated the working length after receiving training. Pixel counting in image processing software provided the gold standard measurement. Accuracy comparisons were performed using a t-test.

Results: The deep learning model demonstrated significantly higher accuracy (85%) compared to human estimations (mean accuracy 75.4%). The t-test yielded P = 0.0374 (P < 0.05), rejecting the null hypothesis.

Conclusion: Deep learning models show great potential in enhancing precision and reliability for working length determination in endodontics. With further refinement, these models can effectively complement human expertise in dental radiographic interpretation.

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来源期刊
Contemporary Clinical Dentistry
Contemporary Clinical Dentistry DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
1.50
自引率
0.00%
发文量
52
审稿时长
23 weeks
期刊介绍: The journal Contemporary Clinical Dentistry (CCD) (Print ISSN: 0976-237X, E-ISSN:0976- 2361) is peer-reviewed journal published on behalf of Maharishi Markandeshwar University and issues are published quarterly in the last week of March, June, September and December. The Journal publishes Original research papers, clinical studies, case series strictly of clinical interest. Manuscripts are invited from all specialties of Dentistry i.e. Conservative dentistry and Endodontics, Dentofacial orthopedics and Orthodontics, Oral medicine and Radiology, Oral pathology, Oral surgery, Orodental diseases, Pediatric Dentistry, Periodontics, Clinical aspects of Public Health dentistry and Prosthodontics. Review articles are not accepted. Review, if published, will only be by invitation from eminent scholars and academicians of National and International repute in the field of Medical/Dental education.
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