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通过机器学习和深度学习从二维牙科X光片中检测牙周骨丧失和牙周炎:采用APPRAISE-AI的系统评价和荟萃分析

Detection of periodontal bone loss and periodontitis from 2D dental radiographs via machine learning and deep learning: systematic review employing APPRAISE-AI and meta-analysis.

作者信息

Khubrani Yahia H, Thomas David, Slator Paddy J, White Richard D, Farnell Damian J J

机构信息

School of Dentistry, Cardiff University, The Annexe, University Dental Hospital, Heath Park, Cardiff CF14 4XY, United Kingdom.

School of Dentistry, Jazan University, Jazan 82817, Saudi Arabia.

出版信息

Dentomaxillofac Radiol. 2025 Feb 1;54(2):89-108. doi: 10.1093/dmfr/twae070.

Abstract

OBJECTIVES

Periodontitis is a serious periodontal infection that damages the soft tissues and bone around teeth and is linked to systemic conditions. Accurate diagnosis and staging, complemented by radiographic evaluation, are vital. This systematic review (PROSPERO ID: CRD42023480552) explores artificial intelligence (AI) applications in assessing alveolar bone loss and periodontitis on dental panoramic and periapical radiographs.

METHODS

Five databases (Medline, Embase, Scopus, Web of Science, and Cochrane's Library) were searched from January 1990 to January 2024. Keywords related to "artificial intelligence", "Periodontal bone loss/Periodontitis", and "Dental radiographs" were used. Risk of bias and quality assessment of included papers were performed according to the APPRAISE-AI Tool for Quantitative Evaluation of AI Studies for Clinical Decision Support. Meta analysis was carried out via the "metaprop" command in R V3.6.1.

RESULTS

Thirty articles were included in the review, where 10 papers were eligible for meta-analysis. Based on quality scores from the APPRAISE-AI critical appraisal tool of the 30 papers, 1 (3.3%) were of very low quality (score < 40), 3 (10.0%) were of low quality (40 ≤ score < 50), 19 (63.3%) were of intermediate quality (50 ≤ score < 60), and 7 (23.3%) were of high quality (60 ≤ score < 80). No papers were of very high quality (score ≥ 80). Meta-analysis indicated that model performance was generally good, eg, sensitivity 87% (95% CI, 80%-93%), specificity 76% (95% CI, 69%-81%), and accuracy 84% (95% CI, 75%-91%).

CONCLUSION

Deep learning shows much promise in evaluating periodontal bone levels, although there was some variation in performance. AI studies can lack transparency and reporting standards could be improved. Our systematic review critically assesses the application of deep learning models in detecting alveolar bone loss on dental radiographs using the APPRAISE-AI tool, highlighting their efficacy and identifying areas for improvement, thus advancing the practice of clinical radiology.

摘要

目的

牙周炎是一种严重的牙周感染,会损害牙齿周围的软组织和骨骼,并与全身疾病有关。准确的诊断和分期,辅以影像学评估,至关重要。本系统评价(PROSPERO编号:CRD42023480552)探讨了人工智能(AI)在牙科全景片和根尖片上评估牙槽骨丧失和牙周炎的应用。

方法

检索了1990年1月至2024年1月的五个数据库(Medline、Embase、Scopus、Web of Science和Cochrane图书馆)。使用了与“人工智能”、“牙周骨丧失/牙周炎”和“牙科X线片”相关的关键词。根据用于临床决策支持的AI研究定量评估的APPRAISE-AI工具,对纳入论文进行偏倚风险和质量评估。通过R V3.6.1中的“metaprop”命令进行荟萃分析。

结果

该评价纳入了30篇文章,其中10篇符合荟萃分析的条件。根据30篇论文的APPRAISE-AI批判性评价工具给出的质量评分,1篇(3.3%)质量极低(评分<40),3篇(10.0%)质量低(40≤评分<50),19篇(63.3%)质量中等(50≤评分<60),7篇(23.3%)质量高(60≤评分<80)。没有论文质量极高(评分≥80)。荟萃分析表明模型性能总体良好,例如,敏感性87%(95%CI,80%-93%),特异性76%(95%CI,69%-81%),准确性84%(95%CI,75%-91%)。

结论

深度学习在评估牙周骨水平方面显示出很大的前景,尽管性能存在一些差异。AI研究可能缺乏透明度,报告标准有待改进。我们的系统评价使用APPRAISE-AI工具批判性地评估了深度学习模型在牙科X线片上检测牙槽骨丧失的应用,突出了它们的有效性并确定了改进领域,从而推动了临床放射学实践。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1396/11979759/88c72b41867a/twae070f1.jpg

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