Current Applications of Artificial Intelligence for Pediatric Dentistry: A Systematic Review and Meta-Analysis.

Pediatric dentistry Pub Date : 2024-01-15
Rata Rokhshad, Ping Zhang, Hossein Mohammad-Rahimi, Parnian Shobeiri, Falk Schwendicke
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Abstract

Purpose: To systematically evaluate artificial intelligence applications for diagnostic and treatment planning possibilities in pediatric dentistry. Methods: PubMed®, EMBASE®, Scopus, Web of Science, IEEE, medRxiv, arXiv, and Google Scholar were searched using specific search queries. The Quality Assessment of Diagnostic Accuracy Studies-2 (QUADAS-2) checklist was used to assess the risk of bias assessment of the included studies. Results: Based on the initial screening, 33 eligible studies were included (among 3,542). Eleven studies appeared to have low bias risk across all QUADAS-2 domains. Most applications focused on early childhood caries diagnosis and prediction, tooth identification, oral health evaluation, and supernumerary tooth identification. Six studies evaluated AI tools for mesiodens or supernumerary tooth identification on radigraphs, four for primary tooth identification and/or numbering, seven studies to detect caries on radiographs, and 12 to predict early childhood caries. For these four tasks, the reported accuracy of AI varied from 60 percent to 99 percent, sensitivity was from 20 percent to 100 percent, specificity was from 49 percent to 100 percent, F1-score was from 60 percent to 97 percent, and the area-under-the-curve varied from 87 percent to 100 percent. Conclusions: The overall body of evidence regarding artificial intelligence applications in pediatric dentistry does not allow for firm conclusions. For a wide range of applications, AI shows promising accuracy. Future studies should focus on a comparison of AI against the standard of care and employ a set of standardized outcomes and metrics to allow comparison across studies.

人工智能在儿童牙科领域的当前应用:系统回顾与元分析》。
目的:系统评估人工智能应用于儿童牙科诊断和治疗规划的可能性。方法:使用特定的搜索查询搜索了 PubMed®、EMBASE®、Scopus、Web of Science™、IEEE、medRxiv、arXiv 和 Google Scholar。采用诊断准确性研究质量评估-2(QUADAS-2)核对表对纳入研究的偏倚风险进行评估。结果:根据初步筛选,共纳入 33 项符合条件的研究(共 3,542 项)。有 11 项研究在所有 QUADAS-2 领域的偏倚风险较低。大多数应用集中在儿童早期龋齿诊断和预测、牙齿识别、口腔健康评估和超常牙齿识别。有六项研究对人工智能工具进行了评估,以识别放射线照片上的中齿或超常齿;有四项研究对人工智能工具进行了评估,以识别基齿和/或编号;有七项研究对人工智能工具进行了评估,以检测放射线照片上的龋齿;有 12 项研究对人工智能工具进行了评估,以预测儿童早期龋齿。在这四项任务中,人工智能的准确率从 60% 到 99% 不等,灵敏度从 20% 到 100% 不等,特异性从 49% 到 100% 不等,F1 分数从 60% 到 97% 不等,曲线下面积从 87% 到 100% 不等。结论关于人工智能在儿童牙科中的应用,目前还没有确切的证据。在广泛的应用中,人工智能显示出良好的准确性。未来的研究应侧重于将人工智能与护理标准进行比较,并采用一套标准化的结果和指标,以便在不同研究间进行比较。
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