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人工智能模型在牙支持式固定和可摘义齿修复学中的应用:系统评价。

Artificial intelligence models for tooth-supported fixed and removable prosthodontics: A systematic review.

机构信息

Affiliate Assistant Professor, Graduate Prosthodontics, Department of Restorative Dentistry, School of Dentistry, University of Washington, Seattle, Wash and Faculty and Director of Research and Digital Dentistry, Kois Center, Seattle, Wash; Adjunct Professor, Department of Prosthodontics, School of Dental Medicine, Tufts University, Boston, MA.

Associate Professor, Department of Conservative Dentistry and Prosthodontics, School of Dentistry, Complutense University of Madrid, Madrid, Spain.

出版信息

J Prosthet Dent. 2023 Feb;129(2):276-292. doi: 10.1016/j.prosdent.2021.06.001. Epub 2021 Jul 17.

Abstract

STATEMENT OF PROBLEM

Artificial intelligence applications are increasing in prosthodontics. Still, the current development and performance of artificial intelligence in prosthodontic applications has not yet been systematically documented and analyzed.

PURPOSE

The purpose of this systematic review was to assess the performance of the artificial intelligence models in prosthodontics for tooth shade selection, automation of restoration design, mapping the tooth preparation finishing line, optimizing the manufacturing casting, predicting facial changes in patients with removable prostheses, and designing removable partial dentures.

MATERIAL AND METHODS

An electronic systematic review was performed in MEDLINE/PubMed, EMBASE, Web of Science, Cochrane, and Scopus. A manual search was also conducted. Studies with artificial intelligence models were selected based on 6 criteria: tooth shade selection, automated fabrication of dental restorations, mapping the finishing line of tooth preparations, optimizing the manufacturing casting process, predicting facial changes in patients with removable prostheses, and designing removable partial dentures. Two investigators independently evaluated the quality assessment of the studies by applying the Joanna Briggs Institute Critical Appraisal Checklist for Quasi-Experimental Studies (nonrandomized experimental studies). A third investigator was consulted to resolve lack of consensus.

RESULTS

A total of 36 articles were reviewed and classified into 6 groups based on the application of the artificial intelligence model. One article reported on the development of an artificial intelligence model for tooth shade selection, reporting better shade matching than with conventional visual selection; 14 articles reported on the feasibility of automated design of dental restorations using different artificial intelligence models; 1 artificial intelligence model was able to mark the margin line without manual interaction with an average accuracy ranging from 90.6% to 97.4%; 2 investigations developed artificial intelligence algorithms for optimizing the manufacturing casting process, reporting an improvement of the design process, minimizing the porosity on the cast metal, and reducing the overall manufacturing time; 1 study proposed an artificial intelligence model that was able to predict facial changes in patients using removable prostheses; and 17 investigations that developed clinical decision support, expert systems for designing removable partial dentures for clinicians and educational purposes, computer-aided learning with video interactive programs for student learning, and automated removable partial denture design.

CONCLUSIONS

Artificial intelligence models have shown the potential for providing a reliable diagnostic tool for tooth shade selection, automated restoration design, mapping the preparation finishing line, optimizing the manufacturing casting, predicting facial changes in patients with removable prostheses, and designing removable partial dentures, but they are still in development. Additional studies are needed to further develop and assess their clinical performance.

摘要

问题陈述

人工智能应用在修复体领域中的应用正在增加。然而,目前人工智能在修复体应用中的发展和性能尚未得到系统的记录和分析。

目的

本系统评价的目的是评估人工智能模型在以下方面的表现:牙齿比色选择、修复体设计自动化、牙体预备完成线的映射、优化铸造制造过程、预测可摘局部义齿患者的面部变化以及设计可摘局部义齿。

材料和方法

在 MEDLINE/PubMed、EMBASE、Web of Science、Cochrane 和 Scopus 中进行了电子系统评价。还进行了手动搜索。基于以下 6 个标准选择具有人工智能模型的研究:牙齿比色选择、牙体预备完成线的自动映射、牙体预备完成线的自动映射、优化铸造制造过程、预测可摘局部义齿患者的面部变化和设计可摘局部义齿。两名研究人员独立应用 Joanna Briggs 研究所的非随机实验研究质量评估清单(Quasi-Experimental Studies Critical Appraisal Checklist)评估研究的质量评估。对于缺乏共识的情况,会咨询第三名研究人员。

结果

共审查了 36 篇文章,并根据人工智能模型的应用将其分为 6 组。一篇文章报道了一种用于牙齿比色选择的人工智能模型的开发情况,报告称其比传统的视觉选择具有更好的颜色匹配度;14 篇文章报道了使用不同人工智能模型设计牙体修复体的可行性;1 种人工智能模型能够在无需手动交互的情况下标记边缘线,平均准确率范围为 90.6%至 97.4%;2 项研究开发了用于优化铸造制造过程的人工智能算法,报告称设计过程得到了改进,铸件金属上的孔隙率降低,整体制造时间缩短;1 项研究提出了一种人工智能模型,能够预测使用可摘义齿的患者的面部变化;17 项研究开发了临床决策支持、为临床医生和教育目的设计可摘局部义齿的专家系统、具有视频交互程序的计算机辅助学习以帮助学生学习、以及可摘局部义齿的自动设计。

结论

人工智能模型在提供可靠的牙齿比色选择、修复体设计自动化、预备完成线映射、优化铸造制造、预测可摘义齿患者面部变化以及设计可摘局部义齿方面显示出了潜力,但仍处于发展阶段。需要进一步开展研究以进一步开发和评估其临床性能。

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