Role of artificial intelligence in treatment planning and outcome prediction of jaw corrective surgeries by using 3-D imaging: a systematic review

IF 1.9 3区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE Oral Surgery Oral Medicine Oral Pathology Oral Radiology Pub Date : 2024-10-01 DOI:10.1016/j.oooo.2024.09.010
Hariram Sankar MDS , Ragavi Alagarsamy MDS , Babu Lal MDS, FDSRCPS , Shailendra Singh Rana MDS , Ajoy Roychoudhury MDS, FDSRCPS, FAMS , Amit Agrawal MD , Syrpailyne Wankhar PhD
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Abstract

Objective

Artificial intelligence (AI) has been increasingly utilized in diagnosis of skeletal deformities, while its role in treatment planning and outcome prediction of jaw corrective surgeries with 3-dimensional (3D) imaging remains underexplored.

Methods

The comprehensive search was done in PubMed, Google scholar, Semantic scholar and Cochrane Library between January 2000 and May 2024. Inclusion criteria encompassed studies on AI applications in treatment planning and outcome prediction for jaw corrective surgeries using 3D imaging. Data extracted included study details, AI algorithms, and performance metrics. Modified PROBAST tool was used to assess the risk of bias (ROB).

Results

Fourteen studies were included. 11 studies used deep learning algorithms, and 3 employed machine learning on CT data. In treatment planning the prediction error was 0.292 to 3.32 mm (N = 5), and Dice score was 92.24 to 96% (N = 2). Accuracy of outcome predictions varied from 85.7% to 99.98% (N = 2). ROB was low in most of the included studies. A meta-analysis was not conducted due to significant heterogeneity and insufficient data reporting in the included studies.

Conclusion

3D imaging-based AI models in treatment planning and outcome prediction for jaw corrective surgeries show promise but remain at proof-of-concept. Further, prospective multicentric studies are needed to validate these findings.
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人工智能在利用三维成像进行下颌矫正手术的治疗规划和结果预测中的作用--系统性综述。
目的:人工智能(AI)越来越多地应用于骨骼畸形的诊断,但其在颌骨三维成像矫正手术的治疗计划和预后预测中的作用尚不充分。方法:综合检索PubMed、谷歌scholar、Semantic scholar和Cochrane Library,检索时间为2000年1月至2024年5月。纳入标准包括人工智能在使用3D成像进行颌骨矫正手术的治疗计划和结果预测中的应用研究。提取的数据包括研究细节、人工智能算法和性能指标。采用改良PROBAST工具评估偏倚风险(ROB)。结果:纳入14项研究。11项研究使用深度学习算法,3项研究使用机器学习处理CT数据。在治疗计划方面,预测误差为0.292 ~ 3.32 mm (N = 5), Dice评分为92.24 ~ 96% (N = 2)。预测结果的准确率为85.7% ~ 99.98% (N = 2)。大多数纳入研究的ROB较低。由于纳入的研究存在显著的异质性和数据报告不足,未进行meta分析。结论:基于3D成像的人工智能模型在颌骨矫正手术的治疗计划和结果预测中显示出希望,但仍处于概念验证阶段。此外,需要前瞻性多中心研究来验证这些发现。
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来源期刊
Oral Surgery Oral Medicine Oral Pathology Oral Radiology
Oral Surgery Oral Medicine Oral Pathology Oral Radiology DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.80
自引率
6.90%
发文量
1217
审稿时长
2-4 weeks
期刊介绍: Oral Surgery, Oral Medicine, Oral Pathology and Oral Radiology is required reading for anyone in the fields of oral surgery, oral medicine, oral pathology, oral radiology or advanced general practice dentistry. It is the only major dental journal that provides a practical and complete overview of the medical and surgical techniques of dental practice in four areas. Topics covered include such current issues as dental implants, treatment of HIV-infected patients, and evaluation and treatment of TMJ disorders. The official publication for nine societies, the Journal is recommended for initial purchase in the Brandon Hill study, Selected List of Books and Journals for the Small Medical Library.
期刊最新文献
Reply to Artificial intelligence-assisted triage in dentistry: toward reliable, scalable, and clinically aligned front-door decision support. Reply to letter to editor: the importance of integrating histopathologic, clinical, radiographic and ancillary findings. Artificial intelligence-assisted triage in dentistry: toward reliable, scalable, and clinically aligned front-door decision support. Corrigendum to 'Cocamidopropyl betaine: another possible oral healthcare chemical associated with plasma cell lesions of the oral cavity'[Oral Surgery, Oral Medicine, Oral Pathology and Oral Radiology Volume 140, Issue 2, (2025), Pages 218-226]. Corrigendum to 'What's in your toothpaste? A review of toothpaste ingredients and rationale for their use or avoidance' [Oral Surgery, Oral Medicine, Oral Pathology and Oral Radiology Volume 140, Issue 6, (2025), Pages 807-812].
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