Department of General Surgery and Surgical-Medical Specialties, School of Dentistry, University of Catania, Catania, Italy.
Department of Life, Health and Environmental Sciences, University of L'Aquila, L'Aquila, Abruzzo, Italy.
JDR Clin Trans Res. 2024 Oct;9(4):312-324. doi: 10.1177/23800844241232318. Epub 2024 Apr 8.
Periodontitis is the main cause of tooth loss and is related to many systemic diseases. Artificial intelligence (AI) in periodontics has the potential to improve the accuracy of risk assessment and provide personalized treatment planning for patients with periodontitis. This systematic review aims to examine the actual evidence on the accuracy of various AI models in predicting periodontitis.
Using a mix of MeSH keywords and free text words pooled by Boolean operators ('AND', 'OR'), a search strategy without a time frame setting was conducted on the following databases: Web of Science, ProQuest, PubMed, Scopus, and IEEE Explore. The QUADAS-2 risk of bias assessment was then performed.
From a total of 961 identified records screened, 8 articles were included for qualitative analysis: 4 studies showed an overall low risk of bias, 2 studies an unclear risk, and the remaining 2 studies a high risk. The most employed algorithms for periodontitis prediction were artificial neural networks, followed by support vector machines, decision trees, logistic regression, and random forest. The models showed good predictive performance for periodontitis according to different evaluation metrics, but the presented methods were heterogeneous.
AI algorithms may improve in the future the accuracy and reliability of periodontitis prediction. However, to date, most of the studies had a retrospective design and did not consider the most modern deep learning networks. Although the available evidence is limited by a lack of standardized data collection and protocols, the potential benefits of using AI in periodontics are significant and warrant further research and development in this area.
The use of AI in periodontics can lead to more accurate diagnosis and treatment planning, as well as improved patient education and engagement. Despite the current challenges and limitations of the available evidence, particularly the lack of standardized data collection and analysis protocols, the potential benefits of using AI in periodontics are significant and warrant further research and development in this area.
牙周炎是牙齿脱落的主要原因,与许多系统性疾病有关。人工智能(AI)在牙周病学中具有提高风险评估准确性和为牙周炎患者提供个性化治疗计划的潜力。本系统评价旨在检查各种 AI 模型预测牙周炎的准确性的实际证据。
使用 MeSH 关键词和布尔运算符(“AND”、“OR”)组合的自由文本词,制定了一个没有时间框架设置的搜索策略,在以下数据库中进行搜索:Web of Science、ProQuest、PubMed、Scopus 和 IEEE Explore。然后进行了 QUADAS-2 偏倚风险评估。
从总共筛选出的 961 条记录中,有 8 篇文章被纳入定性分析:4 项研究显示整体偏倚风险低,2 项研究风险不明确,其余 2 项研究风险高。用于预测牙周炎的最常用算法是人工神经网络,其次是支持向量机、决策树、逻辑回归和随机森林。根据不同的评估指标,这些模型对牙周炎的预测表现良好,但所提出的方法具有异质性。
未来,人工智能算法可能会提高牙周炎预测的准确性和可靠性。然而,迄今为止,大多数研究都采用回顾性设计,并且没有考虑到最现代的深度学习网络。尽管现有证据受到缺乏标准化数据收集和协议的限制,但在牙周病学中使用 AI 的潜在益处是显著的,值得在这一领域进一步研究和开发。
人工智能在牙周病学中的应用可以导致更准确的诊断和治疗计划,以及改善患者的教育和参与。尽管目前的证据存在挑战和局限性,特别是缺乏标准化的数据收集和分析协议,但在牙周病学中使用 AI 的潜在益处是显著的,值得在这一领域进一步研究和开发。