Hamza Al Salieti, Hanan M Qasem, Sakhr Alshwayyat, Noor Almasri, Mustafa Alshwayyat, Amira A Aboali, Farah Alsarayrah, Lina Khasawneh, Mohammed Al-Mahdi Al-Kurdi
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引用次数: 0
Abstract
Background: Third molar extraction, a common dental procedure, often involves complications, such as alveolar nerve injury. Accurate preoperative assessment of the extraction difficulty and nerve injury risk is crucial for better surgical planning and patient outcomes. Recent advancements in deep learning (DL) have shown the potential to enhance the predictive accuracy using panoramic radiographic (PR) images. This systematic review evaluated the accuracy and reliability of DL models for predicting third molar extraction difficulty and inferior alveolar nerve (IAN) injury risk.
Methods: A systematic search was conducted across PubMed, Scopus, Web of Science, and Embase until September 2024, focusing on studies assessing DL models for predicting extraction complexity and IAN injury using PR images. The inclusion criteria required studies to report predictive performance metrics. Study selection, data extraction, and quality assessment were independently performed by two authors using the PRISMA and QUADAS-2 guidelines.
Results: Six studies involving 12,419 PR images met the inclusion criteria. DL models demonstrated high accuracy in predicting extraction difficulty (up to 96%) and IAN injury (up to 92.9%), with notable sensitivity (up to 97.5%) for specific classifications, such as horizontal impactions. Geographically, three studies originated in South Korea and one each from Turkey and Thailand, limiting generalizability. Despite high accuracy, demographic data were sparsely reported, with only two studies providing patient sex distribution.
Conclusion: DL models show promise in improving the preoperative assessment of third molar extraction. However, further validation in diverse populations and integration with clinical workflows are necessary to establish its real-world utility, as limitations such as limited generalizability, potential selection bias and lack of long-term follow up remain challenges.
背景:第三磨牙拔牙是一种常见的牙科手术,常伴有牙槽神经损伤等并发症。准确的术前评估拔牙难度和神经损伤风险对更好的手术计划和患者预后至关重要。深度学习(DL)的最新进展显示了使用全景放射成像(PR)图像提高预测准确性的潜力。本系统综述评估了DL模型预测第三磨牙拔除难度和下牙槽神经(IAN)损伤风险的准确性和可靠性。方法:到2024年9月,在PubMed、Scopus、Web of Science和Embase上进行了系统搜索,重点研究了使用PR图像评估DL模型预测提取复杂性和IAN损伤的研究。纳入标准要求研究报告预测性能指标。研究选择、数据提取和质量评估由两位作者使用PRISMA和QUADAS-2指南独立完成。结果:6项研究共12419张PR图像符合纳入标准。DL模型在预测提取难度(高达96%)和IAN损伤(高达92.9%)方面具有很高的准确性,对特定分类(如水平撞击)具有显著的灵敏度(高达97.5%)。在地理上,有三项研究来自韩国,土耳其和泰国各有一项研究,限制了普遍性。尽管准确性很高,但人口统计数据的报道很少,只有两项研究提供了患者的性别分布。结论:DL模型在改善第三磨牙拔除术前评估方面具有良好的应用前景。然而,需要在不同人群中进行进一步的验证,并与临床工作流程相结合,以确定其在现实世界中的实用性,因为诸如有限的普遍性、潜在的选择偏差和缺乏长期随访等局限性仍然是挑战。