Artificial intelligence-powered innovations in periodontal diagnosis: a new era in dental healthcare.

IF 3.8 Q3 ENGINEERING, BIOMEDICAL Frontiers in medical technology Pub Date : 2025-01-10 eCollection Date: 2024-01-01 DOI:10.3389/fmedt.2024.1469852
Jarupat Jundaeng, Rapeeporn Chamchong, Choosak Nithikathkul
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Abstract

Background: The aging population is increasingly affected by periodontal disease, a condition often overlooked due to its asymptomatic nature. Despite its silent onset, periodontitis is linked to various systemic conditions, contributing to severe complications and a reduced quality of life. With over a billion people globally affected, periodontal diseases present a significant public health challenge. Current diagnostic methods, including clinical exams and radiographs, have limitations, emphasizing the need for more accurate detection methods. This study aims to develop AI-driven models to enhance diagnostic precision and consistency in detecting periodontal disease.

Methods: We analyzed 2,000 panoramic radiographs using image processing techniques. The YOLOv8 model segmented teeth, identified the cemento-enamel junction (CEJ), and quantified alveolar bone loss to assess stages of periodontitis.

Results: The teeth segmentation model achieved an accuracy of 97%, while the CEJ and alveolar bone segmentation models reached 98%. The AI system demonstrated outstanding performance, with 94.4% accuracy and perfect sensitivity (100%), surpassing periodontists who achieved 91.1% accuracy and 90.6% sensitivity. General practitioners (GPs) benefitted from AI assistance, reaching 86.7% accuracy and 85.9% sensitivity, further improving diagnostic outcomes.

Conclusions: This study highlights that AI models can effectively detect periodontal bone loss from panoramic radiographs, outperforming current diagnostic methods. The integration of AI into periodontal care offers faster, more accurate, and comprehensive treatment, ultimately improving patient outcomes and alleviating healthcare burdens.

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人工智能驱动的牙周诊断创新:牙科医疗保健的新时代。
背景:老年人越来越多地受到牙周病的影响,由于其无症状的性质,牙周病经常被忽视。尽管牙周炎的发病悄无声息,但它与各种全身疾病有关,导致严重的并发症和生活质量下降。全球有超过10亿人受到牙周病的影响,这是一项重大的公共卫生挑战。目前的诊断方法,包括临床检查和x光片,有局限性,强调需要更准确的检测方法。本研究旨在开发人工智能驱动的模型,以提高牙周病诊断的准确性和一致性。方法:采用图像处理技术对2000张全景x线照片进行分析。YOLOv8模型对牙齿进行分割,识别牙髓-牙釉质交界处(CEJ),量化牙槽骨损失,以评估牙周炎的分期。结果:牙齿分割模型的准确率为97%,CEJ和牙槽骨分割模型的准确率为98%。人工智能系统表现出色,准确率为94.4%,灵敏度为100%,超过了牙周病专家的91.1%和90.6%。全科医生受益于人工智能辅助,准确率达到86.7%,灵敏度达到85.9%,进一步改善了诊断结果。结论:本研究强调人工智能模型可以有效地从全景x线片检测牙周骨质流失,优于现有的诊断方法。将人工智能集成到牙周护理中可以提供更快、更准确和全面的治疗,最终改善患者的治疗效果并减轻医疗负担。
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CiteScore
3.70
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0.00%
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0
审稿时长
13 weeks
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