Alam Mohammad K, Alanazi Nawadir H, Alshehri Abdulsalam Dhafer A, Chowdhury Farhana
Department of Preventive Dentistry, College of Dentistry, Jouf University, Sakaka, Saudi Arabia.
Department of Dental Research Cell, Saveetha Institute of Medical and Technical Sciences, Saveetha Dental College and Hospitals, Chennai, Tamil Nadu, India.
J Pharm Bioallied Sci. 2024 Feb;16(Suppl 1):S583-S585. doi: 10.4103/jpbs.jpbs_873_23. Epub 2024 Feb 29.
Periodontal disease, characterized by inflammation and damage to tooth-supporting structures, poses a prevalent oral health concern. Early detection is crucial for effective management.
This study comprised of 60 patients with varying degrees of periodontal disease. Intraoral images were captured using digital cameras, and AI algorithms were trained to analyze these images for signs of periodontal disease. Clinical diagnoses, conducted by experienced periodontal specialists, were used as the reference standard.
The AI algorithms achieved an overall accuracy of 87% in diagnosing periodontal disease. Sensitivity was 90%, indicating the AI's ability to correctly identify 90% of true cases, while specificity stood at 84%, demonstrating its capability to accurately classify 84% of non-diseased cases. In comparison, clinical diagnosis yielded an overall accuracy of 86%. Statistical analysis showed no significant difference between AI-based diagnosis and clinical examination ( > 0.05).
This study underscores the promising potential of AI algorithms in diagnosing periodontal disease through intraoral image analysis.
牙周病以牙齿支持结构的炎症和损伤为特征,是一个普遍存在的口腔健康问题。早期检测对于有效管理至关重要。
本研究包括60例不同程度牙周病患者。使用数码相机拍摄口腔内图像,并训练人工智能算法分析这些图像以寻找牙周病迹象。由经验丰富的牙周病专家进行的临床诊断用作参考标准。
人工智能算法在诊断牙周病方面的总体准确率达到87%。敏感性为90%,表明人工智能能够正确识别90%的真实病例,而特异性为84%,表明其能够准确分类84%的非患病病例。相比之下,临床诊断的总体准确率为86%。统计分析表明,基于人工智能的诊断与临床检查之间无显著差异(>0.05)。
本研究强调了人工智能算法通过口腔内图像分析诊断牙周病的潜在前景。