Schwarzmaier Julia, Frenkel Elisabeth, Neumayr Julia, Ammar Nour, Kessler Andreas, Schwendicke Falk, Kühnisch Jan, Dujic Helena
Department of Conservative Dentistry and Periodontology, University Hospital, Ludwig-Maximilians University of Munich, 80336 Munich, Germany.
Department of Prosthetic Dentistry, Center for Dental Medicine, University Hospital Freiburg, 79106 Freiburg, Germany.
J Clin Med. 2024 Sep 3;13(17):5215. doi: 10.3390/jcm13175215.
: Early childhood caries (ECC) is a widespread and severe oral health problem that potentially affects the general health of children. Visual-tactile examination remains the diagnostic method of choice to diagnose ECC, although visual examination could be automated by artificial intelligence (AI) tools in the future. The aim of this study was the external validation of a recently published and freely accessible AI-based model for detecting ECC and classifying carious lesions in dental photographs. : A total of 143 anonymised photographs of anterior deciduous teeth (ECC = 107, controls = 36) were visually evaluated by the dental study group (reference test) and analysed using the AI-based model (test method). Diagnostic performance was determined statistically. : ECC detection accuracy was 97.2%. Diagnostic performance varied between carious lesion classes (noncavitated lesions, greyish translucency/microcavity, cavitation, destructed tooth), with accuracies ranging from 88.9% to 98.1%, sensitivities ranging from 68.8% to 98.5% and specificities ranging from 86.1% to 99.4%. The area under the curve ranged from 0.834 to 0.964. : The performance of the AI-based model is similar to that reported for the internal dataset used by developers. Further studies with independent image samples are required to comprehensively gauge the performance of the model.
幼儿龋(ECC)是一个广泛且严重的口腔健康问题,可能会影响儿童的整体健康。尽管未来视觉检查可通过人工智能(AI)工具实现自动化,但视觉触觉检查仍是诊断ECC的首选诊断方法。本研究的目的是对最近发表的、可免费获取的基于AI的模型进行外部验证,该模型用于在牙科照片中检测ECC并对龋损进行分类。
牙科研究小组对总共143张匿名的乳前牙照片(ECC = 107张,对照 = 36张)进行了视觉评估(参考测试),并使用基于AI的模型进行分析(测试方法)。通过统计学方法确定诊断性能。
ECC检测准确率为97.2%。不同龋损类别(非龋洞性病变、灰白色半透明/微龋洞、龋洞形成、牙齿破坏)的诊断性能有所不同,准确率范围为88.9%至98.1%,敏感度范围为68.8%至98.5%,特异度范围为86.1%至99.4%。曲线下面积范围为0.834至0.964。
基于AI的模型的性能与开发者使用的内部数据集所报告的性能相似。需要使用独立图像样本进行进一步研究,以全面评估该模型的性能。