Performance analysis of DMF teeth detection using deep learning: A comparative study with clinical examination as quasi experimental study

Rizki Novita, Rizkika Putri, Maya Fitria, Maulisa Oktiana, Yasmina Elma, Handika Rahayu, Subhan Janura, Hafidh Habibie
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Abstract

ABSTRACTIntroduction: Decayed, missing, and filled teeth (DMF-T) are indicators used to assess the oral health status of an individual or a population. This examination is typically performed manually by dentists or dental therapists. In previous research, researchers have developed a deep learning model as a part of artificial intelligence that can detect DMF-T. Aim of this research was to analyze the comparison of the performance of deep learning with clinical examinations in DMF-T assessment. Methods: Experienced dentists conducted clinical examinations on 50 subjects who met the inclusion criteria. Oral clinical photos of the same patients were taken from various aspects, in total 250 images, and further analyzed using a deep learning model. The results of the clinical examination and deep learning were then statistically analyzed using an unpaired t-test to determine whether there were differences between groups. Results: The unpaired t-test analysis indicated that there was no significant difference between the result of DMF-T examination by dentist and by DL (P>0.05). Unpaired t-test of this research indicated no significant difference (P = 0.161). The unpaired t-test concluded that t Stat < t Critical two-tail, then who was accepted, which stated that there was no significant difference between the results of the DMF-T examination between two groups. Conclusion: The DL model demonstrates good clinical performance in detecting DMF-T.KEYWORDS DMF-T, clinical assessment, deep learning, caries detection 
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利用深度学习进行 DMF 牙齿检测的性能分析:作为准实验研究与临床检查的比较研究
摘要引言:蛀牙、缺牙和补牙(DMF-T)是用于评估个人或人群口腔健康状况的指标。这种检查通常由牙医或牙科治疗师手工完成。在以往的研究中,研究人员已经开发出一种深度学习模型,作为人工智能的一部分,可以检测 DMF-T。本研究旨在分析深度学习与临床检查在 DMF-T 评估中的性能比较。研究方法经验丰富的牙科医生对符合纳入标准的 50 名受试者进行临床检查。从不同方面拍摄同一患者的口腔临床照片,共计 250 张,并使用深度学习模型进行进一步分析。然后使用非配对 t 检验对临床检查和深度学习的结果进行统计分析,以确定组间是否存在差异。结果显示非配对 t 检验分析表明,牙医和 DL 的 DMF-T 检查结果无显著差异(P>0.05)。本研究的非配对 t 检验表明差异不显著(P = 0.161)。非配对 t 检验的结论是 t Stat < t 临界双尾,则接受,即两组之间的 DMF-T 检查结果无显著差异。结论关键词:DMF-T;临床评估;深度学习;龋齿检测
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