Aykol-Sahin Gokce, Yucel Ozgun, Eraydin Nihal, Keles Gonca Cayir, Unlu Umran, Baser Ulku
Istanbul Okan University, Faculty of Dentistry, Department of Periodontology, Istanbul, Turkey.
Gebze Technical University, Department of Chemical Engineering, Kocaeli, Turkey.
J Periodontol. 2024 Jul 15. doi: 10.1002/JPER.24-0151.
With recent advances in artificial intelligence, the use of this technology has begun to facilitate comprehensive tissue evaluation and planning of interventions. This study aimed to assess different convolutional neural networks (CNN) in deep learning algorithms to detect keratinized gingiva based on intraoral photos and evaluate the ability of networks to measure keratinized gingiva width.
Six hundred of 1200 photographs taken before and after applying a disclosing agent were used to compare the neural networks in segmenting the keratinized gingiva. Segmentation performances of networks were evaluated using accuracy, intersection over union, and F1 score. Keratinized gingiva width from a reference point was measured from ground truth images and compared with the measurements of clinicians and the DeepLab image that was generated from the ResNet50 model. The effect of measurement operators, phenotype, and jaw on differences in measurements was evaluated by three-factor mixed-design analysis of variance (ANOVA).
Among the compared networks, ResNet50 distinguished keratinized gingiva at the highest accuracy rate of 91.4%. The measurements between deep learning and clinicians were in excellent agreement according to jaw and phenotype. When analyzing the influence of the measurement operators, phenotype, and jaw on the measurements performed according to the ground truth, there were statistically significant differences in measurement operators and jaw (p < 0.05).
Automated keratinized gingiva segmentation with the ResNet50 model might be a feasible method for assisting professionals. The measurement results promise a potentially high performance of the model as it requires less time and experience.
With recent advances in artificial intelligence (AI), it is now possible to use this technology to evaluate tissues and plan medical procedures thoroughly. This study focused on testing different AI models, specifically CNN, to identify and measure a specific type of gum tissue called keratinized gingiva using photos taken inside the mouth. Out of 1200 photos, 600 were used in the study to compare the performance of different CNN in identifying gingival tissue. The accuracy and effectiveness of these models were measured and compared to human clinician ratings. The study found that the ResNet50 model was the most accurate, correctly identifying gingival tissue 91.4% of the time. When the AI model and clinicians' measurements of gum tissue width were compared, the results were very similar, especially when accounting for different jaws and gum structures. The study also analyzed the effect of various factors on the measurements and found significant differences based on who took the measurements and jaw type. In conclusion, using the ResNet50 model to identify and measure gum tissue automatically could be a practical tool for dental professionals, saving time and requiring less expertise.
随着人工智能的最新进展,这项技术的应用已开始促进全面的组织评估和干预计划制定。本研究旨在评估深度学习算法中不同的卷积神经网络(CNN),以基于口腔内照片检测角化牙龈,并评估网络测量角化牙龈宽度的能力。
在应用显色剂前后拍摄的1200张照片中,选取600张用于比较神经网络对角化牙龈的分割情况。使用准确率、交并比和F1分数评估网络的分割性能。从真实图像中测量参考点处的角化牙龈宽度,并与临床医生的测量结果以及由ResNet50模型生成的DeepLab图像的测量结果进行比较。通过三因素混合设计方差分析(ANOVA)评估测量操作者、表型和颌骨对测量差异的影响。
在比较的网络中,ResNet50对角化牙龈的识别准确率最高,为91.4%。根据颌骨和表型,深度学习与临床医生的测量结果高度一致。在分析测量操作者、表型和颌骨对根据真实情况进行的测量的影响时,测量操作者和颌骨存在统计学显著差异(p < 0.05)。
使用ResNet50模型进行自动角化牙龈分割可能是协助专业人员的一种可行方法。测量结果表明该模型可能具有高性能,因为它所需的时间和经验较少。
随着人工智能(AI)的最新进展,现在可以使用这项技术全面评估组织并制定医疗程序。本研究专注于测试不同的AI模型,特别是CNN,以使用口腔内拍摄的照片识别和测量一种称为角化牙龈的特定牙龈组织类型。在1200张照片中,600张用于研究,以比较不同CNN在识别牙龈组织方面的性能。测量这些模型的准确性和有效性,并与人类临床医生的评级进行比较。研究发现ResNet50模型最准确,91.4%的时间能正确识别牙龈组织。当比较AI模型和临床医生对牙龈组织宽度的测量时,结果非常相似,尤其是在考虑不同的颌骨和牙龈结构时。研究还分析了各种因素对测量的影响,发现基于测量者和颌骨类型存在显著差异。总之,使用ResNet50模型自动识别和测量牙龈组织可能是牙科专业人员的实用工具,可节省时间且所需专业知识较少。