Multilayer Perceptron to Assess the Impact of Anatomical Risk Factors on Traumatic Dental Injuries: An Advanced Statistical Approach of Artificial Intelligence in Dental Traumatology

Q3 Dentistry
M. Khan, M. Jindal
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引用次数: 0

Abstract

Introduction: Traumatic dental injuries (TDIs) are the public dental health concern, with variable prevalence reported worldwide. Although, TDI is not a disease rather, it is a result of various risk factors. This study was performed to assess the influence of anatomical risk factors such as accentuated overjet, overbite, molar relationship, and lip competency in determining the number of traumatized teeth per affected individual by using the advanced statistical method of multilayer perceptron (MLP) model of deep learning algorithm of artificial intelligence (AI). Materials and Methods: A cross-sectional study consisted of 1000 school children (boys and girls) of index age groups between 12 and 15 years selected through multistage sampling technique. Orofacial anatomical risk factors associated with TDI were statistically analyzed by MLP model of deep learning algorithm of AI using IBM SPSS Modeler software (version 18, 2020). Results: MLP method revealed results in terms of normalized importance as overbite (100%) was the strongest risk factor for the occurrence of TDI in number of teeth of affected participants, followed by molar relationship (90.2%), overjet (87.7%), and the lip competency was found as the weakest risk factor. Conclusion: Using the MLP as statistical method, overbite was found as the strongest anatomical risk factor in determining the number of traumatized teeth per affected individual as compared to molar relationship, overjet, and lip competence.
多层感知器评估解剖危险因素对牙外伤的影响:牙外伤学中人工智能的高级统计方法
引言:外伤性牙科损伤(TDIs)是公众关注的牙科健康问题,世界各地的发病率各不相同。尽管TDI不是一种疾病,但它是多种危险因素的结果。本研究旨在通过使用人工智能深度学习算法的多层感知器(MLP)模型的高级统计方法,评估解剖风险因素(如突出的外覆层、覆牙、磨牙关系和唇部能力)对确定每个受影响个体受创牙齿数量的影响。材料和方法:一项横断面研究由1000名12至15岁的学龄儿童(男孩和女孩)组成,他们是通过多阶段抽样技术选出的。使用IBM SPSS Modeler软件(2020年第18版),通过人工智能深度学习算法的MLP模型对与TDI相关的口腔面部解剖风险因素进行统计分析。结果:MLP方法显示了标准化重要性的结果,因为在受影响参与者的牙齿数量中,覆牙(100%)是TDI发生的最强风险因素,其次是磨牙关系(90.2%)、覆牙(87.7%),嘴唇能力是最弱的风险因素。结论:使用MLP作为统计方法,在确定每个受影响个体的创伤牙齿数量时,与磨牙关系、外覆和唇部能力相比,覆牙是最强的解剖风险因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Orofacial Sciences
Journal of Orofacial Sciences Dentistry-Orthodontics
CiteScore
0.60
自引率
0.00%
发文量
13
审稿时长
31 weeks
期刊介绍: Journal of Orofacial Sciences is dedicated to noblest profession of Dentistry, and to the young & blossoming intellects of dentistry, with whom the future of dentistry will be cherished better. The prime aim of this journal is to advance the science and art of dentistry. This journal is an educational tool to encourage and share the acquired knowledge with our peers. It also to improves the standards and quality of therauptic methods. This journal assures you to gain knowledge in recent advances and research activities. The journal publishes original scientific papers with special emphasis on research, unusual case reports, editorial, review articles, book reviews & other relevant information in context of high professional standards.
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