AI and Face-Driven Orthodontics: A Scoping Review of Digital Advances in Diagnosis and Treatment Planning

AI Pub Date : 2024-01-05 DOI:10.3390/ai5010009
Juraj Tomášik, Márton Zsoldos, Ľubica Oravcová, Michaela Lifková, Gabriela Pavleová, Martin Strunga, Andrej Thurzo
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Abstract

In the age of artificial intelligence (AI), technological progress is changing established workflows and enabling some basic routines to be updated. In dentistry, the patient’s face is a crucial part of treatment planning, although it has always been difficult to grasp in an analytical way. This review highlights the current digital advances that, thanks to AI tools, allow us to implement facial features beyond symmetry and proportionality and incorporate facial analysis into diagnosis and treatment planning in orthodontics. A Scopus literature search was conducted to identify the topics with the greatest research potential within digital orthodontics over the last five years. The most researched and cited topic was artificial intelligence and its applications in orthodontics. Apart from automated 2D or 3D cephalometric analysis, AI finds its application in facial analysis, decision-making algorithms as well as in the evaluation of treatment progress and retention. Together with AI, other digital advances are shaping the face of today’s orthodontics. Without any doubts, the era of “old” orthodontics is at its end, and modern, face-driven orthodontics is on the way to becoming a reality in modern orthodontic practices.
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人工智能和面部驱动的正畸学:诊断和治疗规划中的数字化进展范围综述
在人工智能(AI)时代,技术进步正在改变既有的工作流程,并使一些基本例程得以更新。在口腔医学中,患者的面部是治疗规划的重要组成部分,但一直以来都很难通过分析的方式对其进行把握。这篇综述重点介绍了当前的数字化进展,借助人工智能工具,我们可以实现超越对称性和比例性的面部特征,并将面部分析纳入正畸学的诊断和治疗规划中。我们进行了 Scopus 文献检索,以确定过去五年中数字正畸领域最具研究潜力的主题。研究和引用最多的主题是人工智能及其在正畸学中的应用。除了自动二维或三维头颅测量分析外,人工智能还应用于面部分析、决策算法以及治疗进展和保持的评估。与人工智能一起,其他数字技术的进步也在塑造着当今正畸学的面貌。毫无疑问,"旧 "正畸学的时代已经结束,以面部为导向的现代正畸学即将在现代正畸实践中成为现实。
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