Understanding Occlusion and Temporomandibular Joint Function Using Deep Learning and Predictive Modeling

IF 1.7 Q3 DENTISTRY, ORAL SURGERY & MEDICINE Clinical and Experimental Dental Research Pub Date : 2024-11-19 DOI:10.1002/cre2.70028
Taseef Hasan Farook, James Dudley
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Abstract

Objectives

Advancements in artificial intelligence (AI)-driven predictive modeling in dentistry are outpacing the clinical translation of research findings. Predictive modeling uses statistical methods to anticipate norms related to TMJ dynamics, complementing imaging modalities like cone beam computed tomography (CBCT) and magnetic resonance imaging (MRI). Deep learning, a subset of AI, helps quantify and analyze complex hierarchical relationships in occlusion and TMJ function. This narrative review explores the application of predictive modeling and deep learning to identify clinical trends and associations related to occlusion and TMJ function.

Results

Debates persist regarding best practices for managing occlusal factors in temporomandibular joint (TMJ) function analysis while interpreting and quantifying findings related to the TMJ and occlusion and mitigating biases remain challenging. Data generated from noninvasive chairside tools such as jaw trackers, video tracking, and 3D scanners with virtual articulators offer unique insights by predicting variations in dynamic jaw movement, TMJ, and occlusion. The predictions help us understand the highly individualized norms surrounding TMJ function that are often required to address temporomandibular disorders (TMDs) in general practice.

Conclusions

Normal TMJ function, occlusion, and the appropriate management of TMDs are complex and continue to attract ongoing debate. This review examines how predictive modeling and artificial intelligence aid in understanding occlusion and TMJ function and provides insights into complex dental conditions such as TMDs that may improve diagnosis and treatment outcomes with noninvasive techniques.

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利用深度学习和预测建模了解咬合和颞下颌关节功能
目的 人工智能(AI)驱动的牙科预测建模技术的发展速度超过了研究成果的临床转化速度。预测建模使用统计方法来预测与颞下颌关节动力学相关的规范,是对锥形束计算机断层扫描(CBCT)和磁共振成像(MRI)等成像模式的补充。深度学习是人工智能的一个子集,有助于量化和分析咬合和颞下颌关节功能中复杂的层次关系。这篇叙述性综述探讨了预测建模和深度学习在识别与咬合和颞下颌关节功能相关的临床趋势和关联方面的应用。 结果 关于在颞下颌关节(TMJ)功能分析中管理咬合因素的最佳实践一直存在争论,而解释和量化与颞下颌关节和咬合相关的研究结果以及减少偏差仍具有挑战性。颌面跟踪器、视频跟踪和带有虚拟关节器的三维扫描仪等非侵入式椅旁工具生成的数据通过预测动态颌面运动、颞下颌关节和咬合的变化提供了独特的见解。这些预测有助于我们了解颞下颌关节功能的高度个体化规范,而这通常是在普通实践中解决颞下颌关节紊乱 (TMD) 问题所必需的。 结论 正常的颞下颌关节功能、咬合以及对 TMD 的适当管理是非常复杂的,并且仍在不断引起争论。本综述探讨了预测建模和人工智能如何帮助理解咬合和颞下颌关节功能,并对 TMDs 等复杂牙科疾病提供了见解,这些见解可能会改善非侵入性技术的诊断和治疗效果。
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来源期刊
Clinical and Experimental Dental Research
Clinical and Experimental Dental Research DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.30
自引率
5.60%
发文量
165
审稿时长
26 weeks
期刊介绍: Clinical and Experimental Dental Research aims to provide open access peer-reviewed publications of high scientific quality representing original clinical, diagnostic or experimental work within all disciplines and fields of oral medicine and dentistry. The scope of Clinical and Experimental Dental Research comprises original research material on the anatomy, physiology and pathology of oro-facial, oro-pharyngeal and maxillofacial tissues, and functions and dysfunctions within the stomatognathic system, and the epidemiology, aetiology, prevention, diagnosis, prognosis and therapy of diseases and conditions that have an effect on the homeostasis of the mouth, jaws, and closely associated structures, as well as the healing and regeneration and the clinical aspects of replacement of hard and soft tissues with biomaterials, and the rehabilitation of stomatognathic functions. Studies that bring new knowledge on how to advance health on the individual or public health levels, including interactions between oral and general health and ill-health are welcome.
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