开发和验证人工智能驱动的咀嚼效率/功能评估工具:概念验证 - ChewAI。

IF 4.8 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE Journal of dentistry Pub Date : 2025-02-01 DOI:10.1016/j.jdent.2024.105525
Anastasios Grigoriadis , Soroush Baseri Saadi , Linda Munirji , Reinhilde Jacobs
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引用次数: 0

摘要

背景:咀嚼功能是口腔健康的一个重要决定因素,也是维持全身健康的一个促进因素。目前,咀嚼功能的客观评估是一项临床挑战。此前,已经开发并提出了几种方法,但在临床上实施这些方法可能并不可行。因此,要准确评估咀嚼功能并将其应用于临床,还需付出更多努力。目的:本研究旨在为开发和验证咀嚼功能自动评估工具建立概念验证:方法:对深度神经网络 YOLOv8 进行微调和训练,以检测和分割食物碎片。使用边界框召回指标、分割指标、混淆矩阵和灵敏度值对模型的性能进行了评估。此外,一个单独的转换测试集使用物理单位评估了该模型的分割性能,并用布兰-阿尔特曼图进行了演示:结果:YOLOv8 模型的召回率和灵敏度均超过 90%,能有效检测食物碎片并对其进行分类。在 316 个地面实况碎片中,301 个被正确分类,15 个漏检,5 个误报。布兰-阿尔特曼图显示结果基本一致,但表明在测量咀嚼后食物碎片的大小时存在系统性高估:结论:人工智能为咀嚼能力的自动分析提供了一种可靠的方法。临床意义:临床意义:本研究为咀嚼功能临床评估自动化工具的开发提供了概念验证。
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Development and validation of an AI-driven tool to evaluate chewing function: a proof of concept

Background

Masticatory function is an important determinant of oral health and a contributing factor in the maintenance of general health. Currently, objective assessment of chewing function is a clinical challenge. Previously, several methods have been developed and proposed, but implementing these methods in clinics may not be feasible. Therefore, more efforts are needed for accurate assessment of chewing function and clinical use.

Aim

The study aimed to establish a proof of concept for development and validation of an automated tool for evaluating masticatory function.

Methods

YOLOv8, a deep neural network, was fine-tuned and trained to detect and segment food fragments. The model's performance was assessed using bounding box recall metrics, segmentation metrics, confusion matrix, and sensitivity values. Additionally, a separate conversion test set evaluated the model's segmentation performance using physical units, demonstrated with Bland-Altman diagrams.

Results

The YOLOv8-model achieved recall and sensitivity rates exceeding 90 %, effectively detecting and classifying food fragments. Out of 316 ground truth fragments, 301 were correctly classified, with 15 missed and 5 false positives. The Bland-Altman diagram indicated general agreement but suggested a systematic overestimation in measuring the size of post-masticated food fragments.

Conclusion

Artificial intelligence presents a reliable approach for automated analysis of masticatory performance. The developed application proves to be a valuable tool for future clinical assessment of masticatory function.

Clinical significance

The current study provides a proof of concept for development of an automated tool for clinical assessment of masticatory function.
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来源期刊
Journal of dentistry
Journal of dentistry 医学-牙科与口腔外科
CiteScore
7.30
自引率
11.40%
发文量
349
审稿时长
35 days
期刊介绍: The Journal of Dentistry has an open access mirror journal The Journal of Dentistry: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. The Journal of Dentistry is the leading international dental journal within the field of Restorative Dentistry. Placing an emphasis on publishing novel and high-quality research papers, the Journal aims to influence the practice of dentistry at clinician, research, industry and policy-maker level on an international basis. Topics covered include the management of dental disease, periodontology, endodontology, operative dentistry, fixed and removable prosthodontics, dental biomaterials science, long-term clinical trials including epidemiology and oral health, technology transfer of new scientific instrumentation or procedures, as well as clinically relevant oral biology and translational research. The Journal of Dentistry will publish original scientific research papers including short communications. It is also interested in publishing review articles and leaders in themed areas which will be linked to new scientific research. Conference proceedings are also welcome and expressions of interest should be communicated to the Editor.
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