应用人工智能预测正畸治疗的结果

IF 0.5 Q4 DENTISTRY, ORAL SURGERY & MEDICINE
Niranjana Ramasubbu, Shakeel Ahmed Valai Kasim, R. Thavarajah, K. Rengarajan
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引用次数: 0

摘要

该研究旨在利用人工智能(AI)训练一种预测正畸治疗后面部和牙齿效果的算法。该算法使用了 50 名双颌患者治疗前和治疗后的正面微笑照片和口内照片进行训练,这些患者均接受了首次双尖牙拔除术和使用固定矫治器的正畸治疗。通过谷歌表格制作了一份调查问卷,其中包括 10 张实际治疗后图像和人工智能预测的治疗后图像。这项研究中使用的基于风格的生成对抗网络-2 算法被证明可以有效地预测治疗后的结果,该算法使用的是双颌患者治疗前的正面面部照片,这些患者在治疗过程中进行了所有第一尖牙的拔除。四组不同评估者的反应各不相同。普通人对人工智能预测图像的接受度更高,而口腔颌面外科医生对人工智能预测图像的接受度最低。鼻底和下巴的预测最为准确,而牙龈能见度和上唇与牙齿的关系的预测准确性最低。尽管如此,还需要进一步的研究来解决图像强直性和预测图像比例准确性等限制因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying artificial intelligence to predict the outcome of orthodontic treatment
The study aimed to train an algorithm to predict facial and dental outcomes following orthodontic treatment using artificial intelligence (AI). In addition, the accuracy of the algorithm was evaluated by four distinct groups of evaluators. The algorithm was trained using pre-treatment and post-treatment frontal smiling and intraoral photographs of 50 bimaxillary patients who underwent all first bicuspid extraction and orthodontic treatment with fixed appliances. A questionnaire was created through Google form and it included 10 actual post-treatment and AI-predicted post-treatment images. The accuracy and acceptability of the AI-predicted outcomes were analyzed by four groups of 140 evaluators (35 orthodontists, 35 oral maxillofacial surgeons, 35 other specialty dentists, and 35 laypersons). The Style-based Generative Adversarial Network-2 algorithm used in this study proved effective in predicting post-treatment outcomes using pre-treatment frontal facial photographs of bimaxillary patients who underwent extraction of all first bicuspids as part of their treatment regimen. The responses from the four different groups of evaluators varied. Laypersons exhibited greater acceptance of the AI-predicted images, whereas oral maxillofacial surgeons showed the least agreement. The base of the nose and the chin demonstrated the most accurate predictions, while gingival visibility and the upper lip-to-teeth relationship exhibited the least prediction accuracy. The outcomes underscore the potential of the method, with a majority of evaluators finding predictions made by the AI algorithm to be generally reliable. Nonetheless, further research is warranted to address constraints such as image tonicity and the proportional accuracy of the predicted images.
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来源期刊
APOS Trends in Orthodontics
APOS Trends in Orthodontics DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
0.80
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0.00%
发文量
47
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