What amount of data is required to develop artificial intelligence that can accurately predict soft tissue changes after orthognathic surgery?

IF 3.2
The Angle orthodontist Pub Date : 2025-06-18 eCollection Date: 2025-09-01 DOI:10.2319/010125-1
Jong-Hak Kim, Naeun Kwon, Ji-Ae Park, Sung Bin Youn, Byoung-Moo Seo, Shin-Jae Lee
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Abstract

Objectives: To suggest a sample size calculation method to develop artificial intelligence (AI) that can predict soft tissue changes after orthognathic surgery with clinically acceptable accuracy.

Materials and methods: From data collected from 705 patients who had undergone combined surgical-orthodontic treatment, 10 subsets of the data were generated through random resampling procedures, specifically with reduced data sizes of 75, 100, 150, 200, 300, 400, 450, 500, 600, and 700. Resampling was repeated four times, and each subset was used to create a total of 40 AI models using a deep-learning algorithm. The prediction results for soft tissue change after orthognathic surgery were compared across all 40 AI models based on their sample sizes. Clinically acceptable accuracy was set as a 1.5-mm prediction error. The predictive performance of AI models was evaluated on the lower lip, which was selected as a primary outcome variable and a benchmark landmark. Linear regression analysis was conducted to estimate the relationship between sample size and prediction error.

Results: The prediction error decreased with increasing sample size. A sample size greater than 1700 datasets was estimated as being required for the development of an AI model with a prediction error < 1.5 mm at the lower lip area.

Conclusions: A fairly large quantity of orthognathic surgery data seemed to be necessary to develop software programs for visualizing surgical treatment objectives with clinically acceptable accuracy.

开发能够准确预测正颌手术后软组织变化的人工智能需要多少数据?
目的:提出一种样本量计算方法,用于开发人工智能(AI),以预测临床可接受的正颌手术后软组织变化。材料与方法:从705例手术-正畸联合治疗患者的数据中,通过随机重采样程序生成10个数据子集,具体而言,将数据大小缩减为75、100、150、200、300、400、450、500、600和700。重新采样重复了四次,每个子集使用深度学习算法创建了总共40个人工智能模型。根据样本量,比较了所有40个人工智能模型对正颌手术后软组织变化的预测结果。临床可接受的准确度设定为1.5 mm的预测误差。人工智能模型的预测性能在下唇上进行评估,下唇被选为主要结果变量和基准地标。采用线性回归分析估计样本量与预测误差之间的关系。结果:预测误差随样本量的增加而减小。据估计,开发一个下唇区域预测误差小于1.5 mm的人工智能模型需要超过1700个数据集的样本量。结论:相当大量的正颌手术数据对于开发具有临床可接受准确性的可视化手术治疗目标的软件程序似乎是必要的。
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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