Automatic soft-tissue analysis on orthodontic frontal and lateral facial photographs based on deep learning

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Qiao Chang, Yuxing Bai, Shaofeng Wang, Fan Wang, Yajie Wang, Feifei Zuo, Xianju Xie
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引用次数: 0

Abstract

Background

To establish the automatic soft-tissue analysis model based on deep learning that performs landmark detection and measurement calculations on orthodontic facial photographs to achieve a more comprehensive quantitative evaluation of soft tissues.

Methods

A total of 578 frontal photographs and 450 lateral photographs of orthodontic patients were collected to construct datasets. All images were manually annotated by two orthodontists with 43 frontal-image landmarks and 17 lateral-image landmarks. Automatic landmark detection models were established, which consisted of a high-resolution network, a feature fusion module based on depthwise separable convolution, and a prediction model based on pixel shuffle. Ten measurements for frontal images and eight measurements for lateral images were defined. Test sets were used to evaluate the model performance, respectively. The mean radial error of landmarks and measurement error were calculated and statistically analysed to evaluate their reliability.

Results

The mean radial error was 14.44 ± 17.20 pixels for the landmarks in the frontal images and 13.48 ± 17.12 pixels for the landmarks in the lateral images. There was no statistically significant difference between the model prediction and manual annotation measurements except for the mid facial-lower facial height index. A total of 14 measurements had a high consistency.

Conclusion

Based on deep learning, we established automatic soft-tissue analysis models for orthodontic facial photographs that can automatically detect 43 frontal-image landmarks and 17 lateral-image landmarks while performing comprehensive soft-tissue measurements. The models can assist orthodontists in efficient and accurate quantitative soft-tissue evaluation for clinical application.

基于深度学习的正畸正面和侧面面部照片软组织自动分析。
研究背景建立基于深度学习的软组织自动分析模型,对正畸面部照片进行地标检测和测量计算,以实现对软组织更全面的定量评估:共收集了 578 张正畸患者的正面照片和 450 张侧面照片来构建数据集。所有图像均由两名正畸医生手动标注了 43 个正面图像地标和 17 个侧面图像地标。建立的自动地标检测模型包括一个高分辨率网络、一个基于深度可分离卷积的特征融合模块和一个基于像素洗牌的预测模型。确定了正面图像的十种测量方法和侧面图像的八种测量方法。测试集分别用于评估模型性能。计算并统计分析了地标平均径向误差和测量误差,以评估其可靠性:正面图像中的地标平均径向误差为 14.44 ± 17.20 像素,侧面图像中的地标平均径向误差为 13.48 ± 17.12 像素。除了面中部-面下部高度指数外,模型预测和人工标注的测量结果在统计学上没有明显差异。共有 14 项测量结果具有较高的一致性:基于深度学习,我们建立了正畸面部照片的自动软组织分析模型,可以自动检测 43 个正面图像地标和 17 个侧面图像地标,同时进行全面的软组织测量。这些模型可以帮助正畸医生高效、准确地进行定量软组织评估,并应用于临床。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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