Suppr超能文献

与立体摄影测量系统相比,基于智能手机的摄影测量应用程序所捕获的三维面部成像的验证。

Validation of three-dimensional facial imaging captured with smartphone-based photogrammetry application in comparison to stereophotogrammetry system.

作者信息

Andrews James, Alwafi Abdulraheem, Bichu Yashodhan M, Pliska Benjamin T, Mostafa Nesrine, Zou Bingshuang

机构信息

Graduate Orthodontics, Department of Oral Health Science, Faculty of Dentistry, University of British Columbia, Vancouver, Canada.

Faculty of Dentistry, Department of Dental Public Health, King Abdulaziz University, Jeddah, Saudi Arabia.

出版信息

Heliyon. 2023 Apr 28;9(5):e15834. doi: 10.1016/j.heliyon.2023.e15834. eCollection 2023 May.

Abstract

STATEMENT OF PROBLEM

The development of facial scanners has improved capabilities to create three-dimensional (3D) virtual patients for accurate facial and smile analysis. However, most of these scanners are expensive, stationary and involve a significant clinical footprint. The use of the Apple iPhone and its integrated "TrueDepth" near-infrared (NIR) scanner combined with an image processing application (app) offers the potential to capture and analyze the unique 3D nature of the face; the accuracy and reliability of which are yet to be established for use in clinical dentistry.

PURPOSE

This study was designed to validate both the trueness and precision of the iPhone 11 Pro smartphone TrueDepth NIR scanner in conjunction with the Bellus3D Face app in capturing 3D facial images in a sample of adult participants in comparison to the conventional 3dMDface stereophotogrammetry system.

MATERIAL AND METHODS

Twenty-nine adult participants were prospectively recruited. Eighteen soft tissue landmarks were marked on each participant's face before imaging. 3D facial images were captured using a 3dMDface system and the Apple iPhone TrueDepth NIR scanner combined with the Bellus3D Face app respectively. The best fit of each experimental model to the 3dMD scan was analyzed using Geomagic Control X software. The root mean square (RMS) was used to measure the "trueness" as the absolute deviation of each TrueDepth scan from the reference 3dMD image. Individual facial landmark deviations were also assessed to evaluate the reliability in different craniofacial regions. The "precision" of the smartphone was tested by taking 10 consecutive scans of the same subject and comparing those to the reference scan. Intra-observer and inter-observer reliabilities were assessed using the intra-class correlation coefficient (ICC).

RESULTS

Relative to the 3dMDface system, the mean RMS difference of the iPhone/Bellus3D app was 0.86 ± 0.31 mm. 97% of all the landmarks were within 2 mm of error compared with the reference data. The ICC for intra-observer reproducibility or precision of the iPhone/Bellus3D app was 0.96, which was classified as excellent. The ICC for inter-observer reliability was 0.84, which was classified as good.

CONCLUSIONS

These results suggest that 3D facial images acquired with this system, the iPhone TrueDepth NIR camera in conjunction with the Bellus3D Face app, are clinically accurate and reliable. Judicious use is advised in clinical situations that require high degrees of detail due to a lack of image resolution and a longer acquisition time. Generally, this system possesses the potential to serve as a practical alternative to conventional stereophotogrammetry systems for use in a clinical setting due to its accessibility and relative ease of use and further research is planned to appraise its updated clinical use.

摘要

问题陈述

面部扫描仪的发展提高了创建三维(3D)虚拟患者以进行精确面部和微笑分析的能力。然而,这些扫描仪大多价格昂贵、固定不动且占用较大的临床空间。使用苹果iPhone及其集成的“原深感”近红外(NIR)扫描仪与图像处理应用程序(应用)相结合,提供了捕捉和分析面部独特3D特征的潜力;其在临床牙科中的准确性和可靠性尚待确定。

目的

本研究旨在验证iPhone 11 Pro智能手机的原深感NIR扫描仪与Bellus3D Face应用相结合,在与传统的3dMDface立体摄影测量系统相比时,在成年参与者样本中捕捉3D面部图像的真实性和精确性。

材料与方法

前瞻性招募了29名成年参与者。在成像前,在每个参与者的面部标记18个软组织标志点。分别使用3dMDface系统和苹果iPhone原深感NIR扫描仪结合Bellus3D Face应用捕捉3D面部图像。使用Geomagic Control X软件分析每个实验模型与3dMD扫描的最佳拟合情况。均方根(RMS)用于测量“真实性”,即每次原深感扫描与参考3dMD图像的绝对偏差。还评估了各个面部标志点的偏差,以评估在不同颅面区域的可靠性。通过对同一受试者进行连续10次扫描并与参考扫描进行比较,测试智能手机的“精确性”。使用组内相关系数(ICC)评估观察者内和观察者间的可靠性。

结果

相对于3dMDface系统,iPhone/Bellus3D应用的平均RMS差异为0.86±0.31毫米。与参考数据相比,所有标志点的97%误差在2毫米以内。iPhone/Bellus3D应用的观察者内再现性或精确性的ICC为0.96,被归类为优秀。观察者间可靠性的ICC为0.84,被归类为良好。

结论

这些结果表明,使用该系统(iPhone原深感NIR摄像头与Bellus3D Face应用相结合)获取的3D面部图像在临床上是准确可靠的。由于缺乏图像分辨率和较长的采集时间,建议在需要高度细节的临床情况下谨慎使用。总体而言,由于其可及性和相对易用性,该系统有潜力作为传统立体摄影测量系统在临床环境中的实用替代方案,并且计划进行进一步研究以评估其更新后的临床应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/146f/10172784/6ca1e4ba8a90/gr1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验