Hartmann Robin, Weiherer Maximilian, Nieberle Felix, Palm Christoph, Brébant Vanessa, Prantl Lukas, Lamby Philipp, Reichert Torsten E, Taxis Jürgen, Ettl Tobias
Department of Oral and Maxillofacial Surgery, University Hospital Regensburg, Franz-Josef-Strauß-Allee 11, 93053, Regensburg, Germany.
Department of Computer Science, Chair of Visual Computing, Friedrich-Alexander-Universität Erlangen-Nürnberg, Cauerstraße 11, 91058, Erlangen, Germany.
Oral Maxillofac Surg. 2025 Jan 10;29(1):29. doi: 10.1007/s10006-024-01322-2.
This study aimed to clarify the applicability of smartphone-based three-dimensional (3D) surface imaging for clinical use in oral and maxillofacial surgery, comparing two smartphone-based approaches to the gold standard.
Facial surface models (SMs) were generated for 30 volunteers (15 men, 15 women) using the Vectra M5 (Canfield Scientific, USA), the TrueDepth camera of the iPhone 14 Pro (Apple Inc., USA), and the iPhone 14 Pro with photogrammetry. Smartphone-based SMs were superimposed onto Vectra-based SMs. Linear measurements and volumetric evaluations were performed to evaluate surface-to-surface deviation. To assess inter-observer reliability, all measurements were performed independently by a second observer. Statistical analyses included Bland-Altman analyses, the Wilcoxon signed-rank test for paired samples, and Intraclass correlation coefficients.
Photogrammetry-based SMs exhibited an overall landmark-to-landmark deviation of M = 0.8 mm (SD = ± 0.58 mm, n = 450), while TrueDepth-based SMs displayed a deviation of M = 1.1 mm (SD = ± 0.72 mm, n = 450). The mean volumetric difference for photogrammetry-based SMs was M = 1.8 cc (SD = ± 2.12 cc, n = 90), and M = 3.1 cc (SD = ± 2.64 cc, n = 90) for TrueDepth-based SMs. When comparing the two approaches, most landmark-to-landmark measurements demonstrated 95% Bland-Altman limits of agreement (LoA) of ≤ 2 mm. Volumetric measurements revealed LoA > 2 cc. Photogrammetry-based measurements demonstrated higher inter-observer reliability for overall landmark-to-landmark deviation.
Both approaches for smartphone-based 3D surface imaging exhibit potential in capturing the face. Photogrammetry-based SMs demonstrated superior alignment and volumetric accuracy with Vectra-based SMs than TrueDepth-based SMs.
本研究旨在阐明基于智能手机的三维(3D)表面成像在口腔颌面外科临床应用中的适用性,将两种基于智能手机的方法与金标准进行比较。
使用Vectra M5(美国Canfield Scientific公司)、iPhone 14 Pro(美国苹果公司)的TrueDepth摄像头以及带有摄影测量法的iPhone 14 Pro为30名志愿者(15名男性,15名女性)生成面部表面模型(SMs)。将基于智能手机的SMs叠加到基于Vectra的SMs上。进行线性测量和体积评估以评估表面到表面的偏差。为评估观察者间的可靠性,所有测量均由第二名观察者独立进行。统计分析包括Bland-Altman分析、配对样本的Wilcoxon符号秩检验和组内相关系数。
基于摄影测量法的SMs整体地标到地标偏差为M = 0.8毫米(标准差SD = ±0.58毫米,n = 450),而基于TrueDepth的SMs偏差为M = 1.1毫米(标准差SD = ±0.72毫米,n = 450)。基于摄影测量法的SMs的平均体积差异为M = 1.8立方厘米(标准差SD = ±2.12立方厘米,n = 90),基于TrueDepth的SMs为M = 3.1立方厘米(标准差SD = ±2.64立方厘米,n = 90)。比较这两种方法时,大多数地标到地标测量显示95%的Bland-Altman一致性界限(LoA)≤2毫米。体积测量显示LoA>2立方厘米。基于摄影测量法的测量在整体地标到地标偏差方面显示出更高的观察者间可靠性。
两种基于智能手机的3D表面成像方法在面部捕捉方面均显示出潜力。基于摄影测量法的SMs与基于Vectra的SMs相比,在对齐和体积准确性方面优于基于TrueDepth的SMs。