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采用数据驱动的表型分析方法研究性别对 3D 人脸表面形态的影响。

Using data-driven phenotyping to investigate the impact of sex on 3D human facial surface morphology.

机构信息

Department of Human Genetics, KU Leuven, 3000, Leuven, Belgium.

Medical Imaging Research Center, UZ Leuven, Herestraat 49, 3000, Leuven, Belgium.

出版信息

J Anat. 2023 Aug;243(2):274-283. doi: 10.1111/joa.13866. Epub 2023 Mar 21.

Abstract

The effects of sex on human facial morphology have been widely documented. Because sexual dimorphism is relevant to a variety of scientific and applied disciplines, it is imperative to have a complete and accurate account of how and where male and female faces differ. We apply a comprehensive facial phenotyping strategy to a large set of existing 3D facial surface images. We investigate facial sexual dimorphism in terms of size, shape, and shape variance. We also assess the ability to correctly assign sex based on shape, both for the whole face and for subregions. We applied a predefined data-driven segmentation to partition the 3D facial surfaces of 2446 adults into 63 hierarchically linked regions, ranging from global (whole face) to highly localized subparts. Each facial region was then analyzed with spatially dense geometric morphometrics. To describe the major modes of shape variation, principal components analysis was applied to the Procrustes aligned 3D points comprising each of the 63 facial regions. Both nonparametric and permutation-based statistics were then used to quantify the facial size and shape differences and visualizations were generated. Males were significantly larger than females for all 63 facial regions. Statistically significant sex differences in shape were also seen in all regions and the effects tended to be more pronounced for the upper lip and forehead, with more subtle changes emerging as the facial regions became more granular. Males also showed greater levels of shape variance, with the largest effect observed for the central forehead. Classification accuracy was highest for the full face (97%), while most facial regions showed an accuracy of 75% or greater. In summary, sex differences in both size and shape were present across every part of the face. By breaking the face into subparts, some shape differences emerged that were not apparent when analyzing the face as a whole. The increase in facial shape variance suggests possible evolutionary origins and may offer insights for understanding congenital facial malformations. Our classification results indicate that a high degree of accuracy is possible with only parts of the face, which may have implications for biometrics applications.

摘要

性别对面部形态的影响已被广泛记录。由于性二态性与多种科学和应用学科相关,因此必须全面准确地了解男性和女性面部的差异所在。我们应用一种全面的面部表型策略,对大量现有的 3D 面部表面图像进行分析。我们从大小、形状和形状方差等方面研究面部的性别二态性。我们还评估了基于形状正确分配性别的能力,包括整个面部和子区域。我们应用了预定义的数据驱动分割,将 2446 名成年人的 3D 面部表面分割成 63 个层次链接的区域,范围从全局(整个面部)到高度局部化的子部分。然后,我们使用空间密集的几何形态测量法对每个面部区域进行分析。为了描述主要的形状变化模式,我们对包含每个 63 个面部区域的 Procrustes 对齐 3D 点进行了主成分分析。然后,我们使用非参数和基于置换的统计数据来量化面部大小和形状差异,并生成可视化效果。对于所有 63 个面部区域,男性的大小均显著大于女性。在所有区域中也观察到了统计学上显著的性别差异,并且随着面部区域变得更加细化,效果变得更加明显。男性的形状方差也表现出更大的水平,其中最大的效果出现在中央额部。整体面部的分类准确率最高(97%),而大多数面部区域的准确率达到 75%或更高。总之,大小和形状的性别差异存在于面部的各个部位。通过将面部分成子部分,分析整个面部时未发现的一些形状差异出现了。面部形状方差的增加表明可能存在进化起源,并可能为理解先天性面部畸形提供启示。我们的分类结果表明,仅使用面部的一部分就可以实现高度的准确性,这可能对生物识别应用产生影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e928/10335371/f4b67dab56fc/JOA-243-274-g006.jpg

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