Department of Radiology, Mayo Clinic, Rochester, MN, United States.
Department of Health Sciences Research, Mayo Clinic, Rochester, MN, United States.
Neuroimage. 2021 May 1;231:117845. doi: 10.1016/j.neuroimage.2021.117845. Epub 2021 Feb 11.
Recent advances in automated face recognition algorithms have increased the risk that de-identified research MRI scans may be re-identifiable by matching them to identified photographs using face recognition. A variety of software exist to de-face (remove faces from) MRI, but their ability to prevent face recognition has never been measured and their image modifications can alter automated brain measurements. In this study, we compared three popular de-facing techniques and introduce our mri_reface technique designed to minimize effects on brain measurements by replacing the face with a population average, rather than removing it. For each technique, we measured 1) how well it prevented automated face recognition (i.e. effects on exceptionally-motivated individuals) and 2) how it altered brain measurements from SPM12, FreeSurfer, and FSL (i.e. effects on the average user of de-identified data). Before de-facing, 97% of scans from a sample of 157 volunteers were correctly matched to photographs using automated face recognition. After de-facing with popular software, 28-38% of scans still retained enough data for successful automated face matching. Our proposed mri_reface had similar performance with the best existing method (fsl_deface) at preventing face recognition (28-30%) and it had the smallest effects on brain measurements in more pipelines than any other, but these differences were modest.
最近,自动化人脸识别算法的进步增加了研究性磁共振成像(MRI)扫描被重新识别的风险,这些扫描通过人脸识别与已识别的照片进行匹配。有各种软件可以用于去脸(从 MRI 中去除面部),但它们防止人脸识别的能力从未被测量过,并且它们的图像修改可能会改变自动脑测量。在这项研究中,我们比较了三种流行的去脸技术,并介绍了我们的 mri_reface 技术,该技术旨在通过用人群平均值替换面部来最小化对脑测量的影响,而不是将其移除。对于每种技术,我们都测量了 1)它在多大程度上防止了自动化人脸识别(即对有特殊动机的个体的影响)和 2)它对 SPM12、FreeSurfer 和 FSL 的脑测量结果的影响(即对去识别数据的普通用户的影响)。在去脸之前,从 157 名志愿者的样本中,97%的扫描可以通过自动化人脸识别正确匹配到照片。在使用流行软件去脸之后,28%-38%的扫描仍然保留了足够的数据用于成功的自动人脸识别匹配。我们提出的 mri_reface 在防止人脸识别方面与最好的现有方法(fsl_deface)具有相似的性能(28%-30%),并且在更多的管道中对脑测量的影响小于任何其他方法,但这些差异很小。