Ryu Dong-Woo, Lee ChungHwee, Lee Hyuk-Je, Shim Yong S, Hong Yun Jeong, Cho Jung Hee, Kim Seonggyu, Lee Jong-Min, Yang Dong Won
Department of Neurology, College of Medicine, The Catholic University of Korea, Seoul, Korea.
Department of Electronic Engineering, Hanyang University, Seoul, Korea.
Dement Neurocogn Disord. 2024 Jul;23(3):127-135. doi: 10.12779/dnd.2024.23.3.127. Epub 2024 May 8.
To ensure data privacy, the development of defacing processes, which anonymize brain images by obscuring facial features, is crucial. However, the impact of these defacing methods on brain imaging analysis poses significant concern. This study aimed to evaluate the reliability of three different defacing methods in automated brain volumetry.
Magnetic resonance imaging with three-dimensional T1 sequences was performed on ten patients diagnosed with subjective cognitive decline. Defacing was executed using mri_deface, BioImage Suite Web-based defacing, and Defacer. Brain volumes were measured employing the QBraVo program and FreeSurfer, assessing intraclass correlation coefficient (ICC) and the mean differences in brain volume measurements between the original and defaced images.
The mean age of the patients was 71.10±6.17 years, with 4 (40.0%) being male. The total intracranial volume, total brain volume, and ventricle volume exhibited high ICCs across the three defacing methods and 2 volumetry analyses. All regional brain volumes showed high ICCs with all three defacing methods. Despite variations among some brain regions, no significant mean differences in regional brain volume were observed between the original and defaced images across all regions.
The three defacing algorithms evaluated did not significantly affect the results of image analysis for the entire brain or specific cerebral regions. These findings suggest that these algorithms can serve as robust methods for defacing in neuroimaging analysis, thereby supporting data anonymization without compromising the integrity of brain volume measurements.
为确保数据隐私,开发通过模糊面部特征使脑图像匿名化的去面容处理方法至关重要。然而,这些去面容方法对脑成像分析的影响引发了重大关注。本研究旨在评估三种不同去面容方法在自动脑容量测量中的可靠性。
对10名被诊断为主观认知衰退的患者进行了三维T1序列的磁共振成像检查。使用mri_deface、基于BioImage Suite Web的去面容处理以及Defacer进行去面容处理。采用QBraVo程序和FreeSurfer测量脑容量,评估组内相关系数(ICC)以及原始图像和去面容处理后图像在脑容量测量方面的平均差异。
患者的平均年龄为71.10±6.17岁,其中4名(40.0%)为男性。在三种去面容方法和两种容量测量分析中,总颅内体积、总脑体积和脑室体积均表现出较高的ICC。所有脑区体积在所有三种去面容方法中均表现出较高的ICC。尽管某些脑区存在差异,但在所有区域,原始图像和去面容处理后图像之间在区域脑容量方面未观察到显著的平均差异。
所评估的三种去面容算法对全脑或特定脑区的图像分析结果没有显著影响。这些发现表明,这些算法可作为神经成像分析中可靠的去面容方法,从而支持数据匿名化,同时不影响脑容量测量的完整性。