Privacy protection of medical image data is challenging. Even if metadata is removed, brain scans are vulnerable to attacks that match renderings of the face to facial image databases. Solutions have been developed to de-identify diagnostic scans by obfuscating or removing parts of the face. However, these solutions either fail to reliably hide the patient's identity or are so aggressive that they impair further analyses. We propose a new class of de-identification techniques that, instead of removing facial features, remodels them. Our solution relies on a conditional multi-scale GAN architecture. It takes a patient's MRI scan as input and generates a 3D volume conditioned on the patient's brain, which is preserved exactly, but where the face has been de-identified through remodeling. We demonstrate that our approach preserves privacy far better than existing techniques, without compromising downstream medical analyses. Analyses were run on the OASIS-3 and ADNI corpora.
翻译:医学图像数据的隐私保护具有挑战性。即使删除了元数据,脑部扫描也容易受到与面部图像数据库相匹配的冲击。已经开发出一些解决方案,通过混淆或去除部分面部来去辨别诊断扫描。然而,这些解决方案要么无法可靠地隐藏患者的身份,要么如此激烈,以致于会妨碍进一步的分析。我们提出了一种新的解辨技术,这种技术不是去除面部特征,而是对其进行改造。我们的解决方案依赖于一个有条件的多尺度GAN结构。它将病人的MRI扫描作为输入,并生成一个3D体积,以病人的大脑为条件,而脑部是完全保存的,但脸部却通过改造而去分。我们证明我们的方法比现有技术更能保护隐私,而不会损害下游医学分析。对 OASIS-3 和 ADNI Corora 进行了分析。