Subbanna Nagesh, Wilms Matthias, Tuladhar Anup, Forkert Nils D
Department of Radiology, University of Calgary, Calgary, AB T2N 1N4, Canada.
Hotchkiss Brain Institute, University of Calgary, Calgary, AB T2N 1N4, Canada.
Sensors (Basel). 2021 Jun 4;21(11):3874. doi: 10.3390/s21113874.
Recent research in computer vision has shown that original images used for training of deep learning models can be reconstructed using so-called inversion attacks. However, the feasibility of this attack type has not been investigated for complex 3D medical images. Thus, the aim of this study was to examine the vulnerability of deep learning techniques used in medical imaging to model inversion attacks and investigate multiple quantitative metrics to evaluate the quality of the reconstructed images. For the development and evaluation of model inversion attacks, the public LPBA40 database consisting of 40 brain MRI scans with corresponding segmentations of the gyri and deep grey matter brain structures were used to train two popular deep convolutional neural networks, namely a U-Net and SegNet, and corresponding inversion decoders. Matthews correlation coefficient, the structural similarity index measure (SSIM), and the magnitude of the deformation field resulting from non-linear registration of the original and reconstructed images were used to evaluate the reconstruction accuracy. A comparison of the similarity metrics revealed that the SSIM is best suited to evaluate the reconstruction accuray, followed closely by the magnitude of the deformation field. The quantitative evaluation of the reconstructed images revealed SSIM scores of 0.73±0.12 and 0.61±0.12 for the U-Net and the SegNet, respectively. The qualitative evaluation showed that training images can be reconstructed with some degradation due to blurring but can be correctly matched to the original images in the majority of the cases. In conclusion, the results of this study indicate that it is possible to reconstruct patient data used for training of convolutional neural networks and that the SSIM is a good metric to assess the reconstruction accuracy.
计算机视觉领域的最新研究表明,用于深度学习模型训练的原始图像可以通过所谓的反演攻击进行重建。然而,这种攻击类型在复杂3D医学图像上的可行性尚未得到研究。因此,本研究的目的是检验医学成像中使用的深度学习技术对模型反演攻击的脆弱性,并研究多种定量指标以评估重建图像的质量。为了开发和评估模型反演攻击,使用由40例脑MRI扫描以及相应的脑回和深部灰质脑结构分割组成的公共LPBA40数据库来训练两个流行的深度卷积神经网络,即U-Net和SegNet,以及相应的反演解码器。使用马修斯相关系数、结构相似性指数测量(SSIM)以及原始图像和重建图像非线性配准产生的变形场大小来评估重建精度。相似性指标的比较表明,SSIM最适合评估重建精度,其次是变形场大小。对重建图像的定量评估显示,U-Net和SegNet的SSIM分数分别为0.73±0.12和0.61±0.12。定性评估表明,训练图像可以重建,但由于模糊会有一些退化,但在大多数情况下可以与原始图像正确匹配。总之,本研究结果表明,可以重建用于卷积神经网络训练的患者数据,并且SSIM是评估重建精度的一个良好指标。