IEEE J Biomed Health Inform. 2023 Oct;27(10):4961-4970. doi: 10.1109/JBHI.2023.3304388. Epub 2023 Oct 5.
Deep learning has been widely investigated in brain image computational analysis for diagnosing brain diseases such as Alzheimer's disease (AD). Most of the existing methods built end-to-end models to learn discriminative features by group-wise analysis. However, these methods cannot detect pathological changes in each subject, which is essential for the individualized interpretation of disease variances and precision medicine. In this article, we propose a brain status transferring generative adversarial network (BrainStatTrans-GAN) to generate corresponding healthy images of patients, which are further used to decode individualized brain atrophy. The BrainStatTrans-GAN consists of generator, discriminator, and status discriminator. First, a normative GAN is built to generate healthy brain images from normal controls. However, it cannot generate healthy images from diseased ones due to the lack of paired healthy and diseased images. To address this problem, a status discriminator with adversarial learning is designed in the training process to produce healthy brain images for patients. Then, the residual between the generated and input images can be computed to quantify pathological brain changes. Finally, a residual-based multi-level fusion network (RMFN) is built for more accurate disease diagnosis. Compared to the existing methods, our method can model individualized brain atrophy for facilitating disease diagnosis and interpretation. Experimental results on T1-weighted magnetic resonance imaging (MRI) data of 1,739 subjects from three datasets demonstrate the effectiveness of our method.
深度学习在脑影像计算分析中得到了广泛的研究,可用于诊断阿尔茨海默病(AD)等脑部疾病。现有的大多数方法都是通过组间分析构建端到端模型来学习判别特征。然而,这些方法无法检测每个个体的病理变化,而这对于疾病差异的个体化解释和精准医疗至关重要。本文提出了一种脑状态转移生成对抗网络(BrainStatTrans-GAN),用于生成患者的相应健康图像,进而用于解码个体的脑萎缩。BrainStatTrans-GAN 由生成器、判别器和状态判别器组成。首先,构建了一个规范的 GAN,用于从正常对照中生成健康的脑图像。然而,由于缺乏配对的健康和患病图像,它无法从患病者中生成健康的图像。为了解决这个问题,在训练过程中设计了一个具有对抗学习的状态判别器,用于为患者生成健康的脑图像。然后,可以计算生成图像和输入图像之间的残差,以量化病理性的脑变化。最后,构建了一个基于残差的多层次融合网络(RMFN),用于更准确的疾病诊断。与现有的方法相比,我们的方法可以对个体的脑萎缩进行建模,以促进疾病的诊断和解释。来自三个数据集的 1739 名受试者的 T1 加权磁共振成像(MRI)数据的实验结果证明了我们方法的有效性。