Huynh Nguyen, Deshpande Gopikrishna
Auburn University Neuroimaging Center, Department of Electrical and Computer Engineering, Auburn University, Auburn, AL, United States.
Department of Psychological Sciences, Auburn University, Auburn, AL, United States.
Front Neurosci. 2024 Apr 15;18:1333712. doi: 10.3389/fnins.2024.1333712. eCollection 2024.
Structural and functional MRI (magnetic resonance imaging) based diagnostic classification using machine learning has long held promise, but there are many roadblocks to achieving their potential. While traditional machine learning models suffered from their inability to capture the complex non-linear mapping, deep learning models tend to overfit the model. This is because there is data scarcity and imbalanced classes in neuroimaging; it is expensive to acquire data from human subjects and even more so in clinical populations. Due to their ability to augment data by learning underlying distributions, generative adversarial networks (GAN) provide a potential solution to this problem. Here, we provide a methodological primer on GANs and review the applications of GANs to classification of mental health disorders from neuroimaging data such as functional MRI and showcase the progress made thus far. We also highlight gaps in methodology as well as interpretability that are yet to be addressed. This provides directions about how the field can move forward. We suggest that since there are a range of methodological choices available to users, it is critical for users to interact with method developers so that the latter can tailor their development according to the users' needs. The field can be enriched by such synthesis between method developers and users in neuroimaging.
基于结构和功能磁共振成像(MRI),利用机器学习进行诊断分类长期以来一直被寄予厚望,但要实现其潜力存在诸多障碍。传统机器学习模型难以捕捉复杂的非线性映射,而深度学习模型又容易出现过拟合。这是因为神经成像中存在数据稀缺和类别不平衡的问题;从人类受试者获取数据成本高昂,在临床人群中更是如此。生成对抗网络(GAN)由于能够通过学习潜在分布来扩充数据,为这一问题提供了潜在的解决方案。在此,我们提供关于GAN的方法入门介绍,并回顾GAN在利用功能MRI等神经成像数据对心理健康障碍进行分类方面的应用,展示迄今所取得的进展。我们还强调了方法以及可解释性方面尚未解决的差距。这为该领域的发展指明了方向。我们建议,由于用户有一系列方法可供选择,用户与方法开发者互动至关重要,以便后者能够根据用户需求调整其开发。神经成像领域中方法开发者与用户之间的这种融合能够丰富该领域。