NTU Institute for Health Technologies, Interdisciplinary Graduate Programme, Nanyang Technological University, Singapore, Singapore; Center for Sleep and Cognition, Department of Medicine, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore.
Center for Sleep and Cognition, Department of Medicine, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore.
Schizophr Res. 2022 May;243:330-341. doi: 10.1016/j.schres.2021.06.011. Epub 2021 Jun 28.
The ability of automatic feature learning makes Convolutional Neural Network (CNN) potentially suitable to uncover the complex and widespread brain changes in schizophrenia. Despite that, limited studies have been done on schizophrenia identification using interpretable deep learning approaches on multimodal neuroimaging data. Here, we developed a deep feature approach based on pre-trained 2D CNN and naive 3D CNN models trained from scratch for schizophrenia classification by integrating 3D structural and diffusion magnetic resonance imaging (MRI) data. We found that the naive 3D CNN models outperformed the pretrained 2D CNN models and the handcrafted feature-based machine learning approach using support vector machine during both cross-validation and testing on an independent dataset. Multimodal neuroimaging-based models accomplished performance superior to models based on a single modality. Furthermore, we identified brain grey matter and white matter regions critical for illness classification at the individual- and group-level which supported the salience network and striatal dysfunction hypotheses in schizophrenia. Our findings underscore the potential of CNN not only to automatically uncover and integrate multimodal 3D brain imaging features for schizophrenia identification, but also to provide relevant neurobiological interpretations which are crucial for developing objective and interpretable imaging-based probes for prognosis and diagnosis in psychiatric disorders.
自动特征学习能力使卷积神经网络(CNN)有可能揭示精神分裂症中复杂而广泛的大脑变化。尽管如此,在多模态神经影像学数据上使用可解释的深度学习方法进行精神分裂症识别的研究还很有限。在这里,我们开发了一种基于预训练的 2D CNN 和从头开始训练的朴素 3D CNN 模型的深度特征方法,通过整合 3D 结构和扩散磁共振成像(MRI)数据来进行精神分裂症分类。我们发现,在独立数据集的交叉验证和测试中,朴素 3D CNN 模型的表现优于预训练的 2D CNN 模型和基于手工特征的机器学习方法(使用支持向量机)。基于多模态神经影像学的模型的表现优于基于单一模态的模型。此外,我们在个体和群体水平上确定了对疾病分类至关重要的大脑灰质和白质区域,这支持了精神分裂症中突显网络和纹状体功能障碍的假说。我们的研究结果强调了 CNN 的潜力,它不仅可以自动发现和整合用于精神分裂症识别的多模态 3D 脑成像特征,还可以提供相关的神经生物学解释,这对于开发客观和可解释的影像生物标志物以用于精神疾病的预后和诊断至关重要。