Center for Biomedical Imaging, University of Science and Technology of China, Hefei, Anhui, China.
Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei, Anhui, China.
Hum Brain Mapp. 2022 Jun 1;43(8):2683-2692. doi: 10.1002/hbm.25813. Epub 2022 Feb 25.
Decoding brain cognitive states from neuroimaging signals is an important topic in neuroscience. In recent years, deep neural networks (DNNs) have been recruited for multiple brain state decoding and achieved good performance. However, the open question of how to interpret the DNN black box remains unanswered. Capitalizing on advances in machine learning, we integrated attention modules into brain decoders to facilitate an in-depth interpretation of DNN channels. A four-dimensional (4D) convolution operation was also included to extract temporo-spatial interaction within the fMRI signal. The experiments showed that the proposed model obtains a very high accuracy (97.4%) and outperforms previous researches on the seven different task benchmarks from the Human Connectome Project (HCP) dataset. The visualization analysis further illustrated the hierarchical emergence of task-specific masks with depth. Finally, the model was retrained to regress individual traits within the HCP and to classify viewing images from the BOLD5000 dataset, respectively. Transfer learning also achieves good performance. Further visualization analysis shows that, after transfer learning, low-level attention masks remained similar to the source domain, whereas high-level attention masks changed adaptively. In conclusion, the proposed 4D model with attention module performed well and facilitated interpretation of DNNs, which is helpful for subsequent research.
从神经影像学信号中解码大脑认知状态是神经科学中的一个重要课题。近年来,深度神经网络(DNN)已被用于多种大脑状态解码,并取得了良好的性能。然而,如何解释 DNN 黑箱这个开放性问题仍未得到解答。我们利用机器学习的进展,将注意力模块集成到大脑解码器中,以促进对 DNN 通道的深入解释。还包括了一个四维(4D)卷积操作,以提取 fMRI 信号中的时-空相互作用。实验表明,所提出的模型在来自人类连接组计划(HCP)数据集的七个不同任务基准上获得了非常高的准确性(97.4%),并优于以前的研究。可视化分析进一步说明了具有深度的任务特定掩模的层次出现。最后,该模型分别重新训练以回归 HCP 中的个体特征,并对 BOLD5000 数据集的视图图像进行分类。迁移学习也取得了良好的性能。进一步的可视化分析表明,在迁移学习后,低层次注意力掩模与源域保持相似,而高层次注意力掩模则自适应地变化。总之,所提出的具有注意力模块的 4D 模型表现良好,并有助于对 DNN 的解释,这有助于后续研究。