There have been several attempts to use deep learning based on brain fMRI signals to classify cognitive impairment diseases. However, deep learning is a hidden black box model that makes it difficult to interpret the process of classification. To address this issue, we propose a novel analytical framework that interprets the classification result from deep learning processes. We first derive the region of interest (ROI) functional connectivity network (FCN) by embedding functions based on their similar signal patterns. Then, using the self-attention equipped deep learning model, we classify diseases based on their FCN. Finally, in order to interpret the classification results, we employ a latent space item-response interaction network model to identify the significant functions that exhibit distinct connectivity patterns when compared to other diseases. The application of this proposed framework to the four types of cognitive impairment shows that our approach is valid for determining the significant ROI functions.
翻译:曾几次尝试利用基于大脑FMRI信号的深层学习对认知障碍疾病进行分类,然而,深层学习是一个隐藏的黑盒模型,难以解释分类过程。为解决这一问题,我们提议了一个解释深层学习过程的分类结果的新的分析框架。我们首先根据相似的信号模式嵌入了感兴趣的区域(ROI)功能连通网络(FCN)的功能。然后,我们利用自知的深层学习模型对疾病进行分类。最后,为了解释分类结果,我们使用一个潜在的空间项目-反应互动网络模型,以确定与其他疾病相比具有不同连接模式的重要功能。将这一拟议框架应用于四种类型的认知障碍,表明我们的做法对于确定重要的空间项目-反应互动网络功能是有效的。