A hybrid spatiotemporal deep belief network and sparse representation-based framework reveals multilevel core functional components in decoding multitask fMRI signals
Author:
Song Limei1,
Ren Yudan1,
Xu Shuhan1,
Hou Yuqing1,
He Xiaowei1
Affiliation:
1. School of Information Science and Technology, Northwest University, Xi’an, China
Abstract
Abstract
Decoding human brain activity on various task-based functional brain imaging data is of great significance for uncovering the functioning mechanism of the human mind. Currently, most feature extraction model-based methods for brain state decoding are shallow machine learning models, which may struggle to capture complex and precise spatiotemporal patterns of brain activity from the highly noisy fMRI raw data. Moreover, although decoding models based on deep learning methods benefit from their multilayer structure that could extract spatiotemporal features at multiscale, the relatively large populations of fMRI datasets are indispensable, and the explainability of their results is elusive. To address the above problems, we proposed a computational framework based on hybrid spatiotemporal deep belief network and sparse representations to differentiate multitask fMRI (tfMRI) signals. Using a relatively small cohort of tfMRI data as a test bed, our framework can achieve an average classification accuracy of 97.86% and define the multilevel temporal and spatial patterns of multiple cognitive tasks. Intriguingly, our model can characterize the key components for differentiating the multitask fMRI signals. Overall, the proposed framework can identify the interpretable and discriminative fMRI composition patterns at multiple scales, offering an effective methodology for basic neuroscience and clinical research with relatively small cohorts.
Funder
National Natural Science Foundation of China
Youth Innovation Team Foundation of Education Department of Shaanxi Province Government
China Postdoctoral Science Foundation Funded Project
Key Research and Development Program Project of Shaanxi Province
Natural Science Basic Research Program of Shaanxi
Subject
Applied Mathematics,Artificial Intelligence,Computer Science Applications,General Neuroscience