| Literature DB >> 30272058 |
Wen Zhang1, Kai Shu1, Suhang Wang1, Huan Liu1, Yalin Wang1.
Abstract
In recent years, brain network analysis has attracted considerable interests in the field of neuroimaging analysis. It plays a vital role in understanding biologically fundamental mechanisms of human brains. As the upward trend of multi-source in neuroimaging data collection, effective learning from the different types of data sources, e.g. multimodal and longitudinal data, is much in demand. In this paper, we propose a general coupling framework, the multimodal neuroimaging network fusion with longitudinal couplings (MMLC), to learn the latent representations of brain networks. Specifically, we jointly factorize multimodal networks, assuming a linear relationship to couple network variance across time. Experimental results on two large datasets demonstrate the effectiveness of the proposed framework. The new approach integrates information from longitudinal, multimodal neuroimaging data and boosts statistical power to predict psychometric evaluation measures.Entities:
Keywords: Brain Network Fusion; Longitudinal; Multimodality; Representation
Year: 2018 PMID: 30272058 PMCID: PMC6157630 DOI: 10.1007/978-3-030-00931-1_1
Source DB: PubMed Journal: Med Image Comput Comput Assist Interv