| Literature DB >> 27747561 |
Bokai Cao1, Xiangnan Kong2, Philip S Yu3,4.
Abstract
With rapid advances in neuroimaging techniques, the research on brain disorder identification has become an emerging area in the data mining community. Brain disorder data poses many unique challenges for data mining research. For example, the raw data generated by neuroimaging experiments is in tensor representations, with typical characteristics of high dimensionality, structural complexity, and nonlinear separability. Furthermore, brain connectivity networks can be constructed from the tensor data, embedding subtle interactions between brain regions. Other clinical measures are usually available reflecting the disease status from different perspectives. It is expected that integrating complementary information in the tensor data and the brain network data, and incorporating other clinical parameters will be potentially transformative for investigating disease mechanisms and for informing therapeutic interventions. Many research efforts have been devoted to this area. They have achieved great success in various applications, such as tensor-based modeling, subgraph pattern mining, and multi-view feature analysis. In this paper, we review some recent data mining methods that are used for analyzing brain disorders.Entities:
Keywords: Brain diseases; Data mining; Feature selection; Subgraph patterns; Tensor analysis
Year: 2015 PMID: 27747561 PMCID: PMC4883173 DOI: 10.1007/s40708-015-0021-3
Source DB: PubMed Journal: Brain Inform ISSN: 2198-4026
Fig. 1Tensor factorization of a third-order tensor
Fig. 2An example of discriminative subgraph patterns in brain networks
Fig. 3An example of fMRI brain networks (left) and all possible instantiations of linkage structures between red nodes (right) [47]. (Color figure online)
Fig. 4Two strategies of leveraging side views in feature selection process for graph classification: late fusion and early fusion
Fig. 5An example of multi-view learning in medical studies [51]
Fig. 6Schematic view of the key differences among three strategies of multi-view feature selection [51]
Fig. 7A bioinformatics heterogeneous information network schema