| Literature DB >> 25498390 |
Djalel-Eddine Meskaldji1, Lana Vasung2, David Romascano3, Jean-Philippe Thiran4, Patric Hagmann5, Stephan Morgenthaler6, Dimitri Van De Ville7.
Abstract
Detecting local differences between groups of connectomes is a great challenge in neuroimaging, because the large number of tests that have to be performed and the impact on multiplicity correction. Any available information should be exploited to increase the power of detecting true between-group effects. We present an adaptive strategy that exploits the data structure and the prior information concerning positive dependence between nodes and connections, without relying on strong assumptions. As a first step, we decompose the brain network, i.e., the connectome, into subnetworks and we apply a screening at the subnetwork level. The subnetworks are defined either according to prior knowledge or by applying a data driven algorithm. Given the results of the screening step, a filtering is performed to seek real differences at the node/connection level. The proposed strategy could be used to strongly control either the family-wise error rate or the false discovery rate. We show by means of different simulations the benefit of the proposed strategy, and we present a real application of comparing connectomes of preschool children and adolescents.Entities:
Keywords: Adolescence; Brain connectivity; Complex networks; False discovery rate FDR; Family-wise error rate (FWER); Fronto-limbic circuitry; Multiple testing
Mesh:
Year: 2014 PMID: 25498390 DOI: 10.1016/j.neuroimage.2014.11.059
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556