Abstract

It is becoming increasingly common to collect multiple related neuroimaging datasets either from different modalities or from different tasks and conditions. In addition, we have non-imaging data such as cognitive or behavioral variables, and it is through the association of these two sets of data—neuroimaging and non-neuroimaging—that we can understand and explain the evolution of neural and cognitive processes, and predict outcomes for intervention and treatment. Multiple methods for the joint analysis or fusion of multiple neuroimaging datasets or modalities exist; however, methods for the joint analysis of imaging and non-imaging data are still in their infancy. Current approaches for identifying brain networks related to cognitive assessments are still largely based on simple one-to-one correlation analyses and do not use the cross information available across multiple datasets. This work proposes two approaches based on independent vector analysis (IVA) to jointly analyze the imaging datasets and behavioral variables such that multivariate relationships across imaging data and behavioral features can be identified. The simulation results show that our proposed methods provide better accuracy in identifying associations across imaging and behavioral components than current approaches. With functional magnetic resonance imaging (fMRI) task data collected from 138 healthy controls and 109 patients with schizophrenia, results reveal that the central executive network (CEN) estimated in multiple datasets shows a strong correlation with the behavioral variable that measures working memory, a result that is not identified by traditional approaches. Most of the identified fMRI maps also show significant differences in activations across healthy controls and patients potentially providing a useful signature of mental disorders.

Highlights

  • The availability of multiple datasets that provide complementary information is becoming increasingly common in cognitive neuroimaging [1–6]

  • We demonstrate the successful application of our proposed scheme on real multitask functional magnetic resonance imaging data and behavioral variables collected from collected from 138 healthy controls and 109 patients with schizophrenia

  • In the first set of experiments, we compare the performance of Independent component analysis (ICA) and its three extensions for fusion, jICA [25], DS-ICA [76], and independent vector analysis (IVA) [71], to estimate and identify the neuroimaging components associated with BVs using a simple one-to-one correlation technique

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Summary

Introduction

The availability of multiple datasets that provide complementary information is becoming increasingly common in cognitive neuroimaging [1–6]. An essential step following the extraction of such informative components that can be interpreted as putative biomarkers of neurological conditions, such as depression and schizophrenia, is associating those with neuropsychological variables (or broadly non-imaging) such as behavioral variables [13–15]. This is important for the explanation or prediction of the brain regions associated with the behavioral variables and for the detection and identification of disease sub-types, among other tasks [16–22]

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