Title of article :
Mutual Information Better Quantifies Brain Network Architecture in Children with Epilepsy
Author/Authors :
Zhang, Wei Department of Radiology - Texas Children’s Hospital - Houston, USA , Muravina, Viktoria Department of Mathematics - University of Houston - Houston, USA , Azencott, Robert Department of Mathematics - University of Houston - Houston, USA , Chu, Zili D Department of Radiology - Texas Children’s Hospital - Houston, USA , Paldino, Michael J Department of Radiology - Texas Children’s Hospital - Houston, USA
Abstract :
Metrics of the brain network architecture derived from resting-state fMRI have been shown to provide physiologically
meaningful markers of IQ in children with epilepsy. However, traditional measures of functional connectivity (FC), specifically
the Pearson correlation, assume a dominant linear relationship between BOLD time courses; this assumption may not be valid.
Mutual information is an alternative measure of FC which has shown promise in the study of complex networks due to its ability
to flexibly capture association of diverse forms. We aimed to compare network metrics derived from mutual information-defined
FC to those derived from traditional correlation in terms of their capacity to predict patient-level IQ. Materials and Methods.
Patients were retrospectively identified with the following: (1) focal epilepsy; (2) resting-state fMRI; and (3) full-scale IQ by
a neuropsychologist. Brain network nodes were defined by anatomic parcellation. Parcellation was performed at the size threshold
of 350 mm2
, resulting in networks containing 780 nodes. Whole-brain, weighted graphs were then constructed according to the
pairwise connectivity between nodes. In the traditional condition, edges (connections) between each pair of nodes were defined as
the absolute value of the Pearson correlation coefficient between their BOLD time courses. In the mutual information condition,
edges were defined as the mutual information between time courses. ,e following metrics were then calculated for each weighted
graph: clustering coefficient, modularity, characteristic path length, and global efficiency. A machine learning algorithm was used
to predict the IQ of each individual based on their network metrics. Prediction accuracy was assessed as the fractional variation
explained for each condition. Results. Twenty-four patients met the inclusion criteria (age: 8–18 years). All brain networks
demonstrated expected small-world properties. Network metrics derived from mutual information-defined FC significantly
outperformed the use of the Pearson correlation. Specifically, fractional variation explained was 49% (95% CI: 46%, 51%) for the
mutual information method; the Pearson correlation demonstrated a variation of 17% (95% CI: 13%, 19%). Conclusion. Mutual
information-defined functional connectivity captures physiologically relevant features of the brain network better than correlation. Clinical Relevance. Optimizing the capacity to predict cognitive phenotypes at the patient level is a necessary step toward
the clinical utility of network-based biomarkers.
Keywords :
Better , BOLD , IQ , Epilepsy
Journal title :
Computational and Mathematical Methods in Medicine