Artigo
Bayesian network models in brain functional connectivity analysis
Fecha
2014-01-01Registro en:
International Journal of Approximate Reasoning. New York: Elsevier B.V., v. 55, n. 1, p. 23-35, 2014.
0888-613X
10.1016/j.ijar.2013.03.013
WOS:000329012800003
Autor
Ide, Jaime S. [UNIFESP]
Zhang, Sheng
Li, Chiang-shan R.
Institución
Resumen
Much effort has been made to better understand the complex integration of distinct parts of the human brain using functional magnetic resonance imaging (fMRI). Altered functional connectivity between brain regions is associated with many neurological and mental illnesses, such as Alzheimer and Parkinson diseases, addiction, and depression. in computational science, Bayesian networks (BN) have been used in a broad range of studies to model complex data set in the presence of uncertainty and when expert prior knowledge is needed. However, little is done to explore the use of BN in connectivity analysis of fMRI data. in this paper, we present an up-to-date literature review and methodological details of connectivity analyses using BN, while highlighting caveats in a real-world application. We present a BN model of fMRI dataset obtained from sixty healthy subjects performing the stop-signal task (SST), a paradigm widely used to investigate response inhibition. Connectivity results are validated with the extant literature including our previous studies. By exploring the link strength of the learned BNs and correlating them to behavioral performance measures, this novel use of BN in connectivity analysis provides new insights to the functional neural pathways underlying response inhibition. (C) 2013 Elsevier Inc. All rights reserved.