Litcius/Paper detail

Inferring Effective Connectivity Networks From fMRI Time Series With a Temporal Entropy-Score

Jinduo Liu, Junzhong Ji, Guangxu Xun, Aidong Zhang

2021IEEE Transactions on Neural Networks and Learning Systems31 citationsDOI

Abstract

Inferring brain-effective connectivity networks from neuroimaging data has become a very hot topic in neuroinformatics and bioinformatics. In recent years, the search methods based on Bayesian network score have been greatly developed and become an emerging method for inferring effective connectivity. However, the previous score functions ignore the temporal information from functional magnetic resonance imaging (fMRI) series data and may not be able to determine all orientations in some cases. In this article, we propose a novel score function for inferring effective connectivity from fMRI data based on the conditional entropy and transfer entropy (TE) between brain regions. The new score employs the TE to capture the temporal information and can effectively infer connection directions between brain regions. Experimental results on both simulated and real-world data demonstrate the efficacy of our proposed score function.

Topics & Concepts

NeuroinformaticsFunctional magnetic resonance imagingComputer scienceTransfer entropyConditional entropyNeuroimagingScoreArtificial intelligenceEntropy (arrow of time)Bayesian probabilityMachine learningBrain functionPrinciple of maximum entropyPattern recognition (psychology)Data miningNeurosciencePsychologyData sciencePhysicsQuantum mechanicsFunctional Brain Connectivity StudiesEEG and Brain-Computer InterfacesNeural dynamics and brain function