Effective Brain Connectivity Through a Constrained Autoregressive Model

Author(s):  
Alessandro Crimi ◽  
Luca Dodero ◽  
Vittorio Murino ◽  
Diego Sona
2021 ◽  
Author(s):  
Alessandro Crimi

The relationship between structure and function is of interest in many research fields involving the study of complex biological processes. In neuroscience in particular, the fusion of structural and functional data can help to understand the underlying principles of the operational networks in the brain. To address this issue, this paper proposes a constrained autoregressive model leading to a representation of effective connectivity that can be used to better understand how the structure modulates the function. Or simply, it can be used to find novel biomarkers characterizing groups of subjects. In practice, an initial structural connectivity representation is re-weighted to explain the functional co-activations. This is obtained by minimizing the reconstruction error of an autoregressive model constrained by the structural connectivity prior. The model has been designed to also include indirect connections, allowing to split direct and indirect components in the functional connectivity, and it can be used with raw and deconvoluted BOLD signal.The derived representation of dependencies was compared to the well known dynamic causal model, giving results closer to known ground-truth. Further evaluation of the proposed effective network was performed on two typical tasks. In a first experiment the direct functional dependencies were tested on a community detection problem, where the brain was partitioned using the effective networks across multiple subjects. In a second experiment the model was validated in a case-control task, which aimed at differentiating healthy subjects from individuals with autism spectrum disorder. Results showed that using effective connectivity leads to clusters better describing the functional interactions in the community detection task, while maintaining the original structural organization, and obtaining a better discrimination in the case-control classification task.


2018 ◽  
Author(s):  
Alessandro Crimi ◽  
Luca Dodero ◽  
Fabio Sambataro ◽  
Vittorio Murino ◽  
Diego Sona

How function arises from structure is of interest in many fields from proteomics to neuroscience. In particular, among the brain research community the fusion of structure and function data can shed new lights on underlying operational network principles in the brain. Targeting this issue, the manuscript proposes a constrained autoregressive model generating “effective” connectivity given structural and functional information. In practice, an initial structural connectivity representation is altered according to functional data, by minimizing the reconstruction error of an autoregressive model constrained by the structural prior. The proposed model has been tested in a community detection framework, where the brain is partitioned using the effective networks across multiple subjects. The model is further validated in a case-control experiment, which aims at differentiating healthy subjects from young patients affected by autism spectrum disorder. Results showed that using effective connectivity resulted in clusters that better describe the functional interactions between different regions while maintaining the structural organization, and a better discrimination in the case-control classification task.


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