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A recurrent Hopfield network for estimating meso-scale effective connectivity in MEG.
- Source :
-
Neural Networks . Feb2024, Vol. 170, p72-93. 22p. - Publication Year :
- 2024
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Abstract
- The architecture of communication within the brain, represented by the human connectome, has gained a paramount role in the neuroscience community. Several features of this communication, e.g. , the frequency content, spatial topology, and temporal dynamics are currently well established. However, identifying generative models providing the underlying patterns of inhibition/excitation is very challenging. To address this issue, we present a novel generative model to estimate large-scale effective connectivity from MEG. The dynamic evolution of this model is determined by a recurrent Hopfield neural network with asymmetric connections, and thus denoted Recurrent Hopfield Mass Model (RHoMM). Since RHoMM must be applied to binary neurons, it is suitable for analyzing Band Limited Power (BLP) dynamics following a binarization process. We trained RHoMM to predict the MEG dynamics through a gradient descent minimization and we validated it in two steps. First, we showed a significant agreement between the similarity of the effective connectivity patterns and that of the interregional BLP correlation, demonstrating RHoMM's ability to capture individual variability of BLP dynamics. Second, we showed that the simulated BLP correlation connectomes, obtained from RHoMM evolutions of BLP, preserved some important topological features, e.g , the centrality of the real data, assuring the reliability of RHoMM. Compared to other biophysical models, RHoMM is based on recurrent Hopfield neural networks, thus, it has the advantage of being data-driven, less demanding in terms of hyperparameters and scalable to encompass large-scale system interactions. These features are promising for investigating the dynamics of inhibition/excitation at different spatial scales. • A novel generative model (RHoMM) can predict the dynamics of MEG/EEG time-series. • RHoMM is based on a recurrent Hopfield neural network, connecting brain regions. • RHoMM is data-driven, uses a few hyperparameters, and can be easily scaled. • The functional architecture generated by RHoMM's reproduces the experimental data. [ABSTRACT FROM AUTHOR]
- Subjects :
- *HOPFIELD networks
*RECURRENT neural networks
Subjects
Details
- Language :
- English
- ISSN :
- 08936080
- Volume :
- 170
- Database :
- Academic Search Index
- Journal :
- Neural Networks
- Publication Type :
- Academic Journal
- Accession number :
- 174842698
- Full Text :
- https://doi.org/10.1016/j.neunet.2023.11.027