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Get Free AccessAbstract Empirical applications of the free-energy principle are not straightforward because they entail a commitment to a particular process theory, especially at the cellular and synaptic levels. Using a recently established reverse engineering technique, we confirm the quantitative predictions of the free-energy principle using in vitro networks of rat cortical neurons that perform causal inference. Upon receiving electrical stimuli—generated by mixing two hidden sources—neurons self-organised to selectively encode the two sources. Pharmacological up- and downregulation of network excitability disrupted the ensuing inference, consistent with changes in prior beliefs about hidden sources. As predicted, changes in effective synaptic connectivity reduced variational free energy, where the connection strengths encoded parameters of the generative model. In short, we show that variational free energy minimisation can quantitatively predict the self-organisation of neuronal networks, in terms of their responses and plasticity. These results demonstrate the applicability of the free-energy principle to in vitro neural networks and establish its predictive validity in this setting.
Takuya Isomura, Kiyoshi Kotani, Yasuhiko Jimbo, Karl Friston (2022). Experimental validation of the free-energy principle with <i>in vitro</i> neural networks. , DOI: https://doi.org/10.1101/2022.10.03.510742.
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Type
Preprint
Year
2022
Authors
4
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1101/2022.10.03.510742
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