Authors
Katja Seeliger, Luca Ambrogioni, Yağmur Güçlütürk, Leonieke M van den Bulk, Umut Güçlü, Marcel AJ van Gerven
Publication date
2021/2/4
Journal
PLOS Computational Biology
Volume
17
Issue
2
Pages
e1008558
Publisher
Public Library of Science
Description
Neural information flow (NIF) provides a novel approach for system identification in neuroscience. It models the neural computations in multiple brain regions and can be trained end-to-end via stochastic gradient descent from noninvasive data. NIF models represent neural information processing via a network of coupled tensors, each encoding the representation of the sensory input contained in a brain region. The elements of these tensors can be interpreted as cortical columns whose activity encodes the presence of a specific feature in a spatiotemporal location. Each tensor is coupled to the measured data specific to a brain region via low-rank observation models that can be decomposed into the spatial, temporal and feature receptive fields of a localized neuronal population. Both these observation models and the convolutional weights defining the information processing within regions are learned end-to-end by predicting the neural signal during sensory stimulation. We trained a NIF model on the activity of early visual areas using a large-scale fMRI dataset recorded in a single participant. We show that we can recover plausible visual representations and population receptive fields that are consistent with empirical findings.
Total citations
20202021202220232024271596
Scholar articles
K Seeliger, L Ambrogioni, Y Güçlütürk… - PLOS Computational Biology, 2021