Contextual Minimum-Norm Estimates (CMNE): A Deep Learning Method for Source Estimation in Neuronal Networks

09/05/2019
by   Christoph Dinh, et al.
0

Magnetoencephalography (MEG) and Electroencephalography (EEG) source estimates have thus far mostly been derived sample by sample, i.e., independent of each other in time. However, neuronal assemblies are heavily interconnected, constraining the temporal evolution of neural activity in space as detected by MEG and EEG. The observed neural currents are thus highly context dependent. Here, a new method is presented which integrates predictive deep learning networks with the Minimum-Norm Estimates (MNE) approach. Specifically, we employ Long Short-Term Memory (LSTM) networks, a type of recurrent neural network, for predicting brain activity. Because we use past activity (context) in the estimation, we call our method Contextual MNE (CMNE). We demonstrate that these contextual algorithms can be used for predicting activity based on previous brain states and when used in conjunction with MNE, they lead to more accurate source estimation. To evaluate the performance of CMNE, it was tested on simulated and experimental data from human auditory evoked response experiments.

READ FULL TEXT

page 1

page 3

page 5

page 8

page 9

page 10

research
10/12/2020

Predicting Short-term Mobile Internet Traffic from Internet Activity using Recurrent Neural Networks

Mobile network traffic prediction is an important input in to network ca...
research
01/07/2020

State Transition Modeling of the Smoking Behavior using LSTM Recurrent Neural Networks

The use of sensors has pervaded everyday life in several applications in...
research
01/11/2018

Deep Classification of Epileptic Signals

Electrophysiological observation plays a major role in epilepsy evaluati...
research
11/21/2021

Subject-Independent Drowsiness Recognition from Single-Channel EEG with an Interpretable CNN-LSTM model

For EEG-based drowsiness recognition, it is desirable to use subject-ind...
research
06/07/2021

Conditionally Exponential Prior in Focal Near- and Far-Field EEG Source Localization via Randomized Multiresolution Scanning (RAMUS)

This paper develops mathematical methods for localizing focal sources at...
research
10/14/2020

From Language to Language-ish: How Brain-Like is an LSTM's Representation of Nonsensical Language Stimuli?

The representations generated by many models of language (word embedding...
research
10/24/2021

Deep Neural Networks on EEG Signals to Predict Auditory Attention Score Using Gramian Angular Difference Field

Auditory attention is a selective type of hearing in which people focus ...

Please sign up or login with your details

Forgot password? Click here to reset