In computational neuroscience, it is important to estimate well the proportion of signal variance in the total variance of neural activity measurements. This explainable variance measure helps neuroscientists assess the adequacy of predictive models that describe how images are encoded in the brain. Complicating the estimation problem are strong noise correlations, which may confound the neural responses corresponding to the stimuli. If not properly taken into account, the correlations could inflate the explainable variance estimates and suggest false possible prediction accuracies. We propose a novel method to estimate the explainable variance in functional MRI (fMRI) brain activity measurements when there are strong correlations in the no...
It is known that behavior is substantially variable even across nearly identical situations. Many co...
Computational neuroimaging methods aim to predict brain responses (measured e.g. with functional mag...
Functional neuroimaging involves the study of cognitive scientific questions by measuring and modell...
Previous studies in neurophysiology have shown that neurons exhibit trial-by-trial correlated activi...
We present a new method to detect and adjust for noise and artifacts in functional MRI time series d...
High-resolution functional imaging is providing increasingly rich measurements of brain activity in ...
Item does not contain fulltextThe information received from our senses is typically consistent with ...
Noise in the nervous system makes it impossible to infer with absolute precision the presented stimu...
A crucial part of developing mathematical models of information processing in the brain is the quant...
Encoding models based on deep convolutional neural networks (DCNN) predict BOLD responses to natural...
Here we report an exploratory within-subject variance decomposition analysis conducted on a task-bas...
The study of spontaneous fluctuations of brain activity, often referred as brain noise, is getting ...
AbstractHere we report an exploratory within-subject variance decomposition analysis conducted on a ...
Neural responses in the visual cortex are variable, and there is now an abundance of data characteri...
Over the past decades, neuroscientists are increasingly becoming aware of the limited reproducibilit...
It is known that behavior is substantially variable even across nearly identical situations. Many co...
Computational neuroimaging methods aim to predict brain responses (measured e.g. with functional mag...
Functional neuroimaging involves the study of cognitive scientific questions by measuring and modell...
Previous studies in neurophysiology have shown that neurons exhibit trial-by-trial correlated activi...
We present a new method to detect and adjust for noise and artifacts in functional MRI time series d...
High-resolution functional imaging is providing increasingly rich measurements of brain activity in ...
Item does not contain fulltextThe information received from our senses is typically consistent with ...
Noise in the nervous system makes it impossible to infer with absolute precision the presented stimu...
A crucial part of developing mathematical models of information processing in the brain is the quant...
Encoding models based on deep convolutional neural networks (DCNN) predict BOLD responses to natural...
Here we report an exploratory within-subject variance decomposition analysis conducted on a task-bas...
The study of spontaneous fluctuations of brain activity, often referred as brain noise, is getting ...
AbstractHere we report an exploratory within-subject variance decomposition analysis conducted on a ...
Neural responses in the visual cortex are variable, and there is now an abundance of data characteri...
Over the past decades, neuroscientists are increasingly becoming aware of the limited reproducibilit...
It is known that behavior is substantially variable even across nearly identical situations. Many co...
Computational neuroimaging methods aim to predict brain responses (measured e.g. with functional mag...
Functional neuroimaging involves the study of cognitive scientific questions by measuring and modell...