Neural prosthetic technology has moved from the laboratory to clinical settings with human trials. The motor cortical control of devices in such settings raises important questions about the design of computational interfaces that produce stable and reliable control over a wide range of operating conditions. In particular, non-stationarity of the neural code across different behavioral conditions or attentional states becomes a potential issue. Non-stationarity has been previously observed in animals where the encoding model representing the mathematical relationship between neural population activity and behavioral variables such as hand motion changes over time. If such an encoding model is formed and learned during a particular training ...
Abstract—Neural decoding has played a key role in recent advances in brain–machine interfaces (BMIs)...
Theoretical and empirical studies of population codes make the assumption that neuronal activities r...
Effective neural motor prostheses require a method for decoding neural activity representing desired...
Journal ArticleA number of studies of the motor system suggest that the majority of primary motor co...
Abstract By decoding neural activity into useful behavioral commands, neural prosthetic systems see...
Brain-machine interfaces (BMIs) for upper limb movement restoration rely on motor cortical circuits ...
Thesis (Ph.D.)--University of Washington, 2017-06The spiking activity of neurons encodes information...
Neural population activity often exhibits rich variability and temporal structure. This variability ...
We are able to make robust movements, like walking and reaching, without a thought. Yet despite our ...
Despite progress in systems neuroscience the neural code still remains elusive. For instance, the re...
Existing intracortical brain computer interfaces (iBCIs) transform neural activity into control sign...
in the statistical properties of neural signals recorded at the brain-machine interface (BMI) pose s...
SummaryNeuroplasticity may play a critical role in developing robust, naturally controlled neuropros...
The brain has an incredible capacity to learn how to control various effectors, ranging from those e...
Datasets analyzed in Zippi, You, et al., 2022 to study cortical population dynamics during neuropros...
Abstract—Neural decoding has played a key role in recent advances in brain–machine interfaces (BMIs)...
Theoretical and empirical studies of population codes make the assumption that neuronal activities r...
Effective neural motor prostheses require a method for decoding neural activity representing desired...
Journal ArticleA number of studies of the motor system suggest that the majority of primary motor co...
Abstract By decoding neural activity into useful behavioral commands, neural prosthetic systems see...
Brain-machine interfaces (BMIs) for upper limb movement restoration rely on motor cortical circuits ...
Thesis (Ph.D.)--University of Washington, 2017-06The spiking activity of neurons encodes information...
Neural population activity often exhibits rich variability and temporal structure. This variability ...
We are able to make robust movements, like walking and reaching, without a thought. Yet despite our ...
Despite progress in systems neuroscience the neural code still remains elusive. For instance, the re...
Existing intracortical brain computer interfaces (iBCIs) transform neural activity into control sign...
in the statistical properties of neural signals recorded at the brain-machine interface (BMI) pose s...
SummaryNeuroplasticity may play a critical role in developing robust, naturally controlled neuropros...
The brain has an incredible capacity to learn how to control various effectors, ranging from those e...
Datasets analyzed in Zippi, You, et al., 2022 to study cortical population dynamics during neuropros...
Abstract—Neural decoding has played a key role in recent advances in brain–machine interfaces (BMIs)...
Theoretical and empirical studies of population codes make the assumption that neuronal activities r...
Effective neural motor prostheses require a method for decoding neural activity representing desired...