Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Neural trajectories improve motor precision

View through CrossRef
Populations of neurons in motor cortex signal voluntary movement. Most classic neural encoding models and current brain-computer interface decoders assume individual neurons sum together along a neural dimension to represent movement features such as velocity or force. However, large population neural analyses continue to identify trajectories of neural activity evolving with time that traverse multiple dimensions. Explanations for these neural trajectories typically focus on how cortical circuits learn, organize, and implement movements. However, descriptions of how these neural trajectories might improve performance, and specifically motor precision, are lacking. In this study, we proposed and tested a computational model that highlights the role of neural trajectories, through the selective co-activation and selective timing of firing rates across the neural populations, for improving motor precision. Our model uses experimental results from a center-out reaching task as inspiration to create several physiologically realistic models for the neural encoding of movement. Using a recurrent neural network to simulate how a downstream population of neurons might receive such information, like the spinal cord and motor units, we show that movements are more accurate when neural information specific to the phase and/or amplitude of movement are incorporated across time instead of an instantaneous, linear tuning model. Our finding suggests that precise motor control arises from spatiotemporal recruitment of neural populations that create distinct neural trajectories. We anticipate our results will significantly impact not only how neural encoding of movement in motor cortex is described but also future understating for how brain networks communicate information for planning and executing movements. Our model also provides potential inspiration for how to incorporate selective activation across a neural population to improve future brain-computer interfaces.
Title: Neural trajectories improve motor precision
Description:
Populations of neurons in motor cortex signal voluntary movement.
Most classic neural encoding models and current brain-computer interface decoders assume individual neurons sum together along a neural dimension to represent movement features such as velocity or force.
However, large population neural analyses continue to identify trajectories of neural activity evolving with time that traverse multiple dimensions.
Explanations for these neural trajectories typically focus on how cortical circuits learn, organize, and implement movements.
However, descriptions of how these neural trajectories might improve performance, and specifically motor precision, are lacking.
In this study, we proposed and tested a computational model that highlights the role of neural trajectories, through the selective co-activation and selective timing of firing rates across the neural populations, for improving motor precision.
Our model uses experimental results from a center-out reaching task as inspiration to create several physiologically realistic models for the neural encoding of movement.
Using a recurrent neural network to simulate how a downstream population of neurons might receive such information, like the spinal cord and motor units, we show that movements are more accurate when neural information specific to the phase and/or amplitude of movement are incorporated across time instead of an instantaneous, linear tuning model.
Our finding suggests that precise motor control arises from spatiotemporal recruitment of neural populations that create distinct neural trajectories.
We anticipate our results will significantly impact not only how neural encoding of movement in motor cortex is described but also future understating for how brain networks communicate information for planning and executing movements.
Our model also provides potential inspiration for how to incorporate selective activation across a neural population to improve future brain-computer interfaces.

Related Results

Towards Experimental Approaches to Advance Discovery of Clinically Meaningful Sensory-Motor Biomarkers
Towards Experimental Approaches to Advance Discovery of Clinically Meaningful Sensory-Motor Biomarkers
Atypical motor function is a highly prevalent clinical feature of autism spectrum disorder (ASD). Differences in motor function both persist across the lifespan and scale linearly...
Energy-efficient architectures for recurrent neural networks
Energy-efficient architectures for recurrent neural networks
Deep Learning algorithms have been remarkably successful in applications such as Automatic Speech Recognition and Machine Translation. Thus, these kinds of applications are ubiquit...
Asymmetric directed functional connectivity within the frontoparietal motor network during motor imagery and execution
Asymmetric directed functional connectivity within the frontoparietal motor network during motor imagery and execution
AbstractBoth imagery and execution of motor controls consist of interactions within a neuronal network, including frontal motor-related regions and posterior parietal regions. To r...
M1 Large-scale Network Dynamics Support Human Motor Resonance and Its Plastic Reshaping
M1 Large-scale Network Dynamics Support Human Motor Resonance and Its Plastic Reshaping
ABSTRACTMotor resonance – the activation of the observer’s motor system when viewing others’ actions – grounds the intertwined nature of action perception and execution, with profo...
Neural stemness contributes to cell tumorigenicity
Neural stemness contributes to cell tumorigenicity
Abstract Background: Previous studies demonstrated the dependence of cancer on nerve. Recently, a growing number of studies reveal that cancer cells share the property and ...
Precision timing with α-β oscillatory coupling: stopwatch or motor control?
Precision timing with α-β oscillatory coupling: stopwatch or motor control?
Abstract Precise timing is crucial for many behaviors ranging from street crossing, conversational speech, to athletic performance. The precision of motor timing ha...
Modelització i control d'accionaments elèctrics.
Modelització i control d'accionaments elèctrics.
L'actual situació energètica demanda cada cop més d'aplicacions que redueixin el consum energètic. A nivell d'energia elèctrica, i de la conversió d'aquesta a energia mecànica, els...
SISTEM KEAMANAN SEPEDA MOTOR MENGGUNAKAN MIKROKONTROLLER ARDUINO UNO R3 DENGAN SENSOR HC-SR501 DAN HC-SR04
SISTEM KEAMANAN SEPEDA MOTOR MENGGUNAKAN MIKROKONTROLLER ARDUINO UNO R3 DENGAN SENSOR HC-SR501 DAN HC-SR04
[Id]Pencurian sepeda motor pada saat ini semakin marak. Hal ini bisa terjadi di karenakan beberapa faktor selain kelalaian manusia yaitu masih belum adanya sistem keamanan sepeda m...

Back to Top