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1.
Cell Rep ; 42(2): 112136, 2023 02 28.
Article in English | MEDLINE | ID: mdl-36807145

ABSTRACT

How do patterns of neural activity in the motor cortex contribute to the planning of a movement? A recent theory developed for single movements proposes that the motor cortex acts as a dynamical system whose initial state is optimized during the preparatory phase of the movement. This theory makes important yet untested predictions about preparatory dynamics in more complex behavioral settings. Here, we analyze preparatory activity in non-human primates planning not one but two movements simultaneously. As predicted by the theory, we find that parallel planning is achieved by adjusting preparatory activity within an optimal subspace to an intermediate state reflecting a trade-off between the two movements. The theory quantitatively accounts for the relationship between this intermediate state and fluctuations in the animals' behavior down at the trial level. These results uncover a simple mechanism for planning multiple movements in parallel and further point to motor planning as a controlled dynamical process.


Subject(s)
Motor Cortex , Neurons , Animals , Movement , Behavior, Animal , Psychomotor Performance
2.
Neuron ; 111(5): 739-753.e8, 2023 03 01.
Article in English | MEDLINE | ID: mdl-36640766

ABSTRACT

Biological brains possess an unparalleled ability to adapt behavioral responses to changing stimuli and environments. How neural processes enable this capacity is a fundamental open question. Previous works have identified two candidate mechanisms: a low-dimensional organization of neural activity and a modulation by contextual inputs. We hypothesized that combining the two might facilitate generalization and adaptation in complex tasks. We tested this hypothesis in flexible timing tasks where dynamics play a key role. Examining trained recurrent neural networks, we found that confining the dynamics to a low-dimensional subspace allowed tonic inputs to parametrically control the overall input-output transform, enabling generalization to novel inputs and adaptation to changing conditions. Reverse-engineering and theoretical analyses demonstrated that this parametric control relies on a mechanism where tonic inputs modulate the dynamics along non-linear manifolds while preserving their geometry. Comparisons with data from behaving monkeys confirmed the behavioral and neural signatures of this mechanism.


Subject(s)
Brain , Neural Networks, Computer
3.
Neuron ; 109(18): 2995-3011.e5, 2021 09 15.
Article in English | MEDLINE | ID: mdl-34534456

ABSTRACT

The theory of predictive processing posits that the brain computes expectations to process information predictively. Empirical evidence in support of this theory, however, is scarce and largely limited to sensory areas. Here, we report a precise and adaptive mechanism in the frontal cortex of non-human primates consistent with predictive processing of temporal events. We found that the speed of neural dynamics is precisely adjusted according to the average time of an expected stimulus. This speed adjustment, in turn, enables neurons to encode stimuli in terms of deviations from expectation. This lawful relationship was evident across multiple experiments and held true during learning: when temporal statistics underwent covert changes, neural responses underwent predictable changes that reflected the new mean. Together, these results highlight a precise mathematical relationship between temporal statistics in the environment and neural activity in the frontal cortex that may serve as a mechanism for predictive temporal processing.


Subject(s)
Adaptation, Physiological/physiology , Frontal Lobe/physiology , Neurons/physiology , Photic Stimulation/methods , Time Perception/physiology , Animals , Forecasting , Macaca mulatta , Male
4.
Trends Neurosci ; 44(3): 170-181, 2021 03.
Article in English | MEDLINE | ID: mdl-33349476

ABSTRACT

What happens in the brain when we learn? Ever since the foundational work of Cajal, the field has made numerous discoveries as to how experience could change the structure and function of individual synapses. However, more recent advances have highlighted the need for understanding learning in terms of complex interactions between populations of neurons and synapses. How should one think about learning at such a macroscopic level? Here, we develop a conceptual framework to bridge the gap between the different scales at which learning operates, from synapses to neurons to behavior. Using this framework, we explore the principles that guide sensorimotor learning across these scales, and set the stage for future experimental and theoretical work in the field.


Subject(s)
Learning , Synapses , Brain , Models, Neurological , Neurons
5.
Elife ; 92020 12 01.
Article in English | MEDLINE | ID: mdl-33258769

ABSTRACT

Learning reduces variability but variability can facilitate learning. This paradoxical relationship has made it challenging to tease apart sources of variability that degrade performance from those that improve it. We tackled this question in a context-dependent timing task requiring humans and monkeys to flexibly produce different time intervals with different effectors. We identified two opposing factors contributing to timing variability: slow memory fluctuation that degrades performance and reward-dependent exploratory behavior that improves performance. Signatures of these opposing factors were evident across populations of neurons in the dorsomedial frontal cortex (DMFC), DMFC-projecting neurons in the ventrolateral thalamus, and putative target of DMFC in the caudate. However, only in the thalamus were the performance-optimizing regulation of variability aligned to the slow performance-degrading memory fluctuations. These findings reveal how variability caused by exploratory behavior might help to mitigate other undesirable sources of variability and highlight a potential role for thalamocortical projections in this process.


Subject(s)
Learning/physiology , Thalamus/physiology , Time Perception/physiology , Adolescent , Adult , Aged , Animals , Behavior , Brain Mapping , Cues , Female , Frontal Lobe/physiology , Humans , Macaca mulatta , Male , Middle Aged , Models, Neurological , Motor Activity , Reward , Task Performance and Analysis , Young Adult
6.
Neuron ; 103(5): 934-947.e5, 2019 09 04.
Article in English | MEDLINE | ID: mdl-31320220

ABSTRACT

Statistical regularities in the environment create prior beliefs that we rely on to optimize our behavior when sensory information is uncertain. Bayesian theory formalizes how prior beliefs can be leveraged and has had a major impact on models of perception, sensorimotor function, and cognition. However, it is not known how recurrent interactions among neurons mediate Bayesian integration. By using a time-interval reproduction task in monkeys, we found that prior statistics warp neural representations in the frontal cortex, allowing the mapping of sensory inputs to motor outputs to incorporate prior statistics in accordance with Bayesian inference. Analysis of recurrent neural network models performing the task revealed that this warping was enabled by a low-dimensional curved manifold and allowed us to further probe the potential causal underpinnings of this computational strategy. These results uncover a simple and general principle whereby prior beliefs exert their influence on behavior by sculpting cortical latent dynamics.


Subject(s)
Cognition/physiology , Frontal Lobe/physiology , Nerve Net/physiology , Neural Networks, Computer , Time Perception , Animals , Bayes Theorem , Cerebral Cortex , Macaca mulatta , Neurons
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