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Book ChapterDOI

Modeling Serotonin’s Contributions to Basal Ganglia Dynamics

TLDR
This chapter presents an extended reinforcement learning (RL)-based model of DA and 5-HT function in the BG, which reconciles some of the diverse roles of 5- HT.
Abstract
In addition to dopaminergic input, serotonergic (5-HT) fibers also widely arborize through the basal ganglia circuits and strongly control their dynamics. Although empirical studies show that 5-HT plays many functional roles in risk-based decision making, reward, and punishment learning, prior computational models mostly focus on its role in behavioral inhibition or timescale of prediction. This chapter presents an extended reinforcement learning (RL)-based model of DA and 5-HT function in the BG, which reconciles some of the diverse roles of 5-HT. The model uses the concept of utility function—a weighted sum of the traditional value function expressing the expected sum of the rewards, and a risk function expressing the variance observed in reward outcomes. Serotonin is represented by a weight parameter, used in this combination of value and risk functions, while the neuromodulator dopamine (DA) is represented as reward prediction error as in the classical models. Consistent with this abstract model, a network model is also presented in which medium spiny neurons (MSN) co-expressing both D1 and D2 receptors (D1R–D2R) is suggested to compute risk, while those expressing only D1 receptors are suggested to compute value. This BG model includes nuclei such as striatum, Globus Pallidus externa, Globus Pallidus interna, and subthalamic nuclei. DA and 5-HT are modeled to affect both the direct pathway (DP) and the indirect pathway (IP) composing of D1R, D2R, D1R–D2R projections differentially. Both abstract and network models are applied to data from different experimental paradigms used to study the role of 5-HT: (1) risk-sensitive decision making, where 5-HT controls the risk sensitivity; (2) temporal reward prediction, where 5-HT controls timescale of reward prediction, and (3) reward–punishment sensitivity, where punishment prediction error depends on 5-HT levels. Both the extended RL model (Balasubramani, Chakravarthy, Ravindran, & Moustafa, in Front Comput Neurosci 8:47, 2014; Balasubramani, Ravindran, & Chakravarthy, in Understanding the role of serotonin in basal ganglia through a unified model, 2012) along with their network correlates (Balasubramani, Chakravarthy, Ravindran, & Moustafa, in Front Comput Neurosci 9:76, 2015; Balasubramani, Chakravarthy, Ali, Ravindran, & Moustafa, in PLoS ONE 10(6):e0127542, 2015) successfully explain the three diverse roles of 5-HT in a single framework.

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Citations
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Shifting responsibly: the importance of striatal modularity to reinforcement learning in uncertain environments

TL;DR: In this paper, a simple modular reinforcement learning (RL) model is proposed for the striatum and the direct and indirect pathways of the basal ganglia, which is based on simple assumptions that while the direct pathway may promote actions based on striatal action values, the indirect pathway may act as a gating network that facilitates or suppresses behavioral modules on the basis of striatal responsibility signals.
Journal ArticleDOI

The many facets of dopamine: Toward an integrative theory of the role of dopamine in managing the body's energy resources.

TL;DR: It is suggested that energy-related book-keeping of the body at the physiological level is the common motif that links the many facets of dopamine and its functions, and regulates the processes of energy consumption and acquisition in the body.
Journal ArticleDOI

Bipolar oscillations between positive and negative mood states in a computational model of Basal Ganglia.

TL;DR: A computational model is proposed that explores the effects of impaired serotonergic neuromodulation on the dynamics of the cortico basal ganglia network, and relates this impairment to abstract mood states and oscillations of bipolar disorder.
Posted ContentDOI

Disentangling reward processes underlying payoff maximization from individual differences in gain frequency bias and reinforcement learning

TL;DR: In this paper, the authors developed a two-choice reward task, implemented in 186 healthy human subjects across the adult lifespan, to understand the cognitive and neural basis of payoff-based performance, and simultaneously recorded electroencephalography (EEG)-based cortical activations showed that diminished theta activity in the right rostral anterior cingulate cortex (ACC) as well as diminished beta activity in right parsorbitalis region of the inferior frontal cortex (IFC) during cumulative reward presentation correspond to better payoff performance.
Journal ArticleDOI

Distinct neural activations correlate with maximization of reward magnitude versus frequency.

TL;DR: In this paper , the authors used a simple 2-choice reward task paradigm in 186 healthy human adult subjects sampled across the adult lifespan and found that activation in the parahippocampal and entorhinal areas, which are typically linked to memory function, specifically correlated with maximization of reward magnitude.
References
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Book ChapterDOI

Prospect theory: an analysis of decision under risk

TL;DR: In this paper, the authors present a critique of expected utility theory as a descriptive model of decision making under risk, and develop an alternative model, called prospect theory, in which value is assigned to gains and losses rather than to final assets and in which probabilities are replaced by decision weights.
Journal ArticleDOI

The functional anatomy of basal ganglia disorders.

TL;DR: A model in which specific types of basal ganglia disorders are associated with changes in the function of subpopulations of striatal projection neurons is proposed, which suggests that the activity of sub Populations of Striatal projections neurons is differentially regulated by striatal afferents and that different striatal projections may mediate different aspects of motor control.
Journal ArticleDOI

Predictive Reward Signal of Dopamine Neurons

TL;DR: Dopamine systems may have two functions, the phasic transmission of reward information and the tonic enabling of postsynaptic neurons.
Journal ArticleDOI

Primate models of movement disorders of basal ganglia origin

TL;DR: This paper describes the changes in neuronal activity in the motor circuit in animal models of hypo- and hyperkinetic disorders and postulates specific disturbances within the basal ganglia-thalamocortical 'motor' circuit.
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