Computational neuroscience across the life span

Wouter van den Bos, Rasmus Bruckner, Matthew Nassar, Ben Eppinger, and I, have a new review out discussing promises and challenges of computational neuroscience to understanding life span development (title and abstract follow).

Computational Neuroscience across the Lifespan: Promises and Pitfalls

In recent years, the application of computational modeling in studies on age-related changes in decision making and learning has gained in popularity. One advantage of computational models is that they provide access to latent variables that cannot be directly observed from behavior. In combination with experimental manipulations, these latent variables can help to test hypotheses about age-related changes in behavioral and neurobiological measures at a level of specificity that is not achievable with descriptive analysis approaches alone. This level of specificity can in turn be beneficial to establish the identity of the corresponding behavioral and neurobiological mechanisms. In this paper, we will illustrate applications of computational methods using examples of lifespan research on risk taking, strategy selection, and reinforcement learning. We will elaborate on problems that can occur when computational neuroscience methods are applied to data of different age groups. Finally, we will discuss potential targets for future applications and outline general shortcomings of computational neuroscience methods for research on human lifespan development.

van den Bos, W., Bruckner, R., Nassar, M., Mata, R., & Eppinger, B. (2017). Computational neuroscience across the lifespan: Promises and pitfalls. Developmental Cognitive Neuroscience. https://doi.org/10.1016/j.dcn.2017.09.008

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