Neural representation is pivotal in neuroscience. Yet, the large number and variance of underlying determinants make it difficult to distinguish general physiologic constraints on representation. Here we offer a general approach to the issue, enabling a systematic and well controlled experimental analysis of constraints and tradeoffs, imposed by the physiology of neuronal populations, on plausible representation schemes. Using in vitro networks of rat cortical neurons as a model system, we compared the efficacy of different kinds of "neural codes" to represent both spatial and temporal input features. Two rate-based representation schemes and two time-based representation schemes were considered. Our results indicate that, by large, all representation schemes perform well in the various discrimination tasks tested, indicating the inherent redundancy in neural population activity; Nevertheless, differences in representation efficacy are identified when unique aspects of input features are considered. We discuss these differences in the context of neural population dynamics. Copyright © 2010 the authors.
CITATION STYLE
Kermany, E., Gal, A., Lyakhov, V., Meir, R., Marom, S., & Eytan, D. (2010). Tradeoffs and constraints on neural representation in networks of cortical neurons. Journal of Neuroscience, 30(28), 9588–9596. https://doi.org/10.1523/JNEUROSCI.0661-10.2010
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