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Inferring decoding strategies for multiple correlated neural populations

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  • Kaushik J Lakshminarasimhan
  • Alexandre Pouget
  • Gregory C DeAngelis
  • Dora E Angelaki
  • Xaq Pitkow

Abstract

Studies of neuron-behaviour correlation and causal manipulation have long been used separately to understand the neural basis of perception. Yet these approaches sometimes lead to drastically conflicting conclusions about the functional role of brain areas. Theories that focus only on choice-related neuronal activity cannot reconcile those findings without additional experiments involving large-scale recordings to measure interneuronal correlations. By expanding current theories of neural coding and incorporating results from inactivation experiments, we demonstrate here that it is possible to infer decoding weights of different brain areas at a coarse scale without precise knowledge of the correlation structure. We apply this technique to neural data collected from two different cortical areas in macaque monkeys trained to perform a heading discrimination task. We identify two opposing decoding schemes, each consistent with data depending on the nature of correlated noise. Our theory makes specific testable predictions to distinguish these scenarios experimentally without requiring measurement of the underlying noise correlations.Author summary: The neocortex is structurally organized into distinct brain areas. The role of specific brain areas in sensory perception is typically studied using two kinds of laboratory experiments: those that measure correlations between neural activity and reported percepts, and those that inactivate a brain region and measure the resulting changes in percepts. The two types of experiments have generally been interpreted in isolation, in part because no theory has been able combine their outcomes. Here, we describe a mathematical framework that synthesizes both kinds of results, giving us a new way to assess how different brain areas contribute to perception. When we apply our framework to experiments on behaving monkeys, we discover two models that can explain the perplexing finding that one brain area can predict an animal’s reported percepts, even though the percepts are not affected when that brain area is inactivated. The two models ascribe dramatically different efficiencies to brain computation. We show that these two models could be distinguished by a proposed experiment that measures correlations while inactivating different brain areas.

Suggested Citation

  • Kaushik J Lakshminarasimhan & Alexandre Pouget & Gregory C DeAngelis & Dora E Angelaki & Xaq Pitkow, 2018. "Inferring decoding strategies for multiple correlated neural populations," PLOS Computational Biology, Public Library of Science, vol. 14(9), pages 1-40, September.
  • Handle: RePEc:plo:pcbi00:1006371
    DOI: 10.1371/journal.pcbi.1006371
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    References listed on IDEAS

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    1. Timothy D. Hanks & Charles D. Kopec & Bingni W. Brunton & Chunyu A. Duan & Jeffrey C. Erlich & Carlos D. Brody, 2015. "Distinct relationships of parietal and prefrontal cortices to evidence accumulation," Nature, Nature, vol. 520(7546), pages 220-223, April.
    2. Yu Hu & Joel Zylberberg & Eric Shea-Brown, 2014. "The Sign Rule and Beyond: Boundary Effects, Flexibility, and Noise Correlations in Neural Population Codes," PLOS Computational Biology, Public Library of Science, vol. 10(2), pages 1-22, February.
    3. Hendrikje Nienborg & Bruce G. Cumming, 2009. "Decision-related activity in sensory neurons reflects more than a neuron’s causal effect," Nature, Nature, vol. 459(7243), pages 89-92, May.
    4. Klaus Wimmer & Albert Compte & Alex Roxin & Diogo Peixoto & Alfonso Renart & Jaime de la Rocha, 2015. "Sensory integration dynamics in a hierarchical network explains choice probabilities in cortical area MT," Nature Communications, Nature, vol. 6(1), pages 1-13, May.
    5. Adrien Wohrer & Christian K Machens, 2015. "On the Number of Neurons and Time Scale of Integration Underlying the Formation of Percepts in the Brain," PLOS Computational Biology, Public Library of Science, vol. 11(3), pages 1-38, March.
    6. Leor N. Katz & Jacob L. Yates & Jonathan W. Pillow & Alexander C. Huk, 2016. "Dissociated functional significance of decision-related activity in the primate dorsal stream," Nature, Nature, vol. 535(7611), pages 285-288, July.
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    Cited by:

    1. Kaushik J. Lakshminarasimhan & Eric Avila & Xaq Pitkow & Dora E. Angelaki, 2023. "Dynamical latent state computation in the male macaque posterior parietal cortex," Nature Communications, Nature, vol. 14(1), pages 1-20, December.
    2. Qianli Yang & Edgar Walker & R. James Cotton & Andreas S. Tolias & Xaq Pitkow, 2021. "Revealing nonlinear neural decoding by analyzing choices," Nature Communications, Nature, vol. 12(1), pages 1-13, December.

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