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Unsupervised approach to decomposing neural tuning variability

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  • Rong J. B. Zhu

    (Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University
    MOE Key Laboratory of Computational Neuroscience and Brain-Inspired Intelligence, and MOE Frontiers Center for Brain Science)

  • Xue-Xin Wei

    (The University of Texas at Austin
    The University of Texas at Austin
    The University of Texas at Austin
    The University of Texas at Austin)

Abstract

Neural representation is often described by the tuning curves of individual neurons with respect to certain stimulus variables. Despite this tradition, it has become increasingly clear that neural tuning can vary substantially in accordance with a collection of internal and external factors. A challenge we are facing is the lack of appropriate methods to accurately capture the moment-to-moment tuning variability directly from the noisy neural responses. Here we introduce an unsupervised statistical approach, Poisson functional principal component analysis (Pf-PCA), which identifies different sources of systematic tuning fluctuations, moreover encompassing several current models (e.g.,multiplicative gain models) as special cases. Applying this method to neural data recorded from macaque primary visual cortex– a paradigmatic case for which the tuning curve approach has been scientifically essential– we discovered a simple relationship governing the variability of orientation tuning, which unifies different types of gain changes proposed previously. By decomposing the neural tuning variability into interpretable components, our method enables discovery of unexpected structure of the neural code, capturing the influence of the external stimulus drive and internal states simultaneously.

Suggested Citation

  • Rong J. B. Zhu & Xue-Xin Wei, 2023. "Unsupervised approach to decomposing neural tuning variability," Nature Communications, Nature, vol. 14(1), pages 1-16, December.
  • Handle: RePEc:nat:natcom:v:14:y:2023:i:1:d:10.1038_s41467-023-37982-z
    DOI: 10.1038/s41467-023-37982-z
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    1. József Fiser & Chiayu Chiu & Michael Weliky, 2004. "Small modulation of ongoing cortical dynamics by sensory input during natural vision," Nature, Nature, vol. 431(7008), pages 573-578, September.
    2. Olivier J. Hénaff & Zoe M. Boundy-Singer & Kristof Meding & Corey M. Ziemba & Robbe L. T. Goris, 2020. "Representation of visual uncertainty through neural gain variability," Nature Communications, Nature, vol. 11(1), pages 1-12, December.
    3. Jonathan W. Pillow & Jonathon Shlens & Liam Paninski & Alexander Sher & Alan M. Litke & E. J. Chichilnisky & Eero P. Simoncelli, 2008. "Spatio-temporal correlations and visual signalling in a complete neuronal population," Nature, Nature, vol. 454(7207), pages 995-999, August.
    4. Douglas C. Fitzpatrick & Ranjan Batra & Terrence R. Stanford & Shigeyuki Kuwada, 1997. "A neuronal population code for sound localization," Nature, Nature, vol. 388(6645), pages 871-874, August.
    5. Carsen Stringer & Marius Pachitariu & Nicholas Steinmetz & Matteo Carandini & Kenneth D. Harris, 2019. "High-dimensional geometry of population responses in visual cortex," Nature, Nature, vol. 571(7765), pages 361-365, July.
    6. Stefan Treue & Julio C. Martínez Trujillo, 1999. "Feature-based attention influences motion processing gain in macaque visual cortex," Nature, Nature, vol. 399(6736), pages 575-579, June.
    7. Gareth M. James, 2002. "Generalized linear models with functional predictors," Journal of the Royal Statistical Society Series B, Royal Statistical Society, vol. 64(3), pages 411-432, August.
    8. Michael Okun & Nicholas A. Steinmetz & Lee Cossell & M. Florencia Iacaruso & Ho Ko & Péter Barthó & Tirin Moore & Sonja B. Hofer & Thomas D. Mrsic-Flogel & Matteo Carandini & Kenneth D. Harris, 2015. "Diverse coupling of neurons to populations in sensory cortex," Nature, Nature, vol. 521(7553), pages 511-515, May.
    9. Dario L. Ringach, 2019. "The geometry of masking in neural populations," Nature Communications, Nature, vol. 10(1), pages 1-11, December.
    10. Tal Kenet & Dmitri Bibitchkov & Misha Tsodyks & Amiram Grinvald & Amos Arieli, 2003. "Spontaneously emerging cortical representations of visual attributes," Nature, Nature, vol. 425(6961), pages 954-956, October.
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