GLOBAL RESEARCH SYNDICATE
No Result
View All Result
  • Login
  • Latest News
  • Consumer Research
  • Survey Research
  • Marketing Research
  • Industry Research
  • Data Collection
  • More
    • Data Analysis
    • Market Insights
  • Latest News
  • Consumer Research
  • Survey Research
  • Marketing Research
  • Industry Research
  • Data Collection
  • More
    • Data Analysis
    • Market Insights
No Result
View All Result
globalresearchsyndicate
No Result
View All Result
Home Data Analysis

Fundamental bounds on the fidelity of sensory cortical coding

globalresearchsyndicate by globalresearchsyndicate
March 19, 2020
in Data Analysis
0
Fundamental bounds on the fidelity of sensory cortical coding
0
SHARES
3
VIEWS
Share on FacebookShare on Twitter

  • 1.

    von Neumann, J. The Computer and the Brain 2nd edn (Yale Univ. Press, 1958).

  • 2.

    Britten, K. H., Shadlen, M. N., Newsome, W. T. & Movshon, J. A. The analysis of visual motion: a comparison of neuronal and psychophysical performance. J. Neurosci. 12, 4745–4765 (1992).

  • 3.

    Newsome, W. T., Britten, K. H. & Movshon, J. A. Neuronal correlates of a perceptual decision. Nature 341, 52–54 (1989).

  • 4.

    Zohary, E., Shadlen, M. N. & Newsome, W. T. Correlated neuronal discharge rate and its implications for psychophysical performance. Nature 370, 140–143 (1994).

  • 5.

    Averbeck, B. B., Latham, P. E. & Pouget, A. Neural correlations, population coding and computation. Nat. Rev. Neurosci. 7, 358–366 (2006).

  • 6.

    Cohen, M. R. & Kohn, A. Measuring and interpreting neuronal correlations. Nat. Neurosci. 14, 811–819 (2011).

  • 7.

    Sompolinsky, H., Yoon, H., Kang, K. & Shamir, M. Population coding in neuronal systems with correlated noise. Phys. Rev. E 64, 051904 (2001).

  • 8.

    Abbott, L. F. & Dayan, P. The effect of correlated variability on the accuracy of a population code. Neural Comput. 11, 91–101 (1999).

  • 9.

    Shamir, M. & Sompolinsky, H. Implications of neuronal diversity on population coding. Neural Comput. 18, 1951–1986 (2006).

  • 10.

    Ecker, A. S., Berens, P., Tolias, A. S. & Bethge, M. The effect of noise correlations in populations of diversely tuned neurons. J. Neurosci. 31, 14272–14283 (2011).

  • 11.

    Oram, M. W., Földiák, P., Perrett, D. I. & Sengpiel, F. The ‘Ideal Homunculus’: decoding neural population signals. Trends Neurosci. 21, 259–265 (1998).

  • 12.

    Kanitscheider, I., Coen-Cagli, R. & Pouget, A. Origin of information-limiting noise correlations. Proc. Natl Acad. Sci. USA 112, E6973–E6982 (2015).

  • 13.

    Moreno-Bote, R. et al. Information-limiting correlations. Nat. Neurosci. 17, 1410–1417 (2014).

  • 14.

    Pitkow, X., Liu, S., Angelaki, D. E., DeAngelis, G. C. & Pouget, A. How can single sensory neurons predict behavior? Neuron 87, 411–423 (2015).

  • 15.

    Prusky, G. T., West, P. W. & Douglas, R. M. Behavioral assessment of visual acuity in mice and rats. Vision Res. 40, 2201–2209 (2000).

  • 16.

    Baylor, D. A., Lamb, T. D. & Yau, K. W. Responses of retinal rods to single photons. J. Physiol. (Lond.) 288, 613–634 (1979).

  • 17.

    Barlow, H. B. Retinal noise and absolute threshold. J. Opt. Soc. Am. 46, 634–639 (1956).

  • 18.

    Siebert, W. M. Some implications of the stochastic behavior of primary auditory neurons. Kybernetik 2, 206–215 (1965).

  • 19.

    Yatsenko, D. et al. Improved estimation and interpretation of correlations in neural circuits. PLoS Comput. Biol. 11, e1004083 (2015).

  • 20.

    Kanitscheider, I., Coen-Cagli, R., Kohn, A. & Pouget, A. Measuring Fisher information accurately in correlated neural populations. PLoS Comput. Biol. 11, e1004218 (2015).

  • 21.

    Ecker, A. S. et al. Decorrelated neuronal firing in cortical microcircuits. Science 327, 584–587 (2010).

  • 22.

    Reich, D. S., Mechler, F. & Victor, J. D. Independent and redundant information in nearby cortical neurons. Science 294, 2566–2568 (2001).

  • 23.

    Renart, A. et al. The asynchronous state in cortical circuits. Science 327, 587–590 (2010).

  • 24.

    Stirman, J. N., Smith, I. T., Kudenov, M. W. & Smith, S. L. Wide field-of-view, multi-region, two-photon imaging of neuronal activity in the mammalian brain. Nat. Biotechnol. 34, 857–862 (2016).

  • 25.

    Chen, J. L., Voigt, F. F., Javadzadeh, M., Krueppel, R. & Helmchen, F. Long-range population dynamics of anatomically defined neocortical networks. eLife 5, e14679 (2016).

  • 26.

    Sofroniew, N. J., Flickinger, D., King, J. & Svoboda, K. A large field of view two-photon mesoscope with subcellular resolution for in vivo imaging. eLife 5, e14472 (2016).

  • 27.

    Tsai, P. S. et al. Ultra-large field-of-view two-photon microscopy. Opt. Express 23, 13833–13847 (2015).

  • 28.

    Niell, C. M. & Stryker, M. P. Modulation of visual responses by behavioral state in mouse visual cortex. Neuron 65, 472–479 (2010).

  • 29.

    Bonin, V., Histed, M. H., Yurgenson, S. & Reid, R. C. Local diversity and fine-scale organization of receptive fields in mouse visual cortex. J. Neurosci. 31, 18506–18521 (2011).

  • 30.

    Averbeck, B. B. & Lee, D. Effects of noise correlations on information encoding and decoding. J. Neurophysiol. 95, 3633–3644 (2006).

  • 31.

    Cover, T. M. & Thomas, J. A. Elements of Information Theory 2nd edn, (John Wiley & Sons, 2006).

  • 32.

    Stringer, C., Michaelos, M. & Pachitariu, M. High precision coding mouse visual cortex. Preprint at https://www.biorxiv.org/content/10.1101/679324v1 (2019).

  • 33.

    Prusky, G. T. & Douglas, R. M. Characterization of mouse cortical spatial vision. Vision Res. 44, 3411–3418 (2004).

  • 34.

    Glickfeld, L. L., Histed, M. H. & Maunsell, J. H. Mouse primary visual cortex is used to detect both orientation and contrast changes. J. Neurosci. 33, 19416–19422 (2013).

  • 35.

    Lecoq, J. et al. Visualizing mammalian brain area interactions by dual-axis two-photon calcium imaging. Nat. Neurosci. 17, 1825–1829 (2014).

  • 36.

    Pologruto, T. A., Sabatini, B. L. & Svoboda, K. ScanImage: flexible software for operating laser scanning microscopes. Biomed. Eng. Online 2, 13 (2003).

  • 37.

    Madisen, L. et al. Transgenic mice for intersectional targeting of neural sensors and effectors with high specificity and performance. Neuron 85, 942–958 (2015).

  • 38.

    Wekselblatt, J. B., Flister, E. D., Piscopo, D. M. & Niell, C. M. Large-scale imaging of cortical dynamics during sensory perception and behavior. J. Neurophysiol. 115, 2852–2866 (2016).

  • 39.

    Chettih, S. N. & Harvey, C. D. Single-neuron perturbations reveal feature-specific competition in V1. Nature 567, 334–340 (2019).

  • 40.

    Harvey, C. D., Coen, P. & Tank, D. W. Choice-specific sequences in parietal cortex during a virtual-navigation decision task. Nature 484, 62–68 (2012).

  • 41.

    Chen, T. W. et al. Ultrasensitive fluorescent proteins for imaging neuronal activity. Nature 499, 295–300 (2013).

  • 42.

    Huber, D. et al. Multiple dynamic representations in the motor cortex during sensorimotor learning. Nature 484, 473–478 (2012).

  • 43.

    Kim, K. H. et al. Multifocal multiphoton microscopy based on multianode photomultiplier tubes. Opt. Express 15, 11658–11678 (2007).

  • 44.

    Thévenaz, P., Ruttimann, U. E. & Unser, M. A pyramid approach to subpixel registration based on intensity. IEEE Trans. Image Process. 7, 27–41 (1998).

  • 45.

    Preibisch, S., Saalfeld, S. & Tomancak, P. Globally optimal stitching of tiled 3D microscopic image acquisitions. Bioinformatics 25, 1463–1465 (2009).

  • 46.

    Brown, M. & Lowe, D. G. Automatic panoramic image stitching using invariant features. Int. J. Comput. Vis. 74, 59–73 (2007).

  • 47.

    Pnevmatikakis, E. A. & Giovannucci, A. NoRMCorre: An online algorithm for piecewise rigid motion correction of calcium imaging data. J. Neurosci. Methods 291, 83–94 (2017).

  • 48.

    Mukamel, E. A., Nimmerjahn, A. & Schnitzer, M. J. Automated analysis of cellular signals from large-scale calcium imaging data. Neuron 63, 747–760 (2009).

  • 49.

    Vogelstein, J. T. et al. Fast nonnegative deconvolution for spike train inference from population calcium imaging. J. Neurophysiol. 104, 3691–3704 (2010).

  • 50.

    Bishop, C. M. Pattern Recognition and Machine Learning Vol. 1 (Springer, 2007).

  • 51.

    Geladi, P. & Kowalski, B. R. Partial least-squares regression: a tutorial. Anal. Chim. Acta 185, 1–17 (1986).

  • 52.

    Hastie, T., Tibshirani, R. & Friedman, J. The Elements of Statistcal Learning (Springer, 2009).

  • 53.

    Podgorski, K. & Ranganathan, G. Brain heating induced by near-infrared lasers during multiphoton microscopy. J. Neurophysiol. 116, 1012–1023 (2016).

  • 54.

    Graner, M. W., Cumming, R. I. & Bigner, D. D. The heat shock response and chaperones/heat shock proteins in brain tumors: surface expression, release, and possible immune consequences. J. Neurosci. 27, 11214–11227 (2007).

  • 55.

    Kalmbach, A. S. & Waters, J. Brain surface temperature under a craniotomy. J. Neurophysiol. 108, 3138–3146 (2012).

  • 56.

    Wang, H. et al. Brain temperature and its fundamental properties: a review for clinical neuroscientists. Front. Neurosci. 8, 307 (2014).

  • 57.

    Talan, M. Body temperature of C57BL/6J mice with age. Exp. Gerontol. 19, 25–29 (1984).

  • 58.

    Greenberg, D. S., Houweling, A. R. & Kerr, J. N. D. Population imaging of ongoing neuronal activity in the visual cortex of awake rats. Nat. Neurosci. 11, 749–751 (2008).

  • 59.

    Karimipanah, Y., Ma, Z., Miller, J. K., Yuste, R. & Wessel, R. Neocortical activity is stimulus- and scale-invariant. PLoS ONE 12, e0177396 (2017).

  • Related Posts

    How Machine Learning has impacted Consumer Behaviour and Analysis
    Consumer Research

    How Machine Learning has impacted Consumer Behaviour and Analysis

    January 4, 2024
    Market Research The Ultimate Weapon for Business Success
    Consumer Research

    Market Research: The Ultimate Weapon for Business Success

    June 22, 2023
    Unveiling the Hidden Power of Market Research A Game Changer
    Consumer Research

    Unveiling the Hidden Power of Market Research: A Game Changer

    June 2, 2023
    7 Secrets of Market Research Gurus That Will Blow Your Mind
    Consumer Research

    7 Secrets of Market Research Gurus That Will Blow Your Mind

    May 8, 2023
    The Shocking Truth About Market Research Revealed!
    Consumer Research

    The Shocking Truth About Market Research: Revealed!

    April 25, 2023
    market research, primary research, secondary research, market research trends, market research news,
    Consumer Research

    Quantitative vs. Qualitative Research. How to choose the Right Research Method for Your Business Needs

    March 14, 2023
    Next Post
    Coastal Scientists Prepare to Retreat from Field Station Threatened by Rising Seas

    Coastal Scientists Prepare to Retreat from Field Station Threatened by Rising Seas

    Categories

    • Consumer Research
    • Data Analysis
    • Data Collection
    • Industry Research
    • Latest News
    • Market Insights
    • Marketing Research
    • Survey Research
    • Uncategorized

    Recent Posts

    • Ipsos Revolutionizes the Global Market Research Landscape
    • How Machine Learning has impacted Consumer Behaviour and Analysis
    • Market Research: The Ultimate Weapon for Business Success
    • Privacy Policy
    • Terms of Use
    • Antispam
    • DMCA

    Copyright © 2024 Globalresearchsyndicate.com

    Welcome Back!

    Login to your account below

    Forgotten Password?

    Retrieve your password

    Please enter your username or email address to reset your password.

    Log In
    This website uses cookies to improve your experience. We'll assume you're ok with this, but you can opt-out if you wish. Cookie settingsACCEPT
    Privacy & Cookies Policy

    Privacy Overview

    This website uses cookies to improve your experience while you navigate through the website. Out of these cookies, the cookies that are categorized as necessary are stored on your browser as they are essential for the working of basic functionalities of the website. We also use third-party cookies that help us analyze and understand how you use this website. These cookies will be stored in your browser only with your consent. You also have the option to opt-out of these cookies. But opting out of some of these cookies may have an effect on your browsing experience.
    Necessary
    Always Enabled
    Necessary cookies are absolutely essential for the website to function properly. This category only includes cookies that ensures basic functionalities and security features of the website. These cookies do not store any personal information.
    Non-necessary
    Any cookies that may not be particularly necessary for the website to function and is used specifically to collect user personal data via analytics, ads, other embedded contents are termed as non-necessary cookies. It is mandatory to procure user consent prior to running these cookies on your website.
    SAVE & ACCEPT
    No Result
    View All Result
    • Latest News
    • Consumer Research
    • Survey Research
    • Marketing Research
    • Industry Research
    • Data Collection
    • More
      • Data Analysis
      • Market Insights

    Copyright © 2024 Globalresearchsyndicate.com