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Chemotaxis / Growth cone / Netrin / Neurotrophin / TrkA receptor / Axon / Neuron / Fertilisation / Neuroregeneration / Biology / Developmental neuroscience / Axon guidance


A Bayesian model predicts the response of axons to molecular gradients Duncan Mortimera,1, Julia Feldnera,b,1, Timothy Vaughana,1, Irina Vettera, Zac Pujica, William J. Rosoffa, Kevin Burrageb,c, Peter Dayand, Linda J. R
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Document Date: 2014-05-08 02:14:24


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File Size: 1,20 MB

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La Jolla / Cambridge / Oxford / /

Company

IgG / Pearson / Adobe / Huber AB / cComputing Laboratory / BD Biosciences / Cambridge Univ Press / Ligand / Lumsden AG / /

Country

Australia / United Kingdom / /

Currency

pence / /

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Facility

Scale bar / University of Oxford / f / 2 aQueensland Brain Institute / The Salk Institute / University College London / The University of Queensland / /

IndustryTerm

information processing / printing / sensory information processing / biological nervous systems / physical device / collagen stock solution / reagents/analytic tools / stock solutions / ndogenous chemical gradients / closedform solution / gradient-sensing device / signal processing / quantum dot imaging / collagen gel solution / predictive tool / /

Organization

Australian National Health and Medical Research Council / Gatsby Charitable Foundation / Salk Institute for Biological Studies / University College London / University of Queensland / f / 2 aQueensland Brain Institute / dGatsby Computational Neuroscience Unit / University of Oxford / /

Person

Peter Dayand / Kevin Burrageb / Julia Feldnera / Timothy Vaughana / Alexa Fluor / Duncan Mortimera / William J. Rosoffa / Irina Vettera / Linda J. Richardsa / /

Position

Author / Cao / Representative / Tranquillo RT / /

Product

balanced salt / sodium bicarbonate / /

ProgrammingLanguage

J / C / /

ProvinceOrState

Queensland / California / /

RadioStation

Davies AM / /

Technology

Neuroscience / /

URL

www.pnas.org兾cgi兾doi兾10.1073兾pnas.0900715106 / www.pnas.org/cgi/content/full / /

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