Jean-Baptiste Sibarita, Ph.D.

Affiliations: 
Quantitative Imaging of the Cell Interdisciplinary Institute for Neuroscience 
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"Jean-Baptiste Sibarita"
Mean distance: 18.19 (cluster 32)
 
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Publications

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Butler C, Saraceno GE, Kechkar A, et al. (2022) Multi-Dimensional Spectral Single Molecule Localization Microscopy. Frontiers in Bioinformatics. 2: 813494
Orré T, Joly A, Karatas Z, et al. (2021) Molecular motion and tridimensional nanoscale localization of kindlin control integrin activation in focal adhesions. Nature Communications. 12: 3104
Compans B, Camus C, Kallergi E, et al. (2021) NMDAR-dependent long-term depression is associated with increased short term plasticity through autophagy mediated loss of PSD-95. Nature Communications. 12: 2849
Hosokawa T, Liu PW, Cai Q, et al. (2021) CaMKII activation persistently segregates postsynaptic proteins via liquid phase separation. Nature Neuroscience
Choquet D, Sainlos M, Sibarita JB. (2021) Advanced imaging and labelling methods to decipher brain cell organization and function. Nature Reviews. Neuroscience
Ferreira JS, Dupuis JP, Kellermayer B, et al. (2020) Distance-dependent regulation of NMDAR nanoscale organization along hippocampal neuron dendrites. Proceedings of the National Academy of Sciences of the United States of America. 117: 24526-24533
Aoun L, Farutin A, Garcia-Seyda N, et al. (2020) Amoeboid Swimming Is Propelled by Molecular Paddling in Lymphocytes. Biophysical Journal
Goncalves J, Bartol TM, Camus C, et al. (2020) Nanoscale co-organization and coactivation of AMPAR, NMDAR, and mGluR at excitatory synapses. Proceedings of the National Academy of Sciences of the United States of America. 117: 14503-14511
Kedia S, Ramakrishna P, Netrakanti PR, et al. (2020) Real-time nanoscale organization of amyloid precursor protein. Nanoscale
Levet F, Tønnesen J, Nägerl UV, et al. (2020) SpineJ: A software tool for quantitative analysis of nanoscale spine morphology. Methods (San Diego, Calif.)
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