Changes for page Interactive Exploration of Brain States and Spatio-Temporal Activity Patterns in Data-Constrained Simulations
Last modified by pierstanpaolucci on 2023/06/29 18:29
From version 9.2
edited by pierstanpaolucci
on 2021/09/21 15:37
on 2021/09/21 15:37
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To version 17.1
edited by pierstanpaolucci
on 2021/09/22 10:46
on 2021/09/22 10:46
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... ... @@ -2,10 +2,10 @@ 2 2 ((( 3 3 (% class="container" %) 4 4 ((( 5 -= Interactive Exploration of Brain States and Spatio-Temporal Activity Patterns in Data-Constrained Simulations = 5 +(% class="lead" id="HInteractiveExplorationofBrainStatesandSpatio-TemporalActivityPatternsinData-ConstrainedSimulations" %) 6 +Open the Lab link on the left to 6 6 7 -= = 8 - 8 +(% class="lead" %) 9 9 Explore brain states and spatio-temporal cortical activity patterns on your own 10 10 ))) 11 11 ))) ... ... @@ -14,10 +14,8 @@ 14 14 ((( 15 15 (% class="col-xs-12 col-sm-8" %) 16 16 ((( 17 - =OpentheLablinkon theleftto launchthe interactive simulation=17 +**How the same network can generate different brain states with their specific propagation patterns and rhythms?** 18 18 19 -How the same network can generate different brain states with their specific propagation patterns and rhythms? 20 - 21 21 In this Jupyter Lab the user can interactively change the neuromodulated fatigue parameters and observe in real-time the emergence of different categories of slow- wave wave-propagation patterns and the transition to an asynchronous regime on a columnar mean-field model equipped with lateral connections inferred from experimentally acquired cortical activity. 22 22 23 23 The model displays the dorsal view of a mouse cortical hemisphere sampled by pixels of 100-micron size over a 25 mm2 field of view. ... ... @@ -24,14 +24,19 @@ 24 24 25 25 The connectivity of the model was inferred from cortical activity acquired using GECI imaging technique. Even if the connectivity of the model was inferred from a single brain-state, the neuromodulated model supports the emergence of a rich dynamic repertoire of spatio-temporal propagation patterns, from those corresponding to deepests levels of anesthesia (spirals) to classical postero-anterior and rostro-caudal waves up to the transition to asynchronous activity, with the dissolution of the slow-wave features (1). 26 26 27 -The experimental data set from which the model has been inferred has been provided by LENS and it is available in the EBRAINS KG(2) 25 +The experimental data set from which the model has been inferred has been provided by LENS and it is available in the EBRAINS KG (2) 28 28 29 - (1)Capone, C.et al. (2021) “SimulationsApproaching Data: CorticalSlowWavesin Inferred ModelsoftheWhole Hemisphere ofMouse”arXiv:2104.07445 https:~/~/arxiv.org/abs/2104.0744527 +The predecessor of this model can be found at (3) 30 30 29 +(1) Capone, C. et al. (2021) “Simulations Approaching Data: Cortical Slow Waves in Inferred Models of the Whole Hemisphere of Mouse” arXiv:2104.07445 [[https:~~/~~/arxiv.org/abs/2104.07445>>https://arxiv.org/abs/2104.07445]] 30 + 31 +(2) Resta, F., Allegra Mascaro, A. L., & Pavone, F. (2020). //Study of Slow Waves (SWs) propagation through wide-field calcium imaging of the right cortical hemisphere of GCaMP6f mice// [Data set]. EBRAINS. [[DOI: 10.25493/3E6Y-E8G>>url:https://doi.org/10.25493%2F3E6Y-E8G]] 32 + 33 +(3) Mean Field Simulation of whole mouse hemisphere with parameters inferred from optical recordings [[https:~~/~~/search.kg.ebrains.eu/instances/e572362f-9461-4f9d-81e2-b69cd44185f4>>https://search.kg.ebrains.eu/instances/e572362f-9461-4f9d-81e2-b69cd44185f4]] 34 + 31 31 = = 32 32 ))) 33 33 34 - 35 35 (% class="col-xs-12 col-sm-4" %) 36 36 ((( 37 37 {{box title="**Contents**"}}