Changes for page SGA3 D1.5 Showcase 1

Last modified by gorkazl on 2023/11/13 14:27

From version 11.2
edited by gorkazl
on 2023/10/09 17:42
Change comment: There is no comment for this version
To version 15.1
edited by fousekjan
on 2023/10/31 09:33
Change comment: There is no comment for this version

Summary

Details

Page properties
Author
... ... @@ -1,1 +1,1 @@
1 -XWiki.gorkazl
1 +XWiki.fousekjan
Content
... ... @@ -31,7 +31,7 @@
31 31  (% class="wikigeneratedid" %)
32 32  The Showcase 1 aimed at investigations related to variability in neuroscience from two perspectives: (a) the interpersonal variability studied by the virtual ageing study, and (b) the variability across different cortical regions within an individual brain.
33 33  
34 -== a. Interpersonal variabilityvirtual ageing ==
34 +== a. Interpersonal variabilityvirtual ageing ==
35 35  
36 36  (% class="wikigeneratedid" %)
37 37  See the details of the first study in the following publication:
... ... @@ -38,7 +38,7 @@
38 38  
39 39  M. Lavanga, J. Stumme, B. H. Yalcinkaya, J. Fousek, C. Jockwitz, H. Sheheitli, N. Bittner, M. Hashemi, S. Petkoski, S. Caspers, and V. Jirsa, [[The Virtual Aging Brain: A Model-Driven Explanation for Cognitive Decline in Older Subjects>>https://doi.org/10.1101/2022.02.17.480902]].
40 40  
41 -==== Simulation of resting-state activity ====
41 +=== Simulation of resting-state activity ===
42 42  
43 43  The fist notebook in the inter-individual variability workflow explores the resting-state simulation for a subject of the 1000BRAINS dataset. Functional data are simulated by means of a brain network model implemented in TVB, which is an ensemble of neural mass models linked via the weights of the structural connectivity (SC) matrix. Following topics are covered:
44 44  
... ... @@ -51,10 +51,11 @@
51 51  
52 52  * [[virtual_ageing/notebooks/1_BNM_for_resting_state.ipynb>>https://lab.ch.ebrains.eu/user-redirect/lab/tree/shared/SGA3%20D1.2%20Showcase%201/virtual_ageing/notebooks/1_BNM_for_resting_state.ipynb]]
53 53  
54 -[[image:image-20220103100841-2.png]]
55 55  
56 -==== Virtual ageing trajectories ====
55 +[[image:https://wiki.ebrains.eu/bin/download/Collabs/sga3-d1-2-showcase-1/WebHome/image-20220103100841-2.png?rev=1.1||alt="image-20220103100841-2.png"]]
57 57  
57 +=== Virtual ageing trajectories ===
58 +
58 58  The second steps shows the investigation of virtual ageing trajectory for each subject. In this context, we are going to show:
59 59  
60 60  1. What we mean by virtual ageing and what is the empirical basis to investigate this approach.
... ... @@ -65,23 +65,23 @@
65 65  
66 66  * [[virtual_ageing/notebooks/2_virtual_ageing_trajectories.ipynb>>https://lab.ch.ebrains.eu/user-redirect/lab/tree/shared/SGA3%20D1.2%20Showcase%201/virtual_ageing/notebooks/2_virtual_ageing_trajectories.ipynb]]
67 67  
68 -[[image:image-20220103101022-3.png]]
69 +[[image:https://wiki.ebrains.eu/bin/download/Collabs/sga3-d1-2-showcase-1/WebHome/image-20220103101022-3.png?rev=1.1||alt="image-20220103101022-3.png"]]
69 69  
70 -==== Inference with SBI ====
71 +=== Inference with SBI ===
71 71  
72 72  The last step of the inter-individual variability workflow employs Simulation Based Inference for estimation of the full posterior values of the parameters. Here, a deep neural estimator is trained to provide a relationship between the parameters of a model (black box simulator) and selected descriptive statistics of the observed data.
73 73  
74 -[[image:image-20220103104332-4.png||height="418" width="418"]]
75 +[[image:https://wiki.ebrains.eu/bin/download/Collabs/sga3-d1-2-showcase-1/WebHome/image-20220103104332-4.png?width=418&height=418&rev=1.1||alt="image-20220103104332-4.png"]]
75 75  
76 76  Link to the notebook:
77 77  
78 78  * [[virtual_ageing/notebooks/3_inference_with_SBI.ipynb>>https://lab.ch.ebrains.eu/user-redirect/lab/tree/shared/SGA3%20D1.2%20Showcase%201/virtual_ageing/notebooks/3_inference_with_SBI.ipynb]]
79 79  
80 -== b. Regional variability ==
81 +== b. Regional variability – Receptor density maps ==
81 81  
82 82  Aims at demonstrating the construction of whole-brain network models of the brain's activity, accounting for differences in receptor densities across cortical regions.
83 83  
84 -==== Loading the data from EBRAINS ====
85 +=== Loading the data from EBRAINS ===
85 85  
86 86  The first step of this workflow consists in loading the data from the Knowledge Graph via the //siibra interface//, including the regional bias on the model. In this case we require:
87 87  
... ... @@ -89,22 +89,21 @@
89 89  1. GABAa and AMPA receptor densities for each brain region, and
90 90  1. empirical resting-state fMRI data for fitting and validation of the simulations.
91 91  
92 -The three datasets shall be characterised in the same parcellation. Link to the notebook:
93 +The three datasets are characterised in the same parcellation. Link to the notebook:
93 93  
94 94  * [[regional_variability/notebooks/1_load_data.ipynb>>https://lab.ch.ebrains.eu/hub/user-redirect/lab/tree/shared/SGA3%20D1.2%20Showcase%201/regional_variability/notebooks/1_load_data.ipynb]]
95 95  
96 -(% style="text-align:center" %)
97 -[[image:download - 2022-02-10T130815.902.png||alt="region-wise gene expression heterogeneity"]]
97 +[[image:https://wiki.ebrains.eu/bin/download/Collabs/sga3-d1-2-showcase-1/WebHome/download%20-%202022-02-10T130815.902.png?rev=1.1||alt="region-wise gene expression heterogeneity"]]
98 98  
99 -==== Fitting model parameters for models with regional bias ====
99 +=== Fitting model parameters with regional bias ===
100 100  
101 -A series of simulations of the whole-brain network model are launched in the EBRAINS HPC facilities in order to identify the optimal model parameters leading to simulated resting-state brain activity that best resembles the empirically observed activity. In this branch of the showcase, brain regions are simulated using the mean-field AdEx population model; specifically modified to account for the regional densities of GABAa and AMPA neuroreceptors. See the details following document.
101 +A series of simulations of the whole-brain network model are launched in the EBRAINS HPC facilities in order to identify the optimal model parameters leading to simulated resting-state brain activity that best resembles the empirically observed activity. In this branch of the showcase, brain regions are simulated using the mean-field AdEx population model; specifically modified to account for the regional densities of GABAa and AMPA neuroreceptors. See the details in the following document.
102 102  
103 103  Link to the notebook:
104 104  
105 105  * [[regional_variability/notebooks/2_parameter_swep.ipynb>>https://lab.ch.ebrains.eu/hub/user-redirect/lab/tree/shared/SGA3%20D1.2%20Showcase%201/regional_variability/notebooks/2_parameter_swep.ipynb]]
106 106  
107 -[[image:download - 2022-02-10T131102.033.png||alt="regional bias vs goodness of fit"]]
107 +[[image:https://wiki.ebrains.eu/bin/download/Collabs/sga3-d1-2-showcase-1/WebHome/download%20-%202022-02-10T131102.033.png?rev=1.1||alt="regional bias vs goodness of fit"]]
108 108  )))
109 109  
110 110