HIBALL Winter School
from
Thursday 9 February 2023 (13:00)
to
Friday 10 February 2023 (19:00)
Monday 6 February 2023
Tuesday 7 February 2023
Wednesday 8 February 2023
Thursday 9 February 2023
13:50
Welcome
Welcome
13:50 - 14:00
14:00
BigBrain as a tool to understand cortical types - Part I
-
Nicola Palomero-Gallagher
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
BigBrain as a tool to understand cortical types - Part I
Nicola Palomero-Gallagher
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
14:00 - 15:00
What you always wanted to know about the different types of cortex, but didn’t dare to ask…. after your possible initial surprise when hearing that such a thing as “cortical types” exists! Why differentiate between neocortex and allocortex? Do the terms neocortex and isocortex mean the same thing? What kind of differences in lamination can we expect within the neocortex or the allocortex? And perhaps the most difficult question of all. How do these differences help us to identify cortical borders? At the end of this session you will understand why, despite the technical challenges associated with this process, the analysis of the 1µm resolution version of BigBrain is required to capture the more subtle aspects of cytoarchitectonic organization in the cerebral cortex.
15:00
Break
Break
15:00 - 15:15
15:15
BigBrain as a tool to understand cortical types - Part II
-
Nicola Palomero-Gallagher
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
BigBrain as a tool to understand cortical types - Part II
Nicola Palomero-Gallagher
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
15:15 - 16:15
What you always wanted to know about the different types of cortex, but didn’t dare to ask…. after your possible initial surprise when hearing that such a thing as “cortical types” exists! Why differentiate between neocortex and allocortex? Do the terms neocortex and isocortex mean the same thing? What kind of differences in lamination can we expect within the neocortex or the allocortex? And perhaps the most difficult question of all. How do these differences help us to identify cortical borders? At the end of this session you will understand why, despite the technical challenges associated with this process, the analysis of the 1µm resolution version of BigBrain is required to capture the more subtle aspects of cytoarchitectonic organization in the cerebral cortex.
16:15
Break
Break
16:15 - 16:35
16:35
siibra – programming with multiscale brain atlases in Python - Part I
-
Timo Dickscheid
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
siibra – programming with multiscale brain atlases in Python - Part I
Timo Dickscheid
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
16:35 - 17:35
siibra is a software tool suite implementing an openly accessible brain atlas framework which connects multimodal datasets from different resources to anatomical structures in reference spaces at different spatial scales. The tool suite is designed to address both interactive exploration through an interactive 3D web viewer (siibra-explorer) as well as integration into data analysis and simulation workflows with a comprehensive Python library (siibra-python). In this session, we first introduce the multidimensional concept of the atlas framework and explore some key features such as the BigBrain interactively. We then turn to concrete programming tutorials in Python. These include fetching brain region maps, accessing the BigBrain dataset, and extracting multimodal regional features such as cortical thicknesses, cell and neurotransmitter densities, gene expressions and connectivity data. We will finish with some concrete data analysis examples. **Requirements:** For the practical examples you need a laptop with a current browser. All examples will be run in prepared Jupyter notebooks, which we will make available for download. Please contact us if you do not come with your own laptop.
17:35
Break
Break
17:35 - 17:50
17:50
siibra – programming with multiscale brain atlases in Python - Part II
-
Timo Dickscheid
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
siibra – programming with multiscale brain atlases in Python - Part II
Timo Dickscheid
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
17:50 - 18:50
siibra is a software tool suite implementing an openly accessible brain atlas framework which connects multimodal datasets from different resources to anatomical structures in reference spaces at different spatial scales. The tool suite is designed to address both interactive exploration through an interactive 3D web viewer (siibra-explorer) as well as integration into data analysis and simulation workflows with a comprehensive Python library (siibra-python). In this session, we first introduce the multidimensional concept of the atlas framework and explore some key features such as the BigBrain interactively. We then turn to concrete programming tutorials in Python. These include fetching brain region maps, accessing the BigBrain dataset, and extracting multimodal regional features such as cortical thicknesses, cell and neurotransmitter densities, gene expressions and connectivity data. We will finish with some concrete data analysis examples. **Requirements:** For the practical examples you need a laptop with a current browser. All examples will be run in prepared Jupyter notebooks, which we will make available for download. Please contact us if you do not come with your own laptop.
Friday 10 February 2023
13:00
EBRAINS Data & Knowledge - how to share own data and explore the shared data from others - Part I
-
Lyuba Zehl
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
EBRAINS Data & Knowledge - how to share own data and explore the shared data from others - Part I
Lyuba Zehl
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
13:00 - 14:30
The EBRAINS Data & Knowledge service facilitates Findability, Accessibility, Interoperability and Reusability of neuroscience research products (experimental research data, computational models, or software tools). In the first part of this session you will learn how to prepare your research products for sharing them with other researchers through EBRAINS. For this we will discuss good practices for data organizations, metadata annotations, and data descriptors. In the second part of this session you will learn how you can explore the research products shared through the EBRAINS Knowledge Graph (KG). For this we will provide a demo for data queries using the KG Search UI, the KG Query Builder and Core Python SDK, as well as fairgraph. **Requirements:** <ul> <li>EBRAINS account (please <a href="https://ebrains.eu/register/">register</a> in advance)</li> <li> basic Python knowledge (for some parts of the lecture).</li> </ul> Please contact us if you do not come with your own laptop.
14:30
Break
Break
14:30 - 14:45
14:45
EBRAINS Data & Knowledge - how to share own data and explore the shared data from others - Part II
-
Lyuba Zehl
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
EBRAINS Data & Knowledge - how to share own data and explore the shared data from others - Part II
Lyuba Zehl
(
Institute for Neuroscience and Medicine, INM-1, Forschungszentrum Jülich
)
14:45 - 16:15
The EBRAINS Data & Knowledge service facilitates Findability, Accessibility, Interoperability and Reusability of neuroscience research products (experimental research data, computational models, or software tools). In the first part of this session you will learn how to prepare your research products for sharing them with other researchers through EBRAINS. For this we will discuss good practices for data organizations, metadata annotations, and data descriptors. In the second part of this session you will learn how you can explore the research products shared through the EBRAINS Knowledge Graph (KG). For this we will provide a demo for data queries using the KG Search UI, the KG Query Builder and Core Python SDK, as well as fairgraph. **Requirements:** <ul> <li>EBRAINS account (please <a href="https://ebrains.eu/register/">register</a> in advance)</li> <li> basic Python knowledge (for some parts of the lecture).</li> </ul> Please contact us if you do not come with your own laptop.
16:15
Break
Break
16:15 - 16:35
16:35
Open tools for multi-modal, multi-scale annotation of brain networks - Part I
-
Bratislav Mišić
(
Network Neuroscience Lab, McGill University
)
Vincent Bazinet
(
McGill University
)
Open tools for multi-modal, multi-scale annotation of brain networks - Part I
Bratislav Mišić
(
Network Neuroscience Lab, McGill University
)
Vincent Bazinet
(
McGill University
)
16:35 - 17:35
Imaging technologies are increasingly used to generate high-resolution reference maps of brain structure and function. Modern scientific discovery relies on making comparisons between new maps (e.g. task activations, group structural differences) and these reference maps. Although recent data sharing initiatives have increased the accessibility of such brain maps, data are often shared in disparate coordinate systems (or ``spaces''), precluding systematic and accurate comparisons among them. Here we introduce the neuromaps toolbox, an open-access software package for accessing, transforming, and analyzing structural and functional brain annotations. We implement two registration frameworks to generate high-quality transformations between four standard coordinate systems commonly used in neuroimaging research. The initial release of the toolbox features >40 curated reference maps and biological ontologies of the human brain, including maps of gene expression, neurotransmitter receptors, metabolism, neurophysiological oscillations, developmental and evolutionary expansion, functional hierarchy, individual functional variability, and cognitive specialization. Robust quantitative assessment of map-to-map similarity is enabled via a suite of spatial autocorrelation-preserving null models. Finally, we demonstrate two examples of how neuromaps can be used to contextualize brain maps with respect to canonical annotations. By discovering novel associations with previously-established features of brain structure and function, neuromaps generates biological insight about new brain maps. Altogether,neuromaps combines open-access data with transparent functionality for standardizing and comparing brain maps, providing a systematic workflow for comprehensive structural and functional annotation enrichment analysis of the human brain. Contact: vincent.bazinet@mail.mcgill.ca content for the tutorial: <a href="https://github.com/VinceBaz/hiball_winter_school_2023">link</a> ** Requirements** Practical examples will be shown in Python. If you want to follow along you will need your laptop. Please contact us if you do not come with your own laptop. Please install the toolboxes that will be introduced: <ul> <li><a href="https://github.com/netneurolab/neuromaps">neuromaps</a></li> <li><a href="https://github.com/rmarkello/abagen">abagen</a></li> </ul> Optional readings: <ul> <li><a href="https://www.nature.com/articles/s41592-022-01625-w">neuromaps</a></li> <li><a href="https://elifesciences.org/articles/72129">abagen</a></li> <li><a href="https://www.sciencedirect.com/science/article/pii/S1053811921003293">spatial nulls</a></li> </ul>
17:35
Break
Break
17:35 - 17:50
17:50
Open tools for multi-modal, multi-scale annotation of brain networks - Part II
-
Vincent Bazinet
(
McGill University
)
Bratislav Mišić
(
Network Neuroscience Lab, McGill University
)
Open tools for multi-modal, multi-scale annotation of brain networks - Part II
Vincent Bazinet
(
McGill University
)
Bratislav Mišić
(
Network Neuroscience Lab, McGill University
)
17:50 - 18:50
Imaging technologies are increasingly used to generate high-resolution reference maps of brain structure and function. Modern scientific discovery relies on making comparisons between new maps (e.g. task activations, group structural differences) and these reference maps. Although recent data sharing initiatives have increased the accessibility of such brain maps, data are often shared in disparate coordinate systems (or ``spaces''), precluding systematic and accurate comparisons among them. Here we introduce the neuromaps toolbox, an open-access software package for accessing, transforming, and analyzing structural and functional brain annotations. We implement two registration frameworks to generate high-quality transformations between four standard coordinate systems commonly used in neuroimaging research. The initial release of the toolbox features >40 curated reference maps and biological ontologies of the human brain, including maps of gene expression, neurotransmitter receptors, metabolism, neurophysiological oscillations, developmental and evolutionary expansion, functional hierarchy, individual functional variability, and cognitive specialization. Robust quantitative assessment of map-to-map similarity is enabled via a suite of spatial autocorrelation-preserving null models. Finally, we demonstrate two examples of how neuromaps can be used to contextualize brain maps with respect to canonical annotations. By discovering novel associations with previously-established features of brain structure and function, neuromaps generates biological insight about new brain maps. Altogether,neuromaps combines open-access data with transparent functionality for standardizing and comparing brain maps, providing a systematic workflow for comprehensive structural and functional annotation enrichment analysis of the human brain. Contact: vincent.bazinet@mail.mcgill.ca content for the tutorial: <a href="https://github.com/VinceBaz/hiball_winter_school_2023">link</a> ** Requirements** Practical examples will be shown in Python. If you want to follow along you will need your laptop. Please contact us if you do not come with your own laptop. Please install the toolboxes that will be introduced: <ul> <li><a href="https://github.com/netneurolab/neuromaps">neuromaps</a></li> <li><a href="https://github.com/rmarkello/abagen">abagen</a></li> </ul> Optional readings: <ul> <li><a href="https://www.nature.com/articles/s41592-022-01625-w">neuromaps</a></li> <li><a href="https://elifesciences.org/articles/72129">abagen</a></li> <li><a href="https://www.sciencedirect.com/science/article/pii/S1053811921003293">spatial nulls</a></li> </ul>