The document discusses navigating the neuroscience data landscape. It notes that a grand challenge in neuroscience is to understand brain function across multiple scales of organization. Central to this effort is understanding "neural choreography" - the integrated functioning of neurons into brain circuits. The Neuroscience Information Framework (NIF) aims to facilitate discovery and utilization of web-based neuroscience resources. However, the neuroscience community has not fully exploited currently available data or prepared for forthcoming data.
2. “Neural Choreography”
“A grand challenge in neuroscience is to elucidate brain function in relation
to its multiple layers of organization that operate at different spatial
and temporal scales. Central to this effort is tackling “neural
choreography” -- the integrated functioning of neurons into brain
circuits--their spatial organization, local and long-distance connections,
their temporal orchestration, and their dynamic features. Neural
choreography cannot be understood via a purely reductionist approach.
Rather, it entails the convergent use of analytical and synthetic tools to
gather, analyze and mine information from each level of analysis, and
capture the emergence of new layers of function (or dysfunction) as we
move from studying genes and proteins, to cells, circuits, thought, and
behavior....
However, the neuroscience community is not yet fully engaged in exploiting
the rich array of data currently available, nor is it adequately poised to
capitalize on the forthcoming data explosion. “
Akil et al., Science, Feb 11, 2011
3. NIF is an initiative of the NIH Blueprint consortium of institutes
What types of resources (data, tools, materials, services) are
available to the neuroscience community?
How many are there?
What domains do they cover? What domains do they not cover?
Where are they?
Web sites
Databases
Literature
Supplementary material
Who uses them?
Who creates them?
How can we find them?
How can we make them better in the future? http://neuinfo.org
• PDF files
• Desk drawers
4. How many resources are
there?
•NIF Registry: A
catalog of
neuroscience-relevant
resources
•> 4800 currently
listed
•> 2000 databases
•And we are finding
more every day
5. The Neuroscience Information Framework: Discovery and
utilization of web-based resources for neuroscience
A portal for finding and
using neuroscience
resources
A consistent framework for
describing resources
Provides simultaneous
search of multiple types of
information, organized by
category
Supported by an expansive
ontology for neuroscience
Utilizes advanced
technologies to search the
“hidden web”
http://neuinfo.org
UCSD,Yale, CalTech, George Mason, Washington Univ
Supported by NIH Blueprint
Literature
Database
Federation
Registry
6. What are the connections of the
hippocampus?
HippocampusOR “CornuAmmonis” OR
“Ammon’s horn” Query expansion: Synonyms
and related concepts
Boolean queries
Data sources
categorized by
“data type” and
level of nervous
system
Common views
across multiple
sources
Tutorials for using
full resource when
getting there from
NIF
Link back to
record in
original
source
7. Results are organized within a common
framework
Connects to
Synapsed with
Synapsed by
Input region
innervates
Axon innervates
Projects toCellular contact
Subcellular contact
Source site
Target site
Each resource implements a different, though related model;
systems are complex and difficult to learn, in many cases
8. The scourge of neuroanatomical
nomenclature
•NIFConnectivity: 6 databases containing connectivity primary data or claims
•BrainArchitecture Management System (rodent)
•ConnectomeWiki (human)
•Brain Maps (various)
•CoCoMac (primate cortex)
•UCLA Multimodal database (Human fMRI)
•Avian Brain Connectivity Database (Bird)
•Total: 1800 unique brain terms (exluding Avian)
•Number of exact terms used in > 1 database: 42
•Number of synonym matches: 99
•Number of partonomy matches: 385
The INCF is working with NIF to develop semantic and spatial strategies for translating
anatomy across information systems
9. What is an ontology?
Brain
Cerebellum
Purkinje Cell Layer
Purkinje cell
neuron
has a
has a
has a
is a
Ontology: an explicit, formal representation
of concepts relationships among them
within a particular domain that expresses
human knowledge in a machine readable
form
Branch of philosophy: a theory of what is
e.g., Gene ontologies
Provide universals for navigating across
different data sources
Semantic “index”
Provide the basis for concept-based
queries to probe and mine data
Perform reasoning
Link data through relationships not just one-
to-one mappings
10. PONS program
Structural LexiconTaskforce
Concentrate on Human, Non-human
Primate, Rat and Mouse
Define structural concepts from level of
organ to macromolecular complexes
Provide a set of criteria by which
structures can be identified
Neuronal RegistryTaskforce
Establish conventions for naming new
types of neurons
Establish a standard set of properties to
define neurons
Create a Neuron Registry for registering
new types of neurons
Deployment and representation (Alan
Ruttenberg)
Brought together ontologists working
across scales
Courtesy of Chris Mungall, Lawrence
Berkeley Labs
***Not about imposing a
single view of anatomy;
about making concepts
computable and being
able to translate among
views
11. NeuroLexWiki
http://neurolex.org Stephen Larson
•Provide a simple framework
for defining the concepts
required
•Cell, Part of brain,
subcellular structure,
molecule
•Community based:
•Avian neuroanatomy
•Fly neurons (England)
•Neuroimaging terms
•Brain regions identified
by text mining
•Creating a computable
index for neuroscience data
•INCF working to coordinate
Wiki efforts underway at
Allen Institute, Blue Brain
and Neurolex
Demo D03
12. Comparison of traffic to NIF Portal
vsNeurolex
5000 hits 15000 hits
Wiki is readily indexed by search engines
13. Neurons in Neurolex
INCF building a
knowledge base of
neurons and their
properties via the
Neurolex Wiki
Led by Dr. Gordon
Shepherd
Consistent and
parseable naming
scheme
Knowledge is readily
accessible, editable
and computable
Stephen Larson
15. What do you mean by data?
Databases come in many shapes and sizes
Primary data:
Data available for
reanalysis, e.g., microarray data
sets from GEO; brain images from
XNAT; microscopic images
(CCDB/CIL)
Secondary data
Data features extracted through
data processing and sometimes
normalization, e.g, brain structure
volumes (IBVD), gene expression
levels (Allen Brain Atlas); brain
connectivity statements (BAMS)
Tertiary data
Claims and assertions about the
meaning of data
E.g., gene
upregulation/downregulation,
Registries:
Metadata
Pointers to data sets or
materials stored elsewhere
Data aggregators
Aggregate data of the same
type from multiple
sources, e.g., Cell Image
Library ,SUMSdb, Brede
Single source
Data acquired within a single
context , e.g., Allen Brain Atlas
17. How much of the landscape do we have?
Query for “reference” brain structures and their parts in NIF Connectivity database
18. NIF Reports:
Male vs Female
Gender bias
NIF can start to
answer interesting
questions about
neuroscience
research, not just
about neuroscience
19. Embracing duplication: Data Mash ups
•~300 PMID’s were common between Brede and SUMSdb
•Same information; value added
Same data; different aspects
20. Same data: different analysis
Chronic vs acute
morphine in striatum
Drug Related Gene database:
extracted statements from
figures, tables and supplementary
data from published article
Gemma: Reanalyzed microarray
results from GEO using different
algorithms
Both provide results of increased
or decreased expression as a
function of experimental
paradigm
4 strains of mice
3 conditions: chronic morphine,
acute morphine, saline
Mined NIF for all references to GEO
ID’s: found small number where the
same dataset was represented in two
or more databases
http://www.chibi.ubc.ca/Gemma/home.html
21. How easy was it to compare?
Gemma: Gene ID + Gene Symbol
DRG: Gene name + Probe ID
Gemma: Increased expression/decreased expression
DRG: Increased expression/decreased expression
But...Gemma presented results relative to baseline chronic morphine; DRG with
respect to saline, so direction of change is opposite in the 2 databases
Analysis:
1370 statements from Gemma regarding gene expression as a function of
chronicmorphine
617 were consistent with DRG; over half of the claims of the paper were not
confirmed in this analysis
Results for 1 gene were opposite in DRG and Gemma
45 did not have enough information provided in the paper to make a judgment
NIF annotation
standard
22. Grabbing the long tail of small
data
Analysis of NIF shows
multiple databases with
similar scope and content
Many contain partially
overlapping data
Data “flows” from one
resource to the next
Data is
reinterpreted, reanalyzed
or added to
When does it become
something else?
23. Phases of NIF
2006-2008: A survey of what was out there
2008-2009: Strategy for resource discovery
NIF Registry vs NIF data federation
Ingestion of data contained within different technology
platforms, e.g., XML vs relational vs RDF
Effective search across semantically diverse sources
NIFSTD ontologies
2009-2011: Strategy for data integration
Unified views across common sources
Mapping of content to NIF vocabularies
2011-present: Data analytics
Uniform external data references
24. Data, not just stories about them!
47/50 major preclinical
published cancer studies
could not be replicated
“The scientific community
assumes that the claims in a
preclinical study can be taken
at face value-that although
there might be some errors in
detail, the main message of
the paper can be relied on and
the data will, for the most
part, stand the test of time.
Unfortunately, this is not
always the case.”
Getting data out sooner in a
form where they can be exposed
to many eyes and many
analyses, and easily compared,
may allow us to expose errors
and develop better metrics to
evaluate the validity of data
Begley and Ellis, 29 MARCH 2012 |VOL 483 |
NATURE | 531
“There are no guidelines that
require all data sets to be
reported in a paper; often,
original data are removed
during the peer review and
publication process. “
25. A global view of data
You (and the machine) have to be able to
find it
Accessible through the web
Annotations
You have to be able to use it
Data type specified and in a usable form
You have to know what the data mean
Some semantics
Context: Experimental metadata
Provenance: Where did the data come from?
Reporting neuroscience data within a consistent framework helps enormously
26. NIF team (past and present)
Jeff Grethe, UCSD, Co Investigator, Interim PI
AmarnathGupta, UCSD, Co Investigator
Anita Bandrowski, NIF Project Leader
Gordon Shepherd,Yale University
Perry Miller
Luis Marenco
RixinWang
DavidVan Essen,Washington University
Erin Reid
Paul Sternberg, CalTech
ArunRangarajan
Hans Michael Muller
Yuling Li
GiorgioAscoli,George Mason University
SrideviPolavarum
Fahim Imam, NIF Ontology Engineer
Larry Lui
Andrea Arnaud Stagg
Jonathan Cachat
Jennifer Lawrence
Lee Hornbrook
Binh Ngo
VadimAstakhov
XufeiQian
Chris Condit
Mark Ellisman
Stephen Larson
WillieWong
TimClark, Harvard University
Paolo Ciccarese
Karen Skinner, NIH, Program Officer
27. Concept-based search: search by meaning
Search Google: GABAergic neuron
Search NIF: GABAergic neuron
NIF automatically searches for types of
GABAergic neurons
Types of GABAergic
neurons