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Data sharing in neuroimaging:
incentives, tools, and challenges
Chris Gorgolewski
Department of Psychology
Stanford University
HOW CAN YOU BENEFIT FROM
DATA SHARING?
NKI Enhanced
•  329 subjects (will reach 1000)
–  Representative sample: young and old, some with
mental health history
•  1 hour worth of MRI (3T) scanning:
–  MPRAGE (TR = 1900; voxel size = 1mm isotropic)
–  3x resting state scans (645msec, 1400msec, and
2500msec)
–  Diffusion Tensor Imaging (137 direction; voxel size
= 2mm isotropic)
–  Visual Checkboard and Breath Holding
manipulations
	
  
fcon_1000.projects.nitrc.org/indi/
enhanced/
Human Connectome Project
•  > 500 subjects (will reach 1200)
–  Young and healthy (22-35yrs)
–  200 twins!
•  1 hour worth of MRI scanning:
–  State of the art sequences – high temporal and spatial resolution
–  Resting-state fMRI (R-fMRI)
–  Task-evoked fMRI (T-fMRI)
•  Working Memory
•  Gambling
•  Motor
•  Language
•  Social Cognition
•  Relational Processing
•  Emotion Processing
–  Diffusion MRI (dMRI)
–  MEG and EEG
–  7T coming soon	
  
Human Connectome Project
•  Rich phenotypical data
– Cognition, personality, substance abuse etc.
•  Genotyping! (not yet available)
•  Methodological developments
– Fine tuned sequences
– Innovative field inhomogeneity corrections
– New preprocessing techniques
•  Ready to use preprocessed data
humanconnectome.org
FCP/INDI Usage Survey
Survey Courtesy of Stan Colcombe & Cameron Craddock
FCP/INDI Data Usage Description
	
  	
   	
  	
  
Master's thesis research 11.94%
Doctoral dissertation research 38.81%
Teaching resource (projects or examples) 13.43%
Pilot data for grant applications 16.42%
Research intended for publication 76.12%
Independent study (e.g., teach self about analysis) 37.31%
FCP/INDI Users; 10% respondent rate
Growth of the reuse of OpenfMRI
datasets
Motivation
•  Share	
  your	
  stat	
  maps!	
  
vs.
institutions scientists
Data sharing saves money
$878,988
cost of reacquiring data for each of the
reuses of OpenfMRI datasets
Data sharing fears
•  Fear of being scooped
•  Fear of someone finding a mistake
•  Misconceptions about the ownership of the
data
Studies sharing data have higher
statistical quality
Wicherts JM, Bakker M, Molenaar D (2011) Willingness to Share Research Data Is
Related to the Strength of the Evidence and the Quality of Reporting of
Statistical Results. PLoS ONE 6(11): e26828. doi: 10.1371/journal.pone.0026828
Neuroimaging data sharing
hierarchy
Poldrack and Gorgolewski, 2014
Just coordinates?
•  Databases such as Neurosynth or
BrainMap rely on peak coordinates
reported in papers (only strong effects)
Are we throwing money away?
Baby steps
•  Everything is a question of cost and benefit
– If we keep the cost low even small benefit (or
just conviction that data sharing is GOOD) will
suffice
NeuroVault.org
simple data sharing
•  Minimize the cost!
•  We just want your statistical maps with
minimum description (DOI)
– If you want you can put more metadata, but
you don’t have to
•  We streamline login process (Google,
Facebook)
NeuroVault.org
Gorgolewski, et al., submitted
Benefits - visualisation
Benefits - decoding
Live demo
Benefits - other
•  Private collections
•  Multiple contributors to one collection
•  Sharable persistent URLs
•  Viewer embeddable on your labs website
or your private blog
•  Improved exposure of your research
•  Improved reusability of your results
Using NeuroVault…
•  Improves collaboration
•  Makes your paper more attractive
•  Shows you care about transparency
•  Takes only five minutes
•  Gives you warm and fuzzy feeling that you
helped future meta-analyses
Validation and gains in sensitivity
NeuroVault for developers
•  RESTful API (field tested by Neurosynth)
•  Source code available on GitHub
What is NIDM-Results?
Neuroimaging data sharing
hierarchy
Poldrack and Gorgolewski, 2014
MAKING DATASHARING COUNT
Credit where credit’s due
Quality control
•  Share	
  your	
  stat	
  maps!	
  
Complex datasets require
elaborate descriptions
•  Share	
  your	
  stat	
  maps!	
  
How can we appropriately
reward extra effort and risk
related with sharing data?
Solution – data papers
•  Authors get recognizable credit for their
work.
– Even smaller contributors such as RAs can be
included.
•  Acquisition methods are described in
detail.
•  Quality of metadata is being controlled by
peer review.
Gorgolewski, Milham, and Margulies, 2013
•  Neuroinformatics (Springer)
•  GigaScience (BGI, BioMed Central)
•  Scientific Data (Nature Publising Group)
•  F1000Research (Faculty of 1000)
•  Data in Brief (Elsevier)
•  Journal of Open Psychology Data (Ubiquity
press)
Where to publish data papers?
What makes a good data paper?
•  Clear and accurate description of the
acquisition protocol.
•  Good data organization.
•  Ease of access to data.
•  Data quality description.
•  Fair credit attribution.
How to improve the impact of your
dataset?
•  Provide preprocessed data.
•  Reach out to your peers…
– …and people outside of your field (ML)
•  Build a community around the data.
StudyForrest.org
Repositories
•  Field specific
– OpenfMRI.org (task based fMRI)
– FCP/INDI (resting state fMRI)
– COINS
•  Field agnostic
– DataVerse (Harvard)
– Figshare (only small datasets)
– DataDryad (fees may apply)
OpenfMRI
•  Will host any dataset that has a task based
fMRI component
•  No fees
•  Curated and uncurated datasets
•  Recommended by many journals (including
Scientific Data)
Prepare in advance
•  Make sure your consent form includes data
sharing
•  Decide which database you want to send
your data to in advance
– Organize your data according to their
requirements
•  Work on anonymized data as much as you
can
If I haven’t convinced you yet
•  Why to share data:
– It’s the ethical thing to do (Brakewood and
Poldrack 2013)
– The journal might require it (PLoS).
– Your funders might require it (NIH).
– Track record of data sharing can improve your
chances of getting your next grant.
Sharing data is related to higher
citation rate
Piwowar, Day & Fridsma (2007) Piwowar & Vision(2013)
Acknowledgements
Russell A. Poldrack
Jean-Baptiste Poline
Yannick Schwarz
Tal Yarkoni
Michael Milham
Daniel Margulies
Yannick Schwartz
Gael Varoquox
Joseph Wexler
Gabriel Rivera
Camile Maumet
Vanessa Sochat
Thomas Nichols
MPI CBS Resting state group
Poldrack Lab
INCF Data Sharing Task
Force
	
  

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Data sharing in neuroimaging: incentives, tools, and challenges

  • 1. Data sharing in neuroimaging: incentives, tools, and challenges Chris Gorgolewski Department of Psychology Stanford University
  • 2. HOW CAN YOU BENEFIT FROM DATA SHARING?
  • 3. NKI Enhanced •  329 subjects (will reach 1000) –  Representative sample: young and old, some with mental health history •  1 hour worth of MRI (3T) scanning: –  MPRAGE (TR = 1900; voxel size = 1mm isotropic) –  3x resting state scans (645msec, 1400msec, and 2500msec) –  Diffusion Tensor Imaging (137 direction; voxel size = 2mm isotropic) –  Visual Checkboard and Breath Holding manipulations  
  • 4.
  • 6. Human Connectome Project •  > 500 subjects (will reach 1200) –  Young and healthy (22-35yrs) –  200 twins! •  1 hour worth of MRI scanning: –  State of the art sequences – high temporal and spatial resolution –  Resting-state fMRI (R-fMRI) –  Task-evoked fMRI (T-fMRI) •  Working Memory •  Gambling •  Motor •  Language •  Social Cognition •  Relational Processing •  Emotion Processing –  Diffusion MRI (dMRI) –  MEG and EEG –  7T coming soon  
  • 7. Human Connectome Project •  Rich phenotypical data – Cognition, personality, substance abuse etc. •  Genotyping! (not yet available) •  Methodological developments – Fine tuned sequences – Innovative field inhomogeneity corrections – New preprocessing techniques •  Ready to use preprocessed data
  • 9. FCP/INDI Usage Survey Survey Courtesy of Stan Colcombe & Cameron Craddock FCP/INDI Data Usage Description         Master's thesis research 11.94% Doctoral dissertation research 38.81% Teaching resource (projects or examples) 13.43% Pilot data for grant applications 16.42% Research intended for publication 76.12% Independent study (e.g., teach self about analysis) 37.31% FCP/INDI Users; 10% respondent rate
  • 10. Growth of the reuse of OpenfMRI datasets
  • 11.
  • 12. Motivation •  Share  your  stat  maps!   vs. institutions scientists
  • 13. Data sharing saves money $878,988 cost of reacquiring data for each of the reuses of OpenfMRI datasets
  • 14. Data sharing fears •  Fear of being scooped •  Fear of someone finding a mistake •  Misconceptions about the ownership of the data
  • 15. Studies sharing data have higher statistical quality Wicherts JM, Bakker M, Molenaar D (2011) Willingness to Share Research Data Is Related to the Strength of the Evidence and the Quality of Reporting of Statistical Results. PLoS ONE 6(11): e26828. doi: 10.1371/journal.pone.0026828
  • 17. Just coordinates? •  Databases such as Neurosynth or BrainMap rely on peak coordinates reported in papers (only strong effects)
  • 18. Are we throwing money away?
  • 19.
  • 20. Baby steps •  Everything is a question of cost and benefit – If we keep the cost low even small benefit (or just conviction that data sharing is GOOD) will suffice
  • 21. NeuroVault.org simple data sharing •  Minimize the cost! •  We just want your statistical maps with minimum description (DOI) – If you want you can put more metadata, but you don’t have to •  We streamline login process (Google, Facebook)
  • 26. Benefits - other •  Private collections •  Multiple contributors to one collection •  Sharable persistent URLs •  Viewer embeddable on your labs website or your private blog •  Improved exposure of your research •  Improved reusability of your results
  • 27. Using NeuroVault… •  Improves collaboration •  Makes your paper more attractive •  Shows you care about transparency •  Takes only five minutes •  Gives you warm and fuzzy feeling that you helped future meta-analyses
  • 28. Validation and gains in sensitivity
  • 29. NeuroVault for developers •  RESTful API (field tested by Neurosynth) •  Source code available on GitHub
  • 32. MAKING DATASHARING COUNT Credit where credit’s due
  • 33. Quality control •  Share  your  stat  maps!   Complex datasets require elaborate descriptions
  • 34. •  Share  your  stat  maps!   How can we appropriately reward extra effort and risk related with sharing data?
  • 35. Solution – data papers •  Authors get recognizable credit for their work. – Even smaller contributors such as RAs can be included. •  Acquisition methods are described in detail. •  Quality of metadata is being controlled by peer review.
  • 36. Gorgolewski, Milham, and Margulies, 2013
  • 37. •  Neuroinformatics (Springer) •  GigaScience (BGI, BioMed Central) •  Scientific Data (Nature Publising Group) •  F1000Research (Faculty of 1000) •  Data in Brief (Elsevier) •  Journal of Open Psychology Data (Ubiquity press) Where to publish data papers?
  • 38.
  • 39.
  • 40.
  • 41.
  • 42. What makes a good data paper? •  Clear and accurate description of the acquisition protocol. •  Good data organization. •  Ease of access to data. •  Data quality description. •  Fair credit attribution.
  • 43. How to improve the impact of your dataset? •  Provide preprocessed data. •  Reach out to your peers… – …and people outside of your field (ML) •  Build a community around the data.
  • 45. Repositories •  Field specific – OpenfMRI.org (task based fMRI) – FCP/INDI (resting state fMRI) – COINS •  Field agnostic – DataVerse (Harvard) – Figshare (only small datasets) – DataDryad (fees may apply)
  • 46. OpenfMRI •  Will host any dataset that has a task based fMRI component •  No fees •  Curated and uncurated datasets •  Recommended by many journals (including Scientific Data)
  • 47. Prepare in advance •  Make sure your consent form includes data sharing •  Decide which database you want to send your data to in advance – Organize your data according to their requirements •  Work on anonymized data as much as you can
  • 48. If I haven’t convinced you yet •  Why to share data: – It’s the ethical thing to do (Brakewood and Poldrack 2013) – The journal might require it (PLoS). – Your funders might require it (NIH). – Track record of data sharing can improve your chances of getting your next grant.
  • 49. Sharing data is related to higher citation rate Piwowar, Day & Fridsma (2007) Piwowar & Vision(2013)
  • 50. Acknowledgements Russell A. Poldrack Jean-Baptiste Poline Yannick Schwarz Tal Yarkoni Michael Milham Daniel Margulies Yannick Schwartz Gael Varoquox Joseph Wexler Gabriel Rivera Camile Maumet Vanessa Sochat Thomas Nichols MPI CBS Resting state group Poldrack Lab INCF Data Sharing Task Force