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Digital Scholar
Webinar
April 4, 2018
Hosted by the Southern California Clinical and Translational Science Institute (SC CTSI)
University of Southern California (USC) and Children’s Hospital Los Angeles (CHLA)
Katja Reuter, PhD,
Director of the Digital
Scholar Program
About Today’s Session
Research Data Sharing and Re-Use
Practical Implications for Data Citation
Practice that Benefit Researchers
Important Aspects of Data Sharing and
Re-Use
But how should one go about
this exactly?
Today’s Learning Objectives
 Describe the characteristics and strengths of digital forms of data
sharing, reuse, and citation
 Describe methods to implement data citation practice that benefit
your research
 Describe potential weaknesses of digital research data sharing
practices
Hyoungjoo Park
Today’s Speakers
Hyoungjoo Park, PhD candidate, School of
Information Studies, University of Wisconsin-
Milwaukee
AND
Dietmar Wolfram, PhD, Professor, School of
Information Studies, University of Wisconsin-Milwaukee
Dietmar Wolfram
Recommended Reading
Questions: Please use the Q&A
Feature
1. Click on the tab here to
access Q&A
2. Ask and post question here
1
2
Research Data Sharing and Re-Use:
Practical Implications for
Researchers
Hyoungjoo Park
Dietmar Wolfram
School of Information Studies
University of Wisconsin-Milwaukee
Presentation for Digital Scholar Webinar series on May 2nd
Introduction: The Open Science Movement
From the FOSTER Project:
https://www.fosteropenscience.eu/content/what-open-science-introduction
Introduction: The Open Science Movement
From the FOSTER Project:
https://www.fosteropenscience.eu/content/what-open-science-introduction
Open Data
Datasets become publicly
available to others
Problem: How do you give
credit to data sharers?
What Can be Considered Research Data?
“…recorded factual material commonly accepted in the scientific
community as necessary to validate research findings” OMB Circ. A-110
• Datasets: physical world, human subject
• Images
• Samples
• Genetic material
• Software
• Field notes
• … many more
Discovery
• Important for depositing and accessing data
• Data repositories
• Institutional: e.g., U. of Michigan’s ICPSR (https://www.icpsr.umich.edu/icpsrweb/)
• Government: NIH
(https://www.nlm.nih.gov/NIHbmic/nih_data_sharing_repositories.html)
• Registry of Research Data Repositories (www.re3data.org/)
• Data citation sources
• Clarivate Analytics Data Citation Index -
indexes > 300 repositories
• DataCite - leading open data initiatives
(datacite.org)
Open
• Data sharers/providers & users need to understand acceptable data usage
• Federal funding mandates & high-profile journals
since 2003 since 2011
• Creative Commons licenses may dictate acceptable usage
• See Open Data Handbook (http://opendatahandbook.org/)
Quality
• Caution
• Datasets in repositories may not be refereed
• Data may not be appropriately documented
• Data journals provide some quality control through peer review
• Trust judgment, such as validity of data, is important for data reusers
• See FOSTER website for examples
(https://www.fosteropenscience.eu/foster-taxonomy/open-data-journals)
Reuse
• Challenges to date
• Scalability, granularity
• Infrastructure
• Dynamics: frequent updates, evolving data
• Qualitative data sharing/reuse
• Standardization is not a current practice
• Most data repositories only require simple metadata for data description
• Many repositories do not provide DOIs
Credit
• The need for data citation
• Data scooping, planarization, misuse
• Insufficient credit to data authors
• Assign credit, document evidence, support discovery
• Issues with data citation
• Inconsistent practice
• Invisible citations
• Courtesy authorship
Why Data Citation is Important
• Current status
• Indexers (Web of Science, Scopus, Google Scholar) currently lack support for data
citation
• New “data and software availability” section in some journals (e.g., F1000)
• Research studies on data citation
• 69% increase in bib. citations when description of data is shared (Piwowar et al.,
2007)
• Informal data citation is more widely found than formal data sharing (Park &
Wolfram, 2017)
Our Studies on Data Citation
(Park & Wolfram, 2017; Park, You & Wolfram, Accepted)
• We examined sets of full text articles in biomedical disciplines to
determine prevalence of formal & informal data citation
• Key findings
• Data citation is most common in biomedical fields
• Informal data citation is far more common than formal citation
• Authors are more likely to informally cite datasets outside of the references
• Data citation indexing services don’t pick these up
• Self-citation is somewhat common
Some Examples
• Example of formal citation
• Examples of informal data citation for sharing and reuse
Where are Authors Acknowledging Data?
Citing articles Total citations
Data reuse Main text 29
References 17
Supplementary information 16
Acknowledgment 4
Data sharing Main text 173
References 71
Supplementary information 60
Acknowledgment 12
Formal
Formal
Recommendations for Best Practices: General
Need for standardized approaches for citation
• DataCite, W3C PROV, DC, or W3C DCAT
• Metadata: data name, primary author/contributors (name and ORCID), DOI or
other unique and persistent identifier, and location where the data has been
published/archived
Data citation sources need to be more comprehensive
• Need broader coverage of data repositories
• Granularity of sources
Recommendations for Best Practices: Authors
Authors need to be encouraged to share their data
• Rely on repositories that are indexed by citation databases
(Web of Science, master data repository list, >300 indexed repositories
http://wokinfo.com/products_tools/multidisciplinary/dci/repositories/search/ )
• Use repositories that provide DOIs to promote discovery & credit
(e.g., zenodo)
Authors need to be familiar with data citation practices
• Formally cite the data sources you use, and not just in passing
(bibliographic reference, identifier, link)
Journals need to get on board to encourage author data citation
• Journal policies to require formal data citation
Elements of Data Citation (ICPSR)
Minimum elements required for dataset identification and retrieval.
Fewer or additional elements may be requested by author guidelines or style manuals.
• Author: Name(s) of individuals or entities responsible for the creation of the dataset.
• Date of Publication: Year the dataset was published or disseminated.
• Title: Complete title of the dataset, including the edition or version number
• Publisher and/or Distributor: Organizational entity that makes the dataset available
by archiving, producing, publishing, and/or distributing the dataset.
• Electronic Location or Identifier: Web address or unique, persistent, global identifier
used to locate the dataset (such as a DOI). Append the date retrieved if the title and
locator are not specific to the exact instance of the data you used.
https://www.icpsr.umich.edu/files/ICPSR/enewsletters/iassist.html
Style Guidelines
• APA (6th edition)
• Smith, T.W., Marsden, P.V., & Hout, M. (2011). General social survey, 1972-2010 cumulative
file(ICPSR31521-v1) [data file and codebook]. Chicago, IL: National Opinion Research Center
[producer]. Ann Arbor, MI: Inter-university Consortium for Political and Social Research
[distributor]. doi: 10.3886/ICPSR31521.v1
• MLA (7th edition)
• Smith, Tom W., Peter V. Marsden, and Michael Hout. General Social Survey, 1972-2010 Cumulative
File. ICPSR31521-v1. Chicago, IL: National Opinion Research Center [producer]. Ann Arbor, MI:
Inter-university Consortium for Political and Social Research [distributor], 2011. Web. 23 Jan 2012.
doi:10.3886/ICPSR31521.v1
• Chicago (16th edition) (author-date)
• Smith, Tom W., Peter V. Marsden, and Michael Hout. 2011. General Social Survey, 1972-2010
Cumulative File. ICPSR31521-v1. Chicago, IL: National Opinion Research Center. Distributed by Ann
Arbor, MI: Inter-university Consortium for Political and Social Research.
doi:10.3886/ICPSR31521.v1
https://www.icpsr.umich.edu/files/ICPSR/enewsletters/iassist.html
References
• Christenhusz, G. M., Devriendt, K., & Dierickx, K. (2013). To tell or not to tell? A
systematic review of ethical reflections on incidental findings arising in genetics contexts.
European Journal of Human Genetics, 21, 248-255.
• Park, H., & Wolfram, D. (2017). An examination of research data sharing and re-use:
implications for data citation practice. Scientometrics, 111(1), 443-461.
• Park, H., You, S., & Wolfram, D. (Accepted). Informal data citation for data sharing and re-
use is more common than formal data citation in biomedical fields. Journal of the
Association for Information Science and Technology.
• Piwowar, H. A., Day, R. S., & Fridsma, D. B. (2007). Sharing detailed research data is
associated with increased citation rate. PloS one, 2(3), e308.
• Tucker, K., Branson, J., Dilleen, M., Hollis, S., Loughlin, P., Nixon, M. J., & Williams, Z.
(2016). Protecting patient privacy when sharing patient-level data from clinical trials.
BMC Medical Research Methodology, 16(1), 77.
Q u e s t i o n s
Program director: Katja Reuter, PhD
Email: katja.reuter@usc.edu
Twitter: @dmsci
Next Digital Scholar Webinar
I n f o r m a t i o n a b o u t
t h e p r o g r a m
http://sc-ctsi.org/digital-scholar/
May 2nd, 2018 | 12-1PM PST
Topic: Leveraging Medical Health Record Data for Identifying Research Study
Participants: Practical Guidance on Using Clinical Research Informatics
Applications in Your Research
Speakers: Juan Espinoza, MD, FAAP, Assistant Professor of Clinical
Pediatrics, Keck School of Medicine of USC, Physician and Director of Clinical
Research Informatics, Children’s Hospital Los Angeles; and Mark Abajian,
Applications Lead, Clinical Research Informatics, SC CTSI
Register at: https://bit.ly/2GvT8sa

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Research Data Sharing and Re-Use: Practical Implications for Data Citation Practice that Benefit Researchers

  • 1. Digital Scholar Webinar April 4, 2018 Hosted by the Southern California Clinical and Translational Science Institute (SC CTSI) University of Southern California (USC) and Children’s Hospital Los Angeles (CHLA)
  • 2. Katja Reuter, PhD, Director of the Digital Scholar Program About Today’s Session
  • 3. Research Data Sharing and Re-Use Practical Implications for Data Citation Practice that Benefit Researchers
  • 4. Important Aspects of Data Sharing and Re-Use
  • 5. But how should one go about this exactly?
  • 6. Today’s Learning Objectives  Describe the characteristics and strengths of digital forms of data sharing, reuse, and citation  Describe methods to implement data citation practice that benefit your research  Describe potential weaknesses of digital research data sharing practices
  • 7. Hyoungjoo Park Today’s Speakers Hyoungjoo Park, PhD candidate, School of Information Studies, University of Wisconsin- Milwaukee AND Dietmar Wolfram, PhD, Professor, School of Information Studies, University of Wisconsin-Milwaukee Dietmar Wolfram
  • 9. Questions: Please use the Q&A Feature 1. Click on the tab here to access Q&A 2. Ask and post question here 1 2
  • 10. Research Data Sharing and Re-Use: Practical Implications for Researchers Hyoungjoo Park Dietmar Wolfram School of Information Studies University of Wisconsin-Milwaukee Presentation for Digital Scholar Webinar series on May 2nd
  • 11. Introduction: The Open Science Movement From the FOSTER Project: https://www.fosteropenscience.eu/content/what-open-science-introduction
  • 12. Introduction: The Open Science Movement From the FOSTER Project: https://www.fosteropenscience.eu/content/what-open-science-introduction Open Data Datasets become publicly available to others Problem: How do you give credit to data sharers?
  • 13. What Can be Considered Research Data? “…recorded factual material commonly accepted in the scientific community as necessary to validate research findings” OMB Circ. A-110 • Datasets: physical world, human subject • Images • Samples • Genetic material • Software • Field notes • … many more
  • 14. Discovery • Important for depositing and accessing data • Data repositories • Institutional: e.g., U. of Michigan’s ICPSR (https://www.icpsr.umich.edu/icpsrweb/) • Government: NIH (https://www.nlm.nih.gov/NIHbmic/nih_data_sharing_repositories.html) • Registry of Research Data Repositories (www.re3data.org/) • Data citation sources • Clarivate Analytics Data Citation Index - indexes > 300 repositories • DataCite - leading open data initiatives (datacite.org)
  • 15. Open • Data sharers/providers & users need to understand acceptable data usage • Federal funding mandates & high-profile journals since 2003 since 2011 • Creative Commons licenses may dictate acceptable usage • See Open Data Handbook (http://opendatahandbook.org/)
  • 16. Quality • Caution • Datasets in repositories may not be refereed • Data may not be appropriately documented • Data journals provide some quality control through peer review • Trust judgment, such as validity of data, is important for data reusers • See FOSTER website for examples (https://www.fosteropenscience.eu/foster-taxonomy/open-data-journals)
  • 17. Reuse • Challenges to date • Scalability, granularity • Infrastructure • Dynamics: frequent updates, evolving data • Qualitative data sharing/reuse • Standardization is not a current practice • Most data repositories only require simple metadata for data description • Many repositories do not provide DOIs
  • 18. Credit • The need for data citation • Data scooping, planarization, misuse • Insufficient credit to data authors • Assign credit, document evidence, support discovery • Issues with data citation • Inconsistent practice • Invisible citations • Courtesy authorship
  • 19. Why Data Citation is Important • Current status • Indexers (Web of Science, Scopus, Google Scholar) currently lack support for data citation • New “data and software availability” section in some journals (e.g., F1000) • Research studies on data citation • 69% increase in bib. citations when description of data is shared (Piwowar et al., 2007) • Informal data citation is more widely found than formal data sharing (Park & Wolfram, 2017)
  • 20. Our Studies on Data Citation (Park & Wolfram, 2017; Park, You & Wolfram, Accepted) • We examined sets of full text articles in biomedical disciplines to determine prevalence of formal & informal data citation • Key findings • Data citation is most common in biomedical fields • Informal data citation is far more common than formal citation • Authors are more likely to informally cite datasets outside of the references • Data citation indexing services don’t pick these up • Self-citation is somewhat common
  • 21. Some Examples • Example of formal citation • Examples of informal data citation for sharing and reuse
  • 22. Where are Authors Acknowledging Data? Citing articles Total citations Data reuse Main text 29 References 17 Supplementary information 16 Acknowledgment 4 Data sharing Main text 173 References 71 Supplementary information 60 Acknowledgment 12 Formal Formal
  • 23. Recommendations for Best Practices: General Need for standardized approaches for citation • DataCite, W3C PROV, DC, or W3C DCAT • Metadata: data name, primary author/contributors (name and ORCID), DOI or other unique and persistent identifier, and location where the data has been published/archived Data citation sources need to be more comprehensive • Need broader coverage of data repositories • Granularity of sources
  • 24. Recommendations for Best Practices: Authors Authors need to be encouraged to share their data • Rely on repositories that are indexed by citation databases (Web of Science, master data repository list, >300 indexed repositories http://wokinfo.com/products_tools/multidisciplinary/dci/repositories/search/ ) • Use repositories that provide DOIs to promote discovery & credit (e.g., zenodo) Authors need to be familiar with data citation practices • Formally cite the data sources you use, and not just in passing (bibliographic reference, identifier, link) Journals need to get on board to encourage author data citation • Journal policies to require formal data citation
  • 25. Elements of Data Citation (ICPSR) Minimum elements required for dataset identification and retrieval. Fewer or additional elements may be requested by author guidelines or style manuals. • Author: Name(s) of individuals or entities responsible for the creation of the dataset. • Date of Publication: Year the dataset was published or disseminated. • Title: Complete title of the dataset, including the edition or version number • Publisher and/or Distributor: Organizational entity that makes the dataset available by archiving, producing, publishing, and/or distributing the dataset. • Electronic Location or Identifier: Web address or unique, persistent, global identifier used to locate the dataset (such as a DOI). Append the date retrieved if the title and locator are not specific to the exact instance of the data you used. https://www.icpsr.umich.edu/files/ICPSR/enewsletters/iassist.html
  • 26. Style Guidelines • APA (6th edition) • Smith, T.W., Marsden, P.V., & Hout, M. (2011). General social survey, 1972-2010 cumulative file(ICPSR31521-v1) [data file and codebook]. Chicago, IL: National Opinion Research Center [producer]. Ann Arbor, MI: Inter-university Consortium for Political and Social Research [distributor]. doi: 10.3886/ICPSR31521.v1 • MLA (7th edition) • Smith, Tom W., Peter V. Marsden, and Michael Hout. General Social Survey, 1972-2010 Cumulative File. ICPSR31521-v1. Chicago, IL: National Opinion Research Center [producer]. Ann Arbor, MI: Inter-university Consortium for Political and Social Research [distributor], 2011. Web. 23 Jan 2012. doi:10.3886/ICPSR31521.v1 • Chicago (16th edition) (author-date) • Smith, Tom W., Peter V. Marsden, and Michael Hout. 2011. General Social Survey, 1972-2010 Cumulative File. ICPSR31521-v1. Chicago, IL: National Opinion Research Center. Distributed by Ann Arbor, MI: Inter-university Consortium for Political and Social Research. doi:10.3886/ICPSR31521.v1 https://www.icpsr.umich.edu/files/ICPSR/enewsletters/iassist.html
  • 27. References • Christenhusz, G. M., Devriendt, K., & Dierickx, K. (2013). To tell or not to tell? A systematic review of ethical reflections on incidental findings arising in genetics contexts. European Journal of Human Genetics, 21, 248-255. • Park, H., & Wolfram, D. (2017). An examination of research data sharing and re-use: implications for data citation practice. Scientometrics, 111(1), 443-461. • Park, H., You, S., & Wolfram, D. (Accepted). Informal data citation for data sharing and re- use is more common than formal data citation in biomedical fields. Journal of the Association for Information Science and Technology. • Piwowar, H. A., Day, R. S., & Fridsma, D. B. (2007). Sharing detailed research data is associated with increased citation rate. PloS one, 2(3), e308. • Tucker, K., Branson, J., Dilleen, M., Hollis, S., Loughlin, P., Nixon, M. J., & Williams, Z. (2016). Protecting patient privacy when sharing patient-level data from clinical trials. BMC Medical Research Methodology, 16(1), 77.
  • 28. Q u e s t i o n s Program director: Katja Reuter, PhD Email: katja.reuter@usc.edu Twitter: @dmsci Next Digital Scholar Webinar I n f o r m a t i o n a b o u t t h e p r o g r a m http://sc-ctsi.org/digital-scholar/ May 2nd, 2018 | 12-1PM PST Topic: Leveraging Medical Health Record Data for Identifying Research Study Participants: Practical Guidance on Using Clinical Research Informatics Applications in Your Research Speakers: Juan Espinoza, MD, FAAP, Assistant Professor of Clinical Pediatrics, Keck School of Medicine of USC, Physician and Director of Clinical Research Informatics, Children’s Hospital Los Angeles; and Mark Abajian, Applications Lead, Clinical Research Informatics, SC CTSI Register at: https://bit.ly/2GvT8sa