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Efficient Replication of Over 180 Genetic Associations with Self-Reported Medical Data
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  • Published: 07 June 2011

Efficient Replication of Over 180 Genetic Associations with Self-Reported Medical Data

  • Uta Francke1,
  • Brian Naughton2,
  • Joanna Mountain2,
  • Anne Wojcicki2,
  • Joyce Tung2,
  • Chuong Do2,
  • David Hinds2,
  • Amy Kiefer2,
  • J. Michael Macpherson2,
  • Nicholas Eriksson2 &
  • …
  • Arnab Chowdry2 

Nature Precedings (2011)Cite this article

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Abstract

While the cost and speed of generating genomic data have come down dramatically in recent years, the slow pace of collecting medical data for large cohorts continues to hamper genetic research. Here we evaluate a novel online framework for amassing large amounts of medical information in a recontactable cohort by assessing our ability to replicate genetic associations using these data. Using web-based questionnaires, we gathered self-reported data on 50 medical phenotypes from a generally unselected cohort of over 20,000 genotyped individuals. Of a list of genetic associations curated by NHGRI, we successfully replicated about 75% of the associations that we expected to (based on the number of cases in our cohort and reported odds ratios, and excluding a set of associations with contradictory published evidence). Altogether we replicated over 180 previously reported associations, including many for type 2 diabetes, prostate cancer, cholesterol levels, and multiple sclerosis. We found significant variation across categories of conditions in the percentage of expected associations that we were able to replicate, which may reflect systematic inflation of the effects in some initial reports, or differences across diseases in the likelihood of misdiagnosis or misreport. We also demonstrated that we could improve replication success by taking advantage of our recontactable cohort, offering more in-depth questions to refine self-reported diagnoses. Our data suggests that online collection of self-reported data in a recontactable cohort may be a viable method for both broad and deep phenotyping in large populations.

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Authors and Affiliations

  1. 23andMe, Inc.; Department of Genetics, Stanford University https://www.nature.com/nature

    Uta Francke

  2. 23andMe, Inc. https://www.nature.com/nature

    Brian Naughton, Joanna Mountain, Anne Wojcicki, Joyce Tung, Chuong Do, David Hinds, Amy Kiefer, J. Michael Macpherson, Nicholas Eriksson & Arnab Chowdry

Authors
  1. Uta Francke
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  2. Brian Naughton
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  3. Joanna Mountain
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  4. Anne Wojcicki
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  5. Joyce Tung
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  6. Chuong Do
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  7. David Hinds
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  8. Amy Kiefer
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  9. J. Michael Macpherson
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  10. Nicholas Eriksson
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  11. Arnab Chowdry
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Corresponding author

Correspondence to Joyce Tung.

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Cite this article

Francke, U., Naughton, B., Mountain, J. et al. Efficient Replication of Over 180 Genetic Associations with Self-Reported Medical Data. Nat Prec (2011). https://doi.org/10.1038/npre.2011.6014.2

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  • Received: 07 June 2011

  • Accepted: 07 June 2011

  • Published: 07 June 2011

  • DOI: https://doi.org/10.1038/npre.2011.6014.2

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Keywords

  • replication
  • self-report
  • phenotyping
  • online research
  • genetic association
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