A network of investigator networks in human genome epidemiology.

نویسندگان

  • John P A Ioannidis
  • Jonine Bernstein
  • Paolo Boffetta
  • John Danesh
  • Siobhan Dolan
  • Patricia Hartge
  • David Hunter
  • Peter Inskip
  • Marjo-Riitta Jarvelin
  • Julian Little
  • Demetrius M Maraganore
  • Julia A Newton Bishop
  • Thomas R O'Brien
  • Gloria Petersen
  • Elio Riboli
  • Daniela Seminara
  • Emanuela Taioli
  • André G Uitterlinden
  • Paolo Vineis
  • Deborah M Winn
  • Georgia Salanti
  • Julian P T Higgins
  • Muin J Khoury
چکیده

The task of identifying genetic determinants for complex, multigenetic diseases is hampered by small studies, publication and reporting biases, and lack of common standards worldwide. The authors propose the creation of a network of networks that include groups of investigators collecting data for human genome epidemiology research. Twenty-three networks of investigators addressing specific diseases or research topics and representing several hundreds of teams have already joined this initiative. For each field, the authors are currently creating a core registry of teams already participating in the respective network. A wider international registry will include all other teams also working in the same field. Independent investigators are invited to join the registries and existing networks and to join forces in creating additional ones as needed. The network of networks aims to register these networks, teams, and investigators; be a resource for information about or connections to the many networks; offer methodological support; promote sound design and standardization of analytical practices; generate inclusive overviews of fields at large; facilitate rapid confirmation of findings; and avoid duplication of effort.

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عنوان ژورنال:
  • American journal of epidemiology

دوره 162 4  شماره 

صفحات  -

تاریخ انتشار 2005