GENETICS Editorial Board Journals Assistant Editor

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GENETICS Editorial Board Journals Assistant Editor Mark Johnston, Editor-in-Chief University of Colorado-Denver Tracey DePellegrin Connelly, Executive Editor Cristy Gelling, GENETICS Editorial Board Journals Assistant Editor CELLULAR GENETICS Audrey Gasch Saunak Sen Joachim Hermisson Bruce Beutler University of Wisconsin-Madison Center for Bioinformatics and Molecular University of Vienna The University of Texas Southwestern Medical Pam Geyer Biostatistics, San Francisco Rasmus Nielsen Center University of Iowa Jay Shendure University of Copenhagen, Centre for Bioinformatics Orna Cohen-Fix Michael Hampsey University of Washington NIDDK, National Institutes of Health Robert Wood Johnson Medical Eric A. Stone Noah Rosenberg Stanford University David Greenstein School-UMDNJ North Carolina State University University of Minnesota Alan Hinnebusch Nengjun Yi Yun S. Song National Institutes of Health University of Alabama at Birmingham University of California, Bob Goldstein Berkeley University of North Carolina, Chapel Hill Ann Hochschild METHODS, TECHNOLOGY, AND Wolfgang Stephan Harvard Medical School Joseph Heitman RESOURCES University of Munich Aaron P. Mitchell Duke University Medical Center Charles Boone Marcy K. Uyenoyama Carnegie Mellon University Danny Lew University of Toronto Duke University Duke University Medical Center Craig S. Pikaard Justin Borevitz Lindi M. Wahl Piali Sengupta Indiana University University of Chicago Western University Brandeis University Eric Selker Oliver Hobert Jeff Wall University of Oregon Columbia University University of California, San Francisco COMPLEX TRAITS Elizabeth A. De Stasio (Primer Editor) GENOME INTEGRITY AND Ann Hochschild Justin Borevitz Harvard Medical School Lawrence University TRANSMISSION University of Chicago Norbert Perrimon Oliver Hobert (Reviews Editor) Sharon E. Bickel Alain Charcosset Harvard Medical School Columbia University Dartmouth College Institut National de la Recherche Jeff Sekelsky H. Allen Orr (Perspectives Editor) Monica Colaiácovo Agronomique University of North Carolina University of Rochester Harvard Medical School Steve Chenoweth Jay Shendure Jasper Rine (Reviews Editor) University of Queensland Nancy Hollingsworth University of Washington University of California, Berkeley Stony Brook University (Reviews Editor) Corbin D. Jones Gary Stormo Michael Turelli The University of North Carolina Andreas Houben Washington University School of Medicine University of California, Davis Leibniz Institute of Plant Genetics Adam S. Wilkins (Perspectives Editor) at Chapel Hill David Threadgill and Crop Plant Research Humboldt University of Berlin David Threadgill North Carolina State University Neil Hunter North Carolina State University Daniel F. Voytas University of California, Davis BOARD OF SENIOR EDITORS Fred van Eeuwijk University of Minnesota Karen Arndt Jac A. Nickoloff Wageningen University University of Pittsburgh Colorado State University EMPIRICAL POPULATION GENETICS Fei Zou Gary A. Churchill Steven J. Sandler Daniel Barbash University of North Carolina, Chapel Hill The Jackson Laboratory University of Massachusetts Cornell University Stanley Fields DEVELOPMENTAL AND David Begun Jeff Sekelsky University of Washington BEHAVIORAL GENETICS University of North Carolina University of California, Davis Mark Johnston Hugo J. Bellen James J. Bull University of Colorado-Denver Baylor College of Medicine GENOME AND SYSTEMS BIOLOGY University of Texas at Austin Charles Boone Charles H. Langley Lynn Cooley Deborah Charlesworth University of Toronto University of California, Davis Yale School of Medicine University of Edinburgh Krista Nichols Stanley Fields Robert Duronio Anna Di Rienzo NOAA Fisheries University of Washington University of Chicago University of North Carolina, Chapel Hill Terry R. Magnuson David Largaespada David I. Greenstein Santiago C. González-Martínez University of North Carolina, Chapel Hill University of Minnesota Forest Research Centre (CIFOR-INIA) University of Minnesota Mark Rose Brian P. Lazzaro Marnie Halpern Matthew W. Hahn Princeton University Cornell University Carnegie Institution for Science Indiana University John C. Schimenti Jeffery F. Miller Lynn Jorde Iswar K. Hariharan Cornell University University of California, Los Angeles University of Utah University of California, Berkeley John Wakeley Norbert Perrimon Jeffrey Lawrence Harvard University David Parichy Harvard Medical School University of Pittsburgh University of Washington Enrico G. Petretto Brian P. Lazzaro Scott Poethig GENETICS publishes high quality, original Imperial College London Cornell University University of Pennsylvania research presenting novel findings on a Gary Stormo Leonie C. Moyle range of topics bearing on heredity and Trudi Schüpbach Washington University School Indiana University variation. GENETICS is a peer-edited Princeton University of Medicine Bret Payseur journal—all editorial decisions are made William Sullivan Daniel F. Voytas University of Wisconsin-Madison by the authors’ peers—with a tradition of University of California, Santa Cruz rigorous peer review. Publication is open University of Minnesota Outi Savolainen equally to members and non-members of Meera Sundaram University of Oulu University of Pennsylvania STATISTICAL GENETICS AND the Genetics Society of America. Submit Stephen I. Wright GENOMICS manuscripts at http://submit.genetics.org. Mariana F. Wolfner University of Toronto Cornell University Ina Hoeschele GSA Journals Editorial Office Virginia Polytechnic Institute and State THEORETICAL POPULATION Genetics Society of America GENE EXPRESSION University GENETICS 9650 Rockville Pike James A. Birchler Christina Kendziorski Nick Barton Bethesda, MD 20814-3998 University of Missouri University of Wisconsin, Madison IST Austria Phone: 412-226-5930 Michael Freitag Chiara Sabatti Mark Beaumont Fax: 412-226-5931 Oregon State University Stanford University University of Bristol E-mail: [email protected].
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