Jacquelyn S. Fetrow Executive Resume Office of the President Work Email: [email protected] Library and Administration Building Office Phone: 610-921-7600 N

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Jacquelyn S. Fetrow Executive Resume Office of the President Work Email: Jfetrow@Albright.Edu Library and Administration Building Office Phone: 610-921-7600 N Jacquelyn S. Fetrow Executive Resume Office of the President Work Email: [email protected] Library and Administration Building Office Phone: 610-921-7600 N. 13th and Bern Streets, P.O. Box 15234 Reading, PA 19612 Current Position: President and Professor of Chemistry June 2017-present Education Ph.D. Biological Chemistry, Penn State, December, 1986 B.S. Biochemistry, Albright College, May, 1982 Professional Experience University of Richmond, Richmond, VA Provost and Vice President for Academic Affairs July 2014-Dec 2016 Professor of Chemistry July 2014-May 2017 Wake Forest University, Winston-Salem, NC Dean, Wake Forest College January 2009-June 2014 Reynolds Professor of Computational Biophysics August 2003-June 2014 Concurrent appointments: Affiliated Faculty, Wake Forest School of Medicine Cancer Center. Department of Biochemistry, Program in Molecular Medicine, Program in Molecular Genetics and Genomics, School of Biomedical Engineering and Science (SBES, joint program between Virginia Tech and Wake Forest) Director, Graduate Track in Structural and Computational Biophysics 2005-2008 GeneFormatics, Inc., San Diego, CA Co-founder, Chief Scientific Officer and Director May 1999-January, 2003 The Scripps Research Institute, La Jolla, CA Associate Professor, Department of Molecular Biology April 1998-May 1999 Visiting Scientist, Department of Molecular Biology (laboratory of Jeffrey Skolnick) January-December 1997 The University at Albany, SUNY, Albany, NY Associate Professor (with tenure), Department of Biological Sciences September 1995-April 1998 Assistant Professor, Department of Biological Sciences January 1990-August 1995 Concurrent/joint appointments: Department of Chemistry, Department of Biomedical Sciences, School of Public Health, Department of Biomedical Science, School of Public Health Postdoctoral Fellowships The Whitehead Institute for Biomedical Research, MIT, Cambridge, MA (Advisor: Peter S. Kim): 1988-1989 The University of Rochester, Rochester, NY Dept of Biochemistry (Advisor: Fred Sherman) 1986-1987 Selected Awards and Honors Penn State Alumni Fellow Award; Albright College Distinguished Alumnus/a Award; Wake Forest Innovative Teaching Award; SUNY Albany Chancellor’s and President’s Awards for Excellence in Teaching Selected Professional Service and Activities Albright College Board of Trustees; Secretary/Treasurer for The Protein Society; Associate Editor for PLoS Computational Biology; Editorial Board for Proteins Structure, Function, Bioinformatics; QuantumBio Board of Directors; regular service as NSF and NIH grant reviewer Grant Awards Funded: During career, over $3M in research funding from: National Institutes of Health, National Science Foundation, American Chemical Society, Arthritis Foundation, internal awards, and others Professional Publications Over 70 peer-reviewed research publications 19 other publications, including invited articles, reviews and book chapters 5 US Patents issued .
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