? We propose to develop a cross-disciplinary NIDDK educational program in Computational Applications in Diabetes and Endocrinology that integrates quantitative and computational strategies with diabetes and endocrine research in undergraduate, graduate, and postgraduate curricula at the University of Virginia (UVA). Development and implementation of an undergraduate summer research experience will be assisted by three consultants - undergraduate math and biology faculty at Sweet Briar College (SBC; a small, technologically-oriented undergraduate women's college near UVA) with whom the program directors have a productive, long-standing relationship re: educational development activities. The goal is a unique, innovative, curriculum-driven program that creates educational opportunities to attract students and fellows to careers in biomedical diabetes/endocrine research, with particular emphasis on quantitative applications. In this way, we hope to target historically under-represented disciplines in biomedical research in diabetes and endocrinology (math, stats, engr, comp sci, etc.). ? A broad array of independently-funded projects in diabetes/endocrine research at UVA [spanning a range of hierarchical levels of organization: (i) sub-cellular/cellular; (ii) hormonal-patterning; (iii) endocrine-network; (iv) human, macroscopic; and (v) biobehavioral] will serve as content basis for the educational modules developed in this program. Students will derive unique benefit from attempts to replicate challenges presented by contemporary research, thereby providing skills needed to transition from undergraduate classroom to graduate education to professional career and beyond. ? The instructional format will be modular, based on individual diabetes/endocrine research projects/questions. Tangible deliverables we propose to develop: (i) undergraduate research experience modules with problems sets, laboratory and project activities, and instructor lesson plans; (ii) advanced, graduate-level textbook, """"""""Quantifying Diabetes: Data Analysis and Modeling Methods for Diabetes Research and Clinical Practice;"""""""" (iii) corresponding interactive CDs; and (iv) interactive web site providing links between textbook/CD content and research projects, and updated tutorial materials. Eventually, we plan to offer formal degree subspecializations in Biomathematics (BS/MS) and Computational Diabetes and Endocrinology (MS/PhD) ? ?

Agency
National Institute of Health (NIH)
Institute
National Institute of Diabetes and Digestive and Kidney Diseases (NIDDK)
Type
Education Projects (R25)
Project #
1R25DK064122-01
Application #
6600762
Study Section
Diabetes, Endocrinology and Metabolic Diseases B Subcommittee (DDK)
Program Officer
Hyde, James F
Project Start
2003-05-01
Project End
2008-04-30
Budget Start
2003-05-01
Budget End
2004-04-30
Support Year
1
Fiscal Year
2003
Total Cost
$107,118
Indirect Cost
Name
University of Virginia
Department
Internal Medicine/Medicine
Type
Schools of Medicine
DUNS #
065391526
City
Charlottesville
State
VA
Country
United States
Zip Code
22904
Johnson, Michael L; Veldhuis, Paula P; Grimmichova, Tereza et al. (2010) Validation of a deconvolution procedure (AutoDecon) for identification and characterization of fasting insulin secretory bursts. J Diabetes Sci Technol 4:1205-13
Robeva, Raina (2009) Desegregating undergraduate mathematics and biology--interdisciplinary instruction with emphasis on ongoing biomedical research. Methods Enzymol 454:305-21
Benitez, Patrick L; Kamimori, Gary H; Balkin, Thomas J et al. (2009) Modeling fatigue over sleep deprivation, circadian rhythm, and caffeine with a minimal performance inhibitor model. Methods Enzymol 454:405-21
Evans, William S; Farhy, Leon S; Johnson, Michael L (2009) Biomathematical modeling of pulsatile hormone secretion: a historical perspective. Methods Enzymol 454:345-66
Johnson, Michael L; Veldhuis, Paula P; Evans, William S (2009) Signal-response modeling of partial hormone feedback networks. J Diabetes Sci Technol 3:34-43
Johnson, Michael L; Pipes, Lenore; Veldhuis, Paula P et al. (2009) AutoDecon: a robust numerical method for the quantification of pulsatile events. Methods Enzymol 454:367-404
Johnson, Michael L; Pipes, Lenore; Veldhuis, Paula P et al. (2008) AutoDecon, a deconvolution algorithm for identification and characterization of luteinizing hormone secretory bursts: description and validation using synthetic data. Anal Biochem 381:8-17
Farhy, Leon S; Du, Zhongmin; Zeng, Qiang et al. (2008) Amplification of pulsatile glucagon counterregulation by switch-off of alpha-cell-suppressing signals in streptozotocin-treated rats. Am J Physiol Endocrinol Metab 295:E575-85
Chan, Jean L; Williams, Catherine J; Raciti, Patricia et al. (2008) Leptin does not mediate short-term fasting-induced changes in growth hormone pulsatility but increases IGF-I in leptin deficiency states. J Clin Endocrinol Metab 93:2819-27
Johnson, Michael L (2008) Nonlinear least-squares fitting methods. Methods Cell Biol 84:781-805

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