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Issue 1037 coverImmunology of Diabetes III Volume 1037 published December 2004
Ann. N.Y. Acad. Sci. 1037: 216–224 (2004). doi: 10.1196/annals.1337.035
Copyright © 2004 by the New York Academy of Sciences
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Articles by PETROVSKY, N.
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Articles by PETROVSKY, N.
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The Power of an Integrated Informatic and Molecular Approach to Type 1 Diabetes Research

NIKOLAI PETROVSKYa,b AND DIEGO SILVAa

aANU Medical School, Australian National University, Canberra, ACT, Australia
bFlinders Medical Centre, Bedford Park, SA, Australia

Address for correspondence: Professor Nikolai Petrovsky, Director, Diabetes and Endocrinology, Flinders Medical Centre, Bedford Park, South Australia, Australia 5042. Voice: +61-413 131635; fax: +61-8-82045987. nikolai.petrovsky{at}anu.edu.au

Recent years have witnessed an explosive growth in available biological data. This includes a tremendous quantity of sequence data (e.g., biological structures, genetic and physical maps, pathways) generated by genome and transcriptome projects focused on humans, mice, and a multitude of other species. Diabetes research stands to greatly benefit from this data, which is distributed across public and private databases and the scientific literature. The increasing quantity and complexity of this biological data necessitates use of novel bioinformatics strategies for its efficient retrieval, analysis, and interpretation. Bioinformatic capability is becoming increasingly indispensable for fast and comprehensive analysis of biological data by diabetes researchers. There is great potential for diabetes scientists and clinicians to take advantage of recent bioinformatics and knowledge discovery developments to radically transform and advance this field of research. This paper will review advances in the field of bioinformatics relevant to diabetes research and preview a new specialty diabetes database, Diaßeta, that we are creating to serve as a central bioinformatic portal for type 1 diabetes research, as well as serving as a public repository for ß cell gene and protein expression data.

Key Words: type 1 diabetes • informatics • computer models • bioinformatics






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