Posted on by Dr. Francis Collins
It’s estimated that about 10 percent of the world’s population either has type 2 diabetes (T2D) or will develop the disease during their lives . Type 2 diabetes (formerly called “adult-onset”) happens when the body doesn’t produce or use insulin properly, causing glucose levels to rise. While diet and exercise are critical contributory factors to this potentially devastating disease, genetic factors are also important. In fact, over the last decade alone, studies have turned up more than 80 genetic regions that contribute to T2D risk, with much more still to be discovered.
Now, a major international effort, which includes work from my own NIH intramural research laboratory, has published new data that accelerate understanding of how a person’s genetic background contributes to T2D risk. The new study, reported in Nature and unprecedented in its investigative scale and scope, pulled together the largest-ever inventory of DNA sequence changes involved in T2D, and compared their distribution in people from around the world . This “Big Data” strategy has already yielded important new insights into the biology underlying the disease, some of which may yield novel approaches to diabetes treatment and prevention.
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Tags: Accelerating Medicines Partnership, AMP, big data, common variants, diabetes, exome, exome sequencing, fatty liver disease, gene variants, genetic complexity, genetic risk, genetics, genomics, genotype, GoT2D Consortium, GWAS, international collaboration, rare mutations, T2D, T2D-GENES Consortium, TM6SF2, type 2 diabetes, whole genome sequencing