Identifying Unintentional Effects Of Medication Using Statistical Genetics Analyses Of Large-scale Genetic And Genomic Data
Funder
National Health and Medical Research Council
Funding Amount
$251,441.00
Summary
An increasing number of studies have highlighted unknown adverse effects of medication, for example, use of statins to lower cholesterol with increased risk of type 2 diabetes. The gold standard approach to confirm these effects is randomised control trials, which may not always be feasible or ethical, and are very expensive. This project aims to apply innovative statistical genetics approaches to (genetic and genomic) 'big-data' to predict unknown effects of commonly prescribed medications.
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