Optimizing Experimental Design in Genetics

Optimizing Experimental Design in Genetics

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Article ID: iaor20132837
Volume: 157
Issue: 2
Start Page Number: 520
End Page Number: 532
Publication Date: May 2013
Journal: Journal of Optimization Theory and Applications
Authors: ,
Keywords: heuristics
Abstract:

Researchers in the life sciences (i.e., healthcare and agriculture) commonly use heuristics to process and interpret the vast amount of available DNA sequence data. The application of discrete optimization techniques, such as mixed‐integer programming (MIP), remains largely unexplored and has the potential to transform the field. This paper reports on the successful use of MIP to optimize experimental design in a practical genetics application. More generally, our results illustrate the potential benefits of using MIP for subset selection problems in genetics.

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