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Physiol. Genomics (September 12, 2006). doi:10.1152/physiolgenomics.00095.2006
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Submitted on May 31, 2006
Accepted on September 7, 2006

Epistemological Issues in Omics and High-Dimensional Biology: Give the People What They Want

Tapan S Mehta1, Stanislav O Zakharkin1, Gary L Gadbury2, and David B. Allison3*

1 Department of Biostatistics, Section on Statistical Genetics, University of Alabama at Birmingham, Birmingham, Alabama, United States
2 Department of Mathematics and Statistics, University of Missouri - Rolla, Rolla, Missouri, United States
3 University of Alabama at Birmingham, Department of Biostatistics, Ryals Public Health, Clinical Nutrition Research Center, Department of Nutrition Sciences, Genetics, Birmingham, Alabama, United States

* To whom correspondence should be addressed. E-mail: dallison{at}uab.edu.

Gene expression microarrays have been the vanguard of new analytic approaches in high-dimensional biology. Draft sequences of several genomes coupled with new technologies allow study of the influences and responses of entire genomes rather than isolated genes. This has opened a new realm of highly dimensional biology where questions involve multiplicity at unprecedented scales: thousands of genetic polymorphisms, gene expression levels, protein measurements, genetic sequences, or any combination of these and their interactions. Such situation demand creative approaches to the processes of inference, estimation, prediction, classification, and study design. Although bench scientists intuitively grasp the need for flexibility in the inferential process, the elaboration of formal supporting statistical frameworks is just at the very beginning. Here, we will discuss some of the unique statistical challenges facing investigators studying high-dimensional biology, describe some approaches being developed by statistical scientists, and offer an epistemological framework for the validation of proffered statistical procedures. A key theme will be the challenge in providing methods that a statistician judges to be sound and a biologist finds informative. The shift from family-wise error rate control to false discovery rate estimation and to assessment of ranking and other forms of stability will be portrayed as illustrative of approaches to this challenge.




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J. L. Burton and G. J. M. Rosa
Physiological genomics special issue on animal functional genomics
Physiol Genomics, December 13, 2006; 28(1): 1 - 4.
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