Inferring evolutionary histories of pathway regulation from transcriptional profiling data
Joshua G. Schraiber, Yulia Mostovoy, Tiffany Y. Hsu, Rachel B. Brem

TL;DR
This paper introduces a new phylogenetic method to infer the evolutionary history of pathway regulation from gene expression data, revealing patterns of constraint and rapid evolution across yeast species.
Contribution
It develops a statistical framework modeling pathway gene expression evolution using inverse gamma distribution and demonstrates its effectiveness with yeast transcriptional data.
Findings
Identified pathways with constrained and accelerated evolution in yeast species.
Validated the method's accuracy through simulations.
Revealed pathway-level expression changes during yeast divergence.
Abstract
One of the outstanding challenges in comparative genomics is to interpret the evolutionary importance of regulatory variation between species. Rigorous molecular evolution-based methods to infer evidence for natural selection from expression data are at a premium in the field, and to date, phylogenetic approaches have not been well-suited to address the question in the small sets of taxa profiled in standard surveys of gene expression. We have developed a strategy to infer evolutionary histories from expression profiles by analyzing suites of genes of common function. In a manner conceptually similar to molecular evolution models in which the evolutionary rates of DNA sequence at multiple loci follow a gamma distribution, we modeled expression of the genes of an \emph{a priori}-defined pathway with rates drawn from an inverse gamma distribution. We then developed a fitting strategy to…
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