English

Partition Decoupling for Multi-gene Analysis of Gene Expression Profiling Data

Quantitative Methods 2015-09-24 v2 Genomics Molecular Networks Computation Machine Learning

Abstract

We present the extention and application of a new unsupervised statistical learning technique--the Partition Decoupling Method--to gene expression data. Because it has the ability to reveal non-linear and non-convex geometries present in the data, the PDM is an improvement over typical gene expression analysis algorithms, permitting a multi-gene analysis that can reveal phenotypic differences even when the individual genes do not exhibit differential expression. Here, we apply the PDM to publicly-available gene expression data sets, and demonstrate that we are able to identify cell types and treatments with higher accuracy than is obtained through other approaches. By applying it in a pathway-by-pathway fashion, we demonstrate how the PDM may be used to find sets of mechanistically-related genes that discriminate phenotypes.

Keywords

Cite

@article{arxiv.1002.3946,
  title  = {Partition Decoupling for Multi-gene Analysis of Gene Expression Profiling Data},
  author = {Rosemary Braun and Gregory Leibon and Scott Pauls and Daniel Rockmore},
  journal= {arXiv preprint arXiv:1002.3946},
  year   = {2015}
}

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Revised

R2 v1 2026-06-21T14:49:24.319Z