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Making sense out of massive data by going beyond differential expression

Author(s)
Schmid, Patrick Raphael; Palmer, Nathan Patrick; Kohane, Isaac; Berger, Bonnie
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Abstract
With the rapid growth of publicly available high-throughput transcriptomic data, there is increasing recognition that large sets of such data can be mined to better understand disease states and mechanisms. Prior gene expression analyses, both large and small, have been dichotomous in nature, in which phenotypes are compared using clearly defined controls. Such approaches may require arbitrary decisions about what are considered “normal” phenotypes, and what each phenotype should be compared to. Instead, we adopt a holistic approach in which we characterize phenotypes in the context of a myriad of tissues and diseases. We introduce scalable methods that associate expression patterns to phenotypes in order both to assign phenotype labels to new expression samples and to select phenotypically meaningful gene signatures. By using a nonparametric statistical approach, we identify signatures that are more precise than those from existing approaches and accurately reveal biological processes that are hidden in case vs. control studies. Employing a comprehensive perspective on expression, we show how metastasized tumor samples localize in the vicinity of the primary site counterparts and are overenriched for those phenotype labels. We find that our approach provides insights into the biological processes that underlie differences between tissues and diseases beyond those identified by traditional differential expression analyses. Finally, we provide an online resource (http://concordia.csail.mit.edu) for mapping users’ gene expression samples onto the expression landscape of tissue and disease.
Date issued
2012-03
URI
http://hdl.handle.net/1721.1/74658
Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science; Massachusetts Institute of Technology. Department of Mathematics
Journal
Proceedings of the National Academy of Sciences
Publisher
National Academy of Sciences
Citation
Schmid, P. R. et al. “Making Sense Out of Massive Data by Going Beyond Differential Expression.” Proceedings of the National Academy of Sciences 109.15 (2012): 5594–5599. ©2012 by the National Academy of Sciences
Version: Final published version
ISSN
0027-8424
1091-6490

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