Geometric Interpretation of Gene Expression by Sparse Reconstruction of Transcript Profiles

Prat Y., Fromer M., Linial M., Linial N.

Large-scale data collection technologies have come to play a central role in biological and biomedical research in the last decade. Consequently, it has become a major goal of functional genomics to develop, based on such data, a comprehensive description of the functions and interactions of all genes and proteins in a genome. Most large-scale biological data, including gene expression profiles, are usually represented by a matrix, where n genes are examined in d experiments. Here, we view such data as a set of n points (vectors) in d-dimensional space, each of which represents the profile of a given gene over d different experimental conditions. Many known methods that have yielded meaningful biological insights seek geometric or algebraic features of these vectors.

DOI

10.1007/978-3-642-20036-6_33

Type

Conference paper

Publication Date

2011-01-01T00:00:00+00:00

Volume

6577 LNBI

Pages

355 - 357

Total pages

2

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