Inferring, or 'reverse-engineering', gene networks can be defined as the process of identifying gene interactions from experimental data through computational analysis. Gene expression data from microarrays are typically used for this purpose. Here we compared different reverse-engineering algorithms for which ready-to-use software was available and that had been tested on experimental data sets. We show that reverse-engineering algorithms are indeed able to correctly infer regulatory interactions among genes, at least when one performs perturbation experiments complying with the algorithm requirements. These algorithms are superior to classic clustering algorithms for the purpose of finding regulatory interactions among genes, and, although further improvements are needed, have reached a discreet performance for being practically useful.

How to infer gene networks from expression profiles / Bansal, M; Belcastro, V; Ambesi Impiombato, A.; DI BERNARDO, Diego. - In: MOLECULAR SYSTEMS BIOLOGY. - ISSN 1744-4292. - STAMPA. - 3:(2007), pp. 78-88. [10.1038/msb4100120]

How to infer gene networks from expression profiles

DI BERNARDO, DIEGO
2007

Abstract

Inferring, or 'reverse-engineering', gene networks can be defined as the process of identifying gene interactions from experimental data through computational analysis. Gene expression data from microarrays are typically used for this purpose. Here we compared different reverse-engineering algorithms for which ready-to-use software was available and that had been tested on experimental data sets. We show that reverse-engineering algorithms are indeed able to correctly infer regulatory interactions among genes, at least when one performs perturbation experiments complying with the algorithm requirements. These algorithms are superior to classic clustering algorithms for the purpose of finding regulatory interactions among genes, and, although further improvements are needed, have reached a discreet performance for being practically useful.
2007
How to infer gene networks from expression profiles / Bansal, M; Belcastro, V; Ambesi Impiombato, A.; DI BERNARDO, Diego. - In: MOLECULAR SYSTEMS BIOLOGY. - ISSN 1744-4292. - STAMPA. - 3:(2007), pp. 78-88. [10.1038/msb4100120]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/394405
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