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Using activation status of signaling pathways as mechanism-based biomarkers to predict drug sensitivity.


ABSTRACT: Many complex traits, as drug response, are associated with changes in biological pathways rather than being caused by single gene alterations. Here, a predictive framework is presented in which gene expression data are recoded into activity statuses of signal transduction circuits (sub-pathways within signaling pathways that connect receptor proteins to final effector proteins that trigger cell actions). Such activity values are used as features by a prediction algorithm which can efficiently predict a continuous variable such as the IC50 value. The main advantage of this prediction method is that the features selected by the predictor, the signaling circuits, are themselves rich-informative, mechanism-based biomarkers which provide insight into or drug molecular mechanisms of action (MoA).

SUBMITTER: Amadoz A 

PROVIDER: S-EPMC4683444 | biostudies-literature | 2015 Dec

REPOSITORIES: biostudies-literature

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Using activation status of signaling pathways as mechanism-based biomarkers to predict drug sensitivity.

Amadoz Alicia A   Sebastian-Leon Patricia P   Vidal Enrique E   Salavert Francisco F   Dopazo Joaquin J  

Scientific reports 20151218


Many complex traits, as drug response, are associated with changes in biological pathways rather than being caused by single gene alterations. Here, a predictive framework is presented in which gene expression data are recoded into activity statuses of signal transduction circuits (sub-pathways within signaling pathways that connect receptor proteins to final effector proteins that trigger cell actions). Such activity values are used as features by a prediction algorithm which can efficiently pr  ...[more]

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