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Predicting treatment outcome using kinome activity profiling in HER2+ breast cancer biopsies.

Donna O Debets ,
Erik L de Graaf ,
Marte C Liefaard ,
Gabe S Sonke ,
Esther H Lips ,
Anna Ressa ,
Maarten Altelaar

Abstract

In this study, we measured the kinase activity profiles of 32 pre-treatment tumor biopsies of HER2-positive breast cancer patients. The aim of this study was to assess the prognostic potential of kinase activity levels, to identify potential mechanisms of resistance and to predict treatment success of HER2-targeted therapy combined with chemotherapy. Indeed, our system-wide kinase activity analysis allowed us to link kinase activity to treatment response. Overall, high kinase activity in the HER2-pathway was associated with good treatment outcome. We found eleven kinases differentially regulated between treatment outcome groups, including well-known players in therapy resistance, such as p38a, ERK, and FAK, and an unreported one, namely MARK1. Lastly, we defined an optimal signature of four kinases in a multiple logistic regression diagnostic test for prediction of treatment outcome (AUCĀ = 0.926). This kinase signature showed high sensitivity and specificity, indicating its potential as predictive biomarker for treatment success of HER2-targeted therapy.

More about this publication

iScience

Volume 27
Issue nr. 6
Pages 109858
Publication date 21-06-2024

Full text links

Publisher website (DOI) 10.1016/j.isci.2024.109858
Europe PubMed Central 38784015
Pubmed 38784015

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