Detection of the Cell Cycle-Regulated Negative Feedback Phosphorylation of Mitogen-Activated Protein Kinases in Breast Carcinoma using Nanofluidic Proteomics

SCIENTIFIC REPORTS(2018)

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Abstract
Mitogen-activated protein kinases (MAPKs) play an important role in the regulation of cell proliferation, oncogenic transformation, and drug resistance. This study examined the capability of nanofluidic proteomics to identify aberrations in the MAPK signaling cascade, monitor its drug response, and guide the rational design of intervention strategies. Specifically, the protein post-translational modification (PTM) profiles of MEK1, MEK2, and ERK1/2 were measured in breast carcinoma and breast cancer cell lines. Nanofluidic proteomics revealed hyper-phosphorylation of MAPKs in breast carcinoma and breast cancer cells treated with kinase inhibitors that interfere with cell cycle regulation, such as dinaciclib, an inhibitor of cyclin-dependent kinases, and rigosertib, an inhibitor of polo-like kinase 1. A pMEK1 (Thr286) phosphor-isoform, which serves as a biomarker of cell cycle-regulated negative feedback phosphorylation in breast cancer cells, was detected in breast carcinoma. Inhibition of the MAPK pathway with dabrafenib, a B-Raf inhibitor, or trametinib, a MEK1/2 inhibitor, suppressed both the positively regulated phosphorylation of MAPKs and the negatively regulated phosphorylation of MEK1. Interestingly, the combinations of dabrafenib and rigosertib or trametinib and rigosertib permitted the suppression of positively regulated MAPK phosphorylation together with the promotion of negatively regulated MEK1 phosphorylation. The effectiveness of protein PTM-guided drug combinations for inhibition of the MAPK pathway remains to be experimentally tested. Via protein PTM profiling, nanofluidic proteomics provides a robust means to detect anomalies in the MAPK signaling cascade, monitor its drug response, and guide the possible design of drug combinations for MAPK pathway-focused targeting.
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Key words
Breast cancer,Diagnostics,Protein–protein interaction networks,Proteomic analysis,Target identification,Science,Humanities and Social Sciences,multidisciplinary
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