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Multi-layered proteomic analyses decode compositional and functional effects of cancer mutations on kinase complexes

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Rapidly increasing availability of genomic data and ensuing identification of disease associated mutations allows for an unbiased insight into genetic drivers of disease development. However, determination of molecular mechanisms by… Click to show full abstract

Rapidly increasing availability of genomic data and ensuing identification of disease associated mutations allows for an unbiased insight into genetic drivers of disease development. However, determination of molecular mechanisms by which individual genomic changes affect biochemical processes remains a major challenge. Here, we develop a multilayered proteomic workflow to explore how genetic lesions modulate the proteome and are translated into molecular phenotypes. Using this workflow we determine how expression of a panel of disease-associated mutations in the Dyrk2 protein kinase alter the composition, topology and activity of this kinase complex as well as the phosphoproteomic state of the cell. The data show that altered protein-protein interactions caused by the mutations are associated with topological changes and affected phosphorylation of known cancer driver proteins, thus linking Dyrk2 mutations with cancer-related biochemical processes. Overall, we discover multiple mutation-specific functionally relevant changes, thus highlighting the extensive plasticity of molecular responses to genetic lesions. Diseases can be associated with various mutations of the same gene, but the molecular consequences of specific mutations remain incompletely understood. Here, the authors present an integrated proteomic workflow to determine the molecular response of cells to different cancer-associated mutations of the kinase Dyrk2.

Keywords: proteomic analyses; layered proteomic; multi layered; cancer; mutations kinase; associated mutations

Journal Title: Nature Communications
Year Published: 2020

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