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  5. An Integrative Framework Reveals Signaling-to-Transcription Events in Toll-like Receptor Signaling

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Article
English
2017

An Integrative Framework Reveals Signaling-to-Transcription Events in Toll-like Receptor Signaling

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English
2017
Cell Reports
Vol 19 (13)
DOI: 10.1016/j.celrep.2017.06.016

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Akira Shizuo
Akira Shizuo

Osaka University

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Philipp Mertins
Dariusz Przybylski
Nir Yosef
+12 more

Abstract

Building an integrated view of cellular responses to environmental cues remains a fundamental challenge due to the complexity of intracellular networks in mammalian cells. Here, we introduce an integrative biochemical and genetic framework to dissect signal transduction events using multiple data types and, in particular, to unify signaling and transcriptional networks. Using the Toll-like receptor (TLR) system as a model cellular response, we generate multifaceted datasets on physical, enzymatic, and functional interactions and integrate these data to reveal biochemical paths that connect TLR4 signaling to transcription. We define the roles of proximal TLR4 kinases, identify and functionally test two dozen candidate regulators, and demonstrate a role for Ap1ar (encoding the Gadkin protein) and its binding partner, Picalm, potentially linking vesicle transport with pro-inflammatory responses. Our study thus demonstrates how deciphering dynamic cellular responses by integrating datasets on various regulatory layers defines key components and higher-order logic underlying signaling-to-transcription pathways.

How to cite this publication

Philipp Mertins, Dariusz Przybylski, Nir Yosef, Jana Qiao, Karl R. Clauser, Raktima Raychowdhury, Thomas Eisenhaure, Tanja Maritzen, Volker Haucke, Takashi Satoh, Akira Shizuo, Steven A. Carr, Aviv Regev, Nir Hacohen, Nicolas Chevrier (2017). An Integrative Framework Reveals Signaling-to-Transcription Events in Toll-like Receptor Signaling. Cell Reports, 19(13), pp. 2853-2866, DOI: 10.1016/j.celrep.2017.06.016.

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Publication Details

Type

Article

Year

2017

Authors

15

Datasets

0

Total Files

0

Language

English

Journal

Cell Reports

DOI

10.1016/j.celrep.2017.06.016

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