4.7 Review

Model calibration and uncertainty analysis in signaling networks

Journal

CURRENT OPINION IN BIOTECHNOLOGY
Volume 39, Issue -, Pages 143-149

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.copbio.2016.04.004

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For a long time the biggest challenges in modeling cellular signal transduction networks has been the inference of crucial pathway components and the qualitative description of their interactions. As a result of the emergence of powerful high-throughput experiments, it is now possible to measure data of high temporal and spatial resolution and to analyze signaling dynamics quantitatively. In addition, this increase of high-quality data is the basis for a better understanding of model limitations and their influence on the predictive power of models. We review established approaches in signal transduction network modeling with a focus on ordinary differential equation models as well as related developments in model calibration. As central aspects of the calibration process we discuss possibilities of model adaptation based on data-driven parameter optimization and the concomitant objective of reducing model uncertainties.

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