Parameter Identifiability and Sensitivity Analysis Predict Targets for Enhancement of STAT1 Activity in Pancreatic Cancer and Stellate Cells
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Olaf Wolkenhauer | Katja Rateitschak | Robert Jaster | Felix Winter | Falko Lange | O. Wolkenhauer | R. Jaster | F. Lange | K. Rateitschak | Felix Winter
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