Predicting Metabolic Fluxes Using Gene Expression Differences As Constraints
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Marcel J. T. Reinders | Rogier J. P. van Berlo | Dick de Ridder | Bas Teusink | Pascale A. S. Daran-Lapujade | Jean-Marc Daran | P. Daran-Lapujade | M. Reinders | B. Teusink | J. Daran | D. Ridder | R. V. Berlo
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