प्रोटीन की रायः के लिए एक कार्यक्षेत्र


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Smadbeck, J., Peterson, M. B., Khoury, G. A., Taylor, M. S., Floudas, C. A. Protein WISDOM: A Workbench for In silico De novo Design of BioMolecules. J. Vis. Exp. (77), e50476, doi:10.3791/50476 (2013).

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