LIBP-Pred: web server for lipid binding proteins using structural network parameters; PDB mining of human cancer biomarkers and drug targets in parasites and bacteria.
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Marcos Gestal | Alejandro Pazos | Cristian R Munteanu | Humberto González-Díaz | Francisco Prado-Prado | Lucian Postelnicu | C. Munteanu | F. Prado-Prado | H. González-Díaz | A. Pazos | M. Gestal | Lucian Postelnicu
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