| Literature DB >> 26119906 |
Yen-Chu Lin1, Yi Fan Lim1, Erica Russo1, Petra Schneider1, Lea Bolliger1, Adriana Edenharter1, Karl-Heinz Altmann1, Cornelia Halin1, Jan A Hiss1, Gisbert Schneider2.
Abstract
The computer-assisted design and optimization of peptides with selective cancer cell killing activity was achieved through merging the features of anticancer peptides, cell-penetrating peptides, and tumor-homing peptides. Machine-learning classifiers identified candidate peptides that possess the predicted properties. Starting from a template amino acid sequence, peptide cytotoxicity against a range of cancer cell lines was systematically optimized while minimizing the effects on primary human endothelial cells. The computer-generated sequences featured improved cancer-cell penetration, induced cancer-cell apoptosis, and were enabled a decrease in the cytotoxic concentration of co-administered chemotherapeutic agents in vitro. This study demonstrates the potential of multidimensional machine-learning methods for rapidly obtaining peptides with the desired cellular activities.Entities:
Keywords: cancer; drug discovery; lipid membranes; machine learning; molecular design
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Year: 2015 PMID: 26119906 DOI: 10.1002/anie.201504018
Source DB: PubMed Journal: Angew Chem Int Ed Engl ISSN: 1433-7851 Impact factor: 15.336