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Generative -hairpin design using a residue-based physicochemical property landscape

Biophysical Journal. 2025-05; 
Vardhan Satalkar; Gemechis D. Degaga; Wei Li; Yui Tik Pang; Andrew C. McShan; James C. Gumbart; Julie C. Mitchell; Matthew P. Torres
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Peptide Synthesis representative. Peptide synthesis Synthetic peptides were synthesized with N-terminal acetylation and C-terminal amidation to greater than 95% purity by Genscript Biotech. Lyophilized peptides were reconstituted in deionized water and further diluted to desired concentrations in 10 mM phosphate buffer (pH 7). CD 108 ). Solution NMR structure determination of peptides From 1 to 2 mg of peptide ( 95% purity, natural isotopic abundance, chemically synthesized from GenScript) was dissolved in 300 L of 50 mM NaCl, 20 mM sodium phosphate pH 4.86, 10% D 2 O, vortexed, and transferred to a 3-mm NMR tube. The pH was lowered Get A Quote

摘要

De novo peptide design is a new frontier that has broad application potential in the biological and biomedical fields. Most existing models for de novo peptide design are largely based on sequence homology that can be restricted based on evolutionarily derived protein sequences and lack the physicochemical context essential in protein folding. Generative machine learning for de novo peptide design is a promising way to synthesize theoretical data that are based on, but unique from, the observable universe. In this study, we created and tested a custom peptide generative adversarial network intended to design peptide sequences that can fold into the -hairpin secondary structure. This deep neural network model is... More

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