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High-Affinity Peptides for Target Protein Screened in Ultralarge Virtual Libraries
by
Zhou, Xiaohong
, Li, Ruixue
, Xue, Boyuan
, Cheng, Zhao
2024
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High-Affinity Peptides for Target Protein Screened in Ultralarge Virtual Libraries
by
Zhou, Xiaohong
, Li, Ruixue
, Xue, Boyuan
, Cheng, Zhao
2024
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High-Affinity Peptides for Target Protein Screened in Ultralarge Virtual Libraries
Journal Article
High-Affinity Peptides for Target Protein Screened in Ultralarge Virtual Libraries
2024
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Overview
High-throughput virtual screening (HTVS) has emerged as a pivotal strategy for identifying high-affinity peptides targeting functional proteins, which are crucial for diagnostic and therapeutic applications. In the HTVS of peptides, expanding the library capacity to enhance peptide sequence diversity, thereby screening out excellent affinity peptide candidates, remains a significant challenge. This study presents a de novo design strategy that leverages directed mutation driven HTVS to evolve vast virtual libraries and screen peptides with ultrahigh affinities for various target proteins. Utilizing a computer-generated library of 104 random 15-mer peptide scaffolds, we employed a self-developed algorithm for parallelized HTVS with Autodock Vina. The top 1% of designs underwent random mutations at a rate of 20% for six generations, theoretically expanding the library to 1014 members. This approach was applied to various protein targets, including a tumor marker (alpha fetoprotein, AFP) and virus surface proteins (SARS-CoV-2 RBD and norovirus P-domain). Starting from the same 104 random 15-mer peptide library, peptides with high affinities in the nanomolar range for three protein targets were successfully identified. The energy-saving and high-efficient design strategy presents new opportunities for the cost-effective development of more effective high-affinity peptides for various environmental and health applications.
Publisher
American Chemical Society
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