TY - JOUR
T1 - Unraveling the hemolytic toxicity tapestry of peptides using chemical space complex networks
AU - Castillo-Mendieta, Kevin
AU - Agüero-Chapin, Guillermin
AU - Mora, José R.
AU - Pérez, Noel
AU - Contreras-Torres, Ernesto
AU - Valdes-Martini, José R.
AU - Martinez-Rios, Felix
AU - Marrero-Ponce, Yovani
N1 - Publisher Copyright:
© The Author(s) 2024. Published by Oxford University Press on behalf of the Society of Toxicology. All rights reserved.
PY - 2024/12/1
Y1 - 2024/12/1
N2 - Peptides have emerged as promising therapeutic agents. However, their potential is hindered by hemotoxicity. Understanding the hemotoxicity of peptides is crucial for developing safe and effective peptide-based therapeutics. Here, we employed chemical space complex networks (CSNs) to unravel the hemotoxicity tapestry of peptides. CSNs are powerful tools for visualizing and analyzing the relationships between peptides based on their physicochemical properties and structural features. We constructed CSNs from the StarPepDB database, encompassing 2,004 hemolytic peptides, and explored the impact of seven different (dis)similarity measures on network topology and cluster (communities) distribution. Our findings revealed that each CSN extracts orthogonal information, enhancing the motif discovery and enrichment process. We identified 12 consensus hemolytic motifs, whose amino acid composition unveiled a high abundance of lysine, leucine, and valine residues, whereas aspartic acid, methionine, histidine, asparagine, and glutamine were depleted. Additionally, physicochemical properties were used to characterize clusters/communities of hemolytic peptides. To predict hemolytic activity directly from peptide sequences, we constructed multi-query similarity searching models, which outperformed cutting-edge machine learning-based models, demonstrating robust hemotoxicity prediction capabilities. Overall, this novel in silico approach uses complex network science as its central strategy to develop robust model classifiers, characterize the chemical space, and discover new motifs from hemolytic peptides. This will help to enhance the design/selection of peptides with potential therapeutic activity and low toxicity.
AB - Peptides have emerged as promising therapeutic agents. However, their potential is hindered by hemotoxicity. Understanding the hemotoxicity of peptides is crucial for developing safe and effective peptide-based therapeutics. Here, we employed chemical space complex networks (CSNs) to unravel the hemotoxicity tapestry of peptides. CSNs are powerful tools for visualizing and analyzing the relationships between peptides based on their physicochemical properties and structural features. We constructed CSNs from the StarPepDB database, encompassing 2,004 hemolytic peptides, and explored the impact of seven different (dis)similarity measures on network topology and cluster (communities) distribution. Our findings revealed that each CSN extracts orthogonal information, enhancing the motif discovery and enrichment process. We identified 12 consensus hemolytic motifs, whose amino acid composition unveiled a high abundance of lysine, leucine, and valine residues, whereas aspartic acid, methionine, histidine, asparagine, and glutamine were depleted. Additionally, physicochemical properties were used to characterize clusters/communities of hemolytic peptides. To predict hemolytic activity directly from peptide sequences, we constructed multi-query similarity searching models, which outperformed cutting-edge machine learning-based models, demonstrating robust hemotoxicity prediction capabilities. Overall, this novel in silico approach uses complex network science as its central strategy to develop robust model classifiers, characterize the chemical space, and discover new motifs from hemolytic peptides. This will help to enhance the design/selection of peptides with potential therapeutic activity and low toxicity.
KW - chemical space complex networks
KW - drug discovery
KW - hemolytic peptides
KW - motif discovery
KW - multiple sequence alignment
KW - similarity searching model
KW - StarPep toolbox
UR - http://www.scopus.com/inward/record.url?scp=85210999107&partnerID=8YFLogxK
U2 - 10.1093/toxsci/kfae115
DO - 10.1093/toxsci/kfae115
M3 - Artículo
C2 - 39254655
AN - SCOPUS:85210999107
SN - 1096-6080
VL - 202
SP - 236
EP - 249
JO - Toxicological Sciences
JF - Toxicological Sciences
IS - 2
ER -