Virtual Screening of Cathelicidin-Derived Anticancer Peptides and Validation of Their Production in the ProbioticKUB-D18 Using Genome-Scale Metabolic Modeling and Experimental Approaches. | Pepdox
Virtual Screening of Cathelicidin-Derived Anticancer Peptides and Validation of Their Production in the ProbioticKUB-D18 Using Genome-Scale Metabolic Modeling and Experimental Approaches.
International journal of molecular sciences2025PMID: 41155367
Conducted virtual screening of eight cathelicidin-derived peptides for anticancer activity and validated their production in probiotic Lactobacillus using genome-scale metabolic modeling. Combined computational prediction with experimental approaches to identify cathelicidin-derived anticancer peptide candidates.
Abstract
The development of anticancer peptides (ACPs) has emerged as a promising strategy in targeted cancer therapy due to their high specificity and therapeutic potential. Cathelicidin-derived antimicrobial peptides represent a particularly attractive class of ACPs, yet systematic evaluation of their anticancer activity remains limited. In this study, we conducted virtual screening of eight cathelicidin-derived peptides (AL-38, LL-37, RK-31, KS-30, KR-20, FK-16, FK-13, and KR-12) to assess their potential against colon cancer. Among these, LL-37 and FK-16 were identified as the most promising candidates, with LL-37 exhibiting the strongest inhibitory effects on both non-metastatic (HT-29) and metastatic (SW-620) colon cancer cell lines in vitro. To overcome challenges associated with peptide stability and delivery, we employed the probiotic lactic acid bacteriumKUB-D18 as both a biosynthetic platform and delivery vehicle. A genome-scale metabolic model (GEM),TM505, was reconstructed to predict the strain's biosynthetic capacity for ACP production. Model simulations identified trehalose, sucrose, maltose, and cellobiose as optimal carbon sources supporting both high peptide yield and biomass accumulation, which was subsequently confirmed experimentally. Notably,expressing LL-37 achieved a growth rate of 2.16 gDW/L, closely matching the model prediction of 1.93 gDW/L (accuracy 89.69%), while the measured LL-37 concentration (26.96 ± 0.08 µM) aligned with predictions at 90.65% accuracy. The strong concordance between in silico predictions and experimental outcomes underscore the utility of GEM-guided metabolic engineering for optimizing peptide biosynthesis. This integrative approach-combining virtual screening, genome-scale modeling, and experimental validation-provides a robust framework for accelerating ACP discovery. Moreover, our findings highlight the potential of probiotic-based systems as effective delivery platforms for anticancer peptides, offering new avenues for the rational design and production of peptide therapeutics.