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Predicting cell-penetrating peptides using machine learning algorithms and navigating in their chemical space

Ewerton Cristhian Lima de Oliveira, Kauê Santana da Costa, Luiz Patrick Cordeiro Josino, Anderson H. Lima, Claudomiro Sales

2021Scientific Reports117 citationsDOIOpen Access PDF

Abstract

Cell-penetrating peptides (CPPs) are naturally able to cross the lipid bilayer membrane that protects cells. These peptides share common structural and physicochemical properties and show different pharmaceutical applications, among which drug delivery is the most important. Due to their ability to cross the membranes by pulling high-molecular-weight polar molecules, they are termed Trojan horses. In this study, we proposed a machine learning (ML)-based framework named BChemRF-CPPred (beyond chemical rules-based framework for CPP prediction) that uses an artificial neural network, a support vector machine, and a Gaussian process classifier to differentiate CPPs from non-CPPs, using structure- and sequence-based descriptors extracted from PDB and FASTA formats. The performance of our algorithm was evaluated by tenfold cross-validation and compared with those of previously reported prediction tools using an independent dataset. The BChemRF-CPPred satisfactorily identified CPP-like structures using natural and synthetic modified peptide libraries and also obtained better performance than those of previously reported ML-based algorithms, reaching the independent test accuracy of 90.66% (AUC = 0.9365) for PDB, and an accuracy of 86.5% (AUC = 0.9216) for FASTA input. Moreover, our analyses of the CPP chemical space demonstrated that these peptides break some molecular rules related to the prediction of permeability of therapeutic molecules in cell membranes. This is the first comprehensive analysis to predict synthetic and natural CPP structures and to evaluate their chemical space using an ML-based framework. Our algorithm is freely available for academic use at http://comptools.linc.ufpa.br/BChemRF-CPPred .

Topics & Concepts

Chemical spaceArtificial intelligenceComputer scienceProtein Data Bank (RCSB PDB)Support vector machineClassifier (UML)Machine learningArtificial neural networkAlgorithmLeverage (statistics)ChemistryComputational biologyDrug discoveryBiochemistryBiologyAntimicrobial Peptides and ActivitiesRNA Interference and Gene DeliveryRNA and protein synthesis mechanisms