TriplEP-CPP: Algorithm for Predicting the Properties of Peptide Sequences

Author:

Serebrennikova Maria12ORCID,Grafskaia Ekaterina1ORCID,Maltsev Dmitriy345ORCID,Ivanova Kseniya126,Bashkirov Pavel26,Kornilov Fedor24,Volynsky Pavel47ORCID,Efremov Roman24ORCID,Bocharov Eduard24ORCID,Lazarev Vassili12

Affiliation:

1. Laboratory of Genetic Engineering, Lopukhin Federal Research and Clinical Center of Physical-Chemical Medicine of Federal Medical Biological Agency, Moscow 119435, Russia

2. Moscow Center for Advanced Studies 20, Kulakova Str., Moscow 123592, Russia

3. Federal Center of Brain Research and Neurotechnologies, Federal Medical Biological Agency, Moscow 117997, Russia

4. Shemyakin-Ovchinnikov Institute of Bioorganic Chemistry, Russian Academy of Sciences, Moscow 117997, Russia

5. Center for Precision Genome Editing and Genetic Technologies for Biomedicine, Pirogov Russian National Research Medical University, Moscow 117997, Russia

6. Research Institute for Systems Biology and Medicine, Moscow 117246, Russia

7. Institute of Cytology, Russian Academy of Sciences, St. Petersburg 194064, Russia

Abstract

Advancements in medicine and pharmacology have led to the development of systems that deliver biologically active molecules inside cells, increasing drug concentrations at target sites. This improves effectiveness and duration of action and reduces side effects on healthy tissues. Cell-penetrating peptides (CPPs) show promise in this area. While traditional medicinal chemistry methods have been used to develop CPPs, machine learning techniques can speed up and reduce costs in the search for new peptides. A predictive algorithm based on machine learning models was created to identify novel CPP sequences using molecular descriptors using a combination of algorithms like k-nearest neighbors, gradient boosting, and random forest. Some potential CPPs were found and tested for cytotoxicity and penetrating ability. A new low-toxicity CPP was discovered from the Rhopilema esculentum venom proteome through this study.

Funder

Russian Science Foundation

Publisher

MDPI AG

Reference35 articles.

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