Prediction of Amino Acid Substitutions in ABL1 Protein Leading to Tumor Drug Resistance Based on “Structure-Property” Relationship Classification Models

Author:

Zhuravleva Svetlana I.1,Zadorozhny Anton D.1ORCID,Shilov Boris V.1ORCID,Lagunin Alexey A.12ORCID

Affiliation:

1. Department of Bioinformatics, Pirogov Russian National Research Medical University, 117997 Moscow, Russia

2. Department of Bioinformatics, Institute of Biomedical Chemistry, 119121 Moscow, Russia

Abstract

Drug resistance to anticancer drugs is a serious complication in patients with cancer. Typically, drug resistance occurs due to amino acid substitutions (AAS) in drug target proteins. The study aimed at developing and validating a new approach to the creation of structure-property relationships (SPR) classification models to predict AASs leading to drug resistance to inhibitors of tyrosine-protein kinase ABL1. The approach was based on the representation of AASs as peptides described in terms of structural formulas. The data on drug-resistant and non-resistant variants of AAS for two isoforms of ABL1 were extracted from the COSMIC database. The given training sets (approximately 700 missense variants) were used for the creation of SPR models in MultiPASS software based on substructural atom-centric multiple neighborhoods of atom (MNA) descriptors for the description of the structural formula of protein fragments and a Bayesian-like algorithm for revealing structure-property relationships. It was found that MNA descriptors of the 6th level and peptides from 11 amino acid residues were the best combination for ABL1 isoform 1 with the prediction accuracy (AUC) of resistance to imatinib (0.897) and dasatinib (0.996). For ABL1 isoform 2 (resistance to imatinib), the best combination was MNA descriptors of the 6th level, peptides form 15 amino acids (AUC value was 0.909). The prediction of possible drug-resistant AASs was made for dbSNP and gnomAD data. The six selected most probable imatinib-resistant AASs were additionally validated by molecular modeling and docking, which confirmed the possibility of resistance for the E334V and T392I variants.

Funder

The Program for Basic Research in the Russian Federation for a long-term period

Publisher

MDPI AG

Subject

Paleontology,Space and Planetary Science,General Biochemistry, Genetics and Molecular Biology,Ecology, Evolution, Behavior and Systematics

Reference39 articles.

1. Drug Resistance in Cancer: An Overview;Housman;Cancers,2014

2. Anticancer drug resistance: An update and perspective;Nussinov;Drug Resist. Updates,2021

3. Machine learning applications in genetics and genomics;Libbrecht;Nat. Rev. Genet.,2015

4. Computer prediction of drug resistance mutations in proteins;Cao;Drug Discov. Today,2005

5. Cancer Drug Response Profile scan (CDRscan): A Deep Learning Model that Predicts Drug Effectiveness from Cancer Genomic Signature;Chang;Sci. Rep.,2018

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