A Shortcut from Genome to Drug: The Employment of Bioinformatic Tools to Find New Targets for Gastric Cancer Treatment

Author:

Brito Daiane M. S.12ORCID,Lima Odnan G.2,Mesquita Felipe P.2,da Silva Emerson L.2ORCID,de Moraes Maria E. A.2,Burbano Rommel M. R.34ORCID,Montenegro Raquel C.25,Souza Pedro F. N.12ORCID

Affiliation:

1. Department of Biochemistry and Molecular Biology, Federal University of Ceará, Fortaleza 60020-181, Brazil

2. Pharmacogenetics Laboratory, Drug Research and Development Center, Department of Physiology and Pharmacology, Federal University of Ceará, Fortaleza 60430-160, Brazil

3. Department of Biological Sciences, Oncology Research Center, Federal University of Pará, Belém 66073-005, Brazil

4. Molecular Biology Laboratory, Ophir Loyola Hospital, Belém 66063-240, Brazil

5. Red Latinoamericana de Implementación y Validación de Guias Clinicas Farmacogenomicas (RELIVAF), Cyted, 28015 Madrid, Spain

Abstract

Gastric cancer (GC) is a highly heterogeneous, complex disease and the fifth most common cancer worldwide (about 1 million cases and 784,000 deaths worldwide in 2018). GC has a poor prognosis (the 5-year survival rate is less than 20%), but there is an effort to find genes highly expressed during tumor establishment and use the related proteins as targets to find new anticancer molecules. Data were collected from the Gene Expression Omnibus (GEO) bank to obtain three dataset matrices analyzing gastric tumor tissue versus normal gastric tissue and involving microarray analysis performed using the GPL570 platform and different sources. The data were analyzed using the GEPIA tool for differential expression and KMPlot for survival analysis. For more robustness, GC data from the TCGA database were used to corroborate the analysis of data from GEO. The genes found in in silico analysis in both GEO and TCGA were confirmed in several lines of GC cells by RT-qPCR. The AlphaFold Protein Structure Database was used to find the corresponding proteins. Then, a structure-based virtual screening was performed to find molecules, and docking analysis was performed using the DockThor server. Our in silico and RT-qPCR analysis results confirmed the high expression of the AJUBA, CD80 and NOLC1 genes in GC lines. Thus, the corresponding proteins were used in SBVS analysis. There were three molecules, one molecule for each target, MCULE-2386589557-0-6, MCULE-9178344200-0-1 and MCULE-5881513100-0-29. All molecules had favorable pharmacokinetic, pharmacodynamic and toxicological properties. Molecular docking analysis revealed that the molecules interact with proteins in critical sites for their activity. Using a virtual screening approach, a molecular docking study was performed for proteins encoded by genes that play important roles in cellular functions for carcinogenesis. Combining a systematic collection of public microarray data with a comparative meta-profiling, RT-qPCR, SBVS and molecular docking analysis provided a suitable approach for finding genes involved in GC and working with the corresponding proteins to search for new molecules with anticancer properties.

Funder

National Council for Scientific and Technological Development

CNPq

Red Latinoamericana de Implementación y Validación de guias clínicas Farmacogenomicas

Pró-Reitoria de Pesquisa e Pós-Graduação (PROPESP) from the Federal University of Pará

Publisher

MDPI AG

Subject

Pharmaceutical Science

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