Next Generation of Ovarian Cancer Detection Using Aptamers

Author:

Abreu Rayane da Silva1ORCID,Antunes Deborah1ORCID,Moreira Aline dos Santos1ORCID,Passetti Fabio2ORCID,Mendonça Julia Badaró1ORCID,de Araújo Natássia Silva1ORCID,Sassaro Tayanne Felippe1,Alberto Anael Viana Pinto3,Carrossini Nina4,Fernandes Priscila Valverde4,Costa Mayla Abrahim5,Guimarães Ana Carolina Ramos1,Degrave Wim Maurits Sylvain1,Waghabi Mariana Caldas1ORCID

Affiliation:

1. Laboratório de Genômica Funcional e Bioinformática, Instituto Oswaldo Cruz, Fundação Oswaldo Cruz (FIOCRUZ), Rio de Janeiro 21040-900, Brazil

2. Instituto Carlos Chagas, Fundação Oswaldo Cruz (FIOCRUZ), Curitiba 81350-010, Brazil

3. Laboratório de Tecnologia de Pós, Instituto Nacional de Tecnologia, Rio de Janeiro 20081-312, Brazil

4. Divisão de Patologia (DIPAT), Instituto Nacional do Câncer (INCA), Rio de Janeiro 20220-400, Brazil

5. Laboratório de Tecnologia Imunológica, Instituto de Tecnologia em Imunobiológicos, Bio-Manguinhos, Fundação Oswaldo Cruz (FIOCRUZ), Rio de Janeiro 21040-900, Brazil

Abstract

Ovarian cancer is among the seven most common types of cancer in women, being the most fatal gynecological tumor, due to the difficulty of detection in early stages. Aptamers are important tools to improve tumor diagnosis through the recognition of specific molecules produced by tumors. Here, aptamers and their potential targets in ovarian cancer cells were analyzed by in silico approaches. Specific aptamers were selected by the Cell-SELEX method using Caov-3 and OvCar-3 cells. The five most frequent aptamers obtained from the last round of selection were computationally modeled. The potential targets for those aptamers in cells were proposed by analyzing proteomic data available for the Caov-3 and OvCar-3 cell lines. Overexpressed proteins for each cell were characterized as to their three-dimensional model, cell location, and electrostatic potential. As a result, four specific aptamers for ovarian tumors were selected: AptaC2, AptaC4, AptaO1, and AptaO2. Potential targets were identified for each aptamer through Molecular Docking, and the best complexes were AptaC2-FXYD3, AptaC4-ALPP, AptaO1-TSPAN15, and AptaO2-TSPAN15. In addition, AptaC2 and AptaO1 could detect different stages and subtypes of ovarian cancer tissue samples. The application of this technology makes it possible to propose new molecular biomarkers for the differential diagnosis of epithelial ovarian cancer.

Funder

Conselho Nacional de Pesquisa Científica

INOVA Fiocruz

Publisher

MDPI AG

Subject

Inorganic Chemistry,Organic Chemistry,Physical and Theoretical Chemistry,Computer Science Applications,Spectroscopy,Molecular Biology,General Medicine,Catalysis

Reference65 articles.

1. Ovarian cancer in the world: Epidemiology and risk factors;Momenimovahed;Int. J. Women’s Health,2019

2. International patterns and trends in ovarian cancer incidence, overall and by histologic subtype;Coburn;Int. J. Cancer,2017

3. Gene expression signatures differentiate ovarian/peritoneal serous carcinoma from breast carcinoma in effusions;Davidson;J. Cell. Mol. Med.,2011

4. Evaluation of selected serum protein markers as early detectors of ovarian cancer;Mrochem;Ginekol. Pol.,2008

5. CA 125 in benign gynecological conditions;Meden;Int. J. Biol. Mark.,1998

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