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Metabolomic profiling in follicular fluid of patients with infertility-related deep endometriosis
Authors:Fernanda Bertuccez Cordeiro  Thais Regiani Cataldi  Lívia do Vale Teixeira da Costa  Beatriz Zappellini de Souza  Daniela Antunes Montani  Renato Fraietta  Carlos Alberto Labate  Agnaldo Pereira Cedenho  Edson Guimarães Lo Turco
Institution:1.Division of Urology, Human Reproduction Section, Department of Surgery,S?o Paulo Federal University,S?o Paulo,Brazil;2.Department of Genetics, Escola Superior de Agricultura “Luiz de Queirós”,Universidade de S?o Paulo,Piracicaba,Brazil
Abstract:

Introduction

Endometriosis is an estrogen-dependent gynecological disease that causes infertility, and potential metabolomic biomarkers related to ovarian endometriosis and poor outcomes after assisted reproductive treatments are still lacking.

Objectives

The present study analyzed the metabolomic profiling of follicular fluid samples from 40 patients undergoing in vitro fertilization.

Methods

The follicular fluid samples were classified as controls (n = 22) and endometriosis patients (n = 18). The samples were submitted to Bligh and Dyer protocol followed by metabolomics analysis by ultra-performance liquid chromatography mass spectrometry. Clinical data was assessed by Students’ T-test and metabolomics data was analyzed by multivariate statistics by MetaboAnalyst 3.0 to obtain intrinsic characteristics that allowed for groups discrimination. The Receiver Operating Characteristic curve was carried out for the proposed biomarkers, aiming to determine their specificity and sensitivity, as a set and individually.

Results

From the metabolomic analysis, 20 ion masses were selected as potential biomarkers from principal component analysis, which showed that all biomarkers were more abundant in the endometriosis group when compared to controls. Tentative attribution was performed by lipid maps database, demonstrating that these potential biomarkers correspond to fatty acids, carnitines, monoacylglycerols, lysophosphatidic acids, lysophosphatidylglycerols, diacylglycerols, lysophosphatidylcholines, phosphatidylserine, lysophosphatidylinositols and Phosphatidic Acid.

Conclusion

The use of mass spectrometry-based metabolomics allowed for the identification of effective biomarkers for ovarian endometriosis, which may contribute for a better comprehension of the disease and how it affects the ovary, as well as assisting in the development of accessory tools for endometriosis diagnosis and infertility management.
Keywords:
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