Identification of novel biomarkers for early diagnosis of malignant melanoma by untargeted LC-HRMS-based metabolomics: a pilot study.
By: Jesús Peña-Martín, María Belén García-Ortega, José Luis Palacios-Ferrer, Caridad Díaz, María Ángel García, Houria Boulaiz, Javier Valdivia, José Miguel Jurado, Francisco M Almazan-Fernandez, Salvador Arias Santiago, Francisca Vicente, Coral Del Val, José Pérez Del Palacio, Juan Antonio Marchal

Biopathology and Regenerative Medicine Institute (IBIMER), Centre for Biomedical Research, (CIBM) University of Granada, Granada, Spain.
2022-12-14; doi: 10.1093/bjd/ljae013
Abstract

Background

Malignant melanoma (MM) is a highly aggressive form of skin cancer whose incidence continues to rise worldwide. If diagnosed at an early stage of disease, it has an excellent prognosis, but the mortality increases significantly at advanced stages after distant spread. Unfortunately, early detection of aggressive melanoma remains a challenge to improve patient survival.

Objectives

To identify novel blood-circulating biomarkers that may be useful for the diagnosis of MM to guide patient counselling and appropriate disease management.

Methods

In this study, a total of 105 serum samples from 26 healthy patients (HC) and 79 MM patients (MMP) were analysed using an untargeted approach by liquid chromatography coupled to high resolution mass spectrometry (LC-HRMS) to compare the metabolomic profile of both conditions. Resulting data were subjected to both univariate (UVA) and multivariate (MVA) statistical analysis to select robust biomarkers. The classification model obtained from this analysis was further validated with an independent cohort of 12 stage I MMP.

Results

The study successfully identified several lipidic metabolites differentially expressed in Stage I MM patients in comparison to HC. Three of these metabolites were utilized to develop a classification model, which exhibited exceptional precision (0.92) and accuracy (0.94) when validated on an independent sample.

Conclusions

These results demonstrate that metabolomics using LC-HRMS is a powerful tool to identify and quantify metabolites in body fluids that could serve as potential early diagnostic markers for MM.



© The Author(s) 2024. Published by Oxford University Press on behalf of British Association of Dermatologists.

PMID:38214572






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