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Scandinavian Journal of Clinical and Laboratory Investigation 2019-Feb

The decrease of some serum free amino acids can predict breast cancer diagnosis and progression.

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Dan Eniu
Florina Romanciuc
Corina Moraru
Iulian Goidescu
Daniela Eniu
Adelina Staicu
Claudiu Rachieriu
Rareş Buiga
Carmen Socaciu

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Abstrak

This study was targeted on a metabolomic approach to compare the blood serum free amino acid profiles and concentration of confirmed breast cancer (stages I-III) patients to healthy controls in order to establish reliable biomarkers of early detection and prediction of breast cancer. The ultra-high-performance liquid chromatography coupled with mass spectrometry using positive ionization electrospray was applied for the picoline-derivatized serum free amino acids using the EZ:faastTM kit. Multivariate statistical analysis principal component analysis, partial least squares discrimination analysis and univariate analysis were applied in order to discriminate between patient groups and putative amino acid biomarkers for breast cancer. A significant decrease of amino acid concentrations between the breast cancer group and the control group was positively correlated with breast cancer progression. Arginine, Alanine, Isoleucine, Tyrosine and Tryptophan were identified as being good potential discriminants (AUROC ≥0.85) and suitable candidates to diagnose and predict the breast cancer progression.

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