Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models

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Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models. / Amante, Eleonora; Salomone, Alberto; Alladio, Eugenio; Vincenti, Marco; Porpiglia, Francesco; Bro, Rasmus.

In: Molecules, Vol. 24, No. 17, 3063, 2019.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Amante, E, Salomone, A, Alladio, E, Vincenti, M, Porpiglia, F & Bro, R 2019, 'Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models', Molecules, vol. 24, no. 17, 3063. https://doi.org/10.3390/molecules24173063

APA

Amante, E., Salomone, A., Alladio, E., Vincenti, M., Porpiglia, F., & Bro, R. (2019). Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models. Molecules, 24(17), [3063]. https://doi.org/10.3390/molecules24173063

Vancouver

Amante E, Salomone A, Alladio E, Vincenti M, Porpiglia F, Bro R. Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models. Molecules. 2019;24(17). 3063. https://doi.org/10.3390/molecules24173063

Author

Amante, Eleonora ; Salomone, Alberto ; Alladio, Eugenio ; Vincenti, Marco ; Porpiglia, Francesco ; Bro, Rasmus. / Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models. In: Molecules. 2019 ; Vol. 24, No. 17.

Bibtex

@article{7e3e421a4573426b8ec15d8c084e761c,
title = "Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models",
abstract = "Prostate-specific antigen (PSA) is the main biomarker for the screening of prostate cancer (PCa), which has a high sensibility (higher than 80%) that is negatively offset by its poor specificity (only 30%, with the European cut-off of 4 ng/mL). This generates a large number of useless biopsies, involving both risks for the patients and costs for the national healthcare systems. Consequently, efforts were recently made to discover new biomarkers useful for PCa screening, including our proposal of interpreting a multi-parametric urinary steroidal profile with multivariate statistics. This approach has been expanded to investigate new alleged biomarkers by the application of untargeted urinary metabolomics. Urine samples from 91 patients (43 affected by PCa; 48 by benign hyperplasia) were deconjugated, extracted in both basic and acidic conditions, derivatized with different reagents, and analyzed with different gas chromatographic columns. Three-dimensional data were obtained from full-scan electron impact mass spectra. The PARADISe software, coupled with NIST libraries, was employed for the computation of PARAFAC2 models, the extraction of the significative components (alleged biomarkers), and the generation of a semiquantitative dataset. After variables selection, a partial least squares-discriminant analysis classification model was built, yielding promising performances. The selected biomarkers need further validation, possibly involving, yet again, a targeted approach.",
keywords = "Alignment, Gas chromatography-mass spectrometry (GC-MS), PARAFAC2, Prostate carcinoma, Untargeted metabolomics",
author = "Eleonora Amante and Alberto Salomone and Eugenio Alladio and Marco Vincenti and Francesco Porpiglia and Rasmus Bro",
year = "2019",
doi = "10.3390/molecules24173063",
language = "English",
volume = "24",
journal = "Molecules",
issn = "1420-3049",
publisher = "M D P I AG",
number = "17",

}

RIS

TY - JOUR

T1 - Untargeted Metabolomic Profile for the Detection of Prostate Carcinoma - Preliminary Results from PARAFAC2 and PLS-DA Models

AU - Amante, Eleonora

AU - Salomone, Alberto

AU - Alladio, Eugenio

AU - Vincenti, Marco

AU - Porpiglia, Francesco

AU - Bro, Rasmus

PY - 2019

Y1 - 2019

N2 - Prostate-specific antigen (PSA) is the main biomarker for the screening of prostate cancer (PCa), which has a high sensibility (higher than 80%) that is negatively offset by its poor specificity (only 30%, with the European cut-off of 4 ng/mL). This generates a large number of useless biopsies, involving both risks for the patients and costs for the national healthcare systems. Consequently, efforts were recently made to discover new biomarkers useful for PCa screening, including our proposal of interpreting a multi-parametric urinary steroidal profile with multivariate statistics. This approach has been expanded to investigate new alleged biomarkers by the application of untargeted urinary metabolomics. Urine samples from 91 patients (43 affected by PCa; 48 by benign hyperplasia) were deconjugated, extracted in both basic and acidic conditions, derivatized with different reagents, and analyzed with different gas chromatographic columns. Three-dimensional data were obtained from full-scan electron impact mass spectra. The PARADISe software, coupled with NIST libraries, was employed for the computation of PARAFAC2 models, the extraction of the significative components (alleged biomarkers), and the generation of a semiquantitative dataset. After variables selection, a partial least squares-discriminant analysis classification model was built, yielding promising performances. The selected biomarkers need further validation, possibly involving, yet again, a targeted approach.

AB - Prostate-specific antigen (PSA) is the main biomarker for the screening of prostate cancer (PCa), which has a high sensibility (higher than 80%) that is negatively offset by its poor specificity (only 30%, with the European cut-off of 4 ng/mL). This generates a large number of useless biopsies, involving both risks for the patients and costs for the national healthcare systems. Consequently, efforts were recently made to discover new biomarkers useful for PCa screening, including our proposal of interpreting a multi-parametric urinary steroidal profile with multivariate statistics. This approach has been expanded to investigate new alleged biomarkers by the application of untargeted urinary metabolomics. Urine samples from 91 patients (43 affected by PCa; 48 by benign hyperplasia) were deconjugated, extracted in both basic and acidic conditions, derivatized with different reagents, and analyzed with different gas chromatographic columns. Three-dimensional data were obtained from full-scan electron impact mass spectra. The PARADISe software, coupled with NIST libraries, was employed for the computation of PARAFAC2 models, the extraction of the significative components (alleged biomarkers), and the generation of a semiquantitative dataset. After variables selection, a partial least squares-discriminant analysis classification model was built, yielding promising performances. The selected biomarkers need further validation, possibly involving, yet again, a targeted approach.

KW - Alignment

KW - Gas chromatography-mass spectrometry (GC-MS)

KW - PARAFAC2

KW - Prostate carcinoma

KW - Untargeted metabolomics

U2 - 10.3390/molecules24173063

DO - 10.3390/molecules24173063

M3 - Journal article

C2 - 31443574

AN - SCOPUS:85071429905

VL - 24

JO - Molecules

JF - Molecules

SN - 1420-3049

IS - 17

M1 - 3063

ER -

ID: 228367241