Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysis

High resolution proton nuclear magnetic resonance spectroscopy (¹H MRS) can be used to detect biochemical changes in vitro caused by distinct pathologies. It can reveal distinct metabolic profiles of brain tumors although the accurate analysis and classification of different spectra remains a challe...

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Main Authors: A.V. Faria, F.C. Macedo Jr., A.J. Marsaioli, M.M.C. Ferreira, F. Cendes
Format: Article
Language:English
Published: Associação Brasileira de Divulgação Científica 2011-02-01
Series:Brazilian Journal of Medical and Biological Research
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-879X2011000200009&lng=en&tlng=en
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spelling doaj-0b2b776013bf43f9b0dd271370e7e4332020-11-24T22:50:27ZengAssociação Brasileira de Divulgação CientíficaBrazilian Journal of Medical and Biological Research1414-431X2011-02-0144214916410.1590/S0100-879X2011000200009S0100-879X2011000200009Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysisA.V. Faria0F.C. Macedo Jr.1A.J. Marsaioli2M.M.C. Ferreira3F. Cendes4Universidade Estadual de CampinasUniversidade Estadual de CampinasUniversidade Estadual de CampinasUniversidade Estadual de CampinasUniversidade Estadual de CampinasHigh resolution proton nuclear magnetic resonance spectroscopy (¹H MRS) can be used to detect biochemical changes in vitro caused by distinct pathologies. It can reveal distinct metabolic profiles of brain tumors although the accurate analysis and classification of different spectra remains a challenge. In this study, the pattern recognition method partial least squares discriminant analysis (PLS-DA) was used to classify 11.7 T ¹H MRS spectra of brain tissue extracts from patients with brain tumors into four classes (high-grade neuroglial, low-grade neuroglial, non-neuroglial, and metastasis) and a group of control brain tissue. PLS-DA revealed 9 metabolites as the most important in group differentiation: γ-aminobutyric acid, acetoacetate, alanine, creatine, glutamate/glutamine, glycine, myo-inositol, N-acetylaspartate, and choline compounds. Leave-one-out cross-validation showed that PLS-DA was efficient in group characterization. The metabolic patterns detected can be explained on the basis of previous multimodal studies of tumor metabolism and are consistent with neoplastic cell abnormalities possibly related to high turnover, resistance to apoptosis, osmotic stress and tumor tendency to use alternative energetic pathways such as glycolysis and ketogenesis.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-879X2011000200009&lng=en&tlng=enBrainTumorMagnetic resonance spectroscopySpectroscopyMetabolism
collection DOAJ
language English
format Article
sources DOAJ
author A.V. Faria
F.C. Macedo Jr.
A.J. Marsaioli
M.M.C. Ferreira
F. Cendes
spellingShingle A.V. Faria
F.C. Macedo Jr.
A.J. Marsaioli
M.M.C. Ferreira
F. Cendes
Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysis
Brazilian Journal of Medical and Biological Research
Brain
Tumor
Magnetic resonance spectroscopy
Spectroscopy
Metabolism
author_facet A.V. Faria
F.C. Macedo Jr.
A.J. Marsaioli
M.M.C. Ferreira
F. Cendes
author_sort A.V. Faria
title Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysis
title_short Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysis
title_full Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysis
title_fullStr Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysis
title_full_unstemmed Classification of brain tumor extracts by high resolution ¹H MRS using partial least squares discriminant analysis
title_sort classification of brain tumor extracts by high resolution ¹h mrs using partial least squares discriminant analysis
publisher Associação Brasileira de Divulgação Científica
series Brazilian Journal of Medical and Biological Research
issn 1414-431X
publishDate 2011-02-01
description High resolution proton nuclear magnetic resonance spectroscopy (¹H MRS) can be used to detect biochemical changes in vitro caused by distinct pathologies. It can reveal distinct metabolic profiles of brain tumors although the accurate analysis and classification of different spectra remains a challenge. In this study, the pattern recognition method partial least squares discriminant analysis (PLS-DA) was used to classify 11.7 T ¹H MRS spectra of brain tissue extracts from patients with brain tumors into four classes (high-grade neuroglial, low-grade neuroglial, non-neuroglial, and metastasis) and a group of control brain tissue. PLS-DA revealed 9 metabolites as the most important in group differentiation: γ-aminobutyric acid, acetoacetate, alanine, creatine, glutamate/glutamine, glycine, myo-inositol, N-acetylaspartate, and choline compounds. Leave-one-out cross-validation showed that PLS-DA was efficient in group characterization. The metabolic patterns detected can be explained on the basis of previous multimodal studies of tumor metabolism and are consistent with neoplastic cell abnormalities possibly related to high turnover, resistance to apoptosis, osmotic stress and tumor tendency to use alternative energetic pathways such as glycolysis and ketogenesis.
topic Brain
Tumor
Magnetic resonance spectroscopy
Spectroscopy
Metabolism
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-879X2011000200009&lng=en&tlng=en
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