Quantification and classification of high-resolution magic angle spinning data for brain tumor diagnosis.

Fecha de publicación:

Autores de IIS La Fe

Participantes ajenos a IIS La Fe

  • Poullet JB
  • Valverde D
  • Monleon D
  • Celda B
  • Arús C
  • Van Huffel S

Abstract

The goal of this work is to propose a complete protocol (preprocessing, processing and classification) for classifying brain tumors with proton high-resolution magic-angle spinning ((1)H HR-MAS) data. The different steps of the procedure are detailed and discussed. Feature extraction techniques such as peak integration, including also the automated quantitation method AQSES, were combined with linear (LDA) and non-linear (least-squares support vector machine or LS-SVM) classifiers. Classification accuracy was assessed using a stratified random sampling scheme. The results suggest that LS-SVM performs better than LDA while AQSES performs better than the standard peak integration feature extraction method.

Datos de la publicación

ISSN/ISSNe:
1557-170X, 1558-4615

IEEE Engineering in Medicine and Biology Society Conference Proceedings  IEEE

Tipo:
Article
Páginas:
5407-5410
PubMed:
18003231
Factor de Impacto:
0,222 SCImago

Citas Recibidas en Web of Science: 8

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