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Towards a method for automated classification of1H MRS spectra from brain tumours

Authors :
Miquel E. Cabañas
F. Isamat
Ferrer E
Vila F
Irene Martínez-Pérez
Ignasi Barba
Angel Moreno
Antoni Capdevila
John R. Griffiths
I. Ferrer
Juli Alonso
Des Watson
Frederic Bartumeus
Carles Arús
A. R. Tate
Source :
NMR in Biomedicine. 11:177-191
Publication Year :
1998
Publisher :
Wiley, 1998.

Abstract

Recent studies have shown that MRS can substantially improve the non-invasive categorization of human brain tumours. However, in order for MRS to be used routinely by clinicians, it will be necessary to develop reliable automated classification methods that can be fully validated. This paper is in two parts: the first part reviews the progress that has been made towards this goal, together with the problems that are involved in the design of automated methods to process and classify the spectra. The second part describes the development of a simple prototype system for classifying H-1 single voxel spectra, obtained at an echo time (TE) of 135 ms, of the four most common types of brain tumour (meningioma (MM), astrocytic (AST), oligodendroglioma (OD) and metastasis (ME)) and cysts. This system was developed in two stages: firstly, an initial database of spectra was used to develop a prototype classifier, based on a linear discriminant analysis (LDA) of selected data points. Secondly, this classifier was tested on an independent test set of 15 newly acquired spectra, and the system was refined on the basis of these results. The system correctly classified all the non-astrocytic tumours. However, the results for the the astrocytic group were poorer (between 55 and 100%, depending on the binary comparison). Approximately 50% of high grade astrocytoma (glioblastoma) spectra in our data base showed very little lipid signal, which may account for the poorer results for this class. Consequently, far the refined system, the astrocytomas were subdivided into two subgroups for comparison against other tumour classes: those with high lipid content and those without

Details

ISSN :
10991492 and 09523480
Volume :
11
Database :
OpenAIRE
Journal :
NMR in Biomedicine
Accession number :
edsair.doi...........556640f628d5712d6c9a4aa19aea0060
Full Text :
https://doi.org/10.1002/(sici)1099-1492(199806/08)11:4/5<177::aid-nbm534>3.0.co;2-u