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DOI: 10.1007/s10334-008-0146-y
¤ OpenAccess: Hybrid
This work has “Hybrid” OA status. This means it is free under an open license in a toll-access journal.

Multiproject–multicenter evaluation of automatic brain tumor classification by magnetic resonance spectroscopy

Juan Miguel García‐Gómez,Jan Luts,Margarida Julià‐Sapé,P.W.T. Krooshof,Salvador Tortajada,Javier Vicente,W.J. Melssen,Elies Fuster-García,Iván Olier,G.J. Postma,Daniel Monleón,Àngel Moreno-Torres,Jesús Pujol,Ana Paula Candiota,M. Carmen Martínez-Bisbal,Johan A. K. Suykens,L.M.C. Buydens,Bernardo Celda,Sabine Van Huffel,Carles Arús,Montserrat Robles

Glioblastoma
Brain tumor
Computer science
2008
Automatic brain tumor classification by MRS has been under development for more than a decade. Nonetheless, to our knowledge, there are no published evaluations of predictive models with unseen cases that are subsequently acquired in different centers. The multicenter eTUMOUR project (2004–2009), which builds upon previous expertise from the INTERPRET project (2000–2002) has allowed such an evaluation to take place. A total of 253 pairwise classifiers for glioblastoma, meningioma, metastasis, and low-grade glial diagnosis were inferred based on 211 SV short TE INTERPRET MR spectra obtained at 1.5 T (PRESS or STEAM, 20–32 ms) and automatically pre-processed. Afterwards, the classifiers were tested with 97 spectra, which were subsequently compiled during eTUMOUR. In our results based on subsequently acquired spectra, accuracies of around 90% were achieved for most of the pairwise discrimination problems. The exception was for the glioblastoma versus metastasis discrimination, which was below 78%. A more clear definition of metastases may be obtained by other approaches, such as MRSI + MRI. The prediction of the tumor type of in-vivo MRS is possible using classifiers developed from previously acquired data, in different hospitals with different instrumentation under the same acquisition protocols. This methodology may find application for assisting in the diagnosis of new brain tumor cases and for the quality control of multicenter MRS databases.
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    Multiproject–multicenter evaluation of automatic brain tumor classification by magnetic resonance spectroscopy” is a paper by Juan Miguel García‐Gómez Jan Luts Margarida Julià‐Sapé P.W.T. Krooshof Salvador Tortajada Javier Vicente W.J. Melssen Elies Fuster-García Iván Olier G.J. Postma Daniel Monleón Àngel Moreno-Torres Jesús Pujol Ana Paula Candiota M. Carmen Martínez-Bisbal Johan A. K. Suykens L.M.C. Buydens Bernardo Celda Sabine Van Huffel Carles Arús Montserrat Robles published in 2008. It has an Open Access status of “hybrid”. You can read and download a PDF Full Text of this paper here.