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Quantitative combination of volumetric MR imaging and MR spectroscopy data for the discrimination of meningiomas from metastatic brain tumors by means of pattern recognition
Authors:Georgiadis Pantelis  Kostopoulos Spiros  Cavouras Dionisis  Glotsos Dimitris  Kalatzis Ioannis  Sifaki Koralia  Malamas Menelaos  Solomou Ekaterini  Nikiforidis George
Affiliation:
  • a Medical Image Processing and Analysis (MIPA) Group, Laboratory of Medical Physics, Faculty of Medicine, University of Patras, GR-26503 Rio, Greece
  • b Medical Image and Signal Processing Laboratory, Department of Medical Instruments Technology, Technological Educational Institute of Athens, Aigaleo GR-12210, Athens, Greece
  • c 251 General Hellenic Airforce Hospital, MRI Unit, Katehaki, Athens GR-11525, Greece
  • d Department of Radiology, Faculty of Medicine, University of Patras, GR-26503 Rio, Greece
  • Abstract:The analysis of information derived from magnetic resonance imaging (MRI) and spectroscopy (MRS) has been identified as an important indicator for discriminating among different brain pathologies. The purpose of this study was to investigate the efficiency of the combination of textural MRI features and MRS metabolite ratios by means of a pattern recognition system in the task of discriminating between meningiomas and metastatic brain tumors. The data set consisted of 40 brain MR image series and their corresponding spectral data obtained from patients with verified tumors. The pattern recognition system was designed employing the support vector machines classifier with radial basis function kernel; the system was evaluated using an external cross validation process to render results indicative of the generalization performance to “unknown” cases. The combination of MR textural and spectroscopic features resulted in 92.15% overall accuracy in discriminating meningiomas from metastatic brain tumors. The fusion of the information derived from MRI and MRS data might be helpful in providing clinicians a useful second opinion tool for accurate characterization of brain tumors.
    Keywords:Brain Tumors   MRI   MRS   Volumetric textural features   Spectroscopic features   Pattern classification
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