Pattern analysis of glucose metabolic brain data for lateralization of MRI-negative temporal lobe epilepsy

•We designed an automatic lateralization framework on the basis of glucose metabolic brain data for MRI-negative TLE patients.•The proposed lateralization framework showed an accuracy of 96.43% concordance with experienced PET interpreter.•The proposed lateralization framework can be viewed a comput...

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Veröffentlicht in:Epilepsy research 2020-11, Vol.167, p.106474-106474, Article 106474
Hauptverfasser: Beheshti, Iman, Sone, Daichi, Maikusa, Norihide, Kimura, Yukio, Shigemoto, Yoko, Sato, Noriko, Matsuda, Hiroshi
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Sprache:eng
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Zusammenfassung:•We designed an automatic lateralization framework on the basis of glucose metabolic brain data for MRI-negative TLE patients.•The proposed lateralization framework showed an accuracy of 96.43% concordance with experienced PET interpreter.•The proposed lateralization framework can be viewed a computerized approach for non-specialists in the clinical setting. In this paper, we assessed the reliability of glucose metabolic brain data for identifying lateralization of magnetic resonance imaging (MRI)-negative temporal lobe epilepsy (TLE) patients. We designed and developed an efficacious and automatic metabolic-wise lateralization framework. The proposed lateralization framework comprises three main systematic levels. In the first stage of our investigation, we pre-processed interictal fluorodeoxyglucose positron emission tomography images to extract glucose metabolic brain data. In the second stage, we used a voxel selection method involving a feature-ranking strategy to select the most discriminative metabolic voxels. Finally, we used a support vector machine followed by a 10-fold cross-validation strategy to assess the proposed lateralization framework in 27 patients with right MRI-negative TLE and 29 patients with left MRI-negative TLE. The proposed lateralization framework achieved an excellent accuracy of 96.43 % concordance with experienced PET interpreter. Thus, we show that pattern analysis of glucose metabolic brain data can accurately lateralize MRI-negative TLE patients in the clinical setting.
ISSN:0920-1211
1872-6844
DOI:10.1016/j.eplepsyres.2020.106474