2016
DOI: 10.2463/mrms.2015-0027
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Machine Learning of DTI Structural Brain Connectomes for Lateralization of Temporal Lobe Epilepsy

Abstract: Background and Purpose: We analyzed the ability of a machine learning approach that uses diffusion tensor imaging (DTI) structural connectomes to determine lateralization of epileptogenicity in temporal lobe epilepsy (TLE).Materials and Methods: We analyzed diffusion tensor and 3-dimensional (3D) T 1 -weighted images of 44 patients with TLE (right, 15, left, 29; mean age, 33.0 « 11.6 years) and 14 age-matched controls. We constructed a whole brain structural connectome for each subject, calculated graph theore… Show more

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Cited by 42 publications
(32 citation statements)
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“…However, in the classification of left TLE and right TLE, the metric has better classification accuracy (88.10%) than and , which is significant for determining lateralization of unilateral TLE in clinic. Our results can be compared with those from a recent study [10] that also utilized an SVM approach to determine lateralization of the TLE epileptogenic focus. In that study, the input vectors were four graph-theory metrics that were based on DTI signals.…”
Section: Complexitymentioning
confidence: 88%
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“…However, in the classification of left TLE and right TLE, the metric has better classification accuracy (88.10%) than and , which is significant for determining lateralization of unilateral TLE in clinic. Our results can be compared with those from a recent study [10] that also utilized an SVM approach to determine lateralization of the TLE epileptogenic focus. In that study, the input vectors were four graph-theory metrics that were based on DTI signals.…”
Section: Complexitymentioning
confidence: 88%
“…SVM algorithms have been applied for measuring brain morphology [9], including 2 Complexity cortical thickness, volume, curvature, and identification of MTS in TLE patients. SVM approaches have been utilized to determine lateralization of the TLE epileptogenic focus with diffusion tensor imaging (DTI) structural connectomes [10]. Another study verified the use of SVM for voxel-based MRI classification, and TLE with MTS can be distinguished from TLE without MTS with over 88% accuracy [8].…”
Section: Introductionmentioning
confidence: 96%
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