Publication | Closed Access
Weighted minimum-norm source estimation of magnetoencephalography utilizing the temporal information of the measured data
38
Citations
8
References
1998
Year
EngineeringConventional Wmne MethodMeasurementMagnetic ResonanceMinimum-norm Source EstimationMagnetic Resonance ImagingStatistical Signal ProcessingData ScienceBiostatisticsTemporal InformationIndependent Component AnalysisPublic HealthStatisticsWmne TechniqueNeuroimaging ModalityNeuroimagingInverse ProblemsMedical Image ComputingBrain ImagingFunctional Data AnalysisSignal ProcessingWeighted Minimum-norm EstimationComputational NeuroscienceEeg Signal ProcessingBiomedical ImagingNeuroscienceSignal Separation
The weighted minimum-norm estimation (wMNE) is a popular method to obtain the source distribution in the human brain from magneto- and electro- encephalograpic measurements when detailed information about the generator profile is not available. We propose a method to reconstruct current distributions in the human brain based on the wMNE technique with the weighting factors defined by a simplified multiple signal classification (MUSIC) prescanning. In this method, in addition to the conventional depth normalization technique, weighting factors of the wMNE were determined by the cost values previously calculated by a simplified MUSIC scanning which contains the temporal information of the measured data. We performed computer simulations of this method and compared it with the conventional wMNE method. The results show that the proposed method is effective for the reconstruction of the current distributions from noisy data.
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