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Evaluation of Interactive Visualization on Mobile Computing Platforms for Selection of Deep Brain Stimulation ParametersDeep brain stimulation activation volumes and their association with neurophysiological mapping and therapeutic outcomesPatient-specific models of deep brain stimulation: influence of field model complexity on neural activation predictions.Probabilistic analysis of activation volumes generated during deep brain stimulationManagement of deep brain stimulator battery failure: battery estimators, charge density, and importance of clinical symptoms.Patient-specific analysis of the volume of tissue activated during deep brain stimulation.Differences among implanted pulse generator waveforms cause variations in the neural response to deep brain stimulationSignal distortion from microelectrodes in clinical EEG acquisition systemsTissue and electrode capacitance reduce neural activation volumes during deep brain stimulationComputational analysis of deep brain stimulation.Current steering to control the volume of tissue activated during deep brain stimulation.Potential for unreliable interpretation of EEG recorded with microelectrodes.Experimental and theoretical characterization of the voltage distribution generated by deep brain stimulation.Computational models of neuromodulation.Computational analysis of subthalamic nucleus and lenticular fasciculus activation during therapeutic deep brain stimulation.Neuromagnetic source imaging of abnormal spontaneous activity in tinnitus patient modulated by electrical cortical stimulation.Optimized programming algorithm for cylindrical and directional deep brain stimulation electrodes.Epidural cortical stimulation of the left dorsolateral prefrontal cortex for refractory major depressive disorder.Random noise paradoxically improves light-intensity encoding in Hermissenda photoreceptor network.Mechanisms of noise-induced improvement in light-intensity encoding in Hermissenda photoreceptor network.Optimizing deep brain stimulation parameter selection with detailed models of the electrode-tissue interface.Subthalamic nucleus deep brain stimulation: accurate axonal threshold prediction with diffusion tensor based electric field models.Spectral signal space projection algorithm for frequency domain MEG and EEG denoising, whitening, and source imaging.The Use of Stimulation Field Models for Deep Brain Stimulation Programming.Post-light potentiation at type B to A photoreceptor connections in Hermissenda.Anodic Stimulation Misunderstood: Preferential Activation of Fiber Orientations with Anodic Waveforms in Deep Brain StimulationImage-based analysis and long-term clinical outcomes of deep brain stimulation for Tourette syndrome: a multisite studyEffect of STN DBS on vesicular monoamine transporter 2 and glucose metabolism in Parkinson's diseaseSelective neural activation in a histologically derived model of peripheral nerveActivation robustness with directional leads and multi-lead configurations in deep brain stimulationA retrospective evaluation of automated optimization of deep brain stimulation parametersA statistical framework for quantification and visualisation of positional uncertainty in deep brain stimulation electrodesEvaluation of methodologies for computing the deep brain stimulation volume of tissue activated
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P50
description
hulumtues
@sq
onderzoeker
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researcher
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հետազոտող
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name
Christopher R. Butson
@ast
Christopher R. Butson
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Christopher R. Butson
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Christopher R. Butson
@nl
Christopher R. Butson
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type
label
Christopher R. Butson
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Christopher R. Butson
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Christopher R. Butson
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Christopher R. Butson
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Christopher R. Butson
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prefLabel
Christopher R. Butson
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Christopher R. Butson
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Christopher R. Butson
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Christopher R. Butson
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Christopher R. Butson
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P1053
J-8034-2013
P106
P1153
8732197800
P21
P31
P3829
P496
0000-0002-2319-1263