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Anatomical registration of intracranial electrodes. Robust model-based localization and deformable smooth brain-shift compensation methods.
Blenkmann, Alejandro Omar; Leske, Sabine Liliana; Llorens, Anaïs; Lin, Jack J; Chang, Edward; Brunner, Peter; Schalk, Gerwin; Ivanovic, Jugoslav; Larsson, Pål Gunnar; Knight, Robert Thomas; Endestad, Tor; Solbakk, Anne-Kristin.
Afiliação
  • Blenkmann AO; Department of Psychology, University of Oslo, Norway.
  • Leske SL; RITMO Centre for Interdisciplinary Studies in Rhythm, Time, and Motion, University of Oslo, Norway.
  • Llorens A; Department of Musicology, University of Oslo, Norway.
  • Lin JJ; RITMO Centre for Interdisciplinary Studies in Rhythm, Time, and Motion, University of Oslo, Norway.
  • Chang E; Department of Psychology, University of Oslo, Norway.
  • Brunner P; Department of Psychology and the Helen Wills Neuroscience Institute, University of California, Berkeley, USA.
  • Schalk G; Department of Neurology and Center for Mind and Brain, University of California, Davis, USA.
  • Ivanovic J; Department of Neurological Surgery, University of California, San Francisco, USA.
  • Larsson PG; Department of Neurology, Albany Medical College, Albany, NY, USA.
  • Knight RT; National Center for Adaptive Neurotechnologies, Albany, NY, USA.
  • Endestad T; Department of Neurology, Albany Medical College, Albany, NY, USA.
  • Solbakk AK; National Center for Adaptive Neurotechnologies, Albany, NY, USA.
bioRxiv ; 2023 May 11.
Article em En | MEDLINE | ID: mdl-37214984
ABSTRACT
Precise electrode localization is important for maximizing the utility of intracranial EEG data. Electrodes are typically localized from post-implantation CT artifacts, but algorithms can fail due to low signal-to-noise ratio, unrelated artifacts, or high-density electrode arrays. Minimizing these errors usually requires time-consuming visual localization and can still result in inaccurate localizations. In addition, surgical implantation of grids and strips typically introduces non-linear brain deformations, which result in anatomical registration errors when post-implantation CT images are fused with the pre-implantation MRI images. Several projection methods are currently available, but they either fail to produce smooth solutions or do not account for brain deformations. To address these shortcomings, we propose two novel algorithms for the anatomical registration of intracranial electrodes that are almost fully automatic and provide highly accurate results. We first present GridFit, an algorithm that simultaneously localizes all contacts in grids, strips, or depth arrays by fitting flexible models to the electrodes' CT artifacts. We observed localization errors of less than one millimeter (below 8% relative to the inter-electrode distance) and robust performance under the presence of noise, unrelated artifacts, and high-density implants when we ran ~6000 simulated scenarios. Furthermore, we validated the method with real data from 20 intracranial patients. As a second registration step, we introduce CEPA, a brain-shift compensation algorithm that combines orthogonal-based projections, spring-mesh models, and spatial regularization constraints. When tested with real data from 15 patients, anatomical registration errors were smaller than those obtained for well-established alternatives. Additionally, CEPA accounted simultaneously for simple mechanical deformation principles, which is not possible with other available methods. Inter-electrode distances of projected coordinates smoothly changed across neighbor electrodes, while changes in inter-electrode distances linearly increased with projection distance. Moreover, in an additional validation procedure, we found that modeling resting-state high-frequency activity (75-145 Hz ) in five patients further supported our new algorithm. Together, GridFit and CEPA constitute a versatile set of tools for the registration of subdural grid, strip, and depth electrode coordinates that provide highly accurate results even in the most challenging implantation scenarios. The methods presented here are implemented in the iElectrodes open-source toolbox, making their use simple, accessible, and straightforward to integrate with other popular toolboxes used for analyzing electrophysiological data.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article