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Quasistatic approximation in neuromodulation.

Publication ,  Journal Article
Wang, B; Peterchev, AV; Gaugain, G; Ilmoniemi, RJ; Grill, WM; Bikson, M; Nikolayev, D
Published in: ArXiv
April 23, 2024

We define and explain the quasistatic approximation (QSA) as applied to field modeling for electrical and magnetic stimulation. Neuromodulation analysis pipelines include discrete stages, and QSA is applied specifically when calculating the electric and magnetic fields generated in tissues by a given stimulation dose. QSA simplifies the modeling equations to support tractable analysis, enhanced understanding, and computational efficiency. The application of QSA in neuro-modulation is based on four underlying assumptions: (A1) no wave propagation or self-induction in tissue, (A2) linear tissue properties, (A3) purely resistive tissue, and (A4) non-dispersive tissue. As a consequence of these assumptions, each tissue is assigned a fixed conductivity, and the simplified equations (e.g., Laplace's equation) are solved for the spatial distribution of the field, which is separated from the field's temporal waveform. Recognizing that electrical tissue properties may be more complex, we explain how QSA can be embedded in parallel or iterative pipelines to model frequency dependence or nonlinearity of conductivity. We survey the history and validity of QSA across specific applications, such as microstimulation, deep brain stimulation, spinal cord stimulation, transcranial electrical stimulation, and transcranial magnetic stimulation. The precise definition and explanation of QSA in neuromodulation are essential for rigor when using QSA models or testing their limits.

Duke Scholars

Published In

ArXiv

EISSN

2331-8422

Publication Date

April 23, 2024

Location

United States

Related Subject Headings

  • Biomedical Engineering
  • 4003 Biomedical engineering
  • 3209 Neurosciences
  • 1109 Neurosciences
  • 1103 Clinical Sciences
  • 0903 Biomedical Engineering
 

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Wang, B., Peterchev, A. V., Gaugain, G., Ilmoniemi, R. J., Grill, W. M., Bikson, M., & Nikolayev, D. (2024). Quasistatic approximation in neuromodulation. ArXiv.
Wang, Boshuo, Angel V. Peterchev, Gabriel Gaugain, Risto J. Ilmoniemi, Warren M. Grill, Marom Bikson, and Denys Nikolayev. “Quasistatic approximation in neuromodulation.ArXiv, April 23, 2024.
Wang B, Peterchev AV, Gaugain G, Ilmoniemi RJ, Grill WM, Bikson M, et al. Quasistatic approximation in neuromodulation. ArXiv. 2024 Apr 23;
Wang, Boshuo, et al. “Quasistatic approximation in neuromodulation.ArXiv, Apr. 2024.
Wang B, Peterchev AV, Gaugain G, Ilmoniemi RJ, Grill WM, Bikson M, Nikolayev D. Quasistatic approximation in neuromodulation. ArXiv. 2024 Apr 23;

Published In

ArXiv

EISSN

2331-8422

Publication Date

April 23, 2024

Location

United States

Related Subject Headings

  • Biomedical Engineering
  • 4003 Biomedical engineering
  • 3209 Neurosciences
  • 1109 Neurosciences
  • 1103 Clinical Sciences
  • 0903 Biomedical Engineering