This is a preprint.
Group optimization methods for dose planning in tES
- PMID: 40166293
- PMCID: PMC11956972
- DOI: 10.1101/2025.03.18.643934
Group optimization methods for dose planning in tES
Update in
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Group optimization methods for dose planning in tES.J Neural Eng. 2025 Aug 14;22(4):046045. doi: 10.1088/1741-2552/adf887. J Neural Eng. 2025. PMID: 40769162 Free PMC article.
Abstract
Objective: Optimizing transcranial electrical stimulation (tES) parameters-including stimulator settings and electrode placements-using magnetic resonance imaging-derived head models is essential for achieving precise electric field (E-field) distributions, enhancing therapeutic efficacy, and reducing inter-individual variability. However, the dependence on individually personalized MRI-based models limits their scalability in some clinical and research contexts. To overcome this limitation, we propose a novel group-level optimization framework employing multiple representative head models.
Approach: The proposed optimization approach utilizes computational modeling based on multiple representative head models selected to minimize group-level error compared to baseline (no stimulation). This method effectively balances focal stimulation intensity within targeted brain regions while minimizing off-target effects. We evaluated our method through computational modeling and leave-one-out cross-validation using data from 54 subjects and analyzed the effectiveness, generalizability, and predictive utility of anatomical characteristics.
Main results: Our approach demonstrated that group optimization significantly outperformed protocols derived from standard templates or randomly selected individual models, notably reducing variability in outcomes across participants. Additionally, correlations between anatomical features (e.g., head perimeter and tissue volumes) and E-field parameters revealed predictive relationships. This insight enables further optimization improvements through the strategic selection of representative head models that are electro-anatomically similar to the target subjects.
Significance: The proposed group optimization framework provides a scalable and robust alternative to personalized approaches, substantially enhancing the feasibility and accessibility of model-driven tES protocols in diverse clinical and research environments.
Data access statement: The data that support the findings of this study are available from the corresponding author, R.S., upon reasonable request.
Keywords: computational models; dose parameter; transcranial electrical stimulation.
Conflict of interest statement
Conflicts of interest Dr. Ricardo Salvador works for Neuroelectrics Barcelona SLU, a company developing computationally-driven brain stimulation solutions. Dr. Giulio Ruffini works for and is a co-founder of Neuroelectrics and holds several patents in model-driven non-invasive brain stimulation.
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References
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