Particle swarm optimization for programming deep brain stimulation arrays

Edgar Peña, Simeng Zhang, Steve Deyo, Yizi Xiao, Matthew D. Johnson

Research output: Contribution to journalArticlepeer-review

45 Scopus citations

Abstract

Objective. Deep brain stimulation (DBS) therapy relies on both precise neurosurgical targeting and systematic optimization of stimulation settings to achieve beneficial clinical outcomes. One recent advance to improve targeting is the development of DBS arrays (DBSAs) with electrodes segmented both along and around the DBS lead. However, increasing the number of independent electrodes creates the logistical challenge of optimizing stimulation parameters efficiently. Approach. Solving such complex problems with multiple solutions and objectives is well known to occur in biology, in which complex collective behaviors emerge out of swarms of individual organisms engaged in learning through social interactions. Here, we developed a particle swarm optimization (PSO) algorithm to program DBSAs using a swarm of individual particles representing electrode configurations and stimulation amplitudes. Using a finite element model of motor thalamic DBS, we demonstrate how the PSO algorithm can efficiently optimize a multi-objective function that maximizes predictions of axonal activation in regions of interest (ROI, cerebellar-receiving area of motor thalamus), minimizes predictions of axonal activation in regions of avoidance (ROA, somatosensory thalamus), and minimizes power consumption. Main results. The algorithm solved the multi-objective problem by producing a Pareto front. ROI and ROA activation predictions were consistent across swarms (<1% median discrepancy in axon activation). The algorithm was able to accommodate for (1) lead displacement (1 mm) with relatively small ROI (9.2%) and ROA (1%) activation changes, irrespective of shift direction; (2) reduction in maximum per-electrode current (by 50% and 80%) with ROI activation decreasing by 5.6% and 16%, respectively; and (3) disabling electrodes (n = 3 and 12) with ROI activation reduction by 1.8% and 14%, respectively. Additionally, comparison between PSO predictions and multi-compartment axon model simulations showed discrepancies of <1% between approaches. Significance. The PSO algorithm provides a computationally efficient way to program DBS systems especially those with higher electrode counts.

Original languageEnglish (US)
Article number016014
JournalJournal of neural engineering
Volume14
Issue number1
DOIs
StatePublished - Feb 2017

Bibliographical note

Funding Information:
This work was supported by the NIH (R01-NS081118, R01-NS094206, P50-NS098573) and the Michael J Fox Foundation. We thank Drs Noam Harel, Essa Yacoub, and Gregor Adriany at the Center for Magnetic Resonance Research (P41-EB015894, P30-076408, U54-MH091657) for help with the thalamic reconstructions used in this study.

Publisher Copyright:
© 2017 IOP Publishing Ltd.

Keywords

  • computational modeling
  • deep brain stimulation
  • motor thalamus
  • optimization
  • programming

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