Abstract

Deep brain stimulation (DBS) leads with radially distributed electrodes have potential to improve clinical outcomes through more selective targeting of pathways and networks within the brain. However, increasing the number of electrodes on clinical DBS leads by replacing conventional cylindrical shell electrodes with radially distributed electrodes raises practical design and stimulation programming challenges. We used computational modeling to investigate: (1) how the number of radial electrodes impact the ability to steer, shift, and sculpt a region of neural activation (RoA), and (2) which RoA features are best used in combination with machine learning classifiers to predict programming settings to target a particular area near the lead. Stimulation configurations were modeled using 27 lead designs with one to nine radially distributed electrodes. The computational modeling framework consisted of a three-dimensional finite element tissue conductance model in combination with a multi-compartment biophysical axon model. For each lead design, two-dimensional threshold-dependent RoAs were calculated from the computational modeling results. The models showed more radial electrodes enabled finer resolution RoA steering; however, stimulation amplitude, and therefore spatial extent of the RoA, was limited by charge injection and charge storage capacity constraints due to the small electrode surface area for leads with more than four radially distributed electrodes. RoA shifting resolution was improved by the addition of radial electrodes when using uniform multi-cathode stimulation, but non-uniform multi-cathode stimulation produced equivalent or better resolution shifting without increasing the number of radial electrodes. Robust machine learning classification of 15 monopolar stimulation configurations was achieved using as few as three geometric features describing a RoA. The results of this study indicate that, for a clinical-scale DBS lead, more than four radial electrodes minimally improved in the ability to steer, shift, and sculpt axonal activation around a DBS lead and a simple feature set consisting of the RoA center of mass and orientation enabled robust machine learning classification. These results provide important design constraints for future development of high-density DBS arrays.

Highlights

  • Deep brain stimulation (DBS) is a neurosurgical intervention for symptomatic treatment of a number of brain disorders

  • DBS arrays with radially distributed electrodes have potential to improve patient outcomes by enhancing the flexibility of directing stimulation around an implanted DBS lead

  • Clinical DBS leads with cylindrical shell electrodes do not exceed electrode charge storage capacity or charge injection limits due to the large surface area and existing voltage or current compliances of current implantable pulse generators

Read more

Summary

Introduction

Deep brain stimulation (DBS) is a neurosurgical intervention for symptomatic treatment of a number of brain disorders. This axisymmetric modulation enables inadequate flexibility to adapt stimulation to compensate for neurosurgical targeting errors tangential to the DBS lead (Martens et al, 2011; Keane et al, 2012) or for targeting anatomical regions with complex geometries (Zitella et al, 2013; Teplitzky et al, 2014) In such cases, delivering therapy without evoking side effects such as phantom sensory perceptions, involuntary motor contractions, and cognitive/mood changes can be challenging (Frankemolle et al, 2010; Chaturvedi et al, 2012; Keane et al, 2012)

Methods
Results
Discussion
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.