Automated optimization of deep brain stimulation parameters for modulating neuroimaging-based targets.
Mahsa MalekmohammadiRichard MustakosSameer A ShethNader PouratianCameron C McIntyreKelly R BijankiEvangelia TsolakiKevin ChiuMeghan E RobinsonJoshua A AdkinsonDenise OswaltStephen CarcieriPublished in: Journal of neural engineering (2022)
Objective. Therapeutic efficacy of deep brain stimulation (DBS) in both established and emerging indications, is highly dependent on accurate lead placement and optimized clinical programming. The latter relies on clinicians' experience to search among available sets of stimulation parameters and can be limited by the time constraints of clinical practice. Recent innovations in device technology have expanded the number of possible electrode configurations and parameter sets available to clinicians, amplifying the challenge of time constraints. We hypothesize that patient specific neuroimaging data can effectively assist the clinical programming using automated algorithms. Approach. This paper introduces the DBS Illumina 3D algorithm as a tool which uses patient-specific imaging to find stimulation settings that optimizes activating a target area while minimizing the stimulation of areas outside the target that could result in unknown or undesired side effects. This approach utilizes preoperative neuroimaging data paired with the postoperative reconstruction of the lead trajectory to search the available stimulation space and identify optimized stimulation parameters. We describe the application of this algorithm in three patients with treatment-resistant depression who underwent bilateral implantation of DBS in subcallosal cingulate cortex and ventral capsule/ventral striatum using tractography optimized targeting with an imaging defined target previously described. Main results. Compared to the stimulation settings selected by the clinicians (informed by anatomy), stimulation settings produced by the algorithm that achieved similar or greater target coverage, produced a significantly smaller stimulation area that spilled outside the target ( P = 0.002). Significance . The DBS Illumina 3D algorithm is seamlessly integrated with the clinician programmer software and effectively and rapidly assists clinicians with the analysis of image based anatomy, and provides a starting point to search the highly complex stimulation parameter space and arrive at the stimulation settings that optimize activating a target area.
Keyphrases
- deep brain stimulation
- parkinson disease
- machine learning
- deep learning
- obsessive compulsive disorder
- high resolution
- palliative care
- clinical practice
- healthcare
- artificial intelligence
- spinal cord
- electronic health record
- high throughput
- physical activity
- photodynamic therapy
- sleep quality
- cancer therapy
- case report