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High-resolution virtual brain modeling personalizes deep brain stimulation for treatment-resistant depression: Spatiotemporal response characteristics following stimulation of neural fiber pathways

Title
High-resolution virtual brain modeling personalizes deep brain stimulation for treatment-resistant depression: Spatiotemporal response characteristics following stimulation of neural fiber pathways
Authors
An S.Fousek J.Kiss Z.H.T.Cortese F.van der Wijk G.McAusland L.B.Ramasubbu R.Jirsa V.K.Protzner A.B.
Ewha Authors
안소라
SCOPUS Author ID
안소라scopus
Issue Date
2022
Journal Title
NeuroImage
ISSN
1053-8119JCR Link
Citation
NeuroImage vol. 249
Keywords
Deep brain stimulationFiber tractsPersonalized medicineStimulation-induced event-related potentialTreatment-resistant depressionVirtual brain
Publisher
Academic Press Inc.
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
Over the past 15 years, deep brain stimulation (DBS) has been actively investigated as a groundbreaking therapy for patients with treatment-resistant depression (TRD); nevertheless, outcomes have varied from patient to patient, with an average response rate of ∼50%. The engagement of specific fiber tracts at the stimulation site has been hypothesized to be an important factor in determining outcomes, however, the resulting individual network effects at the whole-brain scale remain largely unknown. Here we provide a computational framework that can explore each individual's brain response characteristics elicited by selective stimulation of fiber tracts. We use a novel personalized in-silico approach, the Virtual Big Brain, which makes use of high-resolution virtual brain models at a mm-scale and explicitly reconstructs more than 100,000 fiber tracts for each individual. Each fiber tract is active and can be selectively stimulated. Simulation results demonstrate distinct stimulus-induced event-related potentials as a function of stimulation location, parametrized by the contact positions of the electrodes implanted in each patient, even though validation against empirical patient data reveals some limitations (i.e., the need for individual parameter adjustment, and differential accuracy across stimulation locations). This study provides evidence for the capacity of personalized high-resolution virtual brain models to investigate individual network effects in DBS for patients with TRD and opens up novel avenues in the personalized optimization of brain stimulation. © 2021
DOI
10.1016/j.neuroimage.2021.118848
Appears in Collections:
사범대학 > 언어병리학과 > Journal papers
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