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RESEARCH PRODUCT

Cortical network fingerprints predict deep brain stimulation outcome in dystonia.

Günther DeuschlC. RiedelMartin GlaserGabriel Gonzalez-escamillaNabin KoiralaMartin M. ReichSergiu GroppaMuthuraman MuthuramanFlorian LangeJens Volkmann

subject

0301 basic medicineAdultMaleTreatment responsemedicine.medical_specialtyDeep brain stimulationMovement disordersmedicine.medical_treatmentDeep Brain Stimulation610 MedizinStimulationGrey matterGlobus PallidusSeverity of Illness IndexCohort Studies03 medical and health sciences0302 clinical medicineText miningPhysical medicine and rehabilitationAtrophy610 Medical sciencesmedicineHumansddc:610Dystoniabusiness.industryStructural integrityMiddle Agedmedicine.diseasenervous system diseasesDystoniamedicine.anatomical_structure030104 developmental biologyNeurologyCortical networkDystonic DisordersCohortFemaleNeurology (clinical)medicine.symptombusiness030217 neurology & neurosurgery

description

AbstractBackgroundDeep brain stimulation (DBS) is an effective evidence-based therapy for dystonia. However, no unequivocal predictors of therapy responses exist. We investigate whether patients optimally responding to DBS present distinct brain network organization and structural patterns.MethodsBased on a German multicentre cohort of eighty-two dystonia patients with segmental and generalized dystonia, who received DBS implantation in the globus pallidus internus patients were classified based on the clinical response 36 months after DBS, as superior-outcome group or moderate-outcome group, as above or below 70% motor improvement, respectively. Fifty-one patients met MRI-quality and treatment response requirements (mean age 51.3 ± 13.2 years; 25 female) and were included into further analysis. From preoperative MRI we assessed cortical thickness and structural covariance, which were then fed into network analysis using graph theory. We designed a support vector machine to classify subjects for the clinical response based on group network properties and individual grey matter fingerprints.ResultsThe moderate-outcome group showed cortical atrophy mainly in the sensorimotor and visuomotor areas and disturbed network topology in these regions. From all the structural integrity of the cortical mantle explained about 45% of the stimulation amplitude. Classification analyses achieved 88% of accuracy using individual grey matter atrophy patterns to predict DBS outcome.ConclusionsThe analysis of cortical integrity and network properties could be developed into independent predictors to identify dystonia patients who benefit from DBS.

10.1002/mds.27808https://pubmed.ncbi.nlm.nih.gov/31433874