Structuro-functional surrogates of response to subcallosal cingulate deep brain stimulation for depression

Author:

Elias Gavin J B12ORCID,Germann Jürgen12ORCID,Boutet Alexandre123ORCID,Pancholi Aditya1,Beyn Michelle E1ORCID,Bhatia Kartik3,Neudorfer Clemens1ORCID,Loh Aaron12,Rizvi Sakina J45,Bhat Venkat45,Giacobbe Peter6,Woodside D Blake4,Kennedy Sidney H245,Lozano Andres M12

Affiliation:

1. Division of Neurosurgery, Department of Surgery, University Health Network and University of Toronto, Toronto M5T 2S8, Canada

2. Krembil Research Institute, University of Toronto, Toronto M5T 0S8, Canada

3. Joint Department of Medical Imaging, University of Toronto, Toronto M5T 1W7, Canada

4. ASR Suicide and Depression Studies Unit, St. Michael’s Hospital, University of Toronto, M5B 1M8, Canada

5. Department of Psychiatry, University Health Network and University of Toronto, Toronto M5T 2S8, Canada

6. Department of Psychiatry, Sunnybrook Health Sciences Centre and University of Toronto, Toronto M4N 3M5, Canada

Abstract

Abstract Subcallosal cingulate deep brain stimulation produces long-term clinical improvement in approximately half of patients with severe treatment-resistant depression. We hypothesized that both structural and functional brain attributes may be important in determining responsiveness to this therapy. In a treatment-resistant depression subcallosal cingulate deep brain stimulation cohort, we retrospectively examined baseline and longitudinal differences in MRI-derived brain volume (n = 65) and 18F-fluorodeoxyglucose-PET glucose metabolism (n = 21) between responders and non-responders. Support vector machines were subsequently trained to classify patients’ response status based on extracted baseline imaging features. A machine learning model incorporating preoperative frontopolar, precentral/frontal opercular and orbitofrontal local volume values classified binary response status (12 months) with 83% accuracy [leave-one-out cross-validation (LOOCV): 80% accuracy] and explained 32% of the variance in continuous clinical improvement. It was also predictive in an out-of-sample subcallosal cingulate deep brain stimulation cohort (n = 21) with differing primary indications (bipolar disorder/anorexia nervosa; 76% accuracy). Adding preoperative glucose metabolism information from rostral anterior cingulate cortex and temporal pole improved model performance, enabling it to predict response status in the treatment-resistant depression cohort with 86% accuracy (LOOCV: 81% accuracy) and explain 67% of clinical variance. Response-related patterns of metabolic and structural post-deep brain stimulation change were also observed, especially in anterior cingulate cortex and neighbouring white matter. Areas where responders differed from non-responders—both at baseline and longitudinally—largely overlapped with depression-implicated white matter tracts, namely uncinate fasciculus, cingulum bundle and forceps minor/rostrum of corpus callosum. The extent of patient-specific engagement of these same tracts (according to electrode location and stimulation parameters) also served as an independent predictor of treatment-resistant depression response status (72% accuracy; LOOCV: 70% accuracy) and augmented performance of the volume-based (88% accuracy; LOOCV: 82% accuracy) and combined volume/metabolism-based support vector machines (100% accuracy; LOOCV: 94% accuracy). Taken together, these results indicate that responders and non-responders to subcallosal cingulate deep brain stimulation exhibit differences in brain volume and metabolism, both pre- and post-surgery. Moreover, baseline imaging features predict response to treatment (particularly when combined with information about local tract engagement) and could inform future patient selection and other clinical decisions.

Funder

RR Tasker Chair in Functional Neurosurgery at University Health Network (A.M.L.) and the Canadian Institutes of Health Research

Publisher

Oxford University Press (OUP)

Subject

Neurology (clinical)

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