Major Depressive Disorder (MDD) disrupts the lives of millions of people each year and presents a substantial societal and economic burden. Despite prior research, the mechanisms underlying treatment response and relapse in MDD remain unclear. Several treatments for MDD are available, but establishing the best form of treatment can be a protracted trial and error process where some patients remain unresponsive. The parent R01 for this proposed supplement is applying a leading-edge multimodal imaging approach to identify biomarkers indexing complementary aspects of treatment-induced brain plasticity focusing on fronto-limbic and striatal circuitry in an electroconvulsive therapy (ECT) treatment model. Magnetic resonance imaging (MRI) that includes structural, functional, diffusion and perfusion imaging and MR proton magnetic resonance spectroscopy (1HMRS) is being performed at 4 time points: prior to the 1st ECT treatment, after the 2nd ECT session, 1 week after completion of the ECT index series and at 6-months post treatment when relapse will be determined. Clinical assessments are being made at two additional interval time points. Demographically similar control subjects are being imaged twice to allow estimation of the variance associated with serial assessments and to determine normalization of biomarkers in association with treatment success in MDD. Leveraging the infrastructure of the R01, intramural funding has allowed us to also obtain blood samples at each of the imaging time points for two other biologically important measures complementary to the imaging and clinical data: peripheral lymphocyte gene expression levels and psychoneuroimmunology (PNI) measures of inflammation. Analysis of the preliminary gene expression data supports the potential for these measures, when used in concert with the imaging results, to more precisely characterize the neurobiological bases of MDD and the neural processes associated with treatment success. In this supplement, we propose to extend our neuroimaging biomarker aims to also include gene expression and PNI aims. As with parent R01, the potential impact of the proposed research to science and health is large. New scientific leads may inform novel treatment approaches, identify individuals at risk for developing depression, elucidate disease-related genomic or endophenotypic factors, identify subpopulations of MDD patients who are more likely to benefit from a particular treatment, and may predictively identify patients at high risk for relapse thereb allowing for the use of alternate or more aggressive individualized treatment strategies. Longitudinal measurements of gene expression and PNI markers, in combination with neuroimaging in the context of the rapid clinical response to ECT, is an innovative approach ideally suited for charting the trajectory of mental illness to determine where, when and how to intervene.

Public Health Relevance

Depression is a commonly experienced illness that disables the lives of millions of people each year. The goal of the proposed research is to identify changes in the brain that will help us to understand why and how some people respond to treatment for depression while others do not. This knowledge may allow us to use biological markers to predict who will respond to treatment in the future and to design more effective treatments or cures that will improve the lives of patients and their families and lower health care costs to society.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
3R01MH092301-03S1
Application #
8579531
Study Section
Adult Psychopathology and Disorders of Aging Study Section (APDA)
Program Officer
Rumsey, Judith M
Project Start
2010-12-01
Project End
2016-01-31
Budget Start
2013-07-16
Budget End
2014-01-31
Support Year
3
Fiscal Year
2013
Total Cost
$398,353
Indirect Cost
$139,682
Name
University of California Los Angeles
Department
Neurology
Type
Schools of Medicine
DUNS #
092530369
City
Los Angeles
State
CA
Country
United States
Zip Code
90095
Leaver, Amber M; Vasavada, Megha; Joshi, Shantanu H et al. (2018) Mechanisms of Antidepressant Response to Electroconvulsive Therapy Studied With Perfusion Magnetic Resonance Imaging. Biol Psychiatry :
Kruse, Jennifer L; Congdon, Eliza; Olmstead, Richard et al. (2018) Inflammation and Improvement of Depression Following Electroconvulsive Therapy in Treatment-Resistant Depression. J Clin Psychiatry 79:
Wade, Benjamin S C; Sui, Jing; Hellemann, Gerhard et al. (2017) Inter and intra-hemispheric structural imaging markers predict depression relapse after electroconvulsive therapy: a multisite study. Transl Psychiatry 7:1270
Njau, Stephanie; Joshi, Shantanu H; Espinoza, Randall et al. (2017) Neurochemical correlates of rapid treatment response to electroconvulsive therapy in patients with major depression. J Psychiatry Neurosci 42:6-16
Wade, Benjamin S C; Sui, Jing; Njau, Stephanie et al. (2017) DATA-DRIVEN CLUSTER SELECTION FOR SUBCORTICAL SHAPE AND CORTICAL THICKNESS PREDICTS RECOVERY FROM DEPRESSIVE SYMPTOMS. Proc IEEE Int Symp Biomed Imaging 2017:502-506
Oltedal, Leif; Bartsch, Hauke; Sørhaug, Ole Johan Evjenth et al. (2017) The Global ECT-MRI Research Collaboration (GEMRIC): Establishing a multi-site investigation of the neural mechanisms underlying response to electroconvulsive therapy. Neuroimage Clin 14:422-432
Vasavada, Megha M; Leaver, Amber M; Njau, Stephanie et al. (2017) Short- and Long-term Cognitive Outcomes in Patients With Major Depression Treated With Electroconvulsive Therapy. J ECT 33:278-285
Vasavada, Megha M; Leaver, Amber M; Espinoza, Randall T et al. (2016) Structural connectivity and response to ketamine therapy in major depression: A preliminary study. J Affect Disord 190:836-841
Joshi, Shantanu H; Espinoza, Randall T; Pirnia, Tara et al. (2016) Structural Plasticity of the Hippocampus and Amygdala Induced by Electroconvulsive Therapy in Major Depression. Biol Psychiatry 79:282-92
Leaver, Amber M; Espinoza, Randall; Pirnia, Tara et al. (2016) Modulation of intrinsic brain activity by electroconvulsive therapy in major depression. Biol Psychiatry Cogn Neurosci Neuroimaging 1:77-86

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