Regional brain volumes and antidepressant treatment resistance in major depressive disorder
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Wigmore, Eleanor May
Abstract
Major depressive disorder (MDD) is a heritable and highly debilitating condition with
antidepressants, first-line treatment, demonstrating low to modest response rates.
No
current biological mechanism substantially explains MDD but both neurostructural
and neurochemical pathways have been suggested. Further explication of these may
aid in identifying subgroups of MDD that are better defined by their aetiology.
Specifically, genetic stratification provides an array of tools to do this, including the
intermediate phenotype approach which was applied in this thesis. This thesis explores
genetic overlap with regional brain volume and MDD and the genetic and non-genetic
components of antidepressant response.
The first study utilised the most recent published data from ENIGMA (Enhancing
Neuroimaging Genetics through Meta-analysis) Consortium’s genome-wide
association study (GWAS) of regional brain volume to examine shared genetic
architecture between seven subcortical brain volumes and intracranial volume (ICV)
and MDD. This was explored using linkage disequilibrium score regression (LDSC),
polygenic risk scoring (PRS) techniques, Mendelian randomisation (MR) analysis and
BUHMBOX (Breaking Up Heterogeneous Mixture Based On Cross-locus
correlations). Results indicated that hippocampal volume was positively genetically
correlated with MDD (rg= 0.46, P= 0.02), although this did not survive multiple
comparison testing. Additionally, there was evidence for genetic subgrouping in
Generation Scotland: Scottish Family Health Study (GS:SFHS) MDD cases
(P=0.00281), however, this was not replicated in two other independent samples.
This
study does not support a shared architecture for regional brain volumes and MDD,
however, provided some evidence that hippocampal volume and MDD may share
genetic architecture in a subgroup of individuals, albeit the genetic correlation did not
survive multiple testing correction and genetic subgroup heterogeneity was not
replicated.
To explore antidepressant treatment resistance, the second study utilised prescription
data in (GS:SFHS) to define a measure of (a) treatment resistance (TR) and (b) stages
of resistance (SR) by inferring antidepressant switching as non-response. GWAS were
conducted separately for TR in GS:SFHS and the GENDEP (Genome-based
Therapeutic Drugs for Depression) study and then meta-analysed (meta-analysis
n=4,213, cases=358). For SR, a GWAS on GS:SFHS only was performed (n=3,452).
Additionally, gene-set enrichment, polygenic risk scoring (PRS) and genetic
correlation analysis were conducted. No significant locus, gene or gene-set was
associated with TR or SR, however power analysis indicated that this analysis was
underpowered. Pedigree-based correlations identified genetic overlap with
psychological distress, schizotypy and mood disorder traits.
Finally, the role of neuroticism, psychological resilience and coping styles in
antidepressant resistance was investigated. Univariate, moderation and mediation
models were applied using logistic regression and structural equation modelling
techniques. In univariate models, neuroticism and emotion-orientated coping
demonstrated significant negative association with antidepressant resistance, whereas
resilience, task-orientated and avoidance-orientated coping demonstrated significant
positive association. No moderation of the association between neuroticism and TR
was detected and no mediating effect of coping styles was found. However, resilience
was found to partially mediate the association between neuroticism and TR.
Whilst the first study does not indicate a genetic overlap between regional brain
volumes and MDD, it demonstrates the utility of the intermediate approach in complex
disease. Antidepressant resistance was associated with neuroticism both genetically
and phenotypically, indicating its role as an intermediate phenotype. Nonetheless,
larger sample sizes are needed to adequately address the components of antidepressant
resistance. Further work in antidepressant non-response may help to identify biological
mechanisms responsible in MDD pathology and help stratify individuals into more
tractable groups.
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