Large-scale neuroimaging studies of major depressive disorder, associated traits and polygenic risk
dc.contributor.advisor
Sibley, Heather
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dc.contributor.advisor
McIntosh, Andrew
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dc.contributor.author
Shen, Xueyi
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dc.date.accessioned
2019-07-15T09:35:31Z
dc.date.available
2019-07-15T09:35:31Z
dc.date.issued
2019-07-06
dc.description.abstract
Major depressive disorder (MDD) is a highly prevalent and disabling condition with a
heritability of around 37%. Key symptoms of MDD include low mood and
psychological distress, but the mechanisms underlying MDD and its symptoms are
unclear. Genetic and neuroimaging techniques are important methods with which to
better understand the aetiology and mechanisms of depression. Recently, through
the availability of the UK Biobank and ENIGMA datasets, it has been possible to
conduct well-powered imaging studies of heterogeneous traits like MDD, with
genome-wide genetic data. These genetic data can act as causal instruments and
can be utilised to identify differences in neurobiological mechanisms.
The current thesis presents neurobiological associations with depressive symptoms
and genetic risk for MDD using data from the UK Biobank imaging project (N range
from 5,000 to 12,000). My overall aims were to investigate the neurobiological basis
of MDD status, depressive symptoms and MDD polygenic risk.
First, MDD case-control differences in subcortical volumes and white matter
microstructure indexed by fractional anisotropy and mean diffusivity, are presented
using the largest structural neuroimaging samples to date. MDD was associated
with worse white matter microstructure in the thalamic-radiation subset and forceps
major (posterior corpus callosum). No group difference was found for the volume of
any subcortical structure.
Next, associations between depressive symptom severity (including longitudinal and
cross-sectional measures) with white matter microstructure were tested. Over 8,000
participants had repeated measure of depressive symptoms assessed on 2-4
occasions across 5.89 to 10.69 years. I found several novel associations between
measures of depressive symptom severity (at the time of imaging, their variance
within individuals over time, and with longitudinal increasing depression severity) all
associated with lower white matter microstructure in the thalamic radiations. This
was the first study of this size looking at imaging associations with longitudinal
symptom measures and demonstrates consistent findings implicating
thalamocortical connections.
The third study presents results of phenotype wide association (‘PheWAS’) analysis
of polygenic risk for MDD, including imaging and other available phenotypes. In
total, 1,744 phenotypes were tested, covering sociodemographic, physical health,
mental health, subcortical volumes, white matter microstructure assessed with FA
and MD (mean diffusivity) and resting-state connectivity. I found that MDD polygenic
risk was associated with MDD-related phenotypes including severity of depression
and neuroticism, sleep, smoking, subjective well-being as well as neurobiological
phenotypes including white matter microstructure and resting-state connectivity.
In my final data chapter, neurobiological associations with cognition, as an important
risk factor of major depressive disorder, were also reported. I found that higher
connectivity related to the default mode network was associated with better
cognitive performance.
These studies suggest two features of neurobiology related to MDD traits and
genetic risk. First, they implicate microstructure of thalamic white matter connections
as an important biomarker for MDD risk, psychological distress and genetic risk, as
reflected by its consistent associations with depressive status, depressive
symptoms, within-subject variability of depression and MDD polygenic risk.
Secondly, the aberrant connections within the default mode network were related to
MDD phenotypes and polygenic risk. These findings, therefore, provide evidence
that these features may play a key role in MDD-related neuroarchitecture.
en
dc.identifier.uri
http://hdl.handle.net/1842/35775
dc.language.iso
en
dc.publisher
The University of Edinburgh
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dc.relation.hasversion
Shen, X., Reus, L. M., Cox, S. R., Adams, M. J., Liewald, D. C., Bastin, M. E., Smith, D. J., Deary, I. J., Whalley, H. C. and McIntosh, A. M. (2017) ‘Subcortical volume and white matter integrity abnormalities in major depressive disorder: Findings from UK Biobank imaging data’, Scientific Reports. Springer US, 7(1), pp. 1–10. doi: 10.1038/s41598-017- 05507-6.
en
dc.relation.hasversion
Shen, X., Cox, S. R., Adams, M. J., Howard, D. M., Lawrie, S. M., Ritchie, S. J., Bastin, M. E., Deary, I. J., McIntosh, A. M. and Whalley, H. C. (2018) ‘Resting-state connectivity and its association with cognitive performance, educational attainment, and household income in UK Biobank’, Biological Psychiatry: Cognitive Neuroscience and Neuroimaging. Elsevier Inc, pp. 1–9. doi: 10.1016/J.BPSC.2018.06.007.
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dc.subject
Major Depressive Disorder
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dc.subject
large sample sizes
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dc.subject
longitudinal assessments
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dc.subject
neuroimaging
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dc.subject
thalamus
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dc.subject
biomarkers for depression
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dc.title
Large-scale neuroimaging studies of major depressive disorder, associated traits and polygenic risk
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dc.type
Thesis or Dissertation
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dc.type.qualificationlevel
Doctoral
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dc.type.qualificationname
PhD Doctor of Philosophy
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