scholarly journals Independent Genomic Sources of Brain Structure and Function

2021 ◽  
Author(s):  
Sourena Soheili-Nezhad ◽  
Christian F. Beckmann ◽  
Emma Sprooten

AbstractIntroductionThe last decade has seen a surge in well powered genome-wide association studies (GWASs) of complex behavioural traits, disorders, and more recently, of brain structural and functional neuroimaging features. However, the extreme polygenicity of these complex traits makes it difficult to translate the GWAS signal into mechanistic biological insights. We postulate that the covariance of SNP-effects across many brain features, as be captured by latent genomic components of SNP effect sizes. These may partly reflect the concerted multi-locus genomic effects through known molecular pathways and protein-protein interactions. Here, we test the feasibility of a new data-driven method to derive such latent components of genome-wide effects on more than thousand neuroimaging derived traits, and investigate their utility in interpreting the complex biological processes that shape the GWAS signal.MethodsWe downloaded the GWAS summary statistics of 3,143 brain imaging-derived phenotypes (IDPs) from the UK Biobank, provided by the Oxford Brain Imaging Genetics (BIG) Server (Elliott et al. 2018). Probabilistic independent component analysis (ICA) was used to extract two hundred independent genomic components from the matrix of SNP-effect sizes. We qualitatively describe the distribution of the latent component’s loadings in the neuroimaging and the genomic dimensions. Gene-wide statistics were calculated for each genomic component. We tested the genomic component’s enrichment for molecular pathways using MSigDB, and for single-cell RNA-sequencing of adult and foetal brain cells.Results200 components explained 80% of the variance in SNP-effects sizes. Each MRI modality and data processing method projected the imaging data into a clearly distinct cluster in the genomic component embedded space. Among the 200 genomic components, 157 were clearly driven by a single locus, while 39 were highly polygenic. Together, these 39 components were significantly enriched for 2,274 MSigDB gene sets (fully corrected for multiple testing across gene-sets and components). Several components were sensitive to molecular pathways, single cell expression profiles, and brain traits in patterns consistent with knowledge across these biological levels. To illustrate this, we highlight a component that implicated axonal regeneration pathways, which was specifically enriched for gene expression in oligodendrocyte precursors, microglia and astrocytes, and loaded highly on white matter neuroimaging traits. We highlight a second component that implicated synaptic function and neuron projection organization pathways that was specifically enriched for neuronal cell transcriptomes.ConclusionWe propose genomic ICA as a new method to identify latent genetic factors influencing brain structure and function by multimodal MRI. The derived latent genomic dimensions are highly sensitive to known molecular pathways and cell-specific gene expression profiles. Genomic ICA may help to disentangle the many different biological routes by which the genome defines the inter-individual variation of the brain. Future research is aimed at using this method to profile individual subjects’ genomic data along the new latent dimensions and evaluating the utility of these dimensions in stratifying heterogeneous patient populations.

PLoS ONE ◽  
2013 ◽  
Vol 8 (10) ◽  
pp. e76815 ◽  
Author(s):  
Esther Walton ◽  
Daniel Geisler ◽  
Johanna Hass ◽  
Jingyu Liu ◽  
Jessica Turner ◽  
...  

2017 ◽  
Author(s):  
Lloyd T. Elliott ◽  
Kevin Sharp ◽  
Fidel Alfaro-Almagro ◽  
Sinan Shi ◽  
Karla Miller ◽  
...  

SummaryThe genetic basis of brain structure and function is largely unknown. We carried out genome-wide association studies of 3,144 distinct functional and structural brain imaging derived phenotypes in UK Biobank (discovery dataset 8,428 subjects). We show that many of these phenotypes are heritable. We identify 148 clusters of SNP-imaging associations with lead SNPs that replicate at p<0.05, when we would expect 21 to replicate by chance. Notable significant and interpretable associations include: iron transport and storage genes, related to changes in T2* in subcortical regions; extracellular matrix and the epidermal growth factor genes, associated with white matter micro-structure and lesion volume; genes regulating mid-line axon guidance development associated with pontine crossing tract organisation; and overall 17 genes involved in development, pathway signalling and plasticity. Our results provide new insight into the genetic architecture of the brain with relevance to complex neurological and psychiatric disorders, as well as brain development and aging. The full set of results is available on the interactive Oxford Brain Imaging Genetics (BIG) web browser.


2015 ◽  
Vol 45 (12) ◽  
pp. 2461-2480 ◽  
Author(s):  
R. Gurung ◽  
D. P. Prata

The powerful genome-wide association studies (GWAS) revealed common mutations that increase susceptibility for schizophrenia (SZ) and bipolar disorder (BD), but the vast majority were not known to be functional or associated with these illnesses. To help fill this gap, their impact on human brain structure and function has been examined. We systematically discuss this output to facilitate its timely integration in the psychosis research field; and encourage reflection for future research. Irrespective of imaging modality, studies addressing the effect of SZ/BD GWAS risk genes (ANK3, CACNA1C, MHC, TCF4, NRGN, DGKH, PBRM1, NCANandZNF804A) were included. Most GWAS risk variations were reported to affect neuroimaging phenotypes implicated in SZ/BD: white-matter integrity (ANK3andZNF804A), volume (CACNA1CandZNF804A) and density (ZNF804A); grey-matter (CACNA1C, NRGN, TCF4andZNF804A) and ventricular (TCF4) volume; cortical folding (NCAN) and thickness (ZNF804A); regional activation during executive tasks (ANK3, CACNA1C, DGKH, NRGNandZNF804A) and functional connectivity during executive tasks (CACNA1CandZNF804A), facial affect recognition (CACNA1CandZNF804A) and theory-of-mind (ZNF804A); but inconsistencies and non-replications also exist. Further efforts such as standardizing reporting and exploring complementary designs, are warranted to test the reproducibility of these early findings.


2011 ◽  
Vol 26 (S2) ◽  
pp. 2083-2083
Author(s):  
G. Donohoe ◽  
E. Rose ◽  
D. Morris ◽  
A. Hargreaves ◽  
M. Gill ◽  
...  

The advent of genome wide association studies have resulted in the identification of a number of novel genetic loci for schizophrenia and related disorders. Understanding the functional impact of these variants on brain structure and function is crucial to understand their role in disease pathology. We presents data based on our genetic and neuropsychological assessment of almost 700 patients and healthy participants for a number of these variants and replication of our findings in independent samples of almost 1500 cases and controls. Specifically, we will use this data to suggest that the risk associated with some genetics variants (e.g. NOS1) is being mediated by an influence on variation in intelligence and other cognitive phenotypes, while other risk variants (e.g. ZNF804A) delineate illness subtypes in which cognitive deficits are a less prominent feature.


2017 ◽  
Vol 49 (5S) ◽  
pp. 824 ◽  
Author(s):  
X. r. Tan ◽  
Ivan C. C. Low ◽  
Mary C. Stephenson ◽  
T. Kok ◽  
Heinrich W. Nolte ◽  
...  

2011 ◽  
Vol 32 (6) ◽  
pp. 814-822 ◽  
Author(s):  
Linda L. Chao ◽  
Linda Abadjian ◽  
Jennifer Hlavin ◽  
Deiter J. Meyerhoff ◽  
Michael W. Weiner

1997 ◽  
Vol 820 (1 Imaging Brain) ◽  
pp. 139-148 ◽  
Author(s):  
G. ALLAN JOHNSON ◽  
HELENE BENVENISTE ◽  
ROBERT T. ENGELHARDT ◽  
HUI QIU ◽  
LAURENCE W. HEDLUND

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