Javascript must be enabled to continue!
GWAS in the southern African context
View through CrossRef
Abstract
Researchers would generally adjust for the possible confounding effect of population structure by considering global ancestry proportions or top principle components. Alternatively, researchers would conduct admixture mapping to increase the power to detect variants with an ancestry effect. This is sufficient in simple admixture scenarios, however, populations from southern Africa can be complex multi-way admixed populations. Duan
et al
. (2018) first described local ancestry adjusted allelic (LAAA) analysis as a robust method for discovering association signals, while producing minimal false-positives. Their simulation study, however, was limited to a two-way admixed population. Realizing that their findings might not translate to other admixture scenarios, we simulated a three- and five-way admixed population to compare the LAAA model to other models commonly used in GWAS. We found that, given our admixture scenarios, the LAAA model identifies the most causal variants in most of the phenotypes we tested across both the three-way and five-way admixed populations. The LAAA model also produced a high number of false-positives which was potentially caused by the ancestry effect size that we assumed. Considering the extent to which the various models tested differed in their results and considering that the source of a given association is unknown, we recommend that researchers use multiple GWAS models when analysing populations with complex ancestry.
Title: GWAS in the southern African context
Description:
Abstract
Researchers would generally adjust for the possible confounding effect of population structure by considering global ancestry proportions or top principle components.
Alternatively, researchers would conduct admixture mapping to increase the power to detect variants with an ancestry effect.
This is sufficient in simple admixture scenarios, however, populations from southern Africa can be complex multi-way admixed populations.
Duan
et al
.
(2018) first described local ancestry adjusted allelic (LAAA) analysis as a robust method for discovering association signals, while producing minimal false-positives.
Their simulation study, however, was limited to a two-way admixed population.
Realizing that their findings might not translate to other admixture scenarios, we simulated a three- and five-way admixed population to compare the LAAA model to other models commonly used in GWAS.
We found that, given our admixture scenarios, the LAAA model identifies the most causal variants in most of the phenotypes we tested across both the three-way and five-way admixed populations.
The LAAA model also produced a high number of false-positives which was potentially caused by the ancestry effect size that we assumed.
Considering the extent to which the various models tested differed in their results and considering that the source of a given association is unknown, we recommend that researchers use multiple GWAS models when analysing populations with complex ancestry.
Related Results
Valid inference for machine learning-assisted GWAS
Valid inference for machine learning-assisted GWAS
Abstract
Machine learning (ML) has revolutionized analytical strategies in almost all scientific disciplines including human genetics and genomics. Due to challenge...
GWAS significance thresholds in large cohorts
GWAS significance thresholds in large cohorts
AbstractWhile the p-value threshold of 5.0 × 10−8remains the standard for genome-wide association studies (GWAS) in humans and other species, it still needs to be updated to reflec...
Causality between cholelithiasis and ileus: a two-sample Mendelian randomization study
Causality between cholelithiasis and ileus: a two-sample Mendelian randomization study
Abstract
Background: Cholelithiasis is a prevalent digestive ailment in China, prompting extensive research on its association with ileus. However, prior investigations rel...
Linking GWAS to pharmacological treatments for psychiatric disorders
Linking GWAS to pharmacological treatments for psychiatric disorders
Abstract
Importance
Large-scale genome-wide association studies (GWASs) are expected to inform the development of pharmacologic...
e-GRASP: an integrated evolutionary and GRASP resource for exploring disease associations
e-GRASP: an integrated evolutionary and GRASP resource for exploring disease associations
Abstract
Background
Genome-wide association studies (GWAS) have become a mainstay of biological research concerned with d...
Processing genome-wide association studies within a repository of heterogeneous genomic datasets
Processing genome-wide association studies within a repository of heterogeneous genomic datasets
Abstract
Background
Genome Wide Association Studies (GWAS) are based on the observation of genome-wide sets of genetic va...
Identification and characterization of genes involved in antioxidant traits in local Thai rice (Oryza sativa L.)
Identification and characterization of genes involved in antioxidant traits in local Thai rice (Oryza sativa L.)
Developing rice (Oryza sativa L) cultivars with high antioxidant activities have become increasingly important since they have nutritional advantages for human health. Hence, the ...
Abstract ML-1: Pharmacogenomics in the Quest for Precision Endocrine Therapy of Breast Cancer
Abstract ML-1: Pharmacogenomics in the Quest for Precision Endocrine Therapy of Breast Cancer
Abstract
Endocrine therapy, with SERMs and AIs, is the most important treatment modality for the 70% of patients with ER+ early breast cancer. Clinically, there is m...

