Background: Heterogeneity in the definition and measurement of complex diseases in Genome-Wide Association Studies (GWAS) may lead to misdiagnoses and misclassification errors that can significantly impact discovery of disease loci. While well appreciated, almost all analyses of GWAS data consider reported disease phenotype values as is without accounting for potential misclassification.
Results: Here, we introduce Phenotype Latent variable Extraction of disease misdiagnosis (PheLEx), a GWAS analysis framework that learns and corrects misclassified phenotypes using structured genotype associations within a dataset. PheLEx consists of a hierarchical Bayesian latent variable model, where inference of differential misclassification is accomplished using filtered genotypes while implementing a full mixed model to account for population structure and genetic relatedness in study populations. Through simulations, we show that the PheLEx framework dramatically improves recovery of the correct disease state when considering realistic allele effect sizes compared to existing methodologies designed for Bayesian recovery of disease phenotypes. We also demonstrate the potential of PheLEx for extracting new potential loci from existing GWAS data by analyzing bipolar disorder and epilepsy phenotypes available from the UK Biobank. From the PheLEx analysis of these data, we identified new candidate disease loci not previously reported for these datasets that have value for supplemental hypothesis generation.
Conclusion: PheLEx shows promise in reanalyzing GWAS datasets to provide supplemental candidate loci that are ignored by traditional GWAS analysis methodologies.
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http://dx.doi.org/10.1186/s12859-020-3387-z | DOI Listing |
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View Article and Find Full Text PDFHomelessness is a growing concern in the United States, especially among people who use drugs (PWUD). The degree of material hardship among this population may be linked to worse health outcomes. PWUD experiencing homelessness in urban areas are increasingly subjected to policies and social treatment, such as forced displacement, which may worsen material hardship.
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View Article and Find Full Text PDFFront Psychol
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Department of Industrial/Organizational and Social Psychology, Institute of Psychology, Technical University Braunschweig, Braunschweig, Germany.
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View Article and Find Full Text PDFJ Interpers Violence
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Lyda Hill Institute for Human Resilience, University of Colorado, Colorado Springs, USA.
Both mass shootings and acts of bias-motivated violence have significant psychological consequences, as survivors commonly experience psychological distress in the form of depression symptoms, anxiety symptoms, and posttraumatic stress symptoms (PTSS) following the event. Moreover, increases in psychological distress are common near the year mark of a traumatic event. However, little is currently known about how communities affected by the intersection of bias-motivated violence and mass shootings are affected by these events in the longer term.
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