journal
https://read.qxmd.com/read/38644517/a-novel-application-of-data-consistent-inversion-to-overcome-spurious-inference-in-genome-wide-association-studies
#1
JOURNAL ARTICLE
Negar Janani, Kendra A Young, Greg Kinney, Matthew Strand, John E Hokanson, Yaning Liu, Troy Butler, Erin Austin
The genome-wide association studies (GWAS) typically use linear or logistic regression models to identify associations between phenotypes (traits) and genotypes (genetic variants) of interest. However, the use of regression with the additive assumption has potential limitations. First, the normality assumption of residuals is the one that is rarely seen in practice, and deviation from normality increases the Type-I error rate. Second, building a model based on such an assumption ignores genetic structures, like, dominant, recessive, and protective-risk cases...
April 21, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38634654/shared-genetic-risk-between-major-orofacial-cleft-phenotypes-in-an-african-population
#2
JOURNAL ARTICLE
Azeez Alade, Tabitha Peter, Tamara Busch, Waheed Awotoye, Deepti Anand, Oladayo Abimbola, Emmanuel Aladenika, Mojisola Olujitan, Oscar Rysavy, Phuong Fawng Nguyen, Thirona Naicker, Peter A Mossey, Lord J J Gowans, Mekonen A Eshete, Wasiu L Adeyemo, Erliang Zeng, Eric Van Otterloo, Michael O'Rorke, Adebowale Adeyemo, Jeffrey C Murray, Salil A Lachke, Paul A Romitti, Azeez Butali
Nonsyndromic orofacial clefts (NSOFCs) represent a large proportion (70%-80%) of all OFCs. They can be broadly categorized into nonsyndromic cleft lip with or without cleft palate (NSCL/P) and nonsyndromic cleft palate only (NSCPO). Although NSCL/P and NSCPO are considered etiologically distinct, recent evidence suggests the presence of shared genetic risks. Thus, we investigated the genetic overlap between NSCL/P and NSCPO using African genome-wide association study (GWAS) data on NSOFCs. These data consist of 814 NSCL/P, 205 NSCPO cases, and 2159 unrelated controls...
April 18, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38606643/hierarchical-joint-analysis-of-marginal-summary-statistics-part-i-multipopulation-fine-mapping-and-credible-set-construction
#3
JOURNAL ARTICLE
Jiayi Shen, Lai Jiang, Kan Wang, Anqi Wang, Fei Chen, Paul J Newcombe, Christopher A Haiman, David V Conti
Recent advancement in genome-wide association studies (GWAS) comes from not only increasingly larger sample sizes but also the shift in focus towards underrepresented populations. Multipopulation GWAS increase power to detect novel risk variants and improve fine-mapping resolution by leveraging evidence and differences in linkage disequilibrium (LD) from diverse populations. Here, we expand upon our previous approach for single-population fine-mapping through Joint Analysis of Marginal SNP Effects (JAM) to a multipopulation analysis (mJAM)...
April 12, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38606632/structured-testing-of-genetic-association-with-mixed-clinical-outcomes
#4
JOURNAL ARTICLE
Meiling Liu, Yu-Ru Su, Yang Liu, Li Hsu, Qianchuan He
Genetic factors play a fundamental role in disease development. Studying the genetic association with clinical outcomes is critical for understanding disease biology and devising novel treatment targets. However, the frequencies of genetic variations are often low, making it difficult to examine the variants one-by-one. Moreover, the clinical outcomes are complex, including patients' survival time and other binary or continuous outcomes such as recurrences and lymph node count, and how to effectively analyze genetic association with these outcomes remains unclear...
April 12, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38533840/oscaa-a-two-dimensional-gaussian-mixture-model-for-copy-number-variation-association-analysis
#5
JOURNAL ARTICLE
Xuanxuan Yu, Xizhi Luo, Guoshuai Cai, Feifei Xiao
Copy number variants (CNVs) are prevalent in the human genome and are found to have a profound effect on genomic organization and human diseases. Discovering disease-associated CNVs is critical for understanding the pathogenesis of diseases and aiding their diagnosis and treatment. However, traditional methods for assessing the association between CNVs and disease risks adopt a two-stage strategy conducting quantitative CNV measurements first and then testing for association, which may lead to biased association estimation and low statistical power, serving as a major barrier in routine genome-wide assessment of such variation...
March 27, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38504141/breast-and-bowel-cancers-diagnosed-in-people-too-young-to-have-cancer-a-blueprint-for-research-using-family-and-twin-studies
#6
JOURNAL ARTICLE
John L Hopper, Shuai Li, Robert J MacInnis, James G Dowty, Tuong L Nguyen, Minh Bui, Gillian S Dite, Vivienne F C Esser, Zhoufeng Ye, Enes Makalic, Daniel F Schmidt, Benjamin Goudey, Karen Alpen, Miroslaw Kapuscinski, Aung Ko Win, Pierre-Antoine Dugué, Roger L Milne, Harindra Jayasekara, Jennifer D Brooks, Sue Malta, Lucas Calais-Ferreira, Alexander C Campbell, Jesse T Young, Tu Nguyen-Dumont, Joohon Sung, Graham G Giles, Daniel Buchanan, Ingrid Winship, Mary Beth Terry, Melissa C Southey, Mark A Jenkins
Young breast and bowel cancers (e.g., those diagnosed before age 40 or 50 years) have far greater morbidity and mortality in terms of years of life lost, and are increasing in incidence, but have been less studied. For breast and bowel cancers, the familial relative risks, and therefore the familial variances in age-specific log(incidence), are much greater at younger ages, but little of these familial variances has been explained. Studies of families and twins can address questions not easily answered by studies of unrelated individuals alone...
March 19, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38472646/causation-and-familial-confounding-as-explanations-for-the-associations-of-polygenic-risk-scores-with-breast-cancer-evidence-from-innovative-ice-falcon-and-ice-cristal-analyses
#7
JOURNAL ARTICLE
Shuai Li, Gillian S Dite, Robert J MacInnis, Minh Bui, Tuong L Nguyen, Vivienne F C Esser, Zhoufeng Ye, James G Dowty, Enes Makalic, Joohon Sung, Graham G Giles, Melissa C Southey, John L Hopper
A polygenic risk score (PRS) combines the associations of multiple genetic variants that could be due to direct causal effects, indirect genetic effects, or other sources of familial confounding. We have developed new approaches to assess evidence for and against causation by using family data for pairs of relatives (Inference about Causation from Examination of FAmiliaL CONfounding [ICE FALCON]) or measures of family history (Inference about Causation from Examining Changes in Regression coefficients and Innovative STatistical AnaLyses [ICE CRISTAL])...
March 12, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38472165/using-parent-offspring-pairs-and-trios-to-estimate-indirect-genetic-effects-in-education
#8
JOURNAL ARTICLE
Victória Trindade Pons, Annique Claringbould, Priscilla Kamphuis, Albertine J Oldehinkel, Hanna M van Loo
We investigated indirect genetic effects (IGEs), also known as genetic nurture, in education with a novel approach that uses phased data to include parent-offspring pairs in the transmitted/nontransmitted study design. This method increases the power to detect IGEs, enhances the generalizability of the findings, and allows for the study of effects by parent-of-origin. We validated and applied this method in a family-based subsample of adolescents and adults from the Lifelines Cohort Study in the Netherlands (N = 6147), using the latest genome-wide association study data on educational attainment to construct polygenic scores (PGS)...
March 12, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38472164/are-trait-associated-genes-clustered-together-in-a-gene-network
#9
JOURNAL ARTICLE
Hyun Jung Koo, Wei Pan
Genome-wide association studies (GWAS) have provided an abundance of information about the genetic variants and their loci that are associated to complex traits and diseases. However, due to linkage disequilibrium (LD) and noncoding regions of loci, it remains a challenge to pinpoint the causal genes. Gene network-based approaches, paired with network diffusion methods, have been proposed to prioritize causal genes and to boost statistical power in GWAS based on the assumption that trait-associated genes are clustered in a gene network...
March 12, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38420714/unveiling-challenges-in-mendelian-randomization-for-gene-environment-interaction
#10
JOURNAL ARTICLE
Malka Gorfine, Conghui Qu, Ulrike Peters, Li Hsu
Gene-environment (GxE) interactions play a crucial role in understanding the complex etiology of various traits, but assessing them using observational data can be challenging due to unmeasured confounders for lifestyle and environmental risk factors. Mendelian randomization (MR) has emerged as a valuable method for assessing causal relationships based on observational data. This approach utilizes genetic variants as instrumental variables (IVs) with the aim of providing a valid statistical test and estimation of causal effects in the presence of unmeasured confounders...
February 29, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38379245/robust-use-of-phenotypic-heterogeneity-at-drug-target-genes-for-mechanistic-insights-application-of-cis-multivariable-mendelian-randomization-to-glp1r-gene-region
#11
JOURNAL ARTICLE
Ashish Patel, Dipender Gill, Dmitry Shungin, Christos S Mantzoros, Lotte Bjerre Knudsen, Jack Bowden, Stephen Burgess
Phenotypic heterogeneity at genomic loci encoding drug targets can be exploited by multivariable Mendelian randomization to provide insight into the pathways by which pharmacological interventions may affect disease risk. However, statistical inference in such investigations may be poor if overdispersion heterogeneity in measured genetic associations is unaccounted for. In this work, we first develop conditional F statistics for dimension-reduced genetic associations that enable more accurate measurement of phenotypic heterogeneity...
February 20, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38334222/making-sense-of-breast-cancer-risk-estimates
#12
JOURNAL ARTICLE
John O'Quigley
Individual probabilistic assessments on the risk of cancer, primary or secondary, will not be understood by most patients. That is the essence of our arguments in this paper. Greater understanding can be achieved by extensive, intensive, and detailed counseling. But since probability itself is a concept that easily escapes our everyday intuition-consider the famous Monte Hall paradox-then it would also be wise to advise patients and potential patients, to not put undue weight on any probabilistic assessment...
February 9, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38317326/revealing-genomic-heterogeneity-and-commonality-a-penalized-integrative-analysis-approach-accounting-for-the-adjacency-structure-of-measurements
#13
JOURNAL ARTICLE
Xindi Wang, Yu Jiang, Yifan Sun
Advancements in high-throughput genomic technologies have revolutionized the field of disease biomarker identification by providing large-scale genomic data. There is an increasing focus on understanding the relationships among diverse patient groups with distinct disease subtypes and characteristics. Complex diseases exhibit both heterogeneity and shared genomic factors, making it essential to investigate these patterns to accurately detect markers and comprehensively understand the diseases. Integrative analysis has emerged as a promising approach to address this challenge...
February 5, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38317324/gene-based-association-tests-in-family-samples-using-gwas-summary-statistics
#14
JOURNAL ARTICLE
Peng Wang, Xiao Xu, Ming Li, Xiang-Yang Lou, Siqi Xu, Baolin Wu, Guimin Gao, Ping Yin, Nianjun Liu
Genome-wide association studies (GWAS) have led to rapid growth in detecting genetic variants associated with various phenotypes. Owing to a great number of publicly accessible GWAS summary statistics, and the difficulty in obtaining individual-level genotype data, many existing gene-based association tests have been adapted to require only GWAS summary statistics rather than individual-level data. However, these association tests are restricted to unrelated individuals and thus do not apply to family samples directly...
February 5, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38303123/mitigating-type-1-error-inflation-and-power-loss-in-gxe-prs-genotype-environment-interaction-in-polygenic-risk-score-models
#15
JOURNAL ARTICLE
Dovini Jayasinghe, Md Moksedul Momin, Kerri Beckmann, Elina Hyppönen, Beben Benyamin, S Hong Lee
The use of polygenic risk score (PRS) models has transformed the field of genetics by enabling the prediction of complex traits and diseases based on an individual's genetic profile. However, the impact of genotype-environment interaction (GxE) on the performance and applicability of PRS models remains a crucial aspect to be explored. Currently, existing genotype-environment interaction polygenic risk score (GxE PRS) models are often inappropriately used, which can result in inflated type 1 error rates and compromised results...
February 1, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38282283/interval-estimate-of-causal-effect-in-summary-data-based-mendelian-randomization-in-the-presence-of-winner-s-curse
#16
JOURNAL ARTICLE
Kai Wang
This research focuses on the interval estimation of the causal effect of an exposure on an outcome using the summary data-based Mendelian randomization (SMR) method while accounting for the winner's curse caused by the selection of single nucleotide polymorphism instruments. This issue is understudied and is important as the point estimate is biased. Since Fieller's theorem and its variations are not suitable for constructing a confidence interval, we use the box method. This box method is known to be conservative and thus provides a lower bound on the coverage level...
January 28, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38263619/simmrd-an-open-source-tool-to-perform-simulations-in-mendelian-randomization
#17
JOURNAL ARTICLE
Noah Lorincz-Comi, Yihe Yang, Xiaofeng Zhu
Mendelian randomization (MR) has become a popular tool for inferring causality of risk factors on disease. There are currently over 45 different methods available to perform MR, reflecting this extremely active research area. It would be desirable to have a standard simulation environment to objectively evaluate the existing and future methods. We present simmrd, an open-source software for performing simulations to evaluate the performance of MR methods in a range of scenarios encountered in practice. Researchers can directly modify the simmrd source code so that the research community may arrive at a widely accepted framework for researchers to evaluate the performance of different MR methods...
January 23, 2024: Genetic Epidemiology
https://read.qxmd.com/read/38014869/dynate-localizing-rare-variant-association-regions-via-multiple-testing-embedded-in-an-aggregation-tree
#18
JOURNAL ARTICLE
Xuechan Li, John Pura, Andrew Allen, Kouros Owzar, Jianfeng Lu, Matthew Harms, Jichun Xie
Rare-variants (RVs) genetic association studies enable researchers to uncover the variation in phenotypic traits left unexplained by common variation. Traditional single-variant analysis lacks power; thus, researchers have developed various methods to aggregate the effects of RVs across genomic regions to study their collective impact. Some existing methods utilize a static delineation of genomic regions, often resulting in suboptimal effect aggregation, as neutral subregions within the test region will result in an attenuation of signal...
November 28, 2023: Genetic Epidemiology
https://read.qxmd.com/read/37970963/bias-and-mean-squared-error-in-mendelian-randomization-with-invalid-instrumental-variables
#19
JOURNAL ARTICLE
Lu Deng, Sheng Fu, Kai Yu
Mendelian randomization (MR) is a statistical method that utilizes genetic variants as instrumental variables (IVs) to investigate causal relationships between risk factors and outcomes. Although MR has gained popularity in recent years due to its ability to analyze summary statistics from genome-wide association studies (GWAS), it requires a substantial number of single nucleotide polymorphisms (SNPs) as IVs to ensure sufficient power for detecting causal effects. Unfortunately, the complex genetic heritability of many traits can lead to the use of invalid IVs that affect both the risk factor and the outcome directly or through an unobserved confounder...
November 16, 2023: Genetic Epidemiology
https://read.qxmd.com/read/37947279/limitation-of-permutation-based-differential-correlation-analysis
#20
JOURNAL ARTICLE
Hoseung Song, Michael C Wu
The comparison of biological systems, through the analysis of molecular changes under different conditions, has played a crucial role in the progress of modern biological science. Specifically, differential correlation analysis (DCA) has been employed to determine whether relationships between genomic features differ across conditions or outcomes. Because ascertaining the null distribution of test statistics to capture variations in correlation is challenging, several DCA methods utilize permutation which can loosen parametric (e...
November 10, 2023: Genetic Epidemiology
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