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Dive into the research topics where Shefali S. Verma is active.

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Featured researches published by Shefali S. Verma.


Nature Genetics | 2016

Genome-wide association analysis identifies TXNRD2, ATXN2 and FOXC1 as susceptibility loci for primary open-angle glaucoma

Jessica N. Cooke Bailey; Stephanie Loomis; Jae H. Kang; R. Rand Allingham; Puya Gharahkhani; Chiea Chuen Khor; Kathryn P. Burdon; Hugues Aschard; Daniel I. Chasman; Robert P. Igo; Pirro G. Hysi; Craig A. Glastonbury; Allison E. Ashley-Koch; Murray H. Brilliant; Andrew Anand Brown; Donald L. Budenz; Alfonso Buil; Ching-Yu Cheng; Hyon K. Choi; William G. Christen; Gary C. Curhan; Immaculata De Vivo; John H. Fingert; Paul J. Foster; Charles S. Fuchs; Douglas E. Gaasterland; Terry Gaasterland; Alex W. Hewitt; Frank B. Hu; David J. Hunter

Primary open-angle glaucoma (POAG) is a leading cause of blindness worldwide. To identify new susceptibility loci, we performed meta-analysis on genome-wide association study (GWAS) results from eight independent studies from the United States (3,853 cases and 33,480 controls) and investigated the most significantly associated SNPs in two Australian studies (1,252 cases and 2,592 controls), three European studies (875 cases and 4,107 controls) and a Singaporean Chinese study (1,037 cases and 2,543 controls). A meta-analysis of the top SNPs identified three new associated loci: rs35934224[T] in TXNRD2 (odds ratio (OR) = 0.78, P = 4.05 × 10−11) encoding a mitochondrial protein required for redox homeostasis; rs7137828[T] in ATXN2 (OR = 1.17, P = 8.73 × 10−10); and rs2745572[A] upstream of FOXC1 (OR = 1.17, P = 1.76 × 10−10). Using RT-PCR and immunohistochemistry, we show TXNRD2 and ATXN2 expression in retinal ganglion cells and the optic nerve head. These results identify new pathways underlying POAG susceptibility and suggest new targets for preventative therapies.


Science | 2016

The phenotypic legacy of admixture between modern humans and Neandertals

Corinne N. Simonti; Benjamin Vernot; Erwin P. Bottinger; David Carrell; Rex L. Chisholm; David R. Crosslin; Scott J. Hebbring; Gail P. Jarvik; Iftikhar J. Kullo; Rongling Li; Jyotishman Pathak; Marylyn D. Ritchie; Dan M. Roden; Shefali S. Verma; Gerard Tromp; Jeffrey D. Prato; William S. Bush; Joshua M. Akey; Joshua C. Denny; John A. Capra

The legacy of human-Neandertal interbreeding Non-African humans are estimated to have inherited on average 1.5 to 4% of their genomes from Neandertals. However, how this genetic legacy affects human traits is unknown. Simonti et al. combined genotyping data with electronic health records. Individual Neandertal alleles were correlated with clinically relevant phenotypes in individuals of European descent. These archaic genetic variants were associated with medical conditions affecting the skin, the blood, and the risk of depression. Science, this issue p. 737 Genotype-phenotype association analysis of Neandertal alleles in modern humans identifies clinical effects. Many modern human genomes retain DNA inherited from interbreeding with archaic hominins, such as Neandertals, yet the influence of this admixture on human traits is largely unknown. We analyzed the contribution of common Neandertal variants to over 1000 electronic health record (EHR)–derived phenotypes in ~28,000 adults of European ancestry. We discovered and replicated associations of Neandertal alleles with neurological, psychiatric, immunological, and dermatological phenotypes. Neandertal alleles together explained a significant fraction of the variation in risk for depression and skin lesions resulting from sun exposure (actinic keratosis), and individual Neandertal alleles were significantly associated with specific human phenotypes, including hypercoagulation and tobacco use. Our results establish that archaic admixture influences disease risk in modern humans, provide hypotheses about the effects of hundreds of Neandertal haplotypes, and demonstrate the utility of EHR data in evolutionary analyses.


Frontiers in Genetics | 2014

Imputation and quality control steps for combining multiple genome-wide datasets

Shefali S. Verma; Mariza de Andrade; Gerard Tromp; Helena Kuivaniemi; Elizabeth W. Pugh; Bahram Namjou-Khales; Shubhabrata Mukherjee; Gail P. Jarvik; Leah C. Kottyan; Amber A. Burt; Yuki Bradford; Gretta D. Armstrong; Kimberly Derr; Dana C. Crawford; Jonathan L. Haines; Rongling Li; David R. Crosslin; Marylyn D. Ritchie

The electronic MEdical Records and GEnomics (eMERGE) network brings together DNA biobanks linked to electronic health records (EHRs) from multiple institutions. Approximately 51,000 DNA samples from distinct individuals have been genotyped using genome-wide SNP arrays across the nine sites of the network. The eMERGE Coordinating Center and the Genomics Workgroup developed a pipeline to impute and merge genomic data across the different SNP arrays to maximize sample size and power to detect associations with a variety of clinical endpoints. The 1000 Genomes cosmopolitan reference panel was used for imputation. Imputation results were evaluated using the following metrics: accuracy of imputation, allelic R2 (estimated correlation between the imputed and true genotypes), and the relationship between allelic R2 and minor allele frequency. Computation time and memory resources required by two different software packages (BEAGLE and IMPUTE2) were also evaluated. A number of challenges were encountered due to the complexity of using two different imputation software packages, multiple ancestral populations, and many different genotyping platforms. We present lessons learned and describe the pipeline implemented here to impute and merge genomic data sets. The eMERGE imputed dataset will serve as a valuable resource for discovery, leveraging the clinical data that can be mined from the EHR.


Frontiers in Genetics | 2014

Phenome-wide association study (PheWAS) in EMR-linked pediatric cohorts, genetically links PLCL1 to speech language development and IL5-IL13 to Eosinophilic Esophagitis.

Bahram Namjou; Keith Marsolo; Robert J. Caroll; Joshua C. Denny; Marylyn D. Ritchie; Shefali S. Verma; Todd Lingren; Aleksey Porollo; Beth L. Cobb; Cassandra Perry; Leah C. Kottyan; Marc E. Rothenberg; Susan D. Thompson; Ingrid A. Holm; Isaac S. Kohane; John B. Harley

Objective: We report the first pediatric specific Phenome-Wide Association Study (PheWAS) using electronic medical records (EMRs). Given the early success of PheWAS in adult populations, we investigated the feasibility of this approach in pediatric cohorts in which associations between a previously known genetic variant and a wide range of clinical or physiological traits were evaluated. Although computationally intensive, this approach has potential to reveal disease mechanistic relationships between a variant and a network of phenotypes. Method: Data on 5049 samples of European ancestry were obtained from the EMRs of two large academic centers in five different genotyped cohorts. Recently, these samples have undergone whole genome imputation. After standard quality controls, removing missing data and outliers based on principal components analyses (PCA), 4268 samples were used for the PheWAS study. We scanned for associations between 2476 single-nucleotide polymorphisms (SNP) with available genotyping data from previously published GWAS studies and 539 EMR-derived phenotypes. The false discovery rate was calculated and, for any new PheWAS findings, a permutation approach (with up to 1,000,000 trials) was implemented. Results: This PheWAS found a variety of common variants (MAF > 10%) with prior GWAS associations in our pediatric cohorts including Juvenile Rheumatoid Arthritis (JRA), Asthma, Autism and Pervasive Developmental Disorder (PDD) and Type 1 Diabetes with a false discovery rate < 0.05 and power of study above 80%. In addition, several new PheWAS findings were identified including a cluster of association near the NDFIP1 gene for mental retardation (best SNP rs10057309, p = 4.33 × 10−7, OR = 1.70, 95%CI = 1.38 − 2.09); association near PLCL1 gene for developmental delays and speech disorder [best SNP rs1595825, p = 1.13 × 10−8, OR = 0.65(0.57 − 0.76)]; a cluster of associations in the IL5-IL13 region with Eosinophilic Esophagitis (EoE) [best at rs12653750, p = 3.03 × 10−9, OR = 1.73 95%CI = (1.44 − 2.07)], previously implicated in asthma, allergy, and eosinophilia; and association of variants in GCKR and JAZF1 with allergic rhinitis in our pediatric cohorts [best SNP rs780093, p = 2.18 × 10−5, OR = 1.39, 95%CI = (1.19 − 1.61)], previously demonstrated in metabolic disease and diabetes in adults. Conclusion: The PheWAS approach with re-mapping ICD-9 structured codes for our European-origin pediatric cohorts, as with the previous adult studies, finds many previously reported associations as well as presents the discovery of associations with potentially important clinical implications.


Genes and Immunity | 2015

Genetic variation in the HLA region is associated with susceptibility to herpes zoster

David R. Crosslin; David Carrell; Amber A. Burt; Daniel Seung Kim; J. G. Underwood; David S. Hanna; B. A. Comstock; E. Baldwin; M. De Andrade; Iftikhar J. Kullo; Gerard Tromp; Helena Kuivaniemi; Kenneth M. Borthwick; Catherine A. McCarty; Peggy L. Peissig; Kimberly F. Doheny; Elizabeth W. Pugh; Abel N. Kho; Jennifer A. Pacheco; M. G. Hayes; Marylyn D. Ritchie; Shefali S. Verma; G. Armstrong; Sarah Stallings; Joshua C. Denny; Robert J. Carroll; Dana C. Crawford; Paul K. Crane; Shubhabrata Mukherjee; Erwin P. Bottinger

Herpes zoster, commonly referred to as shingles, is caused by the varicella zoster virus (VZV). VZV initially manifests as chicken pox, most commonly in childhood, can remain asymptomatically latent in nerve tissues for many years and often re-emerges as shingles. Although reactivation may be related to immune suppression, aging and female sex, most inter-individual variability in re-emergence risk has not been explained to date. We performed a genome-wide association analyses in 22 981 participants (2280 shingles cases) from the electronic Medical Records and Genomics Network. Using Cox survival and logistic regression, we identified a genomic region in the combined and European ancestry groups that has an age of onset effect reaching genome-wide significance (P>1.0 × 10−8). This region tags the non-coding gene HCP5 (HLA Complex P5) in the major histocompatibility complex. This gene is an endogenous retrovirus and likely influences viral activity through regulatory functions. Variants in this genetic region are known to be associated with delay in development of AIDS in people infected by HIV. Our study provides further suggestion that this region may have a critical role in viral suppression and could potentially harbor a clinically actionable variant for the shingles vaccine.


Open Forum Infectious Diseases | 2015

Phenome-wide Association Study Relating Pretreatment Laboratory Parameters With Human Genetic Variants in AIDS Clinical Trials Group Protocols

Carrie B. Moore; Anurag Verma; Sarah A. Pendergrass; Shefali S. Verma; Daniel H. Johnson; Eric S. Daar; Roy M. Gulick; Richard Haubrich; Gregory K. Robbins; Marylyn D. Ritchie; David W. Haas

Background. Phenome-Wide Association Studies (PheWAS) identify genetic associations across multiple phenotypes. Clinical trials offer opportunities for PheWAS to identify pharmacogenomic associations. We describe the first PheWAS to use genome-wide genotypic data and to utilize human immunodeficiency virus (HIV) clinical trials data. As proof-of-concept, we focused on baseline laboratory phenotypes from antiretroviral therapy-naive individuals. Methods. Data from 4 AIDS Clinical Trials Group (ACTG) studies were split into 2 datasets: Dataset I (1181 individuals from protocol A5202) and Dataset II (1366 from protocols A5095, ACTG 384, and A5142). Final analyses involved 2547 individuals and 5 954 294 imputed polymorphisms. We calculated comprehensive associations between these polymorphisms and 27 baseline laboratory phenotypes. Results. A total of 10 584 (0.17%) polymorphisms had associations with P < .01 in both datasets and with the same direction of association. Twenty polymorphisms replicated associations with identical or related phenotypes reported in the Catalog of Published Genome-Wide Association Studies, including several not previously reported in HIV-positive cohorts. We also identified several possibly novel associations. Conclusions. These analyses define PheWAS properties and principles with baseline laboratory data from HIV clinical trials. This approach may be useful for evaluating on-treatment HIV clinical trials data for associations with various clinical phenotypes.


Pharmacogenomics Journal | 2016

A genome-wide association study identifies variants in KCNIP4 associated with ACE inhibitor-induced cough.

Jonathan D. Mosley; Christian M. Shaffer; S L Van Driest; Peter Weeke; Quinn S. Wells; Jason H. Karnes; D.R. Velez Edwards; W-Q Wei; Pedro L. Teixeira; Dana C. Crawford; Rongling Li; Teri A. Manolio; Erwin P. Bottinger; Catherine A. McCarty; James G. Linneman; Murray H. Brilliant; Jennifer A. Pacheco; Will Thompson; Rex L. Chisholm; Gail P. Jarvik; David R. Crosslin; David Carrell; E. Baldwin; James D. Ralston; Eric B. Larson; J Grafton; Aaron Scrol; Hayan Jouni; Iftikhar J. Kullo; Gerard Tromp

The most common side effect of angiotensin-converting enzyme inhibitor (ACEi) drugs is cough. We conducted a genome-wide association study (GWAS) of ACEi-induced cough among 7080 subjects of diverse ancestries in the Electronic Medical Records and Genomics (eMERGE) network. Cases were subjects diagnosed with ACEi-induced cough. Controls were subjects with at least 6 months of ACEi use and no cough. A GWAS (1595 cases and 5485 controls) identified associations on chromosome 4 in an intron of KCNIP4. The strongest association was at rs145489027 (minor allele frequency=0.33, odds ratio (OR)=1.3 (95% confidence interval (CI): 1.2–1.4), P=1.0 × 10−8). Replication for six single-nucleotide polymorphisms (SNPs) in KCNIP4 was tested in a second eMERGE population (n=926) and in the Genetics of Diabetes Audit and Research in Tayside, Scotland (GoDARTS) cohort (n=4309). Replication was observed at rs7675300 (OR=1.32 (1.01–1.70), P=0.04) in eMERGE and at rs16870989 and rs1495509 (OR=1.15 (1.01–1.30), P=0.03 for both) in GoDARTS. The combined association at rs1495509 was significant (OR=1.23 (1.15–1.32), P=1.9 × 10−9). These results indicate that SNPs in KCNIP4 may modulate ACEi-induced cough risk.


Genome Medicine | 2015

Concept and design of a genome-wide association genotyping array tailored for transplantation-specific studies

Yun R. Li; Jessica van Setten; Shefali S. Verma; Yontao Lu; Michael V. Holmes; Hui Gao; Monkol Lek; Nikhil Nair; Hareesh R. Chandrupatla; Baoli Chang; Konrad J. Karczewski; Chanel Wong; Maede Mohebnasab; Eyas Mukhtar; Randy Phillips; Vinicius Tragante; Cuiping Hou; Laura Steel; Takesha Lee; James Garifallou; Hongzhi Cao; Weihua Guan; Aubree Himes; Jacob van Houten; Andrew Pasquier; Reina Yu; Elena Carrigan; Michael B. Miller; David Schladt; Abdullah Akdere

BackgroundIn addition to HLA genetic incompatibility, non-HLA difference between donor and recipients of transplantation leading to allograft rejection are now becoming evident. We aimed to create a unique genome-wide platform to facilitate genomic research studies in transplant-related studies. We designed a genome-wide genotyping tool based on the most recent human genomic reference datasets, and included customization for known and potentially relevant metabolic and pharmacological loci relevant to transplantation.MethodsWe describe here the design and implementation of a customized genome-wide genotyping array, the ‘TxArray’, comprising approximately 782,000 markers with tailored content for deeper capture of variants across HLA, KIR, pharmacogenomic, and metabolic loci important in transplantation. To test concordance and genotyping quality, we genotyped 85 HapMap samples on the array, including eight trios.ResultsWe show low Mendelian error rates and high concordance rates for HapMap samples (average parent-parent-child heritability of 0.997, and concordance of 0.996). We performed genotype imputation across autosomal regions, masking directly genotyped SNPs to assess imputation accuracy and report an accuracy of >0.962 for directly genotyped SNPs. We demonstrate much higher capture of the natural killer cell immunoglobulin-like receptor (KIR) region versus comparable platforms. Overall, we show that the genotyping quality and coverage of the TxArray is very high when compared to reference samples and to other genome-wide genotyping platforms.ConclusionsWe have designed a comprehensive genome-wide genotyping tool which enables accurate association testing and imputation of ungenotyped SNPs, facilitating powerful and cost-effective large-scale genotyping of transplant-related studies.


Nature Genetics | 2018

Gene discovery and polygenic prediction from a genome-wide association study of educational attainment in 1.1 million individuals.

James J. Lee; Robbee Wedow; Aysu Okbay; Edward Kong; Omeed Maghzian; Meghan Zacher; Tuan Anh Nguyen-Viet; Peter Bowers; Julia Sidorenko; Richard Karlsson Linner; Mark Alan Fontana; Tushar Kundu; Chanwook Lee; Hui Li; Ruoxi Li; Rebecca Royer; Pascal Timshel; Raymond K. Walters; Emily Willoughby; Loic Yengo; Maris Alver; Yanchun Bao; David W. Clark; Felix R. Day; Nicholas A. Furlotte; Peter K. Joshi; Kathryn E. Kemper; Aaron Kleinman; Claudia Langenberg; Reedik Mägi

Here we conducted a large-scale genetic association analysis of educational attainment in a sample of approximately 1.1 million individuals and identify 1,271 independent genome-wide-significant SNPs. For the SNPs taken together, we found evidence of heterogeneous effects across environments. The SNPs implicate genes involved in brain-development processes and neuron-to-neuron communication. In a separate analysis of the X chromosome, we identify 10 independent genome-wide-significant SNPs and estimate a SNP heritability of around 0.3% in both men and women, consistent with partial dosage compensation. A joint (multi-phenotype) analysis of educational attainment and three related cognitive phenotypes generates polygenic scores that explain 11–13% of the variance in educational attainment and 7–10% of the variance in cognitive performance. This prediction accuracy substantially increases the utility of polygenic scores as tools in research.Gene discovery and polygenic predictions from a genome-wide association study of educational attainment in 1.1 million individuals.


Genetic Epidemiology | 2015

Biology-Driven Gene-Gene Interaction Analysis of Age-Related Cataract in the eMERGE Network

Molly A. Hall; Shefali S. Verma; John R. Wallace; Anastasia Lucas; Richard L. Berg; John J. Connolly; Dana C. Crawford; David R. Crosslin; Mariza de Andrade; Kimberly F. Doheny; Jonathan L. Haines; John B. Harley; Gail P. Jarvik; Terrie Kitchner; Helena Kuivaniemi; Eric B. Larson; David Carrell; Gerard Tromp; Tamara R. Vrabec; Sarah A. Pendergrass; Catherine A. McCarty; Marylyn D. Ritchie

Bioinformatics approaches to examine gene‐gene models provide a means to discover interactions between multiple genes that underlie complex disease. Extensive computational demands and adjusting for multiple testing make uncovering genetic interactions a challenge. Here, we address these issues using our knowledge‐driven filtering method, Biofilter, to identify putative single nucleotide polymorphism (SNP) interaction models for cataract susceptibility, thereby reducing the number of models for analysis. Models were evaluated in 3,377 European Americans (1,185 controls, 2,192 cases) from the Marshfield Clinic, a study site of the Electronic Medical Records and Genomics (eMERGE) Network, using logistic regression. All statistically significant models from the Marshfield Clinic were then evaluated in an independent dataset of 4,311 individuals (742 controls, 3,569 cases), using independent samples from additional study sites in the eMERGE Network: Mayo Clinic, Group Health/University of Washington, Vanderbilt University Medical Center, and Geisinger Health System. Eighty‐three SNP‐SNP models replicated in the independent dataset at likelihood ratio test P < 0.05. Among the most significant replicating models was rs12597188 (intron of CDH1)–rs11564445 (intron of CTNNB1). These genes are known to be involved in processes that include: cell‐to‐cell adhesion signaling, cell‐cell junction organization, and cell‐cell communication. Further Biofilter analysis of all replicating models revealed a number of common functions among the genes harboring the 83 replicating SNP‐SNP models, which included signal transduction and PI3K‐Akt signaling pathway. These findings demonstrate the utility of Biofilter as a biology‐driven method, applicable for any genome‐wide association study dataset.

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Sarah A. Pendergrass

Pennsylvania State University

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Anurag Verma

Pennsylvania State University

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Gail P. Jarvik

University of Washington

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Gerard Tromp

Stellenbosch University

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Anastasia Lucas

Pennsylvania State University

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Molly A. Hall

Pennsylvania State University

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