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Dive into the research topics where Mark N. Kvale is active.

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Featured researches published by Mark N. Kvale.


Nature Genetics | 2009

Narcolepsy is strongly associated with the T-cell receptor alpha locus

Joachim Hallmayer; Juliette Faraco; Ling Lin; Stephanie Hesselson; Juliane Winkelmann; Minae Kawashima; Geert Mayer; Giuseppe Plazzi; Sona Nevsimalova; Patrice Bourgin; Sheng Seung-Chul Hong; Yutaka Honda; Makoto Honda; Birgit Högl; William T. Longstreth; Jacques Montplaisir; David Kemlink; Mali Einen; Justin Chen; Stacy L. Musone; Matthew Akana; Taku Miyagawa; Jubao Duan; Alex Desautels; Christine Erhardt; Per Egil Hesla; Francesca Poli; Birgit Frauscher; Jong-Hyun Jeong; Sung-Pil Lee

Narcolepsy with cataplexy, characterized by sleepiness and rapid onset into REM sleep, affects 1 in 2,000 individuals. Narcolepsy was first shown to be tightly associated with HLA-DR2 (ref. 3) and later sublocalized to DQB1*0602 (ref. 4). Following studies in dogs and mice, a 95% loss of hypocretin-producing cells in postmortem hypothalami from narcoleptic individuals was reported. Using genome-wide association (GWA) in Caucasians with replication in three ethnic groups, we found association between narcolepsy and polymorphisms in the TRA@ (T-cell receptor alpha) locus, with highest significance at rs1154155 (average allelic odds ratio 1.69, genotypic odds ratios 1.94 and 2.55, P < 10−21, 1,830 cases, 2,164 controls). This is the first documented genetic involvement of the TRA@ locus, encoding the major receptor for HLA-peptide presentation, in any disease. It is still unclear how specific HLA alleles confer susceptibility to over 100 HLA-associated disorders; thus, narcolepsy will provide new insights on how HLA–TCR interactions contribute to organ-specific autoimmune targeting and may serve as a model for over 100 other HLA-associated disorders.


Nature Genetics | 2011

Common variants in P2RY11 are associated with narcolepsy

Birgitte Rahbek Kornum; Minae Kawashima; Juliette Faraco; Ling Lin; Tom Rico; Stephanie Hesselson; Robert C. Axtell; Hedwich F. Kuipers; Karin Weiner; Alexandra Hamacher; Matthias U. Kassack; Fang Han; Stine Knudsen; Jing Li; Xiaosong Dong; Juliane Winkelmann; Giuseppe Plazzi; Soňa Nevšímalová; Sungchul Hong; Yutaka Honda; Makoto Honda; Birgit Högl; Thanh G.N. Ton; Jacques Montplaisir; Patrice Bourgin; David Kemlink; Yu-Shu Huang; Simon C. Warby; Mali Einen; Jasmin Eshragh

Growing evidence supports the hypothesis that narcolepsy with cataplexy is an autoimmune disease. We here report genome-wide association analyses for narcolepsy with replication and fine mapping across three ethnic groups (3,406 individuals of European ancestry, 2,414 Asians and 302 African Americans). We identify a SNP in the 3′ untranslated region of P2RY11, the purinergic receptor subtype P2Y11 gene, which is associated with narcolepsy (rs2305795, combined P = 6.1 × 10−10, odds ratio = 1.28, 95% CI 1.19–1.39, n = 5689). The disease-associated allele is correlated with reduced expression of P2RY11 in CD8+ T lymphocytes (72% reduced, P = 0.003) and natural killer (NK) cells (70% reduced, P = 0.031), but not in other peripheral blood mononuclear cell types. The low expression variant is also associated with reduced P2RY11-mediated resistance to ATP-induced cell death in T lymphocytes (P = 0.0007) and natural killer cells (P = 0.001). These results identify P2RY11 as an important regulator of immune-cell survival, with possible implications in narcolepsy and other autoimmune diseases.


Genomics | 2011

Next generation genome-wide association tool: Design and coverage of a high-throughput European-optimized SNP array

Thomas J. Hoffmann; Mark N. Kvale; Stephanie Hesselson; Yiping Zhan; Christine Aquino; Yang Cao; Simon Cawley; Elaine Chung; Sheryl Connell; Jasmin Eshragh; Marcia Ewing; Jeremy Gollub; Mary Henderson; Earl Hubbell; Carlos Iribarren; Jay Kaufman; Richard Lao; Yontao Lu; Dana Ludwig; Gurpreet K. Mathauda; William B. McGuire; Gangwu Mei; Sunita Miles; Matthew M. Purdy; Charles P. Quesenberry; Dilrini Ranatunga; Sarah Rowell; Marianne Sadler; Michael H. Shapero; Ling Shen

The success of genome-wide association studies has paralleled the development of efficient genotyping technologies. We describe the development of a next-generation microarray based on the new highly-efficient Affymetrix Axiom genotyping technology that we are using to genotype individuals of European ancestry from the Kaiser Permanente Research Program on Genes, Environment and Health (RPGEH). The array contains 674,517 SNPs, and provides excellent genome-wide as well as gene-based and candidate-SNP coverage. Coverage was calculated using an approach based on imputation and cross validation. Preliminary results for the first 80,301 saliva-derived DNA samples from the RPGEH demonstrate very high quality genotypes, with sample success rates above 94% and over 98% of successful samples having SNP call rates exceeding 98%. At steady state, we have produced 462 million genotypes per week for each Axiom system. The new array provides a valuable addition to the repertoire of tools for large scale genome-wide association studies.


Genomics | 2011

Design and coverage of high throughput genotyping arrays optimized for individuals of East Asian, African American, and Latino race/ethnicity using imputation and a novel hybrid SNP selection algorithm.

Thomas J. Hoffmann; Yiping Zhan; Mark N. Kvale; Stephanie Hesselson; Jeremy Gollub; Carlos Iribarren; Yontao Lu; Gangwu Mei; Matthew M. Purdy; Charles P. Quesenberry; Sarah Rowell; Michael H. Shapero; David Smethurst; Carol P. Somkin; Stephen K. Van Den Eeden; Larry Walter; Teresa Webster; Rachel A. Whitmer; Andrea Finn; Catherine Schaefer; Pui-Yan Kwok; Neil Risch

Four custom Axiom genotyping arrays were designed for a genome-wide association (GWA) study of 100,000 participants from the Kaiser Permanente Research Program on Genes, Environment and Health. The array optimized for individuals of European race/ethnicity was previously described. Here we detail the development of three additional microarrays optimized for individuals of East Asian, African American, and Latino race/ethnicity. For these arrays, we decreased redundancy of high-performing SNPs to increase SNP capacity. The East Asian array was designed using greedy pairwise SNP selection. However, removing SNPs from the target set based on imputation coverage is more efficient than pairwise tagging. Therefore, we developed a novel hybrid SNP selection method for the African American and Latino arrays utilizing rounds of greedy pairwise SNP selection, followed by removal from the target set of SNPs covered by imputation. The arrays provide excellent genome-wide coverage and are valuable additions for large-scale GWA studies.


Genetics | 2015

Characterizing Race/Ethnicity and Genetic Ancestry for 100,000 Subjects in the Genetic Epidemiology Research on Adult Health and Aging (GERA) Cohort

Yambazi Banda; Mark N. Kvale; Thomas J. Hoffmann; Stephanie Hesselson; Dilrini Ranatunga; Hua Tang; Chiara Sabatti; Lisa A. Croen; Brad Dispensa; Mary Henderson; Carlos Iribarren; Eric Jorgenson; Lawrence H. Kushi; Dana Ludwig; Diane Olberg; Charles P. Quesenberry; Sarah Rowell; Marianne Sadler; Lori C. Sakoda; Stanley Sciortino; Ling Shen; David Smethurst; Carol P. Somkin; Stephen K. Van Den Eeden; Lawrence Walter; Rachel A. Whitmer; Pui-Yan Kwok; Catherine Schaefer; Neil Risch

Using genome-wide genotypes, we characterized the genetic structure of 103,006 participants in the Kaiser Permanente Northern California multi-ethnic Genetic Epidemiology Research on Adult Health and Aging Cohort and analyzed the relationship to self-reported race/ethnicity. Participants endorsed any of 23 race/ethnicity/nationality categories, which were collapsed into seven major race/ethnicity groups. By self-report the cohort is 80.8% white and 19.2% minority; 93.8% endorsed a single race/ethnicity group, while 6.2% endorsed two or more. Principal component (PC) and admixture analyses were generally consistent with prior studies. Approximately 17% of subjects had genetic ancestry from more than one continent, and 12% were genetically admixed, considering only nonadjacent geographical origins. Self-reported whites were spread on a continuum along the first two PCs, indicating extensive mixing among European nationalities. Self-identified East Asian nationalities correlated with genetic clustering, consistent with extensive endogamy. Individuals of mixed East Asian–European genetic ancestry were easily identified; we also observed a modest amount of European genetic ancestry in individuals self-identified as Filipinos. Self-reported African Americans and Latinos showed extensive European and African genetic ancestry, and Native American genetic ancestry for the latter. Among 3741 genetically identified parent–child pairs, 93% were concordant for self-reported race/ethnicity; among 2018 genetically identified full-sib pairs, 96% were concordant; the lower rate for parent–child pairs was largely due to intermarriage. The parent–child pairs revealed a trend toward increasing exogamy over time; the presence in the cohort of individuals endorsing multiple race/ethnicity categories creates interesting challenges and future opportunities for genetic epidemiologic studies.


Genetics | 2015

Genotyping Informatics and Quality Control for 100,000 Subjects in the Genetic Epidemiology Research on Adult Health and Aging (GERA) Cohort

Mark N. Kvale; Stephanie Hesselson; Thomas J. Hoffmann; Yang Cao; David Chan; Sheryl Connell; Lisa A. Croen; Brad Dispensa; Jasmin Eshragh; Andrea Finn; Jeremy Gollub; Carlos Iribarren; Eric Jorgenson; Lawrence H. Kushi; Richard Lao; Yontao Lu; Dana Ludwig; Gurpreet K. Mathauda; William B. McGuire; Gangwu Mei; Sunita Miles; Michael Mittman; Mohini Patil; Charles P. Quesenberry; Dilrini Ranatunga; Sarah Rowell; Marianne Sadler; Lori C. Sakoda; Michael H. Shapero; Ling Shen

The Kaiser Permanente (KP) Research Program on Genes, Environment and Health (RPGEH), in collaboration with the University of California—San Francisco, undertook genome-wide genotyping of >100,000 subjects that constitute the Genetic Epidemiology Research on Adult Health and Aging (GERA) cohort. The project, which generated >70 billion genotypes, represents the first large-scale use of the Affymetrix Axiom Genotyping Solution. Because genotyping took place over a short 14-month period, creating a near-real-time analysis pipeline for experimental assay quality control and final optimized analyses was critical. Because of the multi-ethnic nature of the cohort, four different ethnic-specific arrays were employed to enhance genome-wide coverage. All assays were performed on DNA extracted from saliva samples. To improve sample call rates and significantly increase genotype concordance, we partitioned the cohort into disjoint packages of plates with similar assay contexts. Using strict QC criteria, the overall genotyping success rate was 103,067 of 109,837 samples assayed (93.8%), with a range of 92.1–95.4% for the four different arrays. Similarly, the SNP genotyping success rate ranged from 98.1 to 99.4% across the four arrays, the variation depending mostly on how many SNPs were included as single copy vs. double copy on a particular array. The high quality and large scale of genotype data created on this cohort, in conjunction with comprehensive longitudinal data from the KP electronic health records of participants, will enable a broad range of highly powered genome-wide association studies on a diversity of traits and conditions.


Genome Research | 2014

Estimating genotype error rates from high-coverage next-generation sequence data

Jeffrey D. Wall; Ling Fung Tang; Brandon Zerbe; Mark N. Kvale; Pui-Yan Kwok; Catherine Schaefer; Neil Risch

Exome and whole-genome sequencing studies are becoming increasingly common, but little is known about the accuracy of the genotype calls made by the commonly used platforms. Here we use replicate high-coverage sequencing of blood and saliva DNA samples from four European-American individuals to estimate lower bounds on the error rates of Complete Genomics and Illumina HiSeq whole-genome and whole-exome sequencing. Error rates for nonreference genotype calls range from 0.1% to 0.6%, depending on the platform and the depth of coverage. Additionally, we found (1) no difference in the error profiles or rates between blood and saliva samples; (2) Complete Genomics sequences had substantially higher error rates than Illumina sequences had; (3) error rates were higher (up to 6%) for rare or unique variants; (4) error rates generally declined with genotype quality (GQ) score, but in a nonlinear fashion for the Illumina data, likely due to loss of specificity of GQ scores greater than 60; and (5) error rates increased with increasing depth of coverage for the Illumina data. These findings, especially (3)-(5), suggest that caution should be taken in interpreting the results of next-generation sequencing-based association studies, and even more so in clinical application of this technology in the absence of validation by other more robust sequencing or genotyping methods.


Genetics | 2015

Automated Assay of Telomere Length Measurement and Informatics for 100,000 Subjects in the Genetic Epidemiology Research on Adult Health and Aging (GERA) Cohort.

Kyle Lapham; Mark N. Kvale; Jue Lin; Sheryl Connell; Lisa A. Croen; Brad Dispensa; Lynn Fang; Stephanie Hesselson; Thomas J. Hoffmann; Carlos Iribarren; Eric Jorgenson; Lawrence H. Kushi; Dana Ludwig; Tetsuya Matsuguchi; William B. McGuire; Sunita Miles; Charles P. Quesenberry; Sarah Rowell; Marianne Sadler; Lori C. Sakoda; David Smethurst; Carol P. Somkin; Stephen K. Van Den Eeden; Lawrence Walter; Rachel A. Whitmer; Pui-Yan Kwok; Neil Risch; Catherine Schaefer; Elizabeth H. Blackburn

The Kaiser Permanente Research Program on Genes, Environment, and Health (RPGEH) Genetic Epidemiology Research on Adult Health and Aging (GERA) cohort includes DNA specimens extracted from saliva samples of 110,266 individuals. Because of its relationship to aging, telomere length measurement was considered an important biomarker to develop on these subjects. To assay relative telomere length (TL) on this large cohort over a short time period, we created a novel high throughput robotic system for TL analysis and informatics. Samples were run in triplicate, along with control samples, in a randomized design. As part of quality control, we determined the within-sample variability and employed thresholds for the elimination of outlying measurements. Of 106,902 samples assayed, 105,539 (98.7%) passed all quality control (QC) measures. As expected, TL in general showed a decline with age and a sex difference. While telomeres showed a negative correlation with age up to 75 years, in those older than 75 years, age positively correlated with longer telomeres, indicative of an association of longer telomeres with more years of survival in those older than 75. Furthermore, while females in general had longer telomeres than males, this difference was significant only for those older than age 50. An additional novel finding was that the variance of TL between individuals increased with age. This study establishes reliable assay and analysis methodologies for measurement of TL in large, population-based human studies. The GERA cohort represents the largest currently available such resource, linked to comprehensive electronic health and genotype data for analysis.


Cancer Discovery | 2015

A Large Multiethnic Genome-Wide Association Study of Prostate Cancer Identifies Novel Risk Variants and Substantial Ethnic Differences

Thomas J. Hoffmann; Stephen K. Van Den Eeden; Lori C. Sakoda; Eric Jorgenson; Laurel A. Habel; Rebecca E. Graff; Michael N. Passarelli; Clinton L. Cario; Nima C. Emami; Chun R. Chao; Nirupa R. Ghai; Jun Shan; Dilrini Ranatunga; Charles P. Quesenberry; David S. Aaronson; Joseph C. Presti; Zhaoming Wang; Sonja I. Berndt; Stephen J. Chanock; Shannon K. McDonnell; Amy J. French; Daniel J. Schaid; Stephen N. Thibodeau; Qiyuan Li; Matthew L. Freedman; Kathryn L. Penney; Lorelei A. Mucci; Christopher A. Haiman; Brian E. Henderson; Daniela Seminara

UNLABELLED A genome-wide association study (GWAS) of prostate cancer in Kaiser Permanente health plan members (7,783 cases, 38,595 controls; 80.3% non-Hispanic white, 4.9% African-American, 7.0% East Asian, and 7.8% Latino) revealed a new independent risk indel rs4646284 at the previously identified locus 6q25.3 that replicated in PEGASUS (N = 7,539) and the Multiethnic Cohort (N = 4,679) with an overall P = 1.0 × 10(-19) (OR, 1.18). Across the 6q25.3 locus, rs4646284 exhibited the strongest association with expression of SLC22A1 (P = 1.3 × 10(-23)) and SLC22A3 (P = 3.2 × 10(-52)). At the known 19q13.33 locus, rs2659124 (P = 1.3 × 10(-13); OR, 1.18) nominally replicated in PEGASUS. A risk score of 105 known risk SNPs was strongly associated with prostate cancer (P < 1.0 × 10(-8)). Comparing the highest to lowest risk score deciles, the OR was 6.22 for non-Hispanic whites, 5.82 for Latinos, 3.77 for African-Americans, and 3.38 for East Asians. In non-Hispanic whites, the 105 risk SNPs explained approximately 7.6% of disease heritability. The entire GWAS array explained approximately 33.4% of heritability, with a 4.3-fold enrichment within DNaseI hypersensitivity sites (P = 0.004). SIGNIFICANCE Taken together, our findings of independent risk variants, ethnic variation in existing SNP replication, and remaining unexplained heritability have important implications for further clarifying the genetic risk of prostate cancer. Our findings also suggest that there may be much promise in evaluating understudied variation, such as indels and ethnically diverse populations.


PLOS Genetics | 2015

Imputation of the Rare HOXB13 G84E Mutation and Cancer Risk in a Large Population-Based Cohort

Thomas J. Hoffmann; Lori C. Sakoda; Ling Shen; Eric Jorgenson; Laurel A. Habel; Jinghua Liu; Mark N. Kvale; Maryam M. Asgari; Yambazi Banda; Douglas A. Corley; Lawrence H. Kushi; Charles P. Quesenberry; Catherine Schaefer; Stephen K. Van Den Eeden; Neil Risch; John S. Witte

An efficient approach to characterizing the disease burden of rare genetic variants is to impute them into large well-phenotyped cohorts with existing genome-wide genotype data using large sequenced referenced panels. The success of this approach hinges on the accuracy of rare variant imputation, which remains controversial. For example, a recent study suggested that one cannot adequately impute the HOXB13 G84E mutation associated with prostate cancer risk (carrier frequency of 0.0034 in European ancestry participants in the 1000 Genomes Project). We show that by utilizing the 1000 Genomes Project data plus an enriched reference panel of mutation carriers we were able to accurately impute the G84E mutation into a large cohort of 83,285 non-Hispanic White participants from the Kaiser Permanente Research Program on Genes, Environment and Health Genetic Epidemiology Research on Adult Health and Aging cohort. Imputation authenticity was confirmed via a novel classification and regression tree method, and then empirically validated analyzing a subset of these subjects plus an additional 1,789 men from Kaiser specifically genotyped for the G84E mutation (r2 = 0.57, 95% CI = 0.37−0.77). We then show the value of this approach by using the imputed data to investigate the impact of the G84E mutation on age-specific prostate cancer risk and on risk of fourteen other cancers in the cohort. The age-specific risk of prostate cancer among G84E mutation carriers was higher than among non-carriers. Risk estimates from Kaplan-Meier curves were 36.7% versus 13.6% by age 72, and 64.2% versus 24.2% by age 80, for G84E mutation carriers and non-carriers, respectively (p = 3.4×10−12). The G84E mutation was also associated with an increase in risk for the fourteen other most common cancers considered collectively (p = 5.8×10−4) and more so in cases diagnosed with multiple cancer types, both those including and not including prostate cancer, strongly suggesting pleiotropic effects.

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Neil Risch

University of California

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Pui-Yan Kwok

University of California

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Yambazi Banda

University of California

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