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Author

Lorena Orozco

Other affiliations: CINVESTAV
Bio: Lorena Orozco is an academic researcher from Universidad Autónoma de la Ciudad de México. The author has contributed to research in topics: Population & Medicine. The author has an hindex of 32, co-authored 126 publications receiving 12464 citations. Previous affiliations of Lorena Orozco include CINVESTAV.


Papers
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Journal ArticleDOI
Monkol Lek, Konrad J. Karczewski1, Konrad J. Karczewski2, Eric Vallabh Minikel1, Eric Vallabh Minikel2, Kaitlin E. Samocha, Eric Banks1, Timothy Fennell1, Anne H. O’Donnell-Luria3, Anne H. O’Donnell-Luria2, Anne H. O’Donnell-Luria1, James S. Ware, Andrew J. Hill1, Andrew J. Hill4, Andrew J. Hill2, Beryl B. Cummings1, Beryl B. Cummings2, Taru Tukiainen2, Taru Tukiainen1, Daniel P. Birnbaum1, Jack A. Kosmicki, Laramie E. Duncan1, Laramie E. Duncan2, Karol Estrada2, Karol Estrada1, Fengmei Zhao1, Fengmei Zhao2, James Zou1, Emma Pierce-Hoffman2, Emma Pierce-Hoffman1, Joanne Berghout5, David Neil Cooper6, Nicole A. Deflaux7, Mark A. DePristo1, Ron Do, Jason Flannick2, Jason Flannick1, Menachem Fromer, Laura D. Gauthier1, Jackie Goldstein1, Jackie Goldstein2, Namrata Gupta1, Daniel P. Howrigan1, Daniel P. Howrigan2, Adam Kiezun1, Mitja I. Kurki1, Mitja I. Kurki2, Ami Levy Moonshine1, Pradeep Natarajan, Lorena Orozco, Gina M. Peloso2, Gina M. Peloso1, Ryan Poplin1, Manuel A. Rivas1, Valentin Ruano-Rubio1, Samuel A. Rose1, Douglas M. Ruderfer8, Khalid Shakir1, Peter D. Stenson6, Christine Stevens1, Brett Thomas2, Brett Thomas1, Grace Tiao1, María Teresa Tusié-Luna, Ben Weisburd1, Hong-Hee Won9, Dongmei Yu, David Altshuler10, David Altshuler1, Diego Ardissino, Michael Boehnke11, John Danesh12, Stacey Donnelly1, Roberto Elosua, Jose C. Florez2, Jose C. Florez1, Stacey Gabriel1, Gad Getz1, Gad Getz2, Stephen J. Glatt13, Christina M. Hultman14, Sekar Kathiresan, Markku Laakso15, Steven A. McCarroll1, Steven A. McCarroll2, Mark I. McCarthy16, Mark I. McCarthy17, Dermot P.B. McGovern18, Ruth McPherson19, Benjamin M. Neale1, Benjamin M. Neale2, Aarno Palotie, Shaun Purcell8, Danish Saleheen20, Jeremiah M. Scharf, Pamela Sklar, Patrick F. Sullivan14, Patrick F. Sullivan21, Jaakko Tuomilehto22, Ming T. Tsuang23, Hugh Watkins16, Hugh Watkins17, James G. Wilson24, Mark J. Daly1, Mark J. Daly2, Daniel G. MacArthur1, Daniel G. MacArthur2 
18 Aug 2016-Nature
TL;DR: The aggregation and analysis of high-quality exome (protein-coding region) DNA sequence data for 60,706 individuals of diverse ancestries generated as part of the Exome Aggregation Consortium (ExAC) provides direct evidence for the presence of widespread mutational recurrence.
Abstract: Large-scale reference data sets of human genetic variation are critical for the medical and functional interpretation of DNA sequence changes. Here we describe the aggregation and analysis of high-quality exome (protein-coding region) DNA sequence data for 60,706 individuals of diverse ancestries generated as part of the Exome Aggregation Consortium (ExAC). This catalogue of human genetic diversity contains an average of one variant every eight bases of the exome, and provides direct evidence for the presence of widespread mutational recurrence. We have used this catalogue to calculate objective metrics of pathogenicity for sequence variants, and to identify genes subject to strong selection against various classes of mutation; identifying 3,230 genes with near-complete depletion of predicted protein-truncating variants, with 72% of these genes having no currently established human disease phenotype. Finally, we demonstrate that these data can be used for the efficient filtering of candidate disease-causing variants, and for the discovery of human 'knockout' variants in protein-coding genes.

8,758 citations

Posted ContentDOI
30 Oct 2015-bioRxiv
TL;DR: The aggregation and analysis of high-quality exome (protein-coding region) sequence data for 60,706 individuals of diverse ethnicities generated as part of the Exome Aggregation Consortium (ExAC) provides direct evidence for the presence of widespread mutational recurrence.
Abstract: Large-scale reference data sets of human genetic variation are critical for the medical and functional interpretation of DNA sequence changes. Here we describe the aggregation and analysis of high-quality exome (protein-coding region) sequence data for 60,706 individuals of diverse ethnicities. The resulting catalogue of human genetic diversity has unprecedented resolution, with an average of one variant every eight bases of coding sequence and the presence of widespread mutational recurrence. The deep catalogue of variation provided by the Exome Aggregation Consortium (ExAC) can be used to calculate objective metrics of pathogenicity for sequence variants, and to identify genes subject to strong selection against various classes of mutation; we identify 3,230 genes with near-complete depletion of truncating variants, 79% of which have no currently established human disease phenotype. Finally, we show that these data can be used for the efficient filtering of candidate disease-causing variants, and for the discovery of human knockout variants in protein-coding genes.

1,552 citations

Journal ArticleDOI
A. L. Williams Amy1, A. L. Williams Amy2, S. B R Jacobs Suzanne2, Hortensia Moreno-Macías3, Alicia Huerta-Chagoya4, Claire Churchhouse2, Carla Marquez-Luna, María José Gómez-Vázquez5, N. P. Burtt Noël2, Carlos A. Aguilar-Salinas, Clicerio Gonzalez-Villalpando, Jose C. Florez2, Jose C. Florez1, Lorena Orozco, Teresa Tusié-Luna4, David Altshuler2, David Altshuler6, David Altshuler1, Stephan Ripke1, Stephan Ripke2, Alisa K. Manning2, Humberto García-Ortiz, Benjamin M. Neale1, Benjamin M. Neale2, David Reich1, David Reich2, Daniel O. Stram7, Juan Carlos Fernández-López, Sandra Romero-Hidalgo, Nick Patterson2, Christopher A. Haiman7, Irma Aguilar-Delfín, Angélica Martínez-Hernández, Federico Centeno-Cruz, Elvia Mendoza-Caamal, Cristina Revilla-Monsalve8, Sergio Islas-Andrade8, Emilio J. Cordova, Eunice Rodríguez-Arellano, Xavier Soberón, J. C. Florez Jose1, J. C. Florez Jose2, M. A. González-Villalpando María Elena, Brian E. Henderson7, Kristine R. Monroe7, Lynne R. Wilkens9, Laurence N. Kolonel9, Loic Le Marchand9, Laura Riba4, M. A. Ordóñez-Sánchez María Luisa, Rosario Rodríguez-Guillén, Ivette Cruz-Bautista, Maribel Rodríguez-Torres, Linda Liliana Muñoz-Hernandez, Tamara Sáenz, Donají Gómez, Ulices Alvirde, Robert C. Onofrio2, Wendy Brodeur2, Diane Gage2, Jacquelyn Murphy2, Jennifer Franklin2, Scott Mahan2, Kristin G. Ardlie2, Andrew Crenshaw2, Wendy Winckler2, Kay Prüfer10, Michael V. Shunkov, Susanna Sawyer10, Udo Stenzel10, Janet Kelso10, Monkol Lek1, Monkol Lek2, Sriram Sankararaman1, Sriram Sankararaman2, Daniel G. MacArthur1, Daniel G. MacArthur2, A.P. Derevianko, Svante Pääbo10, Suzanne B.R. Jacobs2, Shuba Gopal2, James A. Grammatikos2, Ian Smith2, Kevin Bullock2, Amy Deik2, Amanda Souza2, Kerry A. Pierce2, Clary B. Clish2, Timothy Fennell2, Yossi Farjoun2, Stacey Gabriel2, Myron D. Gross11, Mark A. Pereira11, Mark Seielstad12, Woon-Puay Koh13, E. Shyong Tai13, Jason Flannick2, Jason Flannick1, Pierre Fontanillas2, Andrew D. Morris14, Tanya M. Teslovich15, Gil Atzmon16, John Blangero17, Donald W. Bowden18, John C. Chambers19, John C. Chambers20, Yoon Shin Cho21, Ravindranath Duggirala17, Benjamin Glaser22, Benjamin Glaser23, Craig L. Hanis24, Jaspal S. Kooner20, Jaspal S. Kooner19, Markku Laakso25, Jong-Young Lee, Yik Ying Teo26, Yik Ying Teo13, James G. Wilson27, Sobha Puppala17, Vidya S. Farook17, Farook Thameem28, Hanna E. Abboud28, Ralph A. DeFronzo28, Christopher P. Jenkinson28, Donna M. Lehman28, Joanne E. Curran17, Maria L. Cortes2, C. González-Villalpando Clicerio, L. Orozco Lorena 
06 Feb 2014-Nature
TL;DR: Analysis in Mexican and Latin American individuals identified SLC16A11 as a novel candidate gene for type 2 diabetes with a possible role in triacylglycerol metabolism and an archaic genome sequence indicated that the risk haplotype introgressed into modern humans via admixture with Neanderthals.
Abstract: Performing genetic studies in multiple human populations can identify disease risk alleles that are common in one population but rare in others, with the potential to illuminate pathophysiology, health disparities, and the population genetic origins of disease alleles. Here we analysed 9.2 million single nucleotide polymorphisms (SNPs) in each of 8,214 Mexicans and other Latin Americans: 3,848 with type 2 diabetes and 4,366 non-diabetic controls. In addition to replicating previous findings, we identified a novel locus associated with type 2 diabetes at genome-wide significance spanning the solute carriers SLC16A11 and SLC16A13 (P = 3.9 × 10(-13); odds ratio (OR) = 1.29). The association was stronger in younger, leaner people with type 2 diabetes, and replicated in independent samples (P = 1.1 × 10(-4); OR = 1.20). The risk haplotype carries four amino acid substitutions, all in SLC16A11; it is present at ~50% frequency in Native American samples and ~10% in east Asian, but is rare in European and African samples. Analysis of an archaic genome sequence indicated that the risk haplotype introgressed into modern humans via admixture with Neanderthals. The SLC16A11 messenger RNA is expressed in liver, and V5-tagged SLC16A11 protein localizes to the endoplasmic reticulum. Expression of SLC16A11 in heterologous cells alters lipid metabolism, most notably causing an increase in intracellular triacylglycerol levels. Despite type 2 diabetes having been well studied by genome-wide association studies in other populations, analysis in Mexican and Latin American individuals identified SLC16A11 as a novel candidate gene for type 2 diabetes with a possible role in triacylglycerol metabolism.

431 citations

Journal ArticleDOI
Carl D. Langefeld, Hannah C. Ainsworth, Deborah S. Cunninghame Graham1, Jennifer A. Kelly2, Mary E. Comeau, Miranda C. Marion, Timothy D. Howard, Paula S. Ramos, Jennifer A. Croker3, David L. Morris1, Johanna K. Sandling, Jonas Carlsson Almlöf, Eduardo Acevedo-Vásquez4, Graciela S. Alarcón5, Alejandra Babini, Vicente Baca6, Anders A. Bengtsson7, Guillermo A. Berbotto, Marc Bijl, Elizabeth E. Brown5, Hermine I. Brunner8, Mario H. Cardiel, Luis J. Catoggio9, Ricard Cervera, Jorge M. Cucho-Venegas4, Solbritt Rantapää Dahlqvist10, Sandra D'Alfonso11, Berta Martins da Silva, Iñigo de la Rúa Figueroa, Andrea Doria12, Jeffrey C. Edberg3, Emőke Endreffy13, Jorge A. Esquivel-Valerio14, Paul R. Fortin15, Barry I. Freedman, Johan Frostegård16, Mercedes A. García, Ignacio García-De La Torre17, Gary S. Gilkeson18, Dafna D. Gladman, Iva Gunnarsson19, Joel M. Guthridge2, Jennifer Huggins8, Judith A. James, Cees G. M. Kallenberg20, Diane L. Kamen21, David R. Karp22, David R. Karp23, Kenneth M. Kaufman8, Leah C. Kottyan8, László Kovács13, Helle Laustrup24, Helle Laustrup25, Bernard Lauwerys26, Quan Zhen Li22, Quan Zhen Li23, Marco A. Maradiaga-Ceceña, Javier Martín, Joseph M. McCune27, David R. McWilliams, Joan T. Merrill2, Pedro Miranda, José Francisco Moctezuma28, Swapan K. Nath2, Timothy B. Niewold29, Lorena Orozco, Norberto Ortego-Centeno, Michelle Petri30, Christian A. Pineau31, Bernardo A. Pons-Estel, Janet E. Pope32, Prithvi Raj23, Prithvi Raj22, Rosalind Ramsey-Goldman33, John D. Reveille34, John D. Reveille35, John D. Reveille36, Laurie P Russell, José Mario Sabio, Carlos A. Aguilar-Salinas, Hugo R. Scherbarth, Raffaella Scorza37, Michael F. Seldin, Christopher Sjöwall38, Elisabet Svenungsson19, Susan D. Thompson8, Sergio Toloza, Lennart Truedsson7, Lennart Truedsson16, Teresa Tusié-Luna39, Carlos Vasconcelos40, Luis M. Vilá41, Luis M. Vilá34, Daniel J. Wallace42, Michael H. Weisman42, Joan E. Wither, Tushar Bhangale43, Jorge R. Oksenberg, John D. Rioux44, Peter K. Gregersen45, Ann-Christine Syvänen, Lars Rönnblom, Lindsey A. Criswell46, Chaim O. Jacob47, Kathy L. Sivils2, Betty P. Tsao18, Laura E. Schanberg48, Timothy W. Behrens43, Earl D. Silverman, Marta E. Alarcón-Riquelme, Robert P. Kimberly3, John B. Harley8, Edward K. Wakeland23, Edward K. Wakeland22, Robert R. Graham43, Patrick M. Gaffney2, Timothy J. Vyse1 
King's College London1, Oklahoma Medical Research Foundation2, University of Pittsburgh3, National University of San Marcos4, University of Alabama5, Mexican Social Security Institute6, Lund University7, Cincinnati Children's Hospital Medical Center8, Hospital Italiano de Buenos Aires9, Umeå University10, University of Eastern Piedmont11, University of Padua12, University of Szeged13, Universidad Autónoma de Nuevo León14, Laval University15, Karolinska Institutet16, University of Guadalajara17, University of South Carolina18, Karolinska University Hospital19, University Medical Center Groningen20, Medical University of South Carolina21, University of Texas Southwestern Medical Center22, Stanford University23, Odense University24, Odense University Hospital25, Cliniques Universitaires Saint-Luc26, University of Michigan27, Hospital General de México28, Mayo Clinic29, Johns Hopkins University School of Medicine30, McGill University31, University of Western Ontario32, Northwestern University33, Hofstra University34, University of Texas at Austin35, University of Texas Health Science Center at Houston36, University of Milan37, Linköping University38, National Autonomous University of Mexico39, University of Porto40, University of Puerto Rico, Medical Sciences Campus41, Cedars-Sinai Medical Center42, Genentech43, Montreal Heart Institute44, The Feinstein Institute for Medical Research45, University of California, San Francisco46, University of Southern California47, Duke University48
TL;DR: A large transancestral association study of SLE using Immunochip genotype data from 27,574 individuals of European, African and Hispanic Amerindian ancestry identifies both ancestry-dependent and ancestry-independent contributions to SLE risk.
Abstract: Systemic lupus erythematosus (SLE) is an autoimmune disease with marked gender and ethnic disparities. We report a large transancestral association study of SLE using Immunochip genotype data from 27,574 individuals of European (EA), African (AA) and Hispanic Amerindian (HA) ancestry. We identify 58 distinct non-HLA regions in EA, 9 in AA and 16 in HA (∼50% of these regions have multiple independent associations); these include 24 novel SLE regions (P<5 × 10-8), refined association signals in established regions, extended associations to additional ancestries, and a disentangled complex HLA multigenic effect. The risk allele count (genetic load) exhibits an accelerating pattern of SLE risk, leading us to posit a cumulative hit hypothesis for autoimmune disease. Comparing results across the three ancestries identifies both ancestry-dependent and ancestry-independent contributions to SLE risk. Our results are consistent with the unique and complex histories of the populations sampled, and collectively help clarify the genetic architecture and ethnic disparities in SLE.

279 citations

Journal ArticleDOI
11 Jun 2014-JAMA
TL;DR: A single low-frequency variant in the MODY3-causing gene HNF1A that is associated with type 2 diabetes in Latino populations and may affect protein function is identified and may have implications for screening and therapeutic modification in this population.
Abstract: Importance Latino populations have one of the highest prevalences of type 2 diabetes worldwide. Objectives To investigate the association between rare protein-coding genetic variants and prevalence of type 2 diabetes in a large Latino population and to explore potential molecular and physiological mechanisms for the observed relationships. Design, Setting, and Participants Whole-exome sequencing was performed on DNA samples from 3756 Mexican and US Latino individuals (1794 with type 2 diabetes and 1962 without diabetes) recruited from 1993 to 2013. One variant was further tested for allele frequency and association with type 2 diabetes in large multiethnic data sets of 14 276 participants and characterized in experimental assays. Main Outcome and Measures Prevalence of type 2 diabetes. Secondary outcomes included age of onset, body mass index, and effect on protein function. Results A single rare missense variant (c.1522G>A [p.E508K]) was associated with type 2 diabetes prevalence (odds ratio [OR], 5.48; 95% CI, 2.83-10.61; P = 4.4 × 10 −7 ) in hepatocyte nuclear factor 1-α ( HNF1A ), the gene responsible for maturity onset diabetes of the young type 3 (MODY3). This variant was observed in 0.36% of participants without type 2 diabetes and 2.1% of participants with it. In multiethnic replication data sets, the p.E508K variant was seen only in Latino patients (n = 1443 with type 2 diabetes and 1673 without it) and was associated with type 2 diabetes (OR, 4.16; 95% CI, 1.75-9.92; P = .0013). In experimental assays, HNF-1A protein encoding the p.E508K mutant demonstrated reduced transactivation activity of its target promoter compared with a wild-type protein. In our data, carriers and noncarriers of the p.E508K mutation with type 2 diabetes had no significant differences in compared clinical characteristics, including age at onset. The mean (SD) age for carriers was 45.3 years (11.2) vs 47.5 years (11.5) for noncarriers ( P = .49) and the mean (SD) BMI for carriers was 28.2 (5.5) vs 29.3 (5.3) for noncarriers ( P = .19). Conclusions and Relevance Using whole-exome sequencing, we identified a single low-frequency variant in the MODY3-causing gene HNF1A that is associated with type 2 diabetes in Latino populations and may affect protein function. This finding may have implications for screening and therapeutic modification in this population, but additional studies are required.

217 citations


Cited by
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Journal ArticleDOI
27 May 2020-Nature
TL;DR: A catalogue of predicted loss-of-function variants in 125,748 whole-exome and 15,708 whole-genome sequencing datasets from the Genome Aggregation Database (gnomAD) reveals the spectrum of mutational constraints that affect these human protein-coding genes.
Abstract: Genetic variants that inactivate protein-coding genes are a powerful source of information about the phenotypic consequences of gene disruption: genes that are crucial for the function of an organism will be depleted of such variants in natural populations, whereas non-essential genes will tolerate their accumulation. However, predicted loss-of-function variants are enriched for annotation errors, and tend to be found at extremely low frequencies, so their analysis requires careful variant annotation and very large sample sizes1. Here we describe the aggregation of 125,748 exomes and 15,708 genomes from human sequencing studies into the Genome Aggregation Database (gnomAD). We identify 443,769 high-confidence predicted loss-of-function variants in this cohort after filtering for artefacts caused by sequencing and annotation errors. Using an improved model of human mutation rates, we classify human protein-coding genes along a spectrum that represents tolerance to inactivation, validate this classification using data from model organisms and engineered human cells, and show that it can be used to improve the power of gene discovery for both common and rare diseases. A catalogue of predicted loss-of-function variants in 125,748 whole-exome and 15,708 whole-genome sequencing datasets from the Genome Aggregation Database (gnomAD) reveals the spectrum of mutational constraints that affect these human protein-coding genes.

4,913 citations

Journal ArticleDOI
11 Oct 2018-Nature
TL;DR: Deep phenotype and genome-wide genetic data from 500,000 individuals from the UK Biobank is described, describing population structure and relatedness in the cohort, and imputation to increase the number of testable variants to 96 million.
Abstract: The UK Biobank project is a prospective cohort study with deep genetic and phenotypic data collected on approximately 500,000 individuals from across the United Kingdom, aged between 40 and 69 at recruitment. The open resource is unique in its size and scope. A rich variety of phenotypic and health-related information is available on each participant, including biological measurements, lifestyle indicators, biomarkers in blood and urine, and imaging of the body and brain. Follow-up information is provided by linking health and medical records. Genome-wide genotype data have been collected on all participants, providing many opportunities for the discovery of new genetic associations and the genetic bases of complex traits. Here we describe the centralized analysis of the genetic data, including genotype quality, properties of population structure and relatedness of the genetic data, and efficient phasing and genotype imputation that increases the number of testable variants to around 96 million. Classical allelic variation at 11 human leukocyte antigen genes was imputed, resulting in the recovery of signals with known associations between human leukocyte antigen alleles and many diseases.

4,489 citations

01 Feb 2015
TL;DR: In this article, the authors describe the integrative analysis of 111 reference human epigenomes generated as part of the NIH Roadmap Epigenomics Consortium, profiled for histone modification patterns, DNA accessibility, DNA methylation and RNA expression.
Abstract: The reference human genome sequence set the stage for studies of genetic variation and its association with human disease, but epigenomic studies lack a similar reference. To address this need, the NIH Roadmap Epigenomics Consortium generated the largest collection so far of human epigenomes for primary cells and tissues. Here we describe the integrative analysis of 111 reference human epigenomes generated as part of the programme, profiled for histone modification patterns, DNA accessibility, DNA methylation and RNA expression. We establish global maps of regulatory elements, define regulatory modules of coordinated activity, and their likely activators and repressors. We show that disease- and trait-associated genetic variants are enriched in tissue-specific epigenomic marks, revealing biologically relevant cell types for diverse human traits, and providing a resource for interpreting the molecular basis of human disease. Our results demonstrate the central role of epigenomic information for understanding gene regulation, cellular differentiation and human disease.

4,409 citations

Journal ArticleDOI
12 Oct 2017-Nature
TL;DR: It is found that local genetic variation affects gene expression levels for the majority of genes, and inter-chromosomal genetic effects for 93 genes and 112 loci are identified, enabling a mechanistic interpretation of gene regulation and the genetic basis of disease.
Abstract: Characterization of the molecular function of the human genome and its variation across individuals is essential for identifying the cellular mechanisms that underlie human genetic traits and diseases. The Genotype-Tissue Expression (GTEx) project aims to characterize variation in gene expression levels across individuals and diverse tissues of the human body, many of which are not easily accessible. Here we describe genetic effects on gene expression levels across 44 human tissues. We find that local genetic variation affects gene expression levels for the majority of genes, and we further identify inter-chromosomal genetic effects for 93 genes and 112 loci. On the basis of the identified genetic effects, we characterize patterns of tissue specificity, compare local and distal effects, and evaluate the functional properties of the genetic effects. We also demonstrate that multi-tissue, multi-individual data can be used to identify genes and pathways affected by human disease-associated variation, enabling a mechanistic interpretation of gene regulation and the genetic basis of disease.

3,289 citations

Journal ArticleDOI
TL;DR: Improved data access is improved with the release of a new RESTful API to support high-throughput programmatic access, an improved web interface and a new summary statistics database.
Abstract: The GWAS Catalog delivers a high-quality curated collection of all published genome-wide association studies enabling investigations to identify causal variants, understand disease mechanisms, and establish targets for novel therapies. The scope of the Catalog has also expanded to targeted and exome arrays with 1000 new associations added for these technologies. As of September 2018, the Catalog contains 5687 GWAS comprising 71673 variant-trait associations from 3567 publications. New content includes 284 full P-value summary statistics datasets for genome-wide and new targeted array studies, representing 6 × 109 individual variant-trait statistics. In the last 12 months, the Catalog's user interface was accessed by ∼90000 unique users who viewed >1 million pages. We have improved data access with the release of a new RESTful API to support high-throughput programmatic access, an improved web interface and a new summary statistics database. Summary statistics provision is supported by a new format proposed as a community standard for summary statistics data representation. This format was derived from our experience in standardizing heterogeneous submissions, mapping formats and in harmonizing content. Availability: https://www.ebi.ac.uk/gwas/.

2,878 citations