Searching across hundreds of databases

Our searching services are busy right now. Your search will reload in five seconds.

X
Forgot Password

If you have forgotten your password you can enter your email here and get a temporary password sent to your email.

X
Forgot Password

If you have forgotten your password you can enter your email here and get a temporary password sent to your email.

Seven new loci associated with age-related macular degeneration.

Lars G Fritsche | Wei Chen | Matthew Schu | Brian L Yaspan | Yi Yu | Gudmar Thorleifsson | Donald J Zack | Satoshi Arakawa | Valentina Cipriani | Stephan Ripke | Robert P Igo | Gabriëlle H S Buitendijk | Xueling Sim | Daniel E Weeks | Robyn H Guymer | Joanna E Merriam | Peter J Francis | Gregory Hannum | Anita Agarwal | Ana Maria Armbrecht | Isabelle Audo | Tin Aung | Gaetano R Barile | Mustapha Benchaboune | Alan C Bird | Paul N Bishop | Kari E Branham | Matthew Brooks | Alexander J Brucker | William H Cade | Melinda S Cain | Peter A Campochiaro | Chi-Chao Chan | Ching-Yu Cheng | Emily Y Chew | Kimberly A Chin | Itay Chowers | David G Clayton | Radu Cojocaru | Yvette P Conley | Belinda K Cornes | Mark J Daly | Baljean Dhillon | Albert O Edwards | Evangelos Evangelou | Jesen Fagerness | Henry A Ferreyra | James S Friedman | Asbjorg Geirsdottir | Ronnie J George | Christian Gieger | Neel Gupta | Stephanie A Hagstrom | Simon P Harding | Christos Haritoglou | John R Heckenlively | Frank G Holz | Guy Hughes | John P A Ioannidis | Tatsuro Ishibashi | Peronne Joseph | Gyungah Jun | Yoichiro Kamatani | Nicholas Katsanis | Claudia N Keilhauer | Jane C Khan | Ivana K Kim | Yutaka Kiyohara | Barbara E K Klein | Ronald Klein | Jaclyn L Kovach | Igor Kozak | Clara J Lee | Kristine E Lee | Peter Lichtner | Andrew J Lotery | Thomas Meitinger | Paul Mitchell | Saddek Mohand-Saïd | Anthony T Moore | Denise J Morgan | Margaux A Morrison | Chelsea E Myers | Adam C Naj | Yusuke Nakamura | Yukinori Okada | Anton Orlin | M Carolina Ortube | Mohammad I Othman | Chris Pappas | Kyu Hyung Park | Gayle J T Pauer | Neal S Peachey | Olivier Poch | Rinki Ratna Priya | Robyn Reynolds | Andrea J Richardson | Raymond Ripp | Guenther Rudolph | Euijung Ryu | José-Alain Sahel | Debra A Schaumberg | Hendrik P N Scholl | Stephen G Schwartz | William K Scott | Humma Shahid | Haraldur Sigurdsson | Giuliana Silvestri | Theru A Sivakumaran | R Theodore Smith | Lucia Sobrin | Eric H Souied | Dwight E Stambolian | Hreinn Stefansson | Gwen M Sturgill-Short | Atsushi Takahashi | Nirubol Tosakulwong | Barbara J Truitt | Evangelia E Tsironi | André G Uitterlinden | Cornelia M van Duijn | Lingam Vijaya | Johannes R Vingerling | Eranga N Vithana | Andrew R Webster | H-Erich Wichmann | Thomas W Winkler | Tien Y Wong | Alan F Wright | Diana Zelenika | Ming Zhang | Ling Zhao | Kang Zhang | Michael L Klein | Gregory S Hageman | G Mark Lathrop | Kari Stefansson | Rando Allikmets | Paul N Baird | Michael B Gorin | Jie Jin Wang | Caroline C W Klaver | Johanna M Seddon | Margaret A Pericak-Vance | Sudha K Iyengar | John R W Yates | Anand Swaroop | Bernhard H F Weber | Michiaki Kubo | Margaret M Deangelis | Thierry Léveillard | Unnur Thorsteinsdottir | Jonathan L Haines | Lindsay A Farrer | Iris M Heid | Gonçalo R Abecasis | AMD Gene Consortium
Nature genetics | 2013

Age-related macular degeneration (AMD) is a common cause of blindness in older individuals. To accelerate the understanding of AMD biology and help design new therapies, we executed a collaborative genome-wide association study, including >17,100 advanced AMD cases and >60,000 controls of European and Asian ancestry. We identified 19 loci associated at P < 5 × 10(-8). These loci show enrichment for genes involved in the regulation of complement activity, lipid metabolism, extracellular matrix remodeling and angiogenesis. Our results include seven loci with associations reaching P < 5 × 10(-8) for the first time, near the genes COL8A1-FILIP1L, IER3-DDR1, SLC16A8, TGFBR1, RAD51B, ADAMTS9 and B3GALTL. A genetic risk score combining SNP genotypes from all loci showed similar ability to distinguish cases and controls in all samples examined. Our findings provide new directions for biological, genetic and therapeutic studies of AMD.

Pubmed ID: 23455636 RIS Download

Associated grants

  • Agency: Medical Research Council, United Kingdom
    Id: G0000067
  • Agency: NEI NIH HHS, United States
    Id: R01 EY013435
  • Agency: Medical Research Council, United Kingdom
    Id: MR/K006584/1
  • Agency: NEI NIH HHS, United States
    Id: R01 EY022310
  • Agency: NEI NIH HHS, United States
    Id: R24 EY019861
  • Agency: NEI NIH HHS, United States
    Id: P30 EY019007
  • Agency: NEI NIH HHS, United States
    Id: R01 EY021163
  • Agency: NHGRI NIH HHS, United States
    Id: R01 HG007022
  • Agency: NEI NIH HHS, United States
    Id: P30 EY014800
  • Agency: NEI NIH HHS, United States
    Id: R01 EY022005
  • Agency: Medical Research Council, United Kingdom
    Id: MC_U127584475
  • Agency: NEI NIH HHS, United States
    Id: R01 EY011309

Publication data is provided by the National Library of Medicine ® and PubMed ®. Data is retrieved from PubMed ® on a weekly schedule. For terms and conditions see the National Library of Medicine Terms and Conditions.

This is a list of tools and resources that we have found mentioned in this publication.


R Project for Statistical Computing (tool)

RRID:SCR_001905

Software environment and programming language for statistical computing and graphics. R is integrated suite of software facilities for data manipulation, calculation and graphical display. Can be extended via packages. Some packages are supplied with the R distribution and more are available through CRAN family.It compiles and runs on wide variety of UNIX platforms, Windows and MacOS.

View all literature mentions

International HapMap Project (tool)

RRID:SCR_002846

THIS RESOURCE IS NO LONGER IN SERVICE, documented August 22, 2016. A multi-country collaboration among scientists and funding agencies to develop a public resource where genetic similarities and differences in human beings are identified and catalogued. Using this information, researchers will be able to find genes that affect health, disease, and individual responses to medications and environmental factors. All of the information generated by the Project will be released into the public domain. Their goal is to compare the genetic sequences of different individuals to identify chromosomal regions where genetic variants are shared. Public and private organizations in six countries are participating in the International HapMap Project. Data generated by the Project can be downloaded with minimal constraints. HapMap project related data, software, and documentation include: bulk data on genotypes, frequencies, LD data, phasing data, allocated SNPs, recombination rates and hotspots, SNP assays, Perlegen amplicons, raw data, inferred genotypes, and mitochondrial and chrY haplogroups; Generic Genome Browser software; protocols and information on assay design, genotyping and other protocols used in the project; and documentation of samples/individuals and the XML format used in the project.

View all literature mentions

CRAN (tool)

RRID:SCR_003005

Network of ftp and web servers around world that store identical, up to date, versions of code and documentation for R. Package archive network for R programming language.

View all literature mentions

1000 Genomes: A Deep Catalog of Human Genetic Variation (tool)

RRID:SCR_006828

International collaboration producing an extensive public catalog of human genetic variation, including SNPs and structural variants, and their haplotype contexts, in an effort to provide a foundation for investigating the relationship between genotype and phenotype. The genomes of about 2500 unidentified people from about 25 populations around the world were sequenced using next-generation sequencing technologies. Redundant sequencing on various platforms and by different groups of scientists of the same samples can be compared. The results of the study are freely and publicly accessible to researchers worldwide. The consortium identified the following populations whose DNA will be sequenced: Yoruba in Ibadan, Nigeria; Japanese in Tokyo; Chinese in Beijing; Utah residents with ancestry from northern and western Europe; Luhya in Webuye, Kenya; Maasai in Kinyawa, Kenya; Toscani in Italy; Gujarati Indians in Houston; Chinese in metropolitan Denver; people of Mexican ancestry in Los Angeles; and people of African ancestry in the southwestern United States. The goal Project is to find most genetic variants that have frequencies of at least 1% in the populations studied. Sequencing is still too expensive to deeply sequence the many samples being studied for this project. However, any particular region of the genome generally contains a limited number of haplotypes. Data can be combined across many samples to allow efficient detection of most of the variants in a region. The Project currently plans to sequence each sample to about 4X coverage; at this depth sequencing cannot provide the complete genotype of each sample, but should allow the detection of most variants with frequencies as low as 1%. Combining the data from 2500 samples should allow highly accurate estimation (imputation) of the variants and genotypes for each sample that were not seen directly by the light sequencing. All samples from the 1000 genomes are available as lymphoblastoid cell lines (LCLs) and LCL derived DNA from the Coriell Cell Repository as part of the NHGRI Catalog. The sequence and alignment data generated by the 1000genomes project is made available as quickly as possible via their mirrored ftp sites. ftp://ftp.1000genomes.ebi.ac.uk ftp://ftp-trace.ncbi.nlm.nih.gov/1000genomes

View all literature mentions

PolyPhen: Polymorphism Phenotyping (tool)

RRID:SCR_013200

Software tool which predicts possible impact of amino acid substitution on structure and function of human protein using straightforward physical and comparative considerations. PolyPhen-2 is new development of PolyPhen tool for annotating coding nonsynonymous SNPs.

View all literature mentions

1000 Genomes Project and AWS (tool)

RRID:SCR_008801

A dataset containing the full genomic sequence of 1,700 individuals, freely available for research use. The 1000 Genomes Project is an international research effort coordinated by a consortium of 75 companies and organizations to establish the most detailed catalogue of human genetic variation. The project has grown to 200 terabytes of genomic data including DNA sequenced from more than 1,700 individuals that researchers can now access on AWS for use in disease research free of charge. The dataset containing the full genomic sequence of 1,700 individuals is now available to all via Amazon S3. The data can be found at: http://s3.amazonaws.com/1000genomes The 1000 Genomes Project aims to include the genomes of more than 2,662 individuals from 26 populations around the world, and the NIH will continue to add the remaining genome samples to the data collection this year. Public Data Sets on AWS provide a centralized repository of public data hosted on Amazon Simple Storage Service (Amazon S3). The data can be seamlessly accessed from AWS services such Amazon Elastic Compute Cloud (Amazon EC2) and Amazon Elastic MapReduce (Amazon EMR), which provide organizations with the highly scalable compute resources needed to take advantage of these large data collections. AWS is storing the public data sets at no charge to the community. Researchers pay only for the additional AWS resources they need for further processing or analysis of the data. All 200 TB of the latest 1000 Genomes Project data is available in a publicly available Amazon S3 bucket. You can access the data via simple HTTP requests, or take advantage of the AWS SDKs in languages such as Ruby, Java, Python, .NET and PHP. Researchers can use the Amazon EC2 utility computing service to dive into this data without the usual capital investment required to work with data at this scale. AWS also provides a number of orchestration and automation services to help teams make their research available to others to remix and reuse. Making the data available via a bucket in Amazon S3 also means that customers can crunch the information using Hadoop via Amazon Elastic MapReduce, and take advantage of the growing collection of tools for running bioinformatics job flows, such as CloudBurst and Crossbow.

View all literature mentions