Directly to content
  1. Publishing |
  2. Search |
  3. Browse |
  4. Recent items rss |
  5. Open Access |
  6. Jur. Issues |
  7. DeutschClear Cookie - decide language by browser settings

Methods and results from the genome-wide association group at GAW20

Wang, Xuexia ; Boekstegers, Felix ; Brinster, Regina

In: BMC Genetics, 19 (2018), Nr. S.1:79. pp. 1-9. ISSN 1471-2156

[thumbnail of 12863_2018_Article_649.pdf]
Preview
PDF, English
Download (887kB) | Lizenz: Creative Commons LizenzvertragMethods and results from the genome-wide association group at GAW20 by Wang, Xuexia ; Boekstegers, Felix ; Brinster, Regina underlies the terms of Creative Commons Attribution 3.0 Germany

Citation of documents: Please do not cite the URL that is displayed in your browser location input, instead use the DOI, URN or the persistent URL below, as we can guarantee their long-time accessibility.

Abstract

Background: This paper summarizes the contributions from the Genome-wide Association Study group (GWAS group) of the GAW20. The GWAS group contributions focused on topics such as association tests, phenotype imputation, and application of empirical kinships. The goals of the GWAS group contributions were varied. A real or a simulated data set based on the Genetics of Lipid Lowering Drugs and Diet Network (GOLDN) study was employed by different methods. Different outcomes and covariates were considered, and quality control procedures varied throughout the contributions.

Results: The consideration of heritability and family structure played a major role in some contributions. The inclusion of family information and adaptive weights based on data were found to improve power in genome-wide association studies. It was proven that gene-level approaches are more powerful than single-marker analysis. Other contributions focused on the comparison between pedigree-based kinship and empirical kinship matrices, and investigated similar results in heritability estimation, association mapping, and genomic prediction. A new approach for linkage mapping of triglyceride levels was able to identify a novel linkage signal.

Conclusions: This summary paper reports on promising statistical approaches and findings of the members of the GWAS group applied on real and simulated data which encompass the current topics of epigenetic and pharmacogenomics.

Document type: Article
Journal or Publication Title: BMC Genetics
Volume: 19
Number: S.1:79
Publisher: BioMed Central
Place of Publication: London
Date Deposited: 23 Oct 2018 11:11
Date: 2018
ISSN: 1471-2156
Page Range: pp. 1-9
Faculties / Institutes: Medizinische Fakultät Heidelberg > Institut für Medizinische Biometrie und Informatik
DDC-classification: 610 Medical sciences Medicine
About | FAQ | Contact | Imprint |
OA-LogoDINI certificate 2013Logo der Open-Archives-Initiative