SUPERSEDED - Multi-method genome and epigenome wide studies of inflammatory protein levels in healthy older adults - BayesR+ GWAS Proteins
Date Available
2020-08-01Type
datasetData Creator
Hillary, RobertTrejo Banos, Daniel
Kousathanas, Athanasios
McCartney, Daniel
Harris, Sarah
Stevenson, Anna
Patxot, Marion
Ojavee, Sven Erik
Zhang, Qian
Liewald, David
Ritchie, Craig
Evans, Kathryn
Tucker-Drob, Elliot
Wray, Naomi
McRae, Allan
Visscher, Peter
Deary, Ian
Robinson, Matthew
Marioni, Riccardo
Publisher
University of Edinburgh. Centre for Cognitive Ageing and Cognitive EpidemiologyMetadata
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Citation
Hillary, Robert; Trejo Banos, Daniel; Kousathanas, Athanasios; McCartney, Daniel; Harris, Sarah; Stevenson, Anna; Patxot, Marion; Ojavee, Sven Erik; Zhang, Qian; Liewald, David; Ritchie, Craig; Evans, Kathryn; Tucker-Drob, Elliot; Wray, Naomi; McRae, Allan; Visscher, Peter; Deary, Ian; Robinson, Matthew; Marioni, Riccardo. (2020). SUPERSEDED - Multi-method genome and epigenome wide studies of inflammatory protein levels in healthy older adults - BayesR+ GWAS Proteins, [dataset]. University of Edinburgh. Centre for Cognitive Ageing and Cognitive Epidemiology. https://doi.org/10.7488/ds/2815.Description
## This item has been replaced by the one which can be found at https://doi.org/10.7488/ds/2854 ## This dataset represents one of five datasets which correspond to the study: "Multi-method genome and epigenome wide studies of inflammatory protein levels in healthy older adults". These datasets represent association studies on the levels of the same set of 70 inflammatory proteins. Each dataset represents one of five distinct methods used to perform genome-wide and epigenome-wide association studies on these protein levels. These methods are: Linear Regression GWAS, Linear Regression EWAS, OSCA EWAS, BayesR+ GWAS and BayesR+ EWAS. These analyses were performed as part of the Lothian Birth Cohort 1936 Study. This data relates to summary statistics for GWAS of 70 Olink inflammation proteins - performed by BayesR+.The following licence files are associated with this item: