TY - JOUR
T1 - Genetic basis of autoantibody positive and negative rheumatoid arthritis risk in a multi-ethnic cohort derived from electronic health records
AU - Kurreeman, Fina
AU - Liao, Katherine
AU - Chibnik, Lori
AU - Hickey, Brendan
AU - Stahl, Eli
AU - Gainer, Vivian
AU - Li, Gang
AU - Bry, Lynn
AU - Mahan, Scott
AU - Ardlie, Kristin
AU - Thomson, Brian
AU - Szolovits, Peter
AU - Churchill, Susanne
AU - Murphy, Shawn N.
AU - Cai, Tianxi
AU - Raychaudhuri, Soumya
AU - Kohane, Isaac
AU - Karlson, Elizabeth
AU - Plenge, Robert M.
N1 - K08 AR055688-03, NIAMS NIH HHS, United StatesK08 AR055688-04, NIAMS NIH HHS, United StatesR01 AR056768-01, NIAMS NIH HHS, United StatesR01 AR057108-02, NIAMS NIH HHS, United StatesR01 AR059648-02, NIAMS NIH HHS, United StatesR01-AR-057108, NIAMS NIH HHS, United StatesR01-AR056768, NIAMS NIH HHS, United StatesU01 GM092691-01, NIGMS NIH HHS, United StatesU01-GM092691, NIGMS NIH HHS, United StatesU54-LM008748, NLM NIH HHS, United States
PY - 2011/1/7
Y1 - 2011/1/7
N2 - Discovering and following up on genetic associations with complex phenotypes require large patient cohorts. This is particularly true for patient cohorts of diverse ancestry and clinically relevant subsets of disease. The ability to mine the electronic health records (EHRs) of patients followed as part of routine clinical care provides a potential opportunity to efficiently identify affected cases and unaffected controls for appropriate-sized genetic studies. Here, we demonstrate proof-of-concept that it is possible to use EHR data linked with biospecimens to establish a multi-ethnic case-control cohort for genetic research of a complex disease, rheumatoid arthritis (RA). In 1,515 EHR-derived RA cases and 1,480 controls matched for both genetic ancestry and disease-specific autoantibodies (anti-citrullinated protein antibodies [ACPA]), we demonstrate that the odds ratios and aggregate genetic risk score (GRS) of known RA risk alleles measured in individuals of European ancestry within our EHR cohort are nearly identical to those derived from a genome-wide association study (GWAS) of 5,539 autoantibody-positive RA cases and 20,169 controls. We extend this approach to other ethnic groups and identify a large overlap in the GRS among individuals of European, African, East Asian, and Hispanic ancestry. We also demonstrate that the distribution of a GRS based on 28 non-HLA risk alleles in ACPA+ cases partially overlaps with ACPA- subgroup of RA cases. Our study demonstrates that the genetic basis of rheumatoid arthritis risk is similar among cases of diverse ancestry divided into subsets based on ACPA status and emphasizes the utility of linking EHR clinical data with biospecimens for genetic studies. © 2011 The American Society of Human Genetics.
AB - Discovering and following up on genetic associations with complex phenotypes require large patient cohorts. This is particularly true for patient cohorts of diverse ancestry and clinically relevant subsets of disease. The ability to mine the electronic health records (EHRs) of patients followed as part of routine clinical care provides a potential opportunity to efficiently identify affected cases and unaffected controls for appropriate-sized genetic studies. Here, we demonstrate proof-of-concept that it is possible to use EHR data linked with biospecimens to establish a multi-ethnic case-control cohort for genetic research of a complex disease, rheumatoid arthritis (RA). In 1,515 EHR-derived RA cases and 1,480 controls matched for both genetic ancestry and disease-specific autoantibodies (anti-citrullinated protein antibodies [ACPA]), we demonstrate that the odds ratios and aggregate genetic risk score (GRS) of known RA risk alleles measured in individuals of European ancestry within our EHR cohort are nearly identical to those derived from a genome-wide association study (GWAS) of 5,539 autoantibody-positive RA cases and 20,169 controls. We extend this approach to other ethnic groups and identify a large overlap in the GRS among individuals of European, African, East Asian, and Hispanic ancestry. We also demonstrate that the distribution of a GRS based on 28 non-HLA risk alleles in ACPA+ cases partially overlaps with ACPA- subgroup of RA cases. Our study demonstrates that the genetic basis of rheumatoid arthritis risk is similar among cases of diverse ancestry divided into subsets based on ACPA status and emphasizes the utility of linking EHR clinical data with biospecimens for genetic studies. © 2011 The American Society of Human Genetics.
U2 - 10.1016/j.ajhg.2010.12.007
DO - 10.1016/j.ajhg.2010.12.007
M3 - Article
C2 - 21211616
SN - 0002-9297
VL - 88
SP - 57
EP - 69
JO - American Journal of Human Genetics
JF - American Journal of Human Genetics
IS - 1
ER -