Tuberculosis (TB) is currently and historically an enormous public health problem. Approximately one-third of the world's population are currently infected with Mycobacterium tuberculosis (M. tuberculosis) and TB accounts for over 25% of preventable adult deaths world-wide. Despite the high infection rate, only about 10% of people infected with M.tb ever become sick with active TB. Evidence suggests that progression to active TB is influenced by host genetic factors. For example, the epidemiology of TB suggests that genetic selection takes place after introduction of M. tuberculosis to the population; genetically susceptible individuals succumb to the infection and relatively resistant individuals survive to reproduce. As well, twin studies demonstrate higher concordance rates for TB among identical twins, compared to fraternal twins. Mouse models of mycobacterial infection have identified several potential susceptibility loci, such as the gene named Nramp1, as well as several cytokine and cytokine receptor genes. Family-based linkage studies and case-control studies of candidate genes in humans suggest roles for these and other genes associated with development of TB in humans. In light of these observations, we propose a family-based association study of candidate genes for TB susceptibility. To accomplish the goal of identifying genes influencing susceptibility to TB we specifically propose to: 1) Ascertain 1,000 parent- child triads (500 Caucasian, 500 African-American) from North and South Carolina for genetic studies of TB susceptibility genes. 2) Test candidate genes in the first 500 parent-child triads. Multiple single nucleotide polymorphisms (SNPs) will be genotyped in each gene and analyzed using family- based tests of association; significant results will be followed-up in the remaining 500 triads. 3) Examine the relationship between candidate genes and other clinical variables such as PPD skin test results, disease severity, treatment relapse and failure, and presence of extrapulmonary disease. 4) Evaluate gene-gene and gene-environment interactions using multivariable models and data reduction techniques such as the multifactor dimensionality reduction (MDR) method.

Agency
National Institute of Health (NIH)
Institute
National Heart, Lung, and Blood Institute (NHLBI)
Type
Research Project (R01)
Project #
5R01HL068534-03
Application #
6642173
Study Section
Special Emphasis Panel (ZHL1-CSR-L (M4))
Program Officer
Peavy, Hannah H
Project Start
2001-09-10
Project End
2006-07-31
Budget Start
2003-08-01
Budget End
2004-07-31
Support Year
3
Fiscal Year
2003
Total Cost
$462,000
Indirect Cost
Name
Duke University
Department
Internal Medicine/Medicine
Type
Schools of Medicine
DUNS #
044387793
City
Durham
State
NC
Country
United States
Zip Code
27705
Velez Edwards, Digna R; Tacconelli, Alessandra; Wejse, Christian et al. (2012) MCP1 SNPs and pulmonary tuberculosis in cohorts from West Africa, the USA and Argentina: lack of association or epistasis with IL12B polymorphisms. PLoS One 7:e32275
Morris, Gerard A J; Edwards, Digna R Velez; Hill, Philip C et al. (2011) Interleukin 12B (IL12B) genetic variation and pulmonary tuberculosis: a study of cohorts from The Gambia, Guinea-Bissau, United States and Argentina. PLoS One 6:e16656
Velez, Digna Rosa; Wejse, Christian; Stryjewski, Martin E et al. (2010) Variants in toll-like receptors 2 and 9 influence susceptibility to pulmonary tuberculosis in Caucasians, African-Americans, and West Africans. Hum Genet 127:65-73
Velez, Digna Rosa; Hulme, William F; Myers, Jamie L et al. (2009) NOS2A, TLR4, and IFNGR1 interactions influence pulmonary tuberculosis susceptibility in African-Americans. Hum Genet 126:643-53
Velez, D R; Hulme, W F; Myers, J L et al. (2009) Association of SLC11A1 with tuberculosis and interactions with NOS2A and TLR2 in African-Americans and Caucasians. Int J Tuberc Lung Dis 13:1068-76
Hancock, Dana B; Martin, Eden R; Li, Yi-Ju et al. (2007) Methods for interaction analyses using family-based case-control data: conditional logistic regression versus generalized estimating equations. Genet Epidemiol 31:883-93