The long-term goal of this project is to develop statistical methods and software for the analysis of genetic basis of complex traits. In spite of the rapid progress in the development of high-resolution SNP maps of the human genome, the task of identification and characterization of susceptibility genes for complex diseases is one of the greatest challenges facing human geneticists. This challenge is partly due to the limitations of current statistical methods for detecting gene effects that depend solely or partially on interactions with other genes and with environmental exposures. For complex diseases, each individual gene has a very small effect and this small effect may be further confounded by population stratification for population-based studies. Therefore, it is difficult to detect the genetic effect when the gene is analyzed individually. This project will develop statistical methods that analyze a group of loci to identify a set of susceptibility loci, to detect high order gene-gene interactions and gene-environment interactions, and to understand the genetic architecture of complex diseases. These methods will accelerate the discovery of the genes responsible for complex diseases and hold great promise for the development of new diagnostics tools and treatments for human diseases. When searching for a set of susceptibility markers from hundreds of SNPs, an objective function that can consider high order gene-gene interaction will be introduced, and a dimension reduction technique will be needed. Finally, when searching for a set of susceptibility markers across the genome, the computational feasibility will be the main concern. An simulated annealing search method will be introduced to detect a set of markers whose interactions are responsible for the disease. At the same time, the computational burden will be kept within the ability of the current technology. The proposed methodology will be implemented by user-friendly software. The documentation, distribution, and support of the software will be provided.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
5R01GM069940-02
Application #
7097345
Study Section
Genomics, Computational Biology and Technology Study Section (GCAT)
Program Officer
Anderson, Richard A
Project Start
2005-08-01
Project End
2008-07-31
Budget Start
2006-08-01
Budget End
2007-07-31
Support Year
2
Fiscal Year
2006
Total Cost
$227,862
Indirect Cost
Name
Michigan Technological University
Department
Biostatistics & Other Math Sci
Type
Schools of Arts and Sciences
DUNS #
065453268
City
Houghton
State
MI
Country
United States
Zip Code
49931
Sha, Qiuying; Zhang, Zhaogong; Zhang, Shuanglin (2011) Joint analysis for genome-wide association studies in family-based designs. PLoS One 6:e21957
Qin, Huaizhen; Feng, Tao; Zhang, Shuanglin et al. (2010) A data-driven weighting scheme for family-based genome-wide association studies. Eur J Hum Genet 18:596-603
Zhang, Zhaogong; Niu, Adan; Sha, Qiuying (2010) Identification of interacting genes in genome-wide association studies using a model-based two-stage approach. Ann Hum Genet 74:406-15
Sha, Qiuying; Zhang, Zhaogong; Schymick, Jennifer C et al. (2009) Genome-wide association reveals three SNPs associated with sporadic amyotrophic lateral sclerosis through a two-locus analysis. BMC Med Genet 10:86
Tang, Rui; Feng, Tao; Sha, Qiuying et al. (2009) A variable-sized sliding-window approach for genetic association studies via principal component analysis. Ann Hum Genet 73:631-7
Jiang, Renfang; Dong, Jianping; Dai, Yilin (2009) Improving power in genetic-association studies via wavelet transformation. BMC Genet 10:53
Wang, Xuexia; Zhang, Shuanglin; Sha, Qiuying (2009) A new association test to test multiple-marker association. Genet Epidemiol 33:164-71
Qin, Huaizhen; Feng, Tao; Harding, Scott A et al. (2008) An efficient method to identify differentially expressed genes in microarray experiments. Bioinformatics 24:1583-9
Zhang, Zhaogong; Zhang, Shuanglin; Wong, Man-Yu et al. (2008) An ensemble learning approach jointly modeling main and interaction effects in genetic association studies. Genet Epidemiol 32:285-300
Feng, Tao; Zhang, Shuanglin; Sha, Qiuying (2007) Two-stage association tests for genome-wide association studies based on family data with arbitrary family structure. Eur J Hum Genet 15:1169-75

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