Identification of expression quantitative trait loci by the interaction analysis using genetic algorithm

被引:0
|
作者
Junghyun Namkung
Jin-Wu Nam
Taesung Park
机构
[1] Seoul National University,Bioinformatics Program at College of Natural Science
[2] San 56-1,Department of Statistics
[3] Sillim-dong,undefined
[4] Seoul National University,undefined
[5] 56-1 Shillim-Dong,undefined
关键词
Genetic Algorithm; Local Search; Acute Lymphocytic Leukemia; Exhaustive Search; Linkage Disequilibrium Block;
D O I
10.1186/1753-6561-1-S1-S69
中图分类号
学科分类号
摘要
Many genes with major effects on quantitative traits have been reported to interact with other genes. However, finding a group of interacting genes from thousands of SNPs is challenging. Hence, an efficient and robust algorithm is needed. The genetic algorithm (GA) is useful in searching for the optimal solution from a very large searchable space. In this study, we show that genome-wide interaction analysis using GA and a statistical interaction model can provide a practical method to detect biologically interacting loci. We focus our search on transcriptional regulators by analyzing gene × gene interactions for cancer-related genes. The expression values of three cancer-related genes were selected from the expression data of the Genetic Analysis Workshop 15 Problem 1 data set. We implemented a GA to identify the expression quantitative trait loci that are significantly associated with expression levels of the cancer-related genes. The time complexity of the GA was compared with that of an exhaustive search algorithm. As a result, our GA, which included heuristic methods, such as archive, elitism, and local search, has greatly reduced computational time in a genome-wide search for gene × gene interactions. In general, the GA took one-fifth the computation time of an exhaustive search for the most significant pair of single-nucleotide polymorphisms.
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