Yang Cheng-Hong, Chang Hsueh-Wei, Cheng Yu-Huei, Chuang Li-Yeh
Department of Electronic Engineering, National Kaohsiung University of Applied Sciences, Kaohsiung, Taiwan.
Cancer Epidemiol. 2009 Aug;33(2):147-54. doi: 10.1016/j.canep.2009.07.001. Epub 2009 Jul 28.
High-throughput single nucleotide polymorphism (SNP) genotyping generates a huge amount of SNP data in genome-wide association studies. Simultaneous analyses for multiple SNP interactions associated with many diseases and cancers are essential; however, these analyses are still computationally challenging.
In this study, we propose an odds ratio-based binary particle swarm optimization (OR-BPSO) method to evaluate the risk of breast cancer.
BPSO provides the combinational SNPs with their corresponding genotype, called SNP barcodes, with the maximal difference of occurrence between the control and breast cancer groups. A specific SNP barcode with an optimized fitness value was identified among seven SNP combinations within the space of one minute. The identified SNP barcodes with the best performance between control and breast cancer groups were found to be control-dominant, suggesting that these SNP barcodes may prove protective against breast cancer. After statistical analysis, these control-dominant SNP barcodes were processed for odds ratio analysis for quantitative measurement with regard to the risk of breast cancer.
This study proposes an effective high-speed method to analyze the SNP-SNP interactions for breast cancer association study.
在全基因组关联研究中,高通量单核苷酸多态性(SNP)基因分型会产生海量的SNP数据。对与多种疾病和癌症相关的多个SNP相互作用进行同步分析至关重要;然而,这些分析在计算上仍然具有挑战性。
在本研究中,我们提出了一种基于比值比的二元粒子群优化(OR-BPSO)方法来评估乳腺癌风险。
BPSO为组合SNP及其相应的基因型(称为SNP条形码)提供了对照组和乳腺癌组之间出现频率的最大差异。在一分钟内,在七个SNP组合的空间中识别出了一个具有优化适应度值的特定SNP条形码。在对照组和乳腺癌组之间表现最佳的已识别SNP条形码被发现以对照组为主导,这表明这些SNP条形码可能对乳腺癌具有保护作用。经过统计分析后,对这些以对照组为主导的SNP条形码进行比值比分析,以对乳腺癌风险进行定量测量。
本研究提出了一种有效的高速方法来分析用于乳腺癌关联研究的SNP-SNP相互作用。