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首页> 外文期刊>OMICS: A journal of integrative biology >Computational Analysis of Simulated SNP Interactions Between 26 Growth Factor-Related Genes in a Breast Cancer Association Study
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Computational Analysis of Simulated SNP Interactions Between 26 Growth Factor-Related Genes in a Breast Cancer Association Study

机译:计算模拟分析SNP26日增长Factor-Related之间的相互作用基因在乳腺癌协会的一项研究中

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摘要

Many association studies analyze the genotype frequencies of case and control data to predict susceptibility to diseases and cancers. Without providing the raw data for genotypes, many association studies cannot be interpreted fully. Often, the interactions of the single nucleotide polymorphisms (SNPs) are not addressed and this limits the potential of such studies. To solve these problems, we propose a novel computational method with source codes to generate a stimulated genotype dataset based on published SNP genotype frequencies. In this study we evaluate the combined effect of 26 SNP combinations related to eight published growth factor-related genes involved in carcinogenesis pathways of breast cancer. The genetic algorithm (GA) was chosen to provide simultaneous analysis of multiple independent SNPs. The GA can perform feature selection from different SNP combinations via their corresponding genotype (called the SNP barcode), and the approach is able to provide a specific SNP barcode with an optimized fitness value effectively. The best SNP barcode with the maximal occurrence difference between groups for the control and breast cancer, together with an odds ratio analysis, is used to evaluate breast cancer susceptibility. When they are compared to their corresponding non-SNP barcodes, the estimated odds ratios for breast cancer are less than 1 (about 0.85 and 0.87; confidence interval: 0.7473~0.9585, p<0.01) for specific SNP barcodes with two to five SNPs. Therefore, we were able to identify potential combined growth factor-related genes together with their SNP barcodes that were protective against breast cancer by in silico analysis.
机译:许多协会研究分析基因型频率的情况下和控制数据预测易受疾病和癌症。为基因型提供原始数据,很多关联研究不能完全解释。通常,单核苷酸的交互多态性,这并没有涉及限制此类研究的潜力。这些问题,我们提出一个新颖的计算方法和源代码生成一个刺激基于发表SNP基因型的基因型数据集频率。综合效应相关的26个SNP组合八出版增长factor-related基因参与乳腺癌致癌作用途径癌症。提供多种的同时分析独立的snp。通过选择不同的SNP组合相应的基因型(称为SNP条形码),能够提供一种方法特定的SNP条形码优化健身有效的价值。最大组出现区别控制和乳腺癌,连同一个优势比分析,用于评估乳腺癌癌症易感性。相应的non-SNP条形码,估计乳腺癌的胜算比更少比1(约0.85和0.87;0.7473 ~ 0.9585, p < 0.01)为特定的SNP条形码2到5个snp。识别潜在的增长factor-related相结合连同他们的基因SNP的条形码预防乳腺癌的硅片分析。

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