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首页> 外文期刊>Cancer epidemiology, biomarkers and prevention: A publication of the American Association for Cancer Research >Detecting pathway-based gene-gene and gene-environment interactions in pancreatic cancer.
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Detecting pathway-based gene-gene and gene-environment interactions in pancreatic cancer.

机译:检测胰腺癌中基于通路的基因-基因和基因-环境相互作用。

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Data mining and data reduction methods to detect interactions in epidemiologic data are being developed and tested. In these analyses, multifactor dimensionality reduction, focused interaction testing framework, and traditional logistic regression models were used to identify potential interactions with up to three factors. These techniques were used in a population-based case-control study of pancreatic cancer from the San Francisco Bay Area (308 cases, 964 controls). From 7 biochemical pathways, along with tobacco smoking, 26 polymorphisms in 20 genes were included in these analyses. Combinations of genetic markers and cigarette smoking were identified as potential risk factors for pancreatic cancer, including genes in base excision repair (OGG1), nucleotide excision repair (XPD, XPA, XPC), and double-strand break repair (XRCC3). XPD.751, XPD.312, and cigarette smoking were the best single-factor predictors of pancreatic cancer risk, whereas XRCC3.241*smoking and OGG1.326*XPC.PAT were the best two-factor predictors. There was some evidence for a three-factor combination of OGG1.326*XPD.751*smoking, but the covariate-adjusted relative-risk estimates lacked precision. Multifactor dimensionality reduction and focused interaction testing framework showed little concordance, whereas logistic regression allowed for covariate adjustment and model confirmation. Our data suggest that multiple common alleles from DNA repair pathways in combination with cigarette smoking may increase the risk for pancreatic cancer, and that multiple approaches to data screening and analysis are necessary to identify potentially new risk factor combinations.
机译:用于检测流行病学数据中相互作用的数据挖掘和数据缩减方法正在开发和测试中。在这些分析中,多因素降维,集中的交互测试框架和传统的逻辑回归模型被用来识别与最多三个因素的潜在交互。这些技术被用于来自旧金山湾地区的胰腺癌基于人群的病例对照研究(308例,964例对照)。这些分析包括7种生化途径以及吸烟,包括20个基因的26个多态性。遗传标记和吸烟的组合被鉴定为胰腺癌的潜在危险因素,包括碱基切除修复(OGG1),核苷酸切除修复(XPD,XPA,XPC)和双链断裂修复(XRCC3)中的基因。 XPD.751,XPD.312和吸烟是胰腺癌风险的最佳单因素预测因素,而XRCC3.241 *吸烟和OGG1.326 * XPC.PAT是最佳的两因素预测因素。有证据表明OGG1.326 * XPD.751 *吸烟是三因素组合,但经协变量调整的相对风险估计值缺乏准确性。多因素降维和集中的交互测试框架几乎没有一致性,而逻辑回归允许协变量调整和模型确认。我们的数据表明,DNA修复途径中与吸烟相结合的多个常见等位基因可能会增加胰腺癌的风险,并且数据筛选和分析的多种方法对于确定潜在的新危险因素组合必不可少。

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