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Integration of HapMap-based SNP pattern analysis and gene expression profiling reveals common SNP profiles for cancer therapy outcome predictor genes.

机译:基于HapMap的SNP模式分析和基因表达谱的集成揭示了癌症治疗结果预测基因的常见SNP谱。

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Recent completion of the initial phase of a haplotype map of human genome (www.hapmap.org) provides opportunity for integrative analysis on a genome-wide scale of microarray-based gene expression profiling and SNP variation patterns for discovery of cancer-causing genes and genetic markers of therapy outcome. Here we applied this approach for analysis of SNPs of cancer-associated genes, expression profiles of which predicts the likelihood of treatment failure and death after therapy in patients diagnosed with multiple types of cancer. Unexpectedly, this analysis reveals a common SNP pattern for a majority (60 of 74; 81%) of analyzed cancer treatment outcome predictor (CTOP) genes. Our analysis suggests that heritable germ-line genetic variations driven by geographically localized form of natural selection determining population differentiations may have a significant impact on cancer treatment outcome by influencing the individual's gene expression profile. We demonstrate a translational utility of this approach by building a highly informative CTOP algorithm combining prognostic power of multiple gene expression-based CTOP models derived from signatures of oncogenic pathways associated with activation of BMI1; Myc; Her2eu; Ras; beta-catenin; Suz12; E2F; and CCND1 oncogenes. Application of a CTOP algorithm to large databases of early-stage breast and prostate tumors identifies cancer patients with 100% probability of a cure with existing cancer therapies as well as patients with nearly 100% likelihood of treatment failure, thus providing a clinically feasible framework essential for introduction of rational evidence-based individualized therapy selection and prescription protocols. Our analysis indicates that genetic determinants of human disease susceptibility and severity are encoded by population differentiation SNP variants. Evolution of these SNPs is driven by geographically-localized form of natural selection causing population differentiation. Recent analysis identifies a class of SNPs regulating gene expression in normal individuals and likely determining unique genome-wide expression profiles of each individual. We propose that critical disease-causing combinations of SNP variants arise from SNPs regulating mRNA levels and determining genome-wide haplotype patterns of individual's disease susceptibility.
机译:人类基因组单倍型图谱初始阶段的最新完成(www.hapmap.org)为基于基因组芯片的基因表达谱和SNP变异模式的全基因组规模的综合分析提供了机会,以发现致癌基因和治疗结果的遗传标记。在这里,我们将这种方法用于分析癌症相关基因的SNP,其表达谱可预测诊断为多种类型癌症的患者治疗失败和死亡的可能性。出乎意料的是,该分析揭示了大多数分析癌症治疗结果预测因子(CTOP)基因的常见SNP模式(74个中的60个; 81%)。我们的分析表明,由自然选择的地理定位形式决定种群分化的可遗传种系遗传变异可能会通过影响个体的基因表达谱而对癌症治疗结果产生重大影响。我们通过建立高度信息化的CTOP算法,结合多种基于基因表达的CTOP模型的预后能力,证明了这种方法的翻译效用,该CTOP模型源自与BMI1激活相关的致癌途径的标志;我的C; Her2 / neu;拉斯; β-catenin; Suz12; E2F;和CCND1癌基因。 CTOP算法在早期乳腺癌和前列腺癌的大型数据库中的应用可以识别出具有100%可能性通过现有癌症疗法治愈的癌症患者以及具有近100%的治疗失败可能性的患者,从而提供了临床上可行的基本框架引入合理的基于证据的个体化治疗选择和处方方案。我们的分析表明,人类疾病易感性和严重性的遗传决定因素是由人群分化SNP变异编码的。这些SNP的进化是由自然选择的地理定位形式引起的,从而导致种群分化。最近的分析确定了一类SNP,它们调节正常个体中的基因表达,并可能确定每个个体的独特的全基因组表达谱。我们建议SNP变体的关键致病组合来自调节mRNA水平和确定个体疾病易感性的全基因组单倍型的SNP。

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