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首页> 外文期刊>BMC Bioinformatics >Resolution of large and small differences in gene expression using models for the Bayesian analysis of gene expression levels and spotted DNA microarrays
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Resolution of large and small differences in gene expression using models for the Bayesian analysis of gene expression levels and spotted DNA microarrays

机译:使用用于基因表达水平和斑点DNA微阵列的贝叶斯分析的模型解决基因表达的大小差异

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Background The detection of small yet statistically significant differences in gene expression in spotted DNA microarray studies is an ongoing challenge. Meeting this challenge requires careful examination of the performance of a range of statistical models, as well as empirical examination of the effect of replication on the power to resolve these differences. Results New models are derived and software is developed for the analysis of microarray ratio data. These models incorporate multiplicative small error terms, and error standard deviations that are proportional to expression level. The fastest and most powerful method incorporates additive small error terms and error standard deviations proportional to expression level. Data from four studies are profiled for the degree to which they reveal statistically significant differences in gene expression. The gene expression level at which there is an empirical 50% probability of a significant call is presented as a summary statistic for the power to detect small differences in gene expression. Conclusions Understanding the resolution of difference in gene expression that is detectable as significant is a vital component of experimental design and evaluation. These small differences in gene expression level are readily detected with a Bayesian analysis of gene expression level that has additive error terms and constrains samples to have a common error coefficient of variation. The power to detect small differences in a study may then be determined by logistic regression.
机译:背景技术在斑点DNA芯片研究中检测基因表达中小的但有统计学意义的差异是一项持续的挑战。应对这一挑战需要仔细检查一系列统计模型的性能,以及对复制对解决这些差异的能力的影响进行实证研究。结果推导了新模型,并开发了用于分析微阵列比例数据的软件。这些模型包含可乘的小误差项,以及与表达水平成正比的误差标准偏差。最快,最强大的方法包括相加的小误差项和与表达水平成正比的误差标准偏差。对来自四项研究的数据进行分析,以揭示它们在基因表达上的统计学显着差异。以经验性命中率达到50%的显着概率作为基因表达水平,作为摘要统计量提供,可以检测基因表达中的细微差异。结论了解可检测到的显着基因表达差异的解决方案是实验设计和评估的重要组成部分。这些基因表达水平的细微差异很容易通过具有附加误差项并限制样本具有共同误差系数的基因表达水平的贝叶斯分析来检测。然后,可以通过逻辑回归确定检测研究中小的差异的能力。

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