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首页> 外文期刊>OMICS: A journal of integrative biology >Meta-Analysis of Published Transcriptional and Translational Fold Changes Reveals a Preference for Low-Fold Inductions
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Meta-Analysis of Published Transcriptional and Translational Fold Changes Reveals a Preference for Low-Fold Inductions

机译:出版的转录和翻译折叠变化的荟萃分析揭示了低折叠诱导的偏好。

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The goals of this study were to gain a better quantitative understanding of the dynamic range of transcriptional and translational response observed in biological systems and to examine the reporting of regulatory events for trends and biases. A straightforward pattern-matching routine extracted 3,408 independent observations regarding transcriptional fold-changes and 1,125 regarding translational fold-changes from over 15 million MEDLINE abstracts. Approximately 95% of reported changes were ≥2-fold. Further, the historical trend of reporting individual fold-changes is declining in favor of high-throughput methods for transcription but not translation. Where it was possible to compare the average fold-changes in transcription and translation for the same gene/product (203 examples), approximately 53% were a ≤2-fold difference, suggesting a loose tendency for the two to be coupled in magnitude. We found also that approximately three-fourths of reported regulatory events have been at the transcriptional level. The frequency distribution appears to be normally distributed and peaks near 2-fold, suggesting that nature selects for a low-energy solution to regulatory responses. Because high-throughput technologies ordinarily sacrifice measurement quality for quantity, this also suggests that many regulatory events may not be reliably detectable by such technologies. Text mining of regulatory events and responses provides additional information incorporable into microarray analysis, such as prior fold-change observations and flagging genes that are regulated post-transcription. All extracted regulation and response patterns can be downloaded at the following website: www.ou.edu/microarray/ oumcf/Meta_analysis.xls.
机译:这项研究的目的是更好地定量了解在生物系统中观察到的转录和翻译反应的动态范围,并检查有关趋势和偏倚的调节事件的报告。一个简单的模式匹配例程从1500万份MEDLINE摘要中提取了3,408份关于转录倍数变化的独立观察结果和1,125份关于翻译倍数变化的观察结果。报告的变化中约有95%≥2倍。此外,报告单个倍数变化的历史趋势正在下降,转而采用转录而不是翻译的高通量方法。如果可以比较同一基因/产物的转录和翻译的平均倍数变化(203个实例),则大约53%的差异≤2倍,这表明二者在数量上存在松散的趋势。我们还发现,大约四分之三的报道的调节事件处于转录水平。频率分布似乎呈正态分布,并且峰值接近2倍,这表明自然界会选择低能量的方法来应对调节响应。因为高通量技术通常会牺牲数量的测量质量,所以这也表明此类技术可能无法可靠地检测到许多监管事件。监管事件和响应的文本挖掘提供了可纳入微阵列分析的其他信息,例如先前的倍数变化观察和标记转录后受调控的基因。可以从以下网站下载所有提取的调节和响应模式:www.ou.edu/microarray/ oumcf / Meta_analysis.xls。

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