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Finding coexpressed genes in counts-based data: an improved measure with validation experiments

机译:在基于计数的数据中发现共表达的基因:通过验证实验的改进措施

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Motivation: Expressed sequence tag (EST) data reflects variation in gene expression, but previous methods for finding coexpressed genes in EST data are subject to bias and vastly overstate the statistical significance of putatively coexpressed genes. Results: We introduce a new method (LNP) that reports reasonable p-values and also detects more biological relationships in human dbEST than do previous methods. In simulations with human dbEST library sizes, previous methods report p-values as low as 10–30 on 1/1000 uncorrelated pairs, while LNP reports significance correctly. We validate the analysis on real human genes by comparing coexpressed pairs to gene ontology annotations and find that LNP is more sensitive than the three previous methods. We also find a small but statistically significant level of coexpression between interacting proteins relative to randomized controls. The LNP method is based on a log-normal prior on the distribution of expression levels.
机译:动机:表达的序列标签(EST)数据反映了基因表达的差异,但是以前在EST数据中寻找共表达基因的方法存在偏差,并且大大高估了假定共表达基因的统计学意义。结果:我们引入了一种新的方法(LNP),该方法报告了合理的p值,并且比以前的方法在人dbEST中检测到更多的生物学关系。在具有人类dbEST文库大小的模拟中,以前的方法报告的1/1000不相关对的p值低至10–30,而LNP正确报告了重要性。我们通过将共表达对与基因本体注释进行比较来验证对真实人类基因的分析,并发现LNP比之前的三种方法更敏感。我们还发现相对于随机对照,相互作用蛋白之间的共表达水平较低,但在统计学上具有统计学意义。 LNP方法基于表达水平分布的对数正态先验。

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