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Messenger RNA Polyadenylation Site Recognition in Green Alga Chlamydomonas Reinhardtii

机译:绿藻藻藻藻藻藻藻藻中的信使RNA多腺苷酸化位点识别

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Recognition of polyadenylation [poly(A)] sites for messenger RNA is important in genome annotation and gene expression regulation analysis. In the paper, poly(A) sites of Chlamydomonas reinhardtii were identified using an updated version of poly(A) site recognition software PASS_VAR based on generalized hidden Markov rnodel. First, we analyzed the characteristics of the poly(A) sites and their surrounding sequence patterns, and used an entropy-based feature selection method to select important poly(A) signal patterns in conservative signal states. Then we improved the existing poly(A) sites recognition software PASS that was initially designed only for Arabidopsis to make it suitable for different species. Next, Chlamydomonas sequences were grouped according to their signal patterns and used to train the model parameters through mathematical statistics methods. Finally, poly(A) sites were identified using PASS_VAR. The efficacy of our model is showed up to 93% confidence with strong signals.
机译:识别Messenger RNA的聚苯化[聚(a)]位点在基因组注释和基因表达调节分析中是重要的。在论文中,使用基于广义隐藏马尔可夫RNODEL的Poly(a)站点识别软件Pass_var的更新版本来识别Chlamydomonas Reinhardtii的poly(a)invhardtii。首先,我们分析了聚(a)站点及其周围序列模式的特征,并使用了基于熵的特征选择方法来选择保守信号状态的重要多(a)信号模式。然后,我们改进了现有的Poly(a)站点识别软件通过,其最初仅设计用于拟南芥,以使其适用于不同的物种。接下来,根据它们的信号模式分组衣原体曲线序列,并通过数学统计方法训练模型参数。最后,使用Pass_var鉴定聚(a)位点。我们的模型的功效显示出强大信号的置信度高达93%。

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