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Psiscan:一种识别锥虫基因组中H/ACA样和AGA样非编码RNA的计算方法。

Psiscan: a computational approach to identify H/ACA-like and AGA-like non-coding RNA in trypanosomatid genomes.

作者信息

Myslyuk Inna, Doniger Tirza, Horesh Yair, Hury Avraham, Hoffer Ran, Ziporen Yaara, Michaeli Shulamit, Unger Ron

机构信息

Faculty of Life Science, Bar-Ilan University, Ramat-Gan, Israel.

出版信息

BMC Bioinformatics. 2008 Nov 5;9:471. doi: 10.1186/1471-2105-9-471.

Abstract

BACKGROUND

Detection of non coding RNA (ncRNA) molecules is a major bioinformatics challenge. This challenge is particularly difficult when attempting to detect H/ACA molecules which are involved in converting uridine to pseudouridine on rRNA in trypanosomes, because these organisms have unique H/ACA molecules (termed H/ACA-like) that lack several of the features that characterize H/ACA molecules in most other organisms.

RESULTS

We present here a computational tool called Psiscan, which was designed to detect H/ACA-like molecules in trypanosomes. We started by analyzing known H/ACA-like molecules and characterized their crucial elements both computationally and experimentally. Next, we set up constraints based on this analysis and additional phylogenic and functional data to rapidly scan three trypanosome genomes (T. brucei, T. cruzi and L. major) for sequences that observe these constraints and are conserved among the species. In the next step, we used minimal energy calculation to select the molecules that are predicted to fold into a lowest energy structure that is consistent with the constraints. In the final computational step, we used a Support Vector Machine that was trained on known H/ACA-like molecules as positive examples and on negative examples of molecules that were identified by the computational analyses but were shown experimentally not to be H/ACA-like molecules. The leading candidate molecules predicted by the SVM model were then subjected to experimental validation.

CONCLUSION

The experimental validation showed 11 molecules to be expressed (4 out of 25 in the intermediate stage and 7 out of 19 in the final validation after the machine learning stage). Five of these 11 molecules were further shown to be bona fide H/ACA-like molecules. As snoRNA in trypanosomes are organized in clusters, the new H/ACA-like molecules could be used as starting points to manually search for additional molecules in their neighbourhood. All together this study increased our repertoire by fourteen H/ACA-like and six C/D snoRNAs molecules from T. brucei and L. Major. In addition the experimental analysis revealed that six ncRNA molecules that are expressed are not downregulated in CBF5 silenced cells, suggesting that they have structural features of H/ACA-like molecules but do not have their standard function. We termed this novel class of molecules AGA-like, and we are exploring their function. This study demonstrates the power of tight collaboration between computational and experimental approaches in a combined effort to reveal the repertoire of ncRNA molecles.

摘要

背景

非编码RNA(ncRNA)分子的检测是一项重大的生物信息学挑战。当试图检测参与锥虫核糖体RNA上尿苷向假尿苷转化的H/ACA分子时,这一挑战尤为艰巨,因为这些生物体具有独特的H/ACA分子(称为类H/ACA分子),它们缺乏大多数其他生物体中H/ACA分子所具有的几个特征。

结果

我们在此展示一种名为Psiscan的计算工具,其设计目的是检测锥虫中的类H/ACA分子。我们首先分析已知的类H/ACA分子,并通过计算和实验对其关键元件进行表征。接下来,我们基于此分析以及其他系统发育和功能数据设置约束条件,以快速扫描三个锥虫基因组(布氏锥虫、克氏锥虫和硕大利什曼原虫),寻找符合这些约束条件且在物种间保守的序列。在下一步中,我们使用最小能量计算来选择预测能折叠成与约束条件一致的最低能量结构的分子。在最后的计算步骤中,我们使用了一个支持向量机,它以已知的类H/ACA分子作为正例,以通过计算分析鉴定但经实验证明不是类H/ACA分子的分子作为负例进行训练。然后,对支持向量机模型预测的主要候选分子进行实验验证。

结论

实验验证表明有11个分子表达(在中间阶段25个中有4个,在机器学习阶段后的最终验证中19个中有7个)。这11个分子中的5个进一步被证明是真正的类H/ACA分子。由于锥虫中的snoRNA成簇排列,新的类H/ACA分子可作为手动搜索其附近其他分子的起点。这项研究总共为我们增加了来自布氏锥虫和硕大利什曼原虫的14个类H/ACA分子和6个C/D snoRNA分子。此外,实验分析表明,6个表达的ncRNA分子在CBF5沉默细胞中未被下调,这表明它们具有类H/ACA分子的结构特征,但不具有其标准功能。我们将这类新分子称为类AGA分子,并且正在探索它们的功能。这项研究证明了计算方法与实验方法紧密合作在共同努力揭示ncRNA分子库方面的强大作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ba93/2613932/45cefbefcd7c/1471-2105-9-471-1.jpg

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