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首页> 外文期刊>Nucleic acids research >Machine learning of reverse transcription signatures of variegated polymerases allows mapping and discrimination of methylated purines in limited transcriptomes
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Machine learning of reverse transcription signatures of variegated polymerases allows mapping and discrimination of methylated purines in limited transcriptomes

机译:逆转录的机器学习杂色聚合酶允许在有限的转录组中进行甲基化嘌呤的测绘和辨别

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摘要

Reverse transcription (RT) of RNA templates containing RNA modifications leads to synthesis of cDNA containing information on the modification in the form of misincorporation, arrest, or nucleotide skipping events. A compilation of such events from multiple cDNAs represents an RT-signature that is typical for a given modification, but, as we show here, depends also on the reverse transcriptase enzyme. A comparison of 13 different enzymes revealed a range of RT-signatures, with individual enzymes exhibiting average arrest rates between 20 and?75%, as well as average misincorporation rates between 30 and?75% in the read-through cDNA. Using RT-signatures from individual enzymes to train a random forest model as a machine learning regimen for prediction of modifications, we found strongly variegated success rates for the prediction of methylated purines, as exemplified with N1-methyladenosine (m1A). Among the 13 enzymes, a correlation was found between read length, misincorporation, and prediction success. Inversely, low average read length was correlated to high arrest rate and lower prediction success. The three most successful polymerases were then applied to the characterization of RT-signatures of other methylated purines. Guanosines featuring methyl groups on the Watson-Crick face were identified with high confidence, but discrimination between m1G and m22G was only partially successful. In summary, the results suggest that, given sufficient coverage and a set of specifically optimized reaction conditions for reverse transcription, all RNA modifications that impede Watson-Crick bonds can be distinguished by their RT-signature.
机译:含有RNA修饰的RNA模板的逆转录(RT)导致合成含有Miscloration,逮捕或核苷酸跳过事件的改性的细胞质的信息。从多个CDNA的这些事件的编译代表了对给定修改的典型典型的RT-签名,但是,如我们在此显示,也取决于逆转录酶酶。 13种不同酶的比较揭示了一种RT-签名,个体酶,其表现出20和α75%之间的平均停滞率,以及在读数cDNA中30和α75%之间的平均MISINC掺入率。使用单个酶的RT-签名来训练随机森林模型作为用于预测修饰的机器学习方案,我们发现强烈的成功率用于预测甲基化嘌呤,如N1-甲基腺苷(M1A)所例类。在13个酶中,读取长度,MISCLINATION和预测成功之间发现了相关性。相反,低平均读取长度与高逮捕率和更低的预测成功相关。然后将三种最成功的聚合酶施用于其他甲基化嘌呤的RT-签名的表征。鸟苷以沃特森克里克脸上的甲基为特色,识别高置信度,但M1G和M22G之间的歧视仅部分成功。总之,结果表明,鉴于足够的覆盖和一组特异性优化的反应条件进行逆转录,可以通过其RT-签名来区分阻碍Watson-Crick键的所有RNA修饰。

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