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More complete gene silencing by fewer siRNAs: transparent optimized design and biophysical signature

机译:更少的siRNA可以实现更完整的基因沉默:透明的优化设计和生物物理特征

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摘要

Highly accurate knockdown functional analyses based on RNA interference (RNAi) require the possible most complete hydrolysis of the targeted mRNA while avoiding the degradation of untargeted genes (off-target effects). This in turn requires significant improvements to target selection for two reasons. First, the average silencing activity of randomly selected siRNAs is as low as 62%. Second, applying more than five different siRNAs may lead to saturation of the RNA-induced silencing complex (RISC) and to the degradation of untargeted genes. Therefore, selecting a small number of highly active siRNAs is critical for maximizing knockdown and minimizing off-target effects. To satisfy these needs, a publicly available and transparent machine learning tool is presented that ranks all possible siRNAs for each targeted gene. Support vector machines (SVMs) with polynomial kernels and constrained optimization models select and utilize the most predictive effective combinations from 572 sequence, thermodynamic, accessibility and self-hairpin features over 2200 published siRNAs. This tool reaches an accuracy of 92.3% in cross-validation experiments. We fully present the underlying biophysical signature that involves free energy, accessibility and dinucleotide characteristics. We show that while complete silencing is possible at certain structured target sites, accessibility information improves the prediction of the 90% active siRNA target sites. Fast siRNA activity predictions can be performed on our web server at .
机译:基于RNA干扰(RNAi)的高精度敲除功能分析需要目标mRNA尽可能最完整的水解,同时避免未靶向基因的降解(脱靶效应)。出于两个原因,这又需要对目标选择进行重大改进。首先,随机选择的siRNA的平均沉默活性低至62%。其次,应用五个以上的不同siRNA可能导致RNA诱导的沉默复合物(RISC)饱和并导致未靶向基因的降解。因此,选择少量的高活性siRNA对于最大化击倒和最小化脱靶效应至关重要。为了满足这些需求,提出了一种公开可用的透明机器学习工具,该工具对每个目标基因的所有可能siRNA进行排名。具有多项式内核和受限优化模型的支持向量机(SVM)从572种序列,热力学,可及性和自发夹特征中选择和利用最具预测性的有效组合,超过2200种已公开的siRNA。在交叉验证实验中,此工具的准确性达到92.3%。我们充分介绍了涉及自由能,可及性和二核苷酸特征的潜在生物物理特征。我们显示,虽然在某些结构化目标位点可能完全沉默,但可访问性信息改善了90%活性siRNA目标位点的预测。快速的siRNA活性预测可以在我们的Web服务器上进行。

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    Ladunga, Istvan;

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  • 年度 2006
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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