School of Computing Sciences.
School of Biological Sciences, University of East Anglia, Norwich NR4 7TJ, UK.
Nucleic Acids Res. 2018 Sep 28;46(17):8730-8739. doi: 10.1093/nar/gky609.
Small RNAs (sRNAs) are short, non-coding RNAs that play critical roles in many important biological pathways. They suppress the translation of messenger RNAs (mRNAs) by directing the RNA-induced silencing complex to their sequence-specific mRNA target(s). In plants, this typically results in mRNA cleavage and subsequent degradation of the mRNA. The resulting mRNA fragments, or degradome, provide evidence for these interactions, and thus degradome analysis has become an important tool for sRNA target prediction. Even so, with the continuing advances in sequencing technologies, not only are larger and more complex genomes being sequenced, but also degradome and associated datasets are growing both in number and read count. As a result, existing degradome analysis tools are unable to process the volume of data being produced without imposing huge resource and time requirements. Moreover, these tools use stringent, non-configurable targeting rules, which reduces their flexibility. Here, we present a new and user configurable software tool for degradome analysis, which employs a novel search algorithm and sequence encoding technique to reduce the search space during analysis. The tool significantly reduces the time and resources required to perform degradome analysis, in some cases providing more than two orders of magnitude speed-up over current methods.
小 RNA(sRNA)是短的、非编码的 RNA,在许多重要的生物途径中发挥着关键作用。它们通过指导 RNA 诱导沉默复合物到其序列特异性的 mRNA 靶标,来抑制信使 RNA(mRNA)的翻译。在植物中,这通常导致 mRNA 的切割和随后的 mRNA 降解。所得的 mRNA 片段,或降解组,为这些相互作用提供了证据,因此降解组分析已成为 sRNA 靶标预测的重要工具。即便如此,随着测序技术的不断进步,不仅更大和更复杂的基因组正在被测序,而且降解组和相关数据集在数量和读取计数上都在不断增加。结果是,现有的降解组分析工具在不施加巨大资源和时间要求的情况下,无法处理正在产生的大量数据。此外,这些工具使用严格的、不可配置的靶向规则,这降低了它们的灵活性。在这里,我们提出了一种新的和用户可配置的降解组分析软件工具,它采用了一种新的搜索算法和序列编码技术来减少分析过程中的搜索空间。该工具大大减少了进行降解组分析所需的时间和资源,在某些情况下,与当前方法相比,速度提高了两个数量级以上。