LinearAlifold:RNA 对齐的线性时间共识结构预测

ArXiv Pub Date : 2024-07-05
Apoorv Malik, Liang Zhang, Milan Gautam, Ning Dai, Sizhen Li, He Zhang, David H Mathews, Liang Huang
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引用次数: 0

摘要

预测一组对齐的 RNA 同源物的共识结构是发现 RNA 基因组中保守结构的一种便捷方法,它在病毒诊断和治疗等方面有很多应用。然而,最常用的工具 RNAalifold 在处理长序列时速度太慢,因为序列长度呈立方缩放,处理 400 个 SARS-CoV-2 和 SARS 相关基因组(约 30,000nt )需要一天多的时间。我们提出的 LinearAlifold 是一种更快的替代方法,它与序列长度和序列数量成线性比例,基于我们在线性时间内折叠单个 RNA 的工作 LinearFold。我们的工作比 RNAalifold 快了几个数量级(在上述 400 个基因组上只用了 0.7 个小时,即加快了约 36 倍),而且与已知结构数据库相比,达到了更高的精确度。更有趣的是,LinearAlifold 对 SARS-CoV-2 的预测与实验确定的结构有很好的相关性,大大超过了 RNAalifold。最后,LinearAlifold 支持两种能量模型(Vienna 和 BL*)和四种模式:最小自由能 (MFE)、最大预期准确度 (MEA)、ThreshKnot 和随机抽样,其中每种模式对数百种 SARS-CoV 变体的预测时间都不超过一小时。我们的资源位于:https://github.com/LinearFold/LinearAlifold(代码)和 http://linearfold.org/linear-alifold(服务器)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LinearAlifold: Linear-Time Consensus Structure Prediction for RNA Alignments.

Predicting the consensus structure of a set of aligned RNA homologs is a convenient method to find conserved structures in an RNA genome, which has many applications including viral diagnostics and therapeutics. However, the most commonly used tool for this task, RNAalifold, is prohibitively slow for long sequences, due to a cubic scaling with the sequence length, taking over a day on 400 SARS-CoV-2 and SARS-related genomes (~30,000nt). We present LinearAlifold, a much faster alternative that scales linearly with both the sequence length and the number of sequences, based on our work LinearFold that folds a single RNA in linear time. Our work is orders of magnitude faster than RNAalifold (0.7 hours on the above 400 genomes, or ~36$\times$ speedup) and achieves higher accuracies when compared to a database of known structures. More interestingly, LinearAlifold's prediction on SARS-CoV-2 correlates well with experimentally determined structures, substantially outperforming RNAalifold. Finally, LinearAlifold supports two energy models (Vienna and BL*) and four modes: minimum free energy (MFE), maximum expected accuracy (MEA), ThreshKnot, and stochastic sampling, each of which takes under an hour for hundreds of SARS-CoV variants. Our resource is at: https://github.com/LinearFold/LinearAlifold (code) and http://linearfold.org/linear-alifold (server).

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