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Automated de novo prediction of native-like RNA tertiary structures

机译:从头开始自动预测类似天然RNA的三级结构

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RNA tertiary structure prediction has been based almost entirely on base-pairing constraints derived from phylogenetic covariation analysis. We describe here a complementary approach, inspired by the Rosetta low-resolution protein structure prediction method, that seeks the lowest energy tertiary structure for a given RNA sequence without using evolutionary information. In a benchmark test of 20 RNA sequences with known structure and lengths of ≈30 nt, the new method reproduces better than 90% of Watson-Crick base pairs, comparable with the accuracy of secondary structure prediction methods. In more than half the cases, at least one of the top five models agrees with the native structure to better than 4 Å rmsd over the, backbone. Most importantly, the method recapitulates more than one-third of non-Watson-Crick base pairs seen in the native structures. Tandem stacks of "sheared" base pairs, base triplets, and pseudoknots are among the noncanonical features reproduced in the models. In the cases in which none of the top five models were native-like, higher energy conformations similar to the native structures are still sampled frequently but not assigned low energies. These results suggest that modest improvements in the energy function, together with the incorporation of information from phylogenetic covariance, may allow confident and accurate structure prediction for larger and more complex RNA chains.
机译:RNA的三级结构预测几乎完全基于从系统发育共变分析得出的碱基配对约束。我们在这里描述了一种受Rosetta低分辨率蛋白质结构预测方法启发的互补方法,该方法寻求给定RNA序列的最低能量三级结构,而无需使用进化信息。在对已知结构和长度约为30 nt的20条RNA序列进行的基准测试中,该新方法可再现优于90%的Watson-Crick碱基对,与二级结构预测方法的准确性相当。在一半以上的案例中,前五种模型中至少有一种与本机结构相符,在主干上的均方根值优于4Å。最重要的是,该方法概括了天然结构中超过三分之一的非Watson-Crick碱基对。模型中复制的非规范特征包括“剪切”的碱基对,碱基三胞胎和假结的串联堆叠。在前五种模型都不是本机样的情况下,仍会频繁采样类似于本机结构的高能构象,但未分配低能。这些结果表明,能量功能的适度改善,以及系统进化协方差信息的整合,都可以为更大型和更复杂的RNA链提供可靠而准确的结构预测。

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