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Deep learning extends de novo protein modelling coverage of genomes using iteratively predicted structural constraints

机译:深入学习使用迭代预测结构约束扩展了基因组的De Novo蛋白质建模覆盖率

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The inapplicability of amino acid covariation methods to small protein families has limited their use for structural annotation of whole genomes. Recently, deep learning has shown promise in allowing accurate residue-residue contact prediction even for shallow sequence alignments. Here we introduce DMPfold, which uses deep learning to predict inter-atomic distance bounds, the main chain hydrogen bond network, and torsion angles, which it uses to build models in an iterative fashion. DMPfold produces more accurate models than two popular methods for a test set of CASP12 domains, and works just as well for transmembrane proteins. Applied to all Pfam domains without known structures, confident models for 25% of these so-called dark families were produced in under a week on a small 200 core cluster. DMPfold provides models for 16% of human proteome UniProt entries without structures, generates accurate models with fewer than 100 sequences in some cases, and is freely available.
机译:氨基酸协变量对小蛋白质家族的不适用性限制了它们用于整个基因组的结构注释的用途。最近,深度学习表明了甚至允许准确的残留残留接触预测即使对于浅序序列对准也是如此。在这里,我们介绍了DMPFold,它使用深度学习来预测原子间距离界限,主链氢键网络和扭转角度,它用于以迭代方式构建模型。 DMPFOLD生产比两种普遍的CASP12结构域的普遍方法生产更准确的模型,也适用于跨膜蛋白。适用于没有已知结构的所有PFAM域,在一个小200核心集群上一周内生产了25%的25%的自信模型。 DMPFold提供16%的人类蛋白质组的型号没有结构的型号,在某些情况下产生少于100个序列的准确模型,并可自由使用。

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