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All-atom 3D structure prediction of transmembrane β-barrel proteins from sequences

机译:从序列预测跨膜β-桶蛋白的全原子3D结构

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摘要

Transmembrane β-barrels (TMBs) carry out major functions in substrate transport and protein biogenesis but experimental determination of their 3D structure is challenging. Encouraged by successful de novo 3D structure prediction of globular and α-helical membrane proteins from sequence alignments alone, we developed an approach to predict the 3D structure of TMBs. The approach combines the maximum-entropy evolutionary coupling method for predicting residue contacts (EVfold) with a machine-learning approach (boctopus2) for predicting β-strands in the barrel. In a blinded test for 19 TMB proteins of known structure that have a sufficient number of diverse homologous sequences available, this combined method (EVfold_bb) predicts hydrogen-bonded residue pairs between adjacent β-strands at an accuracy of ∼70%. This accuracy is sufficient for the generation of all-atom 3D models. In the transmembrane barrel region, the average 3D structure accuracy [template-modeling (TM) score] of top-ranked models is 0.54 (ranging from 0.36 to 0.85), with a higher (44%) number of residue pairs in correct strand–strand registration than in earlier methods (18%). Although the nonbarrel regions are predicted less accurately overall, the evolutionary couplings identify some highly constrained loop residues and, for FecA protein, the barrel including the structure of a plug domain can be accurately modeled (TM score = 0.68). Lower prediction accuracy tends to be associated with insufficient sequence information and we therefore expect increasing numbers of β-barrel families to become accessible to accurate 3D structure prediction as the number of available sequences increases.
机译:跨膜β桶(TMB)在底物转运和蛋白质生物发生中起主要作用,但实验确定其3D结构具有挑战性。受成功的从球序列和α-螺旋膜蛋白单独从序列比对的成功的从头3D结构预测的鼓舞,我们开发了一种预测TMBs 3D结构的方法。该方法将预测残渣接触的最大熵演化耦合方法(EVfold)与预测桶中β链的机器学习方法(boctopus2)结合在一起。在对具有足够数量的可用不同同源序列的已知结构的19种TMB蛋白进行的盲法测试中,这种组合方法(EVfold_bb)预测相邻β链之间的氢键残基对的准确度约为70%。该精度足以生成全原子3D模型。在跨膜桶区域,排名靠前的模型的平均3D结构准确度[模板建模(TM)分数]为0.54(范围从0.36到0.85),正确链中的残基对数量更高(44%),较以前的方法(18%)进行链登记。尽管非桶形区域的总体预测精度较差,但进化耦合识别出一些高度受限的环残基,对于FecA蛋白,可以精确地模拟包括塞结构域结构的桶形(TM分数= 0.68)。较低的预测准确性往往与序列信息不足有关,因此,随着可用序列数量的增加,我们期望越来越多的β-桶族可用于精确的3D结构预测。

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