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High-accuracy prediction of transmembrane inter-helix contacts and application to GPCR 3D structure modeling

机译:跨膜螺旋间接触的高精度预测及其在GPCR 3D结构建模中的应用

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Motivation: Residue-residue contacts across the transmembrane helices dictate the three-dimensional topology of alpha-helical membrane proteins. However, contact determination through experiments is difficult because most transmembrane proteins are hard to crystallize. Results: We present a novel method (MemBrain) to derive transmembrane inter-helix contacts from amino acid sequences by combining correlated mutations and multiple machine learning classifiers. Tested on 60 non-redundant polytopic proteins using a strict leave-one-out cross-validation protocol, MemBrain achieves an average accuracy of 62%, which is 12.5% higher than the current best method from the literature. When applied to 13 recently solved G protein-coupled receptors, the MemBrain contact predictions helped increase the TM-score of the I-TASSER models by 37% in the transmembrane region. The number of foldable cases (TM-score >0.5) increased by 100%, where all G protein-coupled receptor templates and homologous templates with sequence identity >30% were excluded. These results demonstrate significant progress in contact prediction and a potential for contact-driven structure modeling of transmembrane proteins.
机译:动机:跨膜螺旋的残基-残基接触决定了α-螺旋膜蛋白的三维拓扑结构。但是,由于大多数跨膜蛋白很难结晶,因此很难通过实验确定接触。结果:我们提出了一种新方法(MemBrain),通过结合相关突变和多个机器学习分类器,从氨基酸序列衍生出跨膜螺旋间的接触。使用严格的留一法交叉验证协议对60种非冗余多位蛋白质进行了测试,MemBrain的平均准确度达到62%,比文献中当前的最佳方法高出12.5%。当应用于13个最近解决的G蛋白偶联受体时,MemBrain的接触预测有助于使I-TASSER模型的TM得分在跨膜区域增加37%。可折叠的病例数(TM评分> 0.5)增加了100%,其中排除了所有G蛋白偶联受体模板和序列同一性> 30%的同源模板。这些结果证明了接触预测方面的重大进展以及跨膜蛋白的接触驱动结构建模的潜力。

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