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Energy-based classification and structure prediction of transmembrane beta-barrel proteins

机译:基于能量的跨膜β桶蛋白的分类和结构预测

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Transmembrane β-barrel (TMB) proteins are a special class of transmembrane proteins which play several key roles in human body and diseases. Due to experimental difficulties, the number of TMB proteins with known structures is very small. Over the years, a number of learning-based methods have been introduced for recognition and structure prediction of TMB proteins. Most of these methods emphasize on homology search rather than any biological or chemical basis. We present a novel graph-theoretic model for classification and structure prediction of TMB proteins. This model folds proteins based on energy minimization rather than a homology search, avoiding any assumption on availability of training dataset. The ab initio model presented in this paper is the first method to allow for permutations in the structure of transmembrane proteins and provides more structural information than any known algorithm. The model is also able to recognize β-barrels by assessing the pseudo free energy. We assess the structure prediction on 42 proteins gathered from existing databases on experimentally validated TMB proteins. We show that our approach is quite accurate with over 90% F-score on strands and over 74% F-score on residues. The results are comparable to other algorithms suggesting that our pseudo-energy model is close to the actual physical model. We test our classification approach and show that it is able to reject α-helical bundles with 100% accuracy and β-barrel lipocalins with 97% accuracy.
机译:跨膜β桶(TMB)的蛋白质是一类特殊从而起到对人体和疾病的几项关键作用跨膜蛋白。由于实验上的困难,TMB蛋白与已知结构的数量非常少。多年来,已经推出了TMB蛋白的识别和结构预测的一些基于学习的方法。这些方法大多强调的同源性搜索,而不是任何生物或化学的基础。我们提出了TMB蛋白的分类和结构预测的新的图论模型。该模型折叠基于能量最小化,而不是同源性搜索的蛋白质,避免对训练数据集的可用性的任何假设。从头本文提出的模型是允许在跨膜蛋白的结构排列的第一方法,并提供比任何已知算法更多的结构信息。该模型还能够通过评估伪自由能识别β-万桶。我们评估从实验验证TMB蛋白现有的数据库收集的42种蛋白的结构预测。我们表明,我们的做法是与股超过90%的F值和超过74%的F-得分上残留相当准确。该结果与其他算法表明我们的伪能量模型接近实际的物理模型。我们测试我们的分类方法,并表明它是能够拒绝α螺旋与97%的准确率100%的准确率和β桶脂质运载蛋白束。

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