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Threading Using Neural nEtwork (TUNE): the measure of protein sequence-structure compatibility.

机译:使用神经网络线程(TUNE):蛋白质序列结构兼容性的量度。

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Motivation: Fold recognition programs align a probe protein sequence onto protein three-dimensional (3D) structure templates. The alignment between the probe sequence and the most suitable template can be used to predict the 3D structure and often biological function of the probe. Here we present a new threading scoring function of protein sequence-structure compatibility. An artificial neural network model is trained to predict compatibility of amino acid side-chains with structural environments. Log-odds scores of predicted probabilities from this model can then be used to construct protein sequence-structure alignments. Results: Our model is tested on discrimination of native and decoy protein 3D structures. With a residue level structural description, its performance is comparable to those of pseudo-energy functions with atom level structural descriptions, better than the two functions with residue level structural descriptions. Availability: The C++ source code of our neural network model is available at http://mathbio.nimr.mrc.ac.uk/~kxlin. Contact: wtaylor
机译:动机:折叠识别程序将探针蛋白质序列与蛋白质三维(3D)结构模板对齐。探针序列和最合适的模板之间的比对可以用于预测探针的3D结构和通常的生物学功能。在这里,我们提出了蛋白质序列结构兼容性的新线程评分功能。训练了人工神经网络模型以预测氨基酸侧链与结构环境的相容性。然后可以使用该模型的预测概率的对数得分来构建蛋白质序列-结构比对。结果:我们的模型通过了对天然和诱饵蛋白3D结构的鉴别测试。在具有残基结构描述的情况下,其性能可与具有原子级结构描述的伪能量函数相媲美,优于具有残基结构描述的两个函数。可用性:我们的神经网络模型的C ++源代码可从http://mathbio.nimr.mrc.ac.uk/~kxlin获得。联系人︰wtaylor

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