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Dinosolve: a protein disulfide bonding prediction server using context-based features to enhance prediction accuracy

机译:Dinosolve:蛋白质二硫键预测服务器,使用基于上下文的功能来增强预测准确性

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BackgroundDisulfide bonds play an important role in protein folding and structure stability. Accurately predicting disulfide bonds from protein sequences is important for modeling the structural and functional characteristics of many proteins.MethodsIn this work, we introduce an approach of enhancing disulfide bonding prediction accuracy by taking advantage of context-based features. We firstly derive the first-order and second-order mean-force potentials according to the amino acid environment around the cysteine residues from large number of cysteine samples. The mean-force potentials are integrated as context-based scores to estimate the favorability of a cysteine residue in disulfide bonding state as well as a cysteine pair in disulfide bond connectivity. These context-based scores are then incorporated as features together with other sequence and evolutionary information to train neural networks for disulfide bonding state prediction and connectivity prediction.ResultsThe 10-fold cross validated accuracy is 90.8% at residue-level and 85.6% at protein-level in classifying an individual cysteine residue as bonded or free, which is around 2% accuracy improvement. The average accuracy for disulfide bonding connectivity prediction is also improved, which yields overall sensitivity of 73.42% and specificity of 91.61%.ConclusionsOur computational results have shown that the context-based scores are effective features to enhance the prediction accuracies of both disulfide bonding state prediction and connectivity prediction. Our disulfide prediction algorithm is implemented on a web server named "Dinosolve" available at: http://hpcr.cs.odu.edu/dinosolve.
机译:背景二硫键在蛋白质折叠和结构稳定性中起重要作用。从蛋白质序列中准确预测二硫键对于建模许多蛋白质的结构和功能特征很重要。方法在这项工作中,我们介绍了一种利用基于上下文的特征来提高二硫键预测准确性的方法。我们首先根据大量半胱氨酸样品中半胱氨酸残基周围的氨基酸环境,得出一阶和二阶平均力势。平均力势被集成为基于上下文的得分,以估计处于二硫键状态的半胱氨酸残基以及处于二硫键连接性的半胱氨酸对的有利性。然后将这些基于上下文的得分与其他序列和进化信息一起作为特征进行整合,以训练神经网络进行二硫键状态预测和连通性预测。结果10倍交叉验证的准确性在残基水平为90.8%,在蛋白质水平为85.6%。将单个半胱氨酸残基分类为结合或游离的水平,准确度提高了约2%。二硫键连通性预测的平均准确度也得到了提高,总体灵敏度为73.42%,特异性为91.61%。结论我们的计算结果表明,基于上下文的评分是提高两个二硫键状态预测精度的有效特征。和连通性预测。我们的二硫化物预测算法在名为“ Dinosolve”的Web服务器上实现,该服务器可从以下网站获得:http://hpcr.cs.odu.edu/dinosolve。

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