Improvement in prediction of solvent accessibility by probability profiles.

Giulio Gianese, Francesco Bossa, Stefano Pascarella
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引用次数: 42

Abstract

The capability of predicting folding and conformation of a protein from its primary structure is probably one of the main goals of modern biology. An accurate prediction of solvent accessibility is an intermediate step along this way. A new method for predicting solvent accessibility from single sequence and multiple alignment data is described. The method is based on probability profiles calculated on an amino acid sequence centred on the residue whose accessibility has to be predicted. A profile is constructed for each exposure category considered so as to calculate the probability of a sequence being generated by the different profiles. Prediction accuracy was tested on a variety of protein sets with two- and three-state models. Different thresholds were used according to those adopted by the authors proposing the data sets. The prediction accuracy is significantly improved over existing methods.

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用概率曲线预测溶剂可及性的改进。
从蛋白质的初级结构预测其折叠和构象的能力可能是现代生物学的主要目标之一。准确预测溶剂可溶性是这一过程中的中间步骤。介绍了一种利用单序列和多序列数据预测溶剂可及性的新方法。该方法基于以残基为中心的氨基酸序列计算的概率分布,其可及性必须被预测。为所考虑的每个暴露类别构造一个剖面,以便计算由不同的剖面生成序列的概率。用两态和三态模型对多种蛋白质集的预测精度进行了测试。根据提出数据集的作者所采用的阈值使用不同的阈值。与现有方法相比,预测精度有明显提高。
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