Prediction of Crystallization Propensity of Proteins from Bacillus haloduran Using Various Amino Acid and Protein Features

Shaomin Yan, Guang Wu
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Abstract

Correct prediction of propensity of crystallization of proteins is important for cost- and time-saving in determination of 3-demensional structures because one can focus to crystallize the proteins whose propensity is high through predictions instead of choosing proteins randomly. However, so far this job has yet to accomplish although huge efforts have been made over years, because it is still extremely hard to find an intrinsic feature in a protein to directly relate to the propensity of crystallization of the given protein. Despite of this difficulty, efforts are never stopped in testing of known features in amino acids and proteins versus the propensity of crystallization of proteins from various sources. In this study, the comparison of the features, which were developed by us, with the features from well-known resource for the prediction of propensity of crystallization of proteins from Bacillus haloduran was conducted. In particular, the propensity of crystallization of proteins is considered as a yes-no event, so 185 crystallized proteins and 270 uncrystallized proteins from B. haloduran were classified as yes-no events. Each of 540 amino-acid features including the features developed by us was coupled with these yes-no events using logistic regression and neural network. The results once again demonstrated that the predictions using the features developed by us are relatively better than the predictions using any of 540 amino-acid features.
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利用不同氨基酸和蛋白质特征预测嗜盐芽孢杆菌蛋白质的结晶倾向
正确预测蛋白质的结晶倾向对于节省三维结构测定的成本和时间具有重要意义,因为通过预测可以集中于结晶倾向高的蛋白质,而不是随机选择蛋白质。然而,到目前为止,尽管多年来做出了巨大的努力,这项工作仍未完成,因为在蛋白质中找到与给定蛋白质结晶倾向直接相关的内在特征仍然非常困难。尽管有这样的困难,在测试氨基酸和蛋白质的已知特征与来自不同来源的蛋白质的结晶倾向方面的努力从未停止。在本研究中,我们开发的特征与已知资源中用于预测嗜盐芽孢杆菌蛋白质结晶倾向的特征进行了比较。特别是,蛋白质的结晶倾向被认为是一个是-否事件,因此185个结晶蛋白和270个未结晶蛋白被归类为是-否事件。利用逻辑回归和神经网络将540个氨基酸特征(包括我们开发的特征)与这些是-否事件进行耦合。结果再次表明,利用我们开发的特征进行预测比利用540个氨基酸特征中的任何一个进行预测都要好。
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