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Protein Thermostability Prediction within Homologous Families Using Temperature-Dependent Statistical Potentials

机译:使用温度相关的统计势预测同源家庭中的蛋白质热稳定性

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摘要

The ability to rationally modify targeted physical and biological features of a protein of interest holds promise in numerous academic and industrial applications and paves the way towards de novo protein design. In particular, bioprocesses that utilize the remarkable properties of enzymes would often benefit from mutants that remain active at temperatures that are either higher or lower than the physiological temperature, while maintaining the biological activity. Many in silico methods have been developed in recent years for predicting the thermodynamic stability of mutant proteins, but very few have focused on thermostability. To bridge this gap, we developed an algorithm for predicting the best descriptor of thermostability, namely the melting temperature , from the protein's sequence and structure. Our method is applicable when the of proteins homologous to the target protein are known. It is based on the design of several temperature-dependent statistical potentials, derived from datasets consisting of either mesostable or thermostable proteins. Linear combinations of these potentials have been shown to yield an estimation of the protein folding free energies at low and high temperatures, and the difference of these energies, a prediction of the melting temperature. This particular construction, that distinguishes between the interactions that contribute more than others to the stability at high temperatures and those that are more stabilizing at low , gives better performances compared to the standard approach based on -independent potentials which predict the thermal resistance from the thermodynamic stability. Our method has been tested on 45 proteins of known that belong to 11 homologous families. The standard deviation between experimental and predicted 's is equal to 13.6°C in cross validation, and decreases to 8.3°C if the 6 worst predicted proteins are excluded. Possible extensions of our approach are discussed.
机译:合理地修饰目标蛋白的靶向物理和生物学特征的能力在许多学术和工业应用中都具有希望,并为从头设计蛋白质铺平了道路。特别是,利用酶卓越特性的生物过程通常会受益于突变体,这些突变体可在高于或低于生理温度的温度下保持活性,同时保持生物活性。近年来,已经开发了许多计算机方法来预测突变蛋白的热力学稳定性,但是很少有人关注热稳定性。为了弥合这一差距,我们开发了一种算法,可根据蛋白质的序列和结构预测最佳的热稳定性指标,即解链温度。当已知与靶蛋白同源的蛋白时,我们的方法适用。它基于几种与温度相关的统计电位的设计,这些统计电位是由可降解或耐高温蛋白质组成的数据集得出的。这些电势的线性组合已显示出对低温和高温下蛋白质折叠自由能的估算,以及这些能量的差,即对解链温度的预测。与基于独立电位的标准方法(根据热力学预测热阻)相比,这种特殊的结构区分了对高温稳定性起重要作用的相互作用和在低温下更稳定的相互作用,从而提供了更好的性能。稳定性。我们的方法已经对属于11个同源家族的45种已知蛋白质进行了测试。在交叉验证中,实验值和预测值之间的标准差等于13.6°C,如果排除了6个最差的预测蛋白,则标准差降至8.3°C。讨论了我们方法的可能扩展。

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