...
首页> 外文期刊>Biopolymers: Original Research on Biomolecules and Biomolecular Assemblies >Incorporating knowledge-based biases into an energy-based side-chain modeling method: Application to comparative modeling of protein structure
【24h】

Incorporating knowledge-based biases into an energy-based side-chain modeling method: Application to comparative modeling of protein structure

机译:将基于知识的偏差纳入基于能量的侧链建模方法:在蛋白质结构比较建模中的应用

获取原文
获取原文并翻译 | 示例
           

摘要

The performance of the self-consistent mean-field theory (SCMFT) method for side-chain modeling, employing rotamer energies calculated with the flexible rotamer model (FRM), is evaluated in the context of comparative modeling of protein structure. Predictions were carried out on a test of 56 model backbones of varying accuracy, to allow side-chain prediction accuracy to be analyzed as a function of backbone accuracy. A progressive decrease in the accuracy of prediction was observed as backbone accuracy decreased. However, even for very low backbone accuracy, prediction was substantially higher than random, indicating that the FRM can, in part, compensate for the errors in the modeled tertiary environment. It was also investigated whether the introduction in the FRM-SCMFT method of knowledge-based biases, derived from a backbone-dependent rotamer library; could enhance its performance. A bias derived from the backbone-dependent rotamer conformations alone did not improve prediction accuracy. However, a bias derived from the backbone-dependent rotamer probabilities improved prediction accuracy considerably. This bias incorporated through two different strategies. In one (the indirect strategy), rotamer probabilities were used to reject unlikely rotamers a priori, thus restricting prediction by FRM-SCMFT to a subset containing only the most probable rotamers in the library. In the other (the direct strategy), rotamer energies were transformed into pseudo-energies that were added to the average potential energies of the respective rotamers, thereby creating hybrid energy-based/knowledge-based average rotamer energies, which were used by the FRM-SCMFT method for prediction. For all degrees of backbone accuracy, an optimal strength of the knowledge-based bias existed for both strategies for which predictions were more accurate than pure energy-based predictions, and also than pure knowledge-based predictions. Hybrid knowledge-based/energy-based methods were obtained from both strategies and compared with the SCWRL method, a hybrid method based on the same backbone-dependent rotamer library. The accuracy of the indirect method was approximately the same as that of the SCWRL method, but that of the direct method was significantly higher. (C) 2001 John Wiley & Sons, Inc. [References: 53]
机译:在蛋白质结构比较建模的背景下,评估了使用自洽均场理论(SCMFT)进行侧链建模的方法,该方法采用通过灵活旋转异构体模型(FRM)计算的旋转异构体能量。对56个具有不同准确性的模型主干进行了预测,以根据主链准确性对侧链预测准确性进行分析。随着主干精度的降低,观察到了预测精度的逐渐降低。但是,即使对于非常低的主干精度,预测也要远高于随机预测,这表明FRM可以部分补偿建模的第三环境中的误差。还研究了在FRM-SCMFT方法中是否引入了基于知识的偏差,该偏差源自于依赖于主链的旋转异构体库;可以提高其性能。仅由依赖于骨架的旋转异构体构象产生的偏差不能提高预测准确性。但是,从依赖于主干的旋转异构体概率得出的偏差会大大提高预测准确性。这种偏见通过两种不同的策略来解决。在一种(间接策略)中,使用漫游器概率先验地拒绝不太可能的漫游器,从而将FRM-SCMFT的预测限制为仅包含库中最可能的漫游器的子集。在另一种(直接策略)中,将旋转异构体能量转换为伪能量,将其添加到各个旋转异构体的平均势能中,从而创建基于混合能量/基于知识的混合平均旋转异构体能量,供FRM使用-SCMFT方法进行预测。对于所有级别的主干精度,两种策略都存在基于知识的偏见的最佳强度,这两种策略的预测比基于纯能量的预测更准确,也比基于纯知识的预测更准确。从这两种策略中都获得了基于知识/能源的混合方法,并将其与SCWRL方法进行了比较,SCWRL方法是基于相同的依赖主干的旋转异构体库的混合方法。间接方法的准确性与SCWRL方法的准确性大致相同,但直接方法的准确性明显更高。 (C)2001 John Wiley&Sons,Inc. [参考:53]

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号