使用启发式方法预测蛋白质-蛋白质相互作用

R. Agrawal, A. Mittal, R. C. Joshi
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引用次数: 2

摘要

蛋白质为了一个共同的目的而相互作用,比如细胞的形成。它们根据生物化学特性相互接触。对代谢网络中蛋白质-蛋白质相互作用的理解是分子生物学和生物化学的一个重要方面。该预测系统使用蛋白质序列数据来学习相互作用。基于序列数据,可以提取出可访问界面的信息和形成该界面的力的类型。这一问题的解决对药物设计领域有很大的帮助。本文提出了一种考虑到蛋白质结构以及介导蛋白质之间相互作用的力的方法。应用启发式方法寻找在相互作用过程中具有活性的界面表面。由于寻找参与交互的接口实际上是复杂的,所以总是可以找到类似的接口。启发式技术在相互作用预测中充分考虑了蛋白质序列数据。本文建立的系统对DIP(相互作用蛋白数据库)的数据集具有很高的灵敏度(88%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predict Protein-Protein Interaction using Heuristic Approaches
Proteins interact with each other for a common purpose such as cell formation. They come in contact with each other following the biochemical properties. The understanding of protein-protein interactions in metabolic networks is an important aspect of molecular biology and biochemistry. The proposed prediction system uses protein sequence data to learn the interactions. Based on sequence data, the information about the accessible interface and the type of forces that form this interface can be extracted. This solution to the problem offers a great help in the field of drug design. The paper presents an approach which takes into consideration the structure of proteins and also the types of forces that mediate the interactions among the proteins. The heuristic technique has been applied to find the interface surface, which is active in a protein during interaction. Since finding an interface that takes part in the interaction is practically complicated, a similar interface can always be found. The heuristic technique is applied in such a way that considers the protein sequence data minutely in interaction prediction. The system modeled in this paper gives a high value of sensitivity (88%) on the dataset collected from DIP (database of interacting proteins)
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