Multi-Agent Systems in Three-Dimensional Protein Structure Prediction

L. Corrêa, M. Dorn
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引用次数: 2

Abstract

Tertiary protein structure prediction in silico is currently a challenging problem in Structural Bioinformatics and can be classified according to the computational complexity theory as an NP-hard problem. Determining the 3-D structure of a protein is both experimentally expensive, and time-consuming. The agent-based paradigm has been shown a useful technique for the applications that have repetitive and time-consuming activities, knowledge share and management, such as integration of different knowledge sources and modeling of complex systems, supporting a great variety of domains. This chapter provides an integrated view and insights about the protein structure prediction area concerned to the usage, application and implementation of multi-agent systems to predict the protein structures or to support and coordinate the existing predictors, as well as it is advantages, issues, needs, and demands. It is noteworthy that there is a great need for works related to multi-agent and agent-based paradigms applied to the problem due to their excellent suitability to the problem.
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三维蛋白质结构预测中的多智能体系统
基于计算机的三级蛋白质结构预测是目前结构生物信息学中的一个具有挑战性的问题,根据计算复杂性理论可以将其归类为NP-hard问题。确定蛋白质的三维结构在实验上既昂贵又耗时。对于具有重复性和耗时的活动、知识共享和管理的应用程序,如不同知识来源的集成和复杂系统的建模,基于代理的范式已被证明是一种有用的技术,支持多种领域。本章提供了一个关于蛋白质结构预测领域的综合观点和见解,涉及到多智能体系统预测蛋白质结构或支持和协调现有预测器的使用、应用和实现,以及它的优势、问题、需求和需求。值得注意的是,由于多智能体和基于智能体的范式非常适合该问题,因此非常需要将其应用于该问题的相关工作。
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