Ab Initio Protein Structure Prediction Using Evolutionary Approach: A Survey

Lucas Siqueira, Sandra M. Venske
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引用次数: 3

Abstract

Protein Structure Prediction (PSP) problem is to determine the three-dimensional structure of a protein only from its primary structure. Misfolding of a protein causes human diseases. Thus, the knowledge of the structure and functionality of proteins, combined with the prediction of their structure is a complex problem and a challenge for the area of computational biology. The metaheuristic optimization algorithms are naturally applicable to support in solving NP-hard problems.These algorithms are bio-inspired, since they were designed based on procedures found in nature, such as the successful evolutionary behavior of natural systems. In this paper, we present a survey on methods to approach the \textit{ab initio} protein structure prediction based on evolutionary computing algorithms, considering both single and multi-objective optimization. An overview of the works is presented, with some details about which characteristics of the problem are considered, as well as specific points of the algorithms used. A comparison between the approaches is presented and some directions of the research field are pointed out.
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从头开始用进化方法预测蛋白质结构:综述
蛋白质结构预测(PSP)问题是仅从蛋白质的一级结构来确定蛋白质的三维结构。蛋白质的错误折叠导致人类疾病。因此,了解蛋白质的结构和功能,并结合对其结构的预测,是计算生物学领域的一个复杂问题和挑战。元启发式优化算法自然适用于求解np困难问题。这些算法是受生物启发的,因为它们是基于自然界中发现的程序设计的,比如自然系统的成功进化行为。本文综述了基于进化计算算法的\textit{从头开始}蛋白质结构预测方法,包括单目标优化和多目标优化。介绍了工作概况,详细介绍了问题的哪些特征,以及所使用算法的具体要点。对各种方法进行了比较,并指出了今后的研究方向。
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