Inhibitor peptide design for NF-кB: Markov model & genetic algorithm

E. B. Unal, A. Gursoy, B. Erman
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引用次数: 1

Abstract

Two peptide design approaches are proposed to block activities of disease related proteins. First approach employs a probabilistic method; the problem is set as Markov chain. The possible binding site of target protein and a path on this binding site are determined. 20 natural amino acids and 400 dipeptides are docked to the selected path using the AutoDock software. The statistical weight matrices for the binding energies are derived from AutoDock results; matrices are used to determine top 100 peptide sequences with affinity to target protein. Second approach utilizes a heuristic method for peptide sequence determination; genetic algorithm (GA) with tournament selection. The amino acids are the genes; the peptide sequences are the chromosomes of GA. Initial random population of 100 chromosomes leads to determination of 100 possible binding peptides, after 8–10 generations of GA. Thermodynamic properties of the peptides are analyzed by a method that we proposed previously. NF-кB protein is selected as case-study.
NF抑制剂肽设计-кB:马尔可夫模型与遗传算法
提出了两种多肽设计方法来阻断疾病相关蛋白的活性。第一种方法采用概率方法;问题被设定为马尔可夫链。确定了目标蛋白可能的结合位点和该结合位点的路径。使用AutoDock软件将20种天然氨基酸和400种二肽停靠到选定的路径上。结合能的统计权矩阵由AutoDock结果导出;使用矩阵确定与目标蛋白有亲和力的前100个肽序列。第二种方法利用启发式方法确定肽序列;遗传算法(GA)与锦标赛选择。氨基酸是基因;肽序列为GA的染色体。经过8-10代遗传,100条染色体的初始随机种群可以确定100种可能的结合肽。用我们之前提出的方法分析了多肽的热力学性质。选取NF-кB蛋白作为个案研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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