基于蜂群优化的柔性蛋白配体对接遗传聚类

E. K. Nesamalar, C. P. Chandran
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引用次数: 2

摘要

本文利用遗传聚类和蜂群优化技术实现柔性蛋白配体对接。分子对接问题是寻找一个合适的位置和取向,使小分子配体与大的受体分子对接。它起源于一个由最优化方法和聚类技术组成的优化问题。聚类是一种数据挖掘任务,它根据数据之间的相似性对数据进行分组。遗传聚类算法将遗传算法(GA)与k -median聚类算法相结合。遗传算法是一种受生物进化启发的进化算法,应用于聚类领域。k -中位数聚类是K-means聚类的一种变体,它不是计算每个聚类的平均值来确定其质心,而是计算中位数。将遗传聚类与蜂群优化(BCO)算法相结合,解决分子对接问题。BCO是一种新的群智能算法,由Karaboga首次提出。该算法基于Dervis Karaboga和Celal Ozturk提出的模糊聚类人工蜂群优化算法。本文提出了一种新的遗传聚类蜂群优化算法(Genetic clustering Bee Colony Optimization, GCBCO)。在PDB绑定核集的10个对接实例中测试了GCBCO算法的性能,并与粒子群算法和蚁群算法进行了性能比较。结果表明,与现有的搜索算法相比,GCBCO能找到具有最佳能级的配体位姿。
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Genetic clustering with Bee Colony Optimization for flexible protein-ligand docking
In this paper Flexible Protein Ligand Docking is carried out using Genetic Clustering with Bee Colony Optimization. The molecular docking problem is to find a good position and orientation for docking and a small molecule ligand to a large receptor molecule. It is originated as an optimization problem consists of optimization method and the clustering technique. Clustering is a data mining task which groups the data on the basis of similarities among the data. A Genetic clustering algorithm combine a Genetic Algorithm (GA) with the K-medians clustering algorithm. GA is one of the evolutionary algorithms inspired by biological evolution and utilized in the field of clustering. K-median clustering is a variation of K-means clustering where instead of calculating the mean for each cluster to determine its centroid, one instead calculates the median. Genetic Clustering is combined with Bee Colony Optimization (BCO) algorithm to solve Molecular docking problem. BCO is a new Swarm Intelligent algorithm that was first introduced by Karaboga. It is based on the Fuzzy Clustering with Artificial Bee Colony Optimization algorithm proposed by Dervis Karaboga and Celal Ozturk. In this work, we propose a new algorithm called Genetic clustering Bee Colony Optimization (GCBCO). The performance of GCBCO is tested in 10 docking instances from the PDB bind core set and compared the performance with PSO and ACO algorithms. The result shows that the GCBCO could find ligand poses with best energy levels than the existing search algorithms.
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