首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >ON THE DESIGN OF OPTIMIZATION ALGORITHMS FOR PREDICTION OF MOLECULAR INTERACTIONS
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ON THE DESIGN OF OPTIMIZATION ALGORITHMS FOR PREDICTION OF MOLECULAR INTERACTIONS

机译:分子相互作用预测的优化算法设计

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This article presents a comprehensive study on the main characteristics of a novel optimization algorithm specifically designed for simulation of protein-ligand interactions. Though design of optimization algorithms has been a research issue extensively studied by computer scientists for decades, the emerging applications in bioinformatics such as simulation of protein-ligand interactions and protein folding introduce additional challenges due to (1) the high dimensionality nature of the problem and (2) the highly rugged landscape of the energy function. As a result, optimization algorithms that are not carefully designed to tackle these two challenges may fail to deliver satisfactory performance. This study has been motivated by the observation that the RAME (Rank-based Adaptive Mutation Evolutionary) optimization algorithm specifically designed for simulation of protein-ligand docking has consistently outperformed the conventional optimization algorithms by a significant degree. The experimental results reveal that the RAME algorithm is capable of delivering superior performance to several alternative versions of the genetic algorithm in handling highly-rugged functions in the high-dimensional vector space. This article also reports experiments conducted to analyze the causes of the observed performance difference. The experiences learned provide valuable clues for how the proposed algorithm can be effectively exploited to tackle other computational biology problems.
机译:本文对专门为模拟蛋白质-配体相互作用而设计的新型优化算法的主要特征进行了全面研究。尽管优化算法的设计一直是计算机科学家数十年来广泛研究的研究问题,但生物信息学中的新兴应用(例如,蛋白质-配体相互作用的模拟和蛋白质折叠)由于以下原因而带来了其他挑战:(1)问题的高维度性质和(2)高度粗糙的能量功能景观。结果,未精心设计以解决这两个挑战的优化算法可能无法提供令人满意的性能。这项研究的动机是观察到,专门为模拟蛋白质-配体对接而设计的RAME(基于排名的自适应变异进化)优化算法始终在很大程度上优于传统的优化算法。实验结果表明,RAME算法在处理高维向量空间中的高强度函数时,能够为遗传算法的多个替代版本提供卓越的性能。本文还报告了进行实验以分析观察到的性能差异的原因。所获经验为如何有效利用所提出的算法解决其他计算生物学问题提供了宝贵的线索。

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