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Genetic algorithm-based optimization of hydrophobicity tables

机译:基于遗传算法的疏水表优化

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The genomic abundance and pharmacological importance of membrane proteins have fueled efforts to identify them based solely on sequence information. Previous methods based on the physicochemical principle of a sliding window of hydrophobicity (hydropathy analysis) have been replaced by approaches based on hidden Markov models or neural networks which prevail due to their probabilistic orientation. In the current study, an optimization of the hydrophobicity tables used in hydropathy analysis is performed using a genetic algorithm. As such, the approach can be viewed as a synthesis between the physicochemically and statistically based methods. The resulting hydrophobicity tables lead to significant improvement in the prediction accuracy of hydropathy analysis. Furthermore, since hydropathy analysis is less dependent on the basis set of membrane proteins is used to hone the statistically based methods, as well as being faster, it may be valuable in the analysis of new genomes. Finally, the values obtained for each of the amino acids in the new hydrophobicity tables are discussed.
机译:膜蛋白的基因组丰度和药理重要性推动了仅基于序列信息鉴定它们的努力。基于疏水性滑动窗口的物理化学原理的先前方法(亲水性分析)已被基于隐马尔可夫模型或神经网络的方法所取代,这些方法由于概率取向而占优势。在当前的研究中,使用遗传算法对亲水性分析中使用的疏水性表进行了优化。这样,该方法可以被视为基于物理化学和统计学的方法之间的综合。所得的疏水性表导致亲水性分析的预测准确性显着提高。此外,由于亲水性分析较少依赖于膜蛋白的基础集,因此可以更快地进行基于统计学的方法的磨练,因此在新基因组的分析中可能很有价值。最后,讨论了在新的疏水性表中为每种氨基酸获得的值。

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