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Estimation of Teaching-Learning-Based Optimization Primer Design Using Regression Analysis for Different Melting Temperature Calculations

机译:基于回归分析的不同融化温度计算的基于教学的优化底漆设计估算

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摘要

Primers plays important role in polymerase chain reaction (PCR) experiments, thus it is necessary to select characteristic primers. Unfortunately, manual primer design manners are time-consuming and easy to get human negligence because many PCR constraints must be considered simultaneously. Automatic programs for primer design were developed urgently. In this study, the teaching-learning-based optimization (TLBO), a robust and free of algorithm-specific parameters method, is applied to screen primers conformed primer constraints. The optimal primer frequency (OPF) based on three known melting temperature formulas is estimated by 500 runs for primer design in each different number of generations. We selected optimal primers from fifty random nucleotide sequences of Homo sapiens at NCBI. The results indicate that the SantaLucia's formula is better coupled with the method to get higher optimal primer frequency and shorter CPU-time than the Wallace's formula and the Bolton and McCarthy's formula. Through the regression analysis, we also find the generations are significantly associated with the optimal primer frequency. The results are helpful for developing the novel TLBO-based computational method to design feasible primers.
机译:引物在聚合酶链反应(PCR)实验中起重要作用,因此有必要选择特征性引物。不幸的是,手动引物设计方式既耗时又容易被人疏忽,因为必须同时考虑许多PCR限制因素。紧急开发了引物设计自动程序。在这项研究中,基于教学学习的优化(TLBO)是一种健壮且没有特定于算法的参数方法,被应用于筛选符合引物约束条件的引物。在三个不同的世代中,通过500次运行来估算基于三个已知解链温度公式的最佳引物频率(OPF)。我们从NCBI的智人的五十个随机核苷酸序列中选择了最佳引物。结果表明,与Wallace公式,Bolton和McCarthy公式相比,SantaLucia公式与该方法更好地结合,可获得更高的最佳引物频率和更短的CPU时间。通过回归分析,我们还发现世代与最佳引物频率显着相关。这些结果有助于开发新颖的基于TLBO的计算方法来设计可行的引物。

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