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Parameter Estimation of Gene Regulatory Network Using Honey Bee Mating Optimization

机译:基于蜜蜂交配优化的基因调控网络参数估计

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Computational biology is the esteemed interdisciplinary field where expertise from the fields like Mathematics, Statistics and Computer Science are applied to have the insight in biological phenomenon. Advanced methods and techniques of biotechnology and allied fields facilitate the availability of biological data to the researchers of computational biology. Microarray time series gene expression data is such an effective dataset which uncovers the regulatory relationships between any pair of genes in a gene set and hence facilitates the reconstruction of Gene Regulatory Network. The Artificial Neural Network environment is used to find the expression level of a gene at time t+?t in terms of the available expression level at time t. The underlying network parameters are uncovered as the simulated time series are compared with available real dataset in successive iterations. Estimation of the parameters of gene regulatory network is an important research area to be addressed. Here in this paper, the parameters are estimated using Honey Bee Mating Optimization algorithm. The intelligence of queen bees of the bee colony to select prospective drones for mating, crossover and mutation to support effective new genotypes and nurture of the good broods by worker bees is applied to solve the optimization problem of Parameter Estimation. Two experiments are conducted here. In experiment 1, the simulation based on the synthetic dataset of predefined parameters showed good performance accuracy. In the case of experiment 2, where real dataset was used, the cost convergence indicates the excellence of Honey Bee Mating Optimization in Parameter Estimation of Gene Regulatory Network.
机译:计算生物学是备受尊敬的跨学科领域,其中应用了数学,统计学和计算机科学等领域的专业知识来洞悉生物学现象。生物技术和相关领域的先进方法和技术有助于计算生物学研究人员获得生物学数据。微阵列时间序列基因表达数据是这样一种有效的数据集,它揭示了基因集中任何一对基因之间的调节关系,因此有利于基因调节网络的重建。根据时间t的可用表达水平,使用人工神经网络环境来查找时间t +Δt的基因表达水平。在连续迭代中将模拟时间序列与可用实际数据集进行比较时,发现了底层网络参数。基因调控网络参数的估计是一个重要的研究领域。在本文中,使用“蜜蜂配合优化”算法估计参数。为了解决参数估计的优化问题,运用蜂群女王蜂的智能来选择适合交配,杂交和突变的前瞻性无人机,以支持有效的新基因型,并由工蜂培育良好的亲本。这里进行两个实验。在实验1中,基于预定义参数的综合数据集的仿真显示出良好的性能精度。在实验2的情况下,使用实际数据集,成本收敛表明,在基因调控网络的参数估计中,蜜蜂交配优化的出色表现。

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