用b样条推断基因调控网络的时间序列数据比较研究

Haixin Wang, James E. Glover, Lijun Qian
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引用次数: 4

摘要

本文对时序基因表达数据进行定量分析,以推断基因调控网络。采用b样条算法对时间序列基因数据进行建模,提高了表达曲线的整体光滑性,进一步减少了过拟合。分析了不同时间序列观测数据大小对基因调控网络推断的影响。对b样条算法引入的随机误差进行了评价。比较了不同大小的时间序列数据对参数估计的精度。利用b样条生成连续曲线,仿真结果更加准确,推理结果得到明显改善。微阵列测量的合成数据和实验数据都证明了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative study of the time-series data for inference of gene regulatory networks using B-Spline
In this paper, the quantitative analysis of time-series gene expression data on inference of gene regulatory networks is performed. Time-series gene data are modeled by the B-Spline algorithm to improve the overall smooth expression curves which can further reduce over-fitting. The effect of the different sizes of observed time-series data on gene regulatory networks inference is analyzed. The stochastic errors introduced by the B-Spline algorithm to the system are evaluated. The precision of different sizes of time-series data on parameter estimations is compared. With application of the B-Spline to generate continuous curves, simulation results can be much more accurate and inference results are significantly improved. Both synthetic data and experimental data from microarray measurements are used to demonstrate the effectiveness of the proposed method.
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