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Noise analysis of time series data in gene regulatory networks

机译:基因调控网络中时间序列数据的噪声分析

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One of the most important properties in gene expression is the stochasticity. Gene expression process is noisy and fluctuant. In this paper, the quantitative analysis of noisy time-series gene expression data on inference of gene regulatory networks is performed. We propose a two-step algorithm to solve the problem. In the first step, B-Spline is introduced to interpolate between data points. In the second step, Kalman filter or H filter is introduced to infer the gene structure. If the statistical noise is known, Kalman filter is applied; Otherwise H filter is applied. Both synthetic data and real experiment data are used to evaluate the procedure.
机译:基因表达中最重要的特性之一是随机性。基因表达过程嘈杂且波动。本文对基于基因调控网络推断的嘈杂时间序列基因表达数据进行了定量分析。我们提出了一种两步算法来解决该问题。第一步,引入B样条曲线以在数据点之间进行插值。在第二步中,引入卡尔曼滤波器或H 滤波器来推断基因结构。如果已知统计噪声,则应用卡尔曼滤波器;否则,将应用H 滤波器。综合数据和实际实验数据均用于评估程序。

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