归一化和误差模型选择对生化反应最大似然估计量分布的影响

IF 1.9 4区 生物学 Q4 CELL BIOLOGY IET Systems Biology Pub Date : 2022-11-28 DOI:10.1049/syb2.12055
Caterina Thomaseth, Nicole E. Radde
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引用次数: 0

摘要

稀疏和噪声测量使生化反应网络的参数估计变得困难,并可能导致不适定优化问题。如果必须对数据进行归一化,并且只有倍数变化而不是绝对值可用,则这一点会得到加强。在这里,作者在一项计算机研究中考虑了测量噪声对最大似然(ML)估计器分布的传播。因此,考虑了一个可逆反应的模型,其中使用倍数变化来估计反应速率常数。针对不同的归一化策略和不同的误差模型分析了噪声传播。特别地,研究了ML估计量的精度、精度和渐近性质。结果表明,在作者提供的例子中,通过时间序列的平均值进行的归一化优于通过单个时间点进行的归一化。此外,具有重尾分布的误差模型对大测量噪声的鲁棒性略高,但除此之外,误差模型的选择对作者提供的估计结果没有显著影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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The effect of normalisation and error model choice on the distribution of the maximum likelihood estimator for a biochemical reaction

Sparse and noisy measurements make parameter estimation for biochemical reaction networks difficult and might lead to ill-posed optimisation problems. This is potentiated if the data has to be normalised, and only fold changes rather than absolute amounts are available. Here, the authors consider the propagation of measurement noise to the distribution of the maximum likelihood (ML) estimator in an in silico study. Therefore, a model of a reversible reaction is considered, for which reaction rate constants using fold changes is estimated. Noise propagation is analysed for different normalisation strategies and different error models. In particular, accuracy, precision, and asymptotic properties of the ML estimator is investigated. Results show that normalisation by the mean of a time series outperforms normalisation by a single time point in the example provided by the authors. Moreover, the error model with a heavy-tail distribution is slightly more robust to large measurement noise, but, beyond this, the choice of the error model did not have a significant impact on the estimation results provided by the authors.

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来源期刊
IET Systems Biology
IET Systems Biology 生物-数学与计算生物学
CiteScore
4.20
自引率
4.30%
发文量
17
审稿时长
>12 weeks
期刊介绍: IET Systems Biology covers intra- and inter-cellular dynamics, using systems- and signal-oriented approaches. Papers that analyse genomic data in order to identify variables and basic relationships between them are considered if the results provide a basis for mathematical modelling and simulation of cellular dynamics. Manuscripts on molecular and cell biological studies are encouraged if the aim is a systems approach to dynamic interactions within and between cells. The scope includes the following topics: Genomics, transcriptomics, proteomics, metabolomics, cells, tissue and the physiome; molecular and cellular interaction, gene, cell and protein function; networks and pathways; metabolism and cell signalling; dynamics, regulation and control; systems, signals, and information; experimental data analysis; mathematical modelling, simulation and theoretical analysis; biological modelling, simulation, prediction and control; methodologies, databases, tools and algorithms for modelling and simulation; modelling, analysis and control of biological networks; synthetic biology and bioengineering based on systems biology.
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