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首页> 外文期刊>EURASIP journal on bioinformatics and systems biology >Approximate maximum likelihood estimation for stochastic chemical kinetics
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Approximate maximum likelihood estimation for stochastic chemical kinetics

机译:随机化学动力学的近似最大似然估计

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摘要

Recent experimental imaging techniques are able to tag and count molecular populations in a living cell. From these data mathematical models are inferred and calibrated. If small populations are present, discrete-state stochastic models are widely-used to describe the discreteness and randomness of molecular interactions. Based on time-series data of the molecular populations, the corresponding stochastic reaction rate constants can be estimated. This procedure is computationally very challenging, since the underlying stochastic process has to be solved for different parameters in order to obtain optimal estimates. Here, we focus on the maximum likelihood method and estimate rate constants, initial populations and parameters representing measurement errors.
机译:最近的实验成像技术能够标记和计数活细胞中的分子种群。从这些数据可以推断和校准数学模型。如果存在少量种群,则广泛使用离散状态随机模型来描述分子相互作用的离散性和随机性。基于分子种群的时间序列数据,可以估算出相应的随机反应速率常数。该过程在计算上非常具有挑战性,因为必须针对不同的参数解决潜在的随机过程以获得最佳估计。在这里,我们集中于最大似然法,并估计速率常数,初始总体和代表测量误差的参数。

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