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Bayesian inference for a partially observed birth-death process using data on proportions

机译:利用比例数据对部分观察到的出生-死亡过程进行贝叶斯推断

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Stochastic kinetic models are often used to describe complex biological processes. Typically these models are analytically intractable and have unknown parameters which need to be estimated from observed data. Ideally we would have measurements on all interacting chemical species in the process, observed continuously in time. However, in practice, measurements are taken only at a relatively few time-points. In some situations, only very limited observation of the process is available, for example settings in which experimenters can only observe noisy observations on the proportion of cells that are alive. This makes the inference task even more problematic. We consider a range of data-poor scenarios and investigate the performance of various computationally intensive Bayesian algorithms in determining the posterior distribution using data on proportions from a simple birth-death process.
机译:随机动力学模型通常用于描述复杂的生物过程。通常,这些模型在分析上很棘手,并且参数未知,需要根据观察到的数据进行估算。理想情况下,我们将对过程中所有相互作用的化学物种进行测量,并及时进行观察。但是,实际上,仅在相对较少的时间点进行测量。在某些情况下,只能对该过程进行非常有限的观察,例如,实验人员只能观察到有关活细胞比例的嘈杂观察结果的设置。这使得推理任务更加成问题。我们考虑了一系列数据贫乏的情况,并研究了各种计算密集型贝叶斯算法在使用简单生死过程比例数据确定后验分布中的性能。

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