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首页> 外文期刊>Journal of the American statistical association >Bayesian Emulation And Calibration Of A Stochastic Computer Model Of Mitochondrial Dna Deletions In Substantia Nigra Neurons
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Bayesian Emulation And Calibration Of A Stochastic Computer Model Of Mitochondrial Dna Deletions In Substantia Nigra Neurons

机译:黑质神经元线粒体DNA缺失随机计算机模型的贝叶斯仿真与标定

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This article considers the problem of parameter estimation for a stochastic biological model of mitochondrial DNA population dynamics using experimental data on deletion mutation accumulation. The stochastic model is an attempt to describe the hypothesized link between deletion accumulation and neuronal loss in the substantia nigra region of the human brain. Inference for the parameters of the model is complicated by the fact that the model is both analytically intractable and slow to sample from. We show how the stochastic model can be approximated using a simple parametric statistical model with smoothly varying parameters. These parameters are treated as unknown functions and modeled using Gaussian process priors. Several simplifications of our Bayesian model are implemented to ease the computational burden. Throughout the article, we validate our models using predictive simulations. We demonstrate the validity of our fitted model on an independent dataset of substantia nigra neuron survival.
机译:本文考虑使用缺失突变积累的实验数据对线粒体DNA种群动态随机生物学模型进行参数估计的问题。随机模型是试图描述人脑黑质区域缺失积累与神经元丢失之间的假设联系。由于模型在分析上难以处理且采样缓慢,因此对模型参数的推论变得复杂。我们展示了如何使用具有平滑变化参数的简单参数统计模型来近似随机模型。这些参数被视为未知函数,并使用高斯过程先验建模。我们对贝叶斯模型进行了一些简化,以减轻计算负担。在整篇文章中,我们使用预测模拟来验证我们的模型。我们在黑质神经元存活的独立数据集上证明了我们拟合模型的有效性。

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