Understanding the oscillating behaviors that govern organisms' internal biological processes requires interdisciplinary efforts combining both biological and computer experiments, as the latter can complement the former by simulating perturbed conditions with higher resolution. Harmonizing the two types of experiment, however, poses significant statistical challenges due to identifiability issues, numerical instability, and ill behavior in high dimension. This article devises a new Bayesian calibration framework for oscillating biochemical models. The proposed Bayesian model is estimated relying on an advanced Markov chain Monte Carlo (MCMC) technique which can efficiently infer the parameter values that match the simulated and observed oscillatory processes. Also proposed is an approach to sensitivity analysis based on the intervention posterior. This approach measures the influence of individual parameters on the target process by using the obtained MCMC samples as a computational tool. The proposed framework is illustrated with circadian oscillations observed in a filamentous fungus, Neurospora crassa.
翻译:了解生物体内部生物过程的振动行为需要结合生物和计算机实验的跨学科努力,因为后者可以通过以更高分辨率模拟扰动条件来补充前者。然而,由于可识别性问题、数字不稳定性和高度的不良行为,这两类实验在统计上提出了巨大的挑战。本文章为振动生物化学模型设计了新的巴伊西亚校准框架。拟议的巴伊西亚模型估计依赖于先进的马可夫链蒙特卡洛(MCMC)技术,该技术能够有效地推断出与模拟和观测的悬浮过程相匹配的参数值。还提出了一种基于干预外表的敏感性分析方法。这种方法用获得的MCMC样本作为计算工具,衡量个别参数对目标过程的影响。拟议框架用一种纤维状菌菌菌菌(Neurospora cra cranassa)所观察到的螺旋菌(circadian scurations)。