Linder Daniel F, Rempała Grzegorz A
a Department of Biostatistics , Georgia Southern University , Statesboro , GA 30458 , USA.
J Biol Dyn. 2015;9(1):125-46. doi: 10.1080/17513758.2015.1033022.
The paper proposes new computational methods of computing confidence bounds for the least-squares estimates (LSEs) of rate constants in mass action biochemical reaction network and stochastic epidemic models. Such LSEs are obtained by fitting the set of deterministic ordinary differential equations (ODEs), corresponding to the large-volume limit of a reaction network, to network's partially observed trajectory treated as a continuous-time, pure jump Markov process. In the large-volume limit the LSEs are asymptotically Gaussian, but their limiting covariance structure is complicated since it is described by a set of nonlinear ODEs which are often ill-conditioned and numerically unstable. The current paper considers two bootstrap Monte-Carlo procedures, based on the diffusion and linear noise approximations for pure jump processes, which allow one to avoid solving the limiting covariance ODEs. The results are illustrated with both in-silico and real data examples from the LINE 1 gene retrotranscription model and compared with those obtained using other methods.
本文提出了新的计算方法,用于计算质量作用生化反应网络和随机流行病模型中速率常数的最小二乘估计(LSE)的置信区间。此类LSE是通过将与反应网络的大体积极限相对应的确定性常微分方程(ODE)集,拟合到被视为连续时间纯跳跃马尔可夫过程的网络部分观测轨迹而获得的。在大体积极限下,LSE渐近高斯分布,但其极限协方差结构很复杂,因为它由一组非线性ODE描述,这些ODE通常病态且数值不稳定。本文考虑了两种基于纯跳跃过程的扩散和线性噪声近似的自助蒙特卡罗程序,这使得人们能够避免求解极限协方差ODE。通过来自LINE 1基因逆转录模型的计算机模拟和实际数据示例对结果进行了说明,并与使用其他方法获得的结果进行了比较。