Miyawaki Atsuko, Sriyudthsak Kansuporn, Hirai Masami Yokota, Shiraishi Fumihide
Section of Bio-Process Design, Department of Bioscience and Biotechnology, Graduate School of Bioresource and Bioenvironmental Sciences, Kyushu University, 6-10-1, Hakozaki, Higashi-Ku, Fukuoka 820-8581, Japan.
RIKEN Center for Sustainable and Resource Science, 1-7-22 Suehiro, Tsurumi, Yokohama, Kanagawa 230-0045, Japan.
Math Biosci. 2016 Dec;282:21-33. doi: 10.1016/j.mbs.2016.09.011. Epub 2016 Sep 28.
Mathematical modeling of large-scale metabolic networks usually requires smoothing of metabolite time-series data to account for measurement or biological errors. Accordingly, the accuracy of smoothing curves strongly affects the subsequent estimation of model parameters. Here, an efficient parametric method is proposed for smoothing metabolite time-series data, and its performance is evaluated. To simplify parameter estimation, the method uses S-system-type equations with simple power law-type efflux terms. Iterative calculation using this method was found to readily converge, because parameters are estimated stepwise. Importantly, smoothing curves are determined so that metabolite concentrations satisfy mass balances. Furthermore, the slopes of smoothing curves are useful in estimating parameters, because they are probably close to their true behaviors regardless of errors that may be present in the actual data. Finally, calculations for each differential equation were found to converge in much less than one second if initial parameters are set at appropriate (guessed) values.
大规模代谢网络的数学建模通常需要对代谢物时间序列数据进行平滑处理,以考虑测量误差或生物误差。因此,平滑曲线的准确性会强烈影响模型参数的后续估计。在此,提出了一种用于平滑代谢物时间序列数据的有效参数方法,并对其性能进行了评估。为简化参数估计,该方法使用具有简单幂律型流出项的S-系统型方程。发现使用此方法进行迭代计算很容易收敛,因为参数是逐步估计的。重要的是,确定平滑曲线以便代谢物浓度满足质量平衡。此外,平滑曲线的斜率在估计参数时很有用,因为无论实际数据中可能存在何种误差,它们可能都接近其真实行为。最后,如果将初始参数设置为适当的(猜测)值,发现每个微分方程的计算在不到一秒的时间内就会收敛。